Branislav Nikolic

Episode 184: The Next Steps In FIA Index Recommendations with Branislav Nikolic and Jay Watson

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In a turbulent economic time, recommending client allocations in FIA indices has never been harder. Our friends at The Index Standard, Branislav Nikolic and Jay Watson join us today to talk about the latest iterations on their rating models.

Links mentioned in the show:

https://www.theindexstandard.com

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Episode Transcript

The discussion is not meant to provide any legal, tax, or investment advice with respect to the purchase of an insurance product. A comprehensive evaluation of a consumer’s needs and financial situation should always occur in order to help determine if an insurance product may be appropriate for each unique situation.

paul_tyler:
This is Paul Tyler, and welcome to another episode of that annuity show and I’m glad to join everybody back. I safely made it back from Toby in Egypt for a two weeks trip, and in Bruno, I didn’t tell you this before, but I actually found out there was an ancient Egyptian prince who apparently had an annuity way back

bruno_caron:
Uh,

paul_tyler:
in Mesopotamia,

bruno_caron:
uh,

paul_tyler:
and was given almost like a cup on payment every year. But You found some interesting news that we probably should have high lighted earlier around the Nobel Prize in winter. and uh, uh, One more reason why annuities should be looked at by a lot of people.

bruno_caron:
Right, well, not that much of a recent news than the Egyptians having annuities,

paul_tyler:
Yeah,

bruno_caron:
but indeed, indeed, Benbernatki, who won the Noble prize winner, not not that long ago, joined a long list of noble prize winners who at the very least have you know, push forward the concept and the implementation of annuities. So I think that’s a that. That’s another step step forward and step in the right direction.

paul_tyler:
Yeah, he, tsa, How are you Good this morning?

tisa_rabun_marshall:
I’m good this morning. I’m just slow to get off a mute in case there’s you know, some noise distractions,

paul_tyler:
All right?

tisa_rabun_marshall:
but great to be here this morning

paul_tyler:
Okay, well, Ramsey, let’s see. can you connect the dots between Nobel prize winners and Egypt, Shan, nobles, perhaps, and annuities and the topic

ramsey_d_smith:
Well,

paul_tyler:
we’re going to cover today.

ramsey_d_smith:
the only thing I can say is that that at one point my freshmen are sophomore year in college. Ben Bernanki was teaching me beginning beginning economics. I forget it was introductory macro, introductory micro, so always very very happy to see him doing well out in the world, And it’s interesting. So you mentioned that there was an. I think you just mentioned there was an Egyptian Egyptian annuity. My wife handed me in art. All about a perpetual bond owned by Yale, as it happens from Holland, that dates back to the fifteen hundreds. they’re still collecting. Literally, they’re still collecting a handful of uros every year on the back of that. So

paul_tyler:
Uh, uh,

ramsey_d_smith:
the there there a number there, a number of really phenomenal examples. But listen, The most important thing we have going on today is that we are joined by two special people from our lead sponsor. The Index standard. They’ve been our lead sponde For a year now, and for those of you listen to the show and at the beginning I believe we’ve got a. We’ve got a one minute intro. We talk about what they do is they bring clarity to the growing and inherently complex world of industies that are part of the fixindexinuities that so many people that listen to our show are probably involved in selling. So we think it’s a very important service and they are. They’re launching some some new initiative As we speak, and that’s what we’re going to talk about today. So first, I’m gonna introduce Bronislav Nicolitch, who is head of insurance at At Index Standard Brneslov recently joined from from Chanic, Let him talk a little bit about his his new role in his transition and we’re also joined by J. Watson, who is calling from London again. Yet further proof that we are an international show. Ah, and J is head of Analytic at head of Analytic at At Index Standard, and is a long standing colleague of the founder Index Standard, Lawrence Black, who is who is a great friend of the show as well, So With that Branaslove, bring us up to speed. tell us about your latest.

branislav_nikolic:
Thank you, Ramsey, it’s my absolute pleasure to be here. Actually, last time I was in the show was actually my day two or day three after joining the Index standard, So I was really fresh fresh of the boat. So yeah, as you said, like, I’ve joined Fromchanics, where I was leading research and everything that focused about retiring, complaning and anuities, and inclusion of annuities, whether it’s a retail or or in plan, and making making a shift index Standard where I really am looking into index solutions in either of the settings, But it’s insurance. It’s a annuities, index index, life insurance, and starting to look into in plan solutions, they are more and more willing to look and adopt index indexanuities, So a pleasure to be here and looking forward to our chat.

ramsey_d_smith:
J. Tell us a little bit more about yourself. Yeah,

jay_watson:
Thanks for that, my name is J. Watson. I joined the next standard just under two years ago, and prior to that, for best part of two decades, I worked in investment banking. most of that at Barkley’s capital, and most of that time was spent designing the industies that we’re talking about today, so across the different asset classes on a global basis, So based in London. That accounts for my accent, And I’ve known Lawrence for very many years. We were colleagues over the years, and I joined when Lawrence founded the Index standard. I joined him quite soon afterwards, and I’m very happy to be part of our mission, which is to help people better understand these industries and how they can work well for individuals and retires.

ramsey_d_smith:
All right, so why don’t we get into it And by the way, I neglected to acknowledge that, So Bruno is calling from Montreal, and Branaslavis is normally in Toronto. Don’t know where you are today. So Canada is also very important part of our national presence. So Bronaslav, tell us about. Tell us about this this latest initiative that that you’re undertaking with the Index standard.

branislav_nikolic:
So what we have done it in the standard and again, even before I joined. I know what what a core mission was, as Ja said to help teople understand Complex in this is better understand how the impact the insurance solutions, and more important how to impact the retail products to end up in the in the hands of moms and pomps, So what we do is kind of like multimultilayered, so just to kind of remind those who ve heard of us are kind, introduced it to those who haven’t we, For ratings and forecasts for for industies, and with our ratings, we’re trying to show how well designed or how robust. industisare and talk about there. Overall design can bring those in common language, simple to understand, and with a forecast, we are trying to rely on what we call the wisdom of Wall Street, and basically try and see how these are gonna perform Over next next little while, in other words will take, an index will do a v n analysis on it. See how it relates to the capital, malice assumptions that are coming from Um. insurance, big insurance companies, banks as managers, and see how the industries themselves would react Going forward. Now that’s all good. But the main question, the even we’ve been asked was around. How do I apply that in inanuities and we, There was a lot of work. Um, and of trying to figure out what the simplest way. what’s the way that would make sense to to to to mom and pop to my grandma That I always like to bring in in the scenario that she would understand what we are what we are talking about right. So we first wanted to put these index forecast to annuity annuity designs, and see if we can get a forecast or the annuities based on on annuity parameters that are different from different carriers, different surrender periods, and so on, Yet the forecast, or what we call Net forecast credit for for the annuities, But then soon after the question, the question really started started to be be asked is how do I know where to locate my money with inane, So we understand that these industries themselves are like many portfolios that are highly optimized to react to different market events, Um target different levels of volatility. But now that I have many of these many portfolios and many of the creating strategies with, In a new, How do I locate within the annuity and how do I word redundancies? A lot of people were saying that they are seeing either binary locations to it, say five hundred cab strategy Or if there are multiple options, they would say have five options. I split fy ways. You have three options out three ways. And what we wanted to bring some rigor is how do you? How do you do that methodically, But then still keep it. Keep it simple enough. so so so people, Or at the receiving end of this can get something. Something out of it

bruno_caron:
So if you take it, you know from from from to your point, from you your grandmother’s perspective. Now, let’s start with the first step induces. if I’m presented as a consumer between two different induces, what would be the differentiating factor between your gold rating and your neutral rating? Like, What are those those differentiating factors between those, those particular rating of those those induces.

jay_watson:
Okay, I’ll try and answer this, Bruno. The first thing to say is that our rating system is entirely analytical, Is no subjectivity. It’s objective, so we look at a very large number of different aspects of the index design its performance. It’s the way it’s desined, How many parameters it uses what underlings. It has, a very, very large number of considerations On Consideration we score. We then add up that score to get a grand total score for a particular index, and then once we’ve got that number and number out of a hundred, we compare it with all of the similar induces, So for example, the dividend index we compare with another dividend index or a multi asset index, We compare with another multiaset, a set of multi acid indusies, So we compare like with like apples with apples. So there’s an analytic score And then with that Score we compare that score with the other similar indusies, and then we produce we bucket those scores. The top ones get platinum, the next group get gold, and so on, and so on. So it’s an analytical process that takes into account a great many different aspects of the index design. And then we rate that index versus

paul_tyler:
How does

jay_watson:
it pears.

paul_tyler:
the how does time factor into your analysis and particularly my time? You know, if I plan to retire, Say twenty years from now versus ten years. Uh, one index may be gold, I would presume and please tell me this. I would think one index maybe goal, because it consistently returns a sort of narrow range of fairly good outcomes or has in the past, and we project it for Or another, one may actually produce some really incredible outcomes if you look over a period of say ten years, but if we start to narrow down that range of time and say well, Paul, you know, you might be starting to think about retirement sooner rather than later. I’m taking a little bit of a risk that I’m not going to get appear at a time where this particular industry has generated very high returns.

jay_watson:
That’s a very good question. We don’t have a crystal ball we’d love to have, but we don’t. What we’re trying to do with our index ratings is figure out which industries are well engineered and therefore more likely to do well over the long term, versus those of perhaps less well engineered that may look good in their back testing phase when they were designed, but may perform less well to the future And they go live. So that’s the first thing. It’s not a crystal ball, but it’s a A figure of measure of quality. The second thing is to say we always advocate this and it’s nothing new. Diversification Very simply, do not put all of your eggs in one basket. There are great many industries out there that I’m happy to say are very well designed these days, but even so it makes sense to diversify so there are some industries that may have a hard time in certain environments. Many industries have had a hard time in the last year, with both equities and bonds selling off a very unusual circumstance, so it’s very difficult to. It’s almost impossible to predict what’s going to happen in the future. The best thing you can do is to be diversified Now, that’s exactly the approach that we advocate in our model applications for the fixing, fixed indexed annuities. There are many now that offer multiple In This is, and at first sight, that becomes bewildering. I can imagine if I shown this to my mother, Bless her, she would say, I simply, I’ve never heard of most of these industries. Yes and yes, the Blomberg aggregate. Yes, the rest know, so people are stuck Th. they’re presented with often very good choices, but don’t have an informed viewpoint on what to do. So that’s where we aim to help.

ramsey_d_smith:
So I would just this comment that that one of the toughest things we do in the world of industies is actually really truly understand. You know, when things are redundant and not, it’s really very difficult to do without looking under the hood. One of the examples I remember from my old days was Ou know. there’s the S. P. five hundred, And then there was the five hundred value index and there was the five hundred growth index. Five hundred has five hundred ish stocks, It. but each of those industies had three hundred and some odd stocks in each. So if you added them together, it didn’t actually equal the five hundred, because there are a lot of stocks that were actually in both industies. Right So you know that’s why. Now that is precisely why know the work that you’re doing is so important. Because it’s really. It’s really hard to do that without without really being able to look under the hood. So Brontaslav wanted to get your thoughts on on Or get get your insights on on some of the tools you use. So we, we had a. We had a discussion off line where we talked a little bit about different thoughts and some of the analytical tools that are used in this in this space, Monte Carlo, being one of them. So maybe tell us a little bit about sort of the tools you use to do this work, this important work. and and maybe what, some of the pros and cons are that emerging in the intellectual debate in the financial services industry?

branislav_nikolic:
Would be glad to Hanks for that. So so I

ramsey_d_smith:
Yeah,

branislav_nikolic:
think that the ties to pulls pulls question as well into What happens if we want to retire in five years? What it will happen if you want to retire in ten fifteen? You got to have the way to test this out. So you know little framework that exists that has been In question over over last last one or two of your episode was Is Monte Carlo a good approach, and I’ll go straight to say that like all models are wrong, some are useful and there are tools that can do certain things, or tools that can not do certain things, but we waste the test. So the question that Paul asked is like What if I want to can retire in five or just ten years? I think our general approach to forecasting is that you have to take a long term view, because the capital of market assumptions Coming from investment banks or asset managers are ten year capital market assumptions. So if you do our d n analysis and an index apply capital markets assumptions to it, you get ten year forecast for an index. So it’s important to understand that this is not Co. Index will do tomorrow six months from now, two years from now. That this is a relatively long view on an index. Part of what goes into into our process is simulating the out, Basically taking the capital of market assumptions allying than with our, with our index in the d, n A. and kind of seeing what what a future holds. now, I would think that that’s appropriate and good use of simulation framework. I think more importantly is how you present your results. I think that every every and any tool is very dangerous. It could become very dangerous if you either unknowingly or got for deliberately misrepresent Results out of a two. or, or, even if you, if you as a user don’t understand, Um, So so the analogy that what? what you’re referring to, couple of episodes back was that what came out on Lee linked in was. Oh, let’s ban Monte Carlo, you, Ben Monte Carlo. Like three quarters of finance will help Um next day, and people say you, while like

ramsey_d_smith:
Hm,

branislav_nikolic:
this worked for a long time, worked in so many contexts that it’s working very well. Now there is that there’s the aspect where we say Oh advice. There’s usually use these to convey the message. Advisors misinterpret the results. And to me that’s like saying car is a bad idea because you give car to my toddler. Oh, that can be dangerous, but it’s very useful otherwise so so that’s that’s That’s where here we stand. So what we do is we take capital market assumptions from the market, what we call the wisdom of the Wall Street. We apply this to the set of analytical tools to identify Um. exposures of the industries, then simulate based on a couple of market assumptions and those exposures to get the index forecast, and the lastly, we have to what was saying, fully algorithmic way of locating within within anuitysbasically, using the results in a proper way to come up with the with starting locations for for these products,

jay_watson:
If I can just jump in here. It’s perhaps worth saying that

branislav_nikolic:
M,

jay_watson:
we’ve been producing these raw forecasts for industies for a couple of years now, and people in general very interested in them, as as a counter to simply looking backwards. It’s always interesting to look at history to have a field for things, but we try and look forward as well, and that’s what our forecast do for industries. But what we found was people who say. Yeah, Well, Great, but what’s it going to do when it’s in an index when it’s in an annuity, when it’s in a crediting strategy, and in particular people we spoke to clients, and they say, Look, I’m being presented. My clients are being presented with a choice of forty percent of the s. n P over a year or a hundred and seventy five percent participation in this bank index. I’ve never heard of How do I choose How where do I start? So what we did builds on what brands Lave explained. We took our role index forecasts, and we simulate what an index will do in a particular crediting strategy. So we take into account the participation

branislav_nikolic:
M

jay_watson:
we take into account fees. we take into account the crediting frequency, et cetera, et Cetera, All of the aspects that are required, we account for all of those on We, And a simulation out over ten years. When this goes back to Paul’s question, to try and get a field, an understanding of what a given crediting strategy might do, and the results are very striking. There’s a big variation in the results depending on the industies depending on the crediting strategies. So this is, we think this is very useful information, and it’s the basis Of these are our forecast, net forecast credits, and we use that, as Brandes pointed out, as the basis for our model applications, among those crediting strategies

paul_tyler:
Yeah, it’s

jay_watson:
in a

paul_tyler:
up.

jay_watson:
given

branislav_nikolic:
And

jay_watson:
F.

branislav_nikolic:
Ramsey,

jay_watson:
A

branislav_nikolic:
one thing,

ramsey_d_smith:
Go ahead on left.

branislav_nikolic:
Ramsey, One thing that you, you asked and I think it’s worth mentioning here is that we are the guardians of assumptions, so we believe that among us, we have enough experience and hand book know how to keep the assumptions in check, so that they are aligned perfectly, and when we get a capital market assumptions, we don’t take it from a single source. We take it from over fifty sources, and we then come up with our own that can reflect, Um. all of those. So the variation there, we try to smooth it out again when we apply it into into into our process. The other one is that we use the results of Let’s a simulations. In one step. We don’t say. Oh, this is going to be a single number. We provide distributions of results, we pick out moderate, conservative and strong, and we present all the data. So I think it’s also important to talk about what goes into the model, what comes out of the model and how Interpreted. and we, Our model location says what I referred to as an ultimate Che, Cheat on how to use a fixed indexcenuity You see that All you see how you locate, you see what industries are. You see how this is rated. You see what expected forecasted performance of the industries in the raw form ice, as well as through the through the annuity land, or of Crete strategy lands. So you have a full story to tell. How does hundred seventy five percent Partipation, Or nowadays, numbers that are like in two, three or four hundred, there are starting to sound like very odd to again, some one like my gramma. You ould say. Oh, you’ll get three times the performance of an index. Are you sure you can do that for me? Like that sounds fishy. I’ll go with a one that gives me up to a hundred percent. So all of that and mix together presented in a clear and concise way is what E are what we are advocating for. So at the end and consumer and user has has a Chan, So of a better outcome,

tisa_rabun_marshall:
A question. Congratulations on Un launching the ratings, but I have a question on design. Even behind the scenes, I sit in a marketing seat, so I imagine there’s several hours sitting in a room, brain storming and thinking through what you rolled out the decisions around are. The psychology may be around six levels versus eight or six levels versus three ratings, and sort of using medals versus some other reference to good Our best. I’m just curious. some of the discussion may have had there, and my follow up question to that is you know, how do you get the consumer who is already skeptical to pick anything other than platinum or if something moved from watch to gold? Like, how do you make them feel like? Yeah, this is actually going to you know, be beneficial to you. It’s like it’s if it’s watch. it’s always watched forever. In all ways, I’m never going to trust that it moved up. Just really curious. Some of the psychology as you thought through the ratings in and on the scale.

jay_watson:
Okay. That’s a great question. You are absolutely right. We did scratch our heads for a long time on this and we came up with our rating Platinum, gold, silver, copper, Neutral, and watch. We wanted something that immediately conveyed better or less good. We thought about lots of different possibilities. Stars. somebody suggested dollar signs. We thought that was not a good idea. What we wanted to convey was a sense of quality in a very simple way, So I don’t know whether we’ve got that right, but we’re going to stick with it. The other question you ask about. should someone only ever choose platinum? The answer that is, no, broadly speaking, the top three or four of our six categories. They’re all. They’re all good, But the platinum we think is the best, All of the platinum gold Silver. Those are all really well engineered industries, so you should be confident with any of those, and in particular those ratings they do move around through time of an index Is Platinum doesn’t necessarily stay platinum forever. We take into account in the the analysis of that score, that rating we take into account the Forecast performance of the index. Also, it’s live performance compared to its back tested performance. So as an index become live for a longer and longer, we give more weight to that live performance. If that’s good, then that will have a greater waiting. So if an index is rated silver, say it may go up. so the ratings do change not very much, their broadly sta, But they do change from month to month, But they do not lurch from platinum

ramsey_d_smith:
M.

jay_watson:
down to watch back up to gold again. there was no yo oing around. We were were confident when we designed the scoring structure that it would be stable, but it would move gently over time if I appropriate.

tisa_rabun_marshall:
Thanks,

paul_tyler:
I do think communicating potential outcomes is incredible, incredibly complicated. Love. the idea of an icon, M. now, I think of how we show ranges of outcomes today and it’s it’s difficult. I think our illustrations to you, so I think we show um, best, worst and last, and ironically, the last can actually be better than the best. The way the illustration rules work, and try to explain that to six year old consumer. Another one way we’ve we’ve looked at this, you know, brown, love, I think I’ve shared some of this work with you. We’ve looked at distribution outcomes. Now we’ve been doing this, you know, In a mirror looking backwards, and you start becatsome. Very interesting results. Some of these industies generate. You’re thinking of distribute normal distribution, cure very wide tails, Some very high peaks, So I’m sure there are many many covets, But you know all things being equal, you have an index. The goal of our of any type of guide is should be in my mind to help a sixty year old achieve safely achieve their retirement objective. Suppose we have fund A, that say shows, or projects that will generate, on average, say six percent return, And M with a standard deviation of say one or two per cent, so low, but very tight curve of outcomes, and we have almost same exact industy with averages nine percent, But the standard deviation is wider, meaning the chances of going you know lower than that more conservative fund is it could happen which which one gets the platinum, which one gets gold. Or have I just total Trashed your and walked over your model?

branislav_nikolic:
So you open, you opened two very important questions.

jay_watson:
Should I answer

branislav_nikolic:
I

jay_watson:
that,

branislav_nikolic:
think I think you should the last one, but I think you opened the very very very two very important questions. One is about the sales practices and illustration practices which we can get into you can get into, and the other one is Um, What’s what’s the preference? You started talking like means and stoundedeviations, And I did some that I in my schooling, But the key here is that My grandma doesn’t doesn’t understand a single word that you just said, So I think what what may work for for some one like her is like, Are you preferring index that’s hitting singles and doubles in baseball terms, or you’re looking for someone who is hitting home runs and which you prefer? It’s your thing. On average. they’re going to have the same number of rounds in the season to take a long term, So that’s the first thing, But the other one is that you mentioned illustration practices and impassionate about this one. It’s that I think they are. They’re kind of product of their time. If you go back to an n I cereals came about. It was like in early twenty tents, which just about two thousand eight. and I think that the last really meant to show. If two thousand eight happened, What what would the out can be? Now you? You move that rolling window away from two thousand eight, and last really becomes that you’re looking into the raging blue market hat we’ve seen. Now you’re starting To see a little bit of twenty, twenty, twenty or twenty twenty two coming in, but over all like eight out of out of those ten years are still phenomenal, so I think those are due to be to be adjusted to kind of prevent. what what I think is. It’s cheating that something that was meant to do a good thing include a widely bad outcome in those illustrations. Now in its place you are seeing the best possible thing that can happen to you. So so then and then, the third question that you asked is about How does the performance impact our rating, So I’ll go ahead and ask ask J to to give you give you the explanation there, Because that’s basically a difference between ratings and forecasts.

jay_watson:
Yeah, the answer Paul is, we do take into account our forecasts, but it’s only one of the things we look at. We’re not just looking for the index with the highest forecast. Put all your eggs in that basket. That’s not the approach we advocate. As I say, we’re trying to give an appraisal of how well engineered an index is how well how robust it is. Is it likely or less likely to do what it’s supposed to do? That’s what we’re looking for. And so to your question, Should somebody choose six percent return expected return with a vol of one and a half? By the way, that would be if you could find that index. Tell me, that’s amazing versus nine per cent with a Vol. Can’t remember what higher it depends. Is the preference. as brands said, it’s the preference of the end investor and that’s where the advisors come in in helping those end clients make a decision. Do you happy with singles? Oh, you’re happy with nothing. Nothing and then maybe the occasional home run. it’s up to the client. So our role as we see it is to try and put in front of people that information to help them make an informed choice. Help guide their own clients to what is most appropriate for

branislav_nikolic:
So

jay_watson:
those

branislav_nikolic:
is

jay_watson:
clients.

branislav_nikolic:
it fair if if I simplify it may be the other way that, if you’re look into our ratings, that will tell you that will describe the index. It would take everything that the index has to offer into consideration, and it would can tell you whether the index keeps its promise. In other words, whether the design that showed very well in design phase, or back to days carried into the future. Whether the mechanism works as described, How are the metrics coming out for for for Next mechanism? And then you combine that with a forecast, But you then can compare the forward looking view on how the index would perform, and you would say ideally you would pick like metal index, platinum, gold or silver, with a very stable return profile in the forecast, that doesn’t deviate much between conservative, moderate or strong, and then you look into even into the past, and say that now, last end Years or last twenty years, this index was returning five or six per cent. For we’re looking. we see somewhere between four and seven. That means that that’s indicative of what might might might have happened, but I think that’s that’s kind of. that’s harder to gage once you get into into the annuity and I think this is the last piece. and this. I was hoping that that was your question. Like how much you working of spending in the room, thinking about how to simplify the location with an annuity and how do you present those Results? So maybe maybe we want to talk. Talk about that for for for a second, And then do you want to want to lead it off, or do you want me just to say that again? The idea was there to make it simple. Make it. I’ll go it mic again, so there is no. there is no secret sauce in it. Everything is there. everything is disclosed and we want to give the option, especially in today’s hot higher than than what we’ve seen of our last year’s interest or environment given to F. A. There still fixed anuities. How much of above and beyond the fixed rates are these strategies bringing to the table? And should you consider the fixed rate that it’s now short history, but historically high. And what not? Do you want to maybe talk? Talk about the process for a little bit.

jay_watson:
Yeah, sure, thanks. have so again, we’re acutely aware that people are presented with a long list of choices which re going to be very difficult to understand these strange terms on unusual indusyes, strange indusies. What we do for every single crediting strategy is calculate the expected returns of that crediting strategy, So in fact, we calculate the moderate, and also conservative and a strong number, sort of weaker the expected value, and then a good scenario. We do that for each index, Each crediting strategy linked to each index. That’s the first step and it’s a big effort. So there might be five, six, there might be twenty different crediting strategies across three or five. in. She is. For each index we pick out the crediting strategy with the highest expected return. This is the selection part of the process, So for each index, look at the crediting strategy linked to it and pick the one with the highest expected return. Next step Check is that higher than the fixed rate? It jolly well ought to be, Because if it’s not higher than the fixed rate, why would you Take the risk of allocating to an index which the expected return is less than the fixed rate, So it’s less than the fixed rate. We throw it away, we discard it. We also discard an index of the best of its crediting strategies. The expected return is substantially less than the best available in that F. A. So there’s a big selection process. We try and sort out the wheat from the chaff You like. Once we made that selection, we then have two possible model applications. We propose. Both of them are fundamentally simple and both of them are based on the idea of diversification. So having made that selection in our first model, we just allocate equally to each of those selected industries. very very simple. The other model is a little bit more sophisticated. We tilt The locations according to the forecast. The expected returns are forecast for those crediting strategies. And so if the forecast, the expected return is higher, we give it more weight. If it’s less, we give it less weight. So you’re taking a little bit of a view according to the expected returns, But in both cases the selection is the same. The selection is looking to pick out for each index, the crediting strategies, which over the long Term, we think calculations show, demonstrate indicate will produce the highest returns over the long term.

bruno_caron:
Yes,

jay_watson:
Does that make

bruno_caron:
absolutely.

jay_watson:
sense? Everyone?

bruno_caron:
And it’s a very complex approach obviously to to help again to take Bronslab’s grandma and everybody else out there. Of course, you touched on diversification significantly earlier on. How is diversification achieved in the context of what you just said, Like having that algoritam picking and choosing different. You know, comparing

jay_watson:
Sure,

bruno_caron:
The the the expected return, Um. How is diversification achieved through this this process?

jay_watson:
Okay, Well, let me let me express it a different way. What we don’t do. You might be tempted if you have the for every crediting strategy of the expected return. Say Ha, there’s the highest one. Let’s put everything in that We don’t think that’s sensible. What we do is for each index we allocate where we check that the crediting the best crediting strategy for that index is not below the fixed rate or not too low. And then, if assuming that’s okay, then it gets an allocation. That’s the diversification we allocate to all of the industries where the crediting strategies are good to very good.

ramsey_d_smith:
So my comment? So Bruno? Actually? Did you have another follow one there before I jump in. Just going to say Bruno. Yes, it is it is. It is a complex process, but it’s also a a complex problem right, so industys, even simple induses have complexity, some of which I alluded to before. and then you know, many of the industries that are in in this space are even more complex because they’ve got lots of different rules and they’ve got Utility controls and lots of things like that. And so then there’s a. There’s a process valuating them at that level, And then you put them on to A and do an f. I a chasse. and suddenly you have all these right symmetries that are brought in because you’ve got you’ve got caps and things, so, I mean, I don’t know how one could actually sort of see fit to be able to optimize any of this without a very strong quantitative model, Which kind of brings us back to where we were with Ronesla earlier. Right

branislav_nikolic:
Oh,

ramsey_d_smith:
is at the end of the day you need a model, right, you need a model, and then, to the extent that you have a model, It, really, the discussion comes down to how robust are your in puts in your methodology, And so right, This whole discussion is really about like you know, you are describing the care that you put into those two critical elements to using this right. this sort of widely. Why The accepted way of evaluating evaluating the economic opportunity? So anyway, that’s that’s my. That’s

branislav_nikolic:
Oh,

paul_tyler:
Yeah,

ramsey_d_smith:
my twenty five cent summary. But did I did? I miss anything there, Bones love.

branislav_nikolic:
I think I think you get it. Get it right on and then Bruno, just to try to answer your question, Because again, I think the question that you ask like sounded simple, but I hear it as a very deep consequences. so one thing is that we try to read out redundancies in terms of strategies on the same index, because again those could be redundant. those could be all waiting. So for example, if you have an index and you have two strategies that perform the best You could say, Oh, give me half of one half of the other. You did not diversify. You just chose to different pay out structures on the same index. So that’s the first step how diversification comes into play. but we also rely on on diversification. Is that the carriers, when they are putting these in the sin like they are usually not redundant. So you, you wouldn’t have industries that are kind of carbon copy replica of one another with within the annuity, and the third one is diversity Cation. With respect to the fixed rate, a fixed rate is favorable compared to to those well performing strategies. So that kind of is kind of on a three levels of the versification that the dis offers Now, Could you could you go? Could you go deeper? Could you try to optimize? use use term that that Ramsey brought up like optimize? How can you optimize this? I think when you say optimize, people Go to mark of it. and like Moltiporfolio theory, and mean variant optimization, and the key with it a fixed in dexcnuities that allows us to be a little bit simpler to use a ittle bit more of a curistic approach. If if you want to call it is that you cannot lose money, these are principal protected product and you can really look into what’s the difference in my upside. Now you want to do this for, let’s say registered index annuities that you can lose the money. You definitely have to start measuring the downside and compare upside and downside and desk. This would kind of add you another level of the versification. Do you want to go for strategies? We can win big, but lose big occasionally, or you want go for a more stable stable return. So I think you’re asking a very deep question we’re trying to in a context of fixing eccenuities. answer it with a very simple solution. But there is a lot of lot of things that are going back on,

paul_tyler:
You know, this is a real problem,

jay_watson:
Ah,

paul_tyler:
our business that you are all solving, you know, and we’ve been a conferences. I’ve talked to Im. as we’ve talked some more top agents, and in selection is a very important issue. I think that really could benefit from. you know more support in the industry with the tools like yours. Um, I think last year You know the combination of bonds being down with stocks really heard a lot of these low vall induces, and I think the nejercoraction as I’ve heard from some agents is, I’m just going to put everything on the S and P five hundred, but that’s not the right solution for your clients. Necessarily

branislav_nikolic:
But you, sorry, I had to had to jump in you. you’re You’re saying two things you’re saying Control Industries didn’t work well last year, but going forward I’m going to put him into

paul_tyler:
Exactly.

branislav_nikolic:
how S impeded last year

paul_tyler:
I know Vranslavthere’s

branislav_nikolic:
Like these industries did a bit better than M. P,

paul_tyler:
Right

branislav_nikolic:
So

paul_tyler:
in going back. Going back to Ramsey’s point. We need structure around this

branislav_nikolic:
M,

paul_tyler:
and this is not a.

branislav_nikolic:
M,

paul_tyler:
You know, we’re not trying to time the market inside fix into exinuities. Nor should we. we need you know. J. that perspective look that encourages you know behavior that that creates outcomes that the products or designed to design to deliver. So I know we’ve got a lot more we can talk about Ramsey. Lot more more at the top of the hour. Um, you know, tis a. Do you you have any like last thoughts or comments on this topic?

tisa_rabun_marshall:
I mean, I think we all agree it’s complex, right and so I think this this rating system To de mystify it, break it down. make it simpler. So it’s interesting to hear you know some of the thoughts that went into building it, and um, I think I think it’s a step in the right direction, right to help

paul_tyler:
Yeah,

tisa_rabun_marshall:
the industry

bruno_caron:
Yeah,

tisa_rabun_marshall:
and to help the end consumer understand or make a decision in a different way,

paul_tyler:
Oh, an, I’d like to see our somer products and see the radiance you have here,

tisa_rabun_marshall:
Yeah.

paul_tyler:
Bruno, you, your last thoughts,

bruno_caron:
Well, I certainly applaud the indevor and the the initiative. I know I was in similar similar position not that long ago. and when things are going well and platinum and gold continued to be platinum and gold, you don’t necessarily get the metal. But when the boat starts rocking, then that’s when you get the tough question. So it’s It’s a tough. It’s a very difficult challenge and at the risk of stating the obvious, I know Complex environment, So yeah, I applaud the initiative well done,

paul_tyler:
Um, Ramsey,

branislav_nikolic:
Thank

paul_tyler:
bring

branislav_nikolic:
you.

paul_tyler:
us home.

ramsey_d_smith:
So

jay_watson:
Yeah,

ramsey_d_smith:
thanks again to Bronnaslav and J for being here. Hopefully, I should have pre summarized my my thoughts earlier. and so I think that your your question earlier about marketing this, and in the way it’s communicated super important. There’s everything about this. this, this challenge and opportunity is, it requires a lot of thought, everything from it, the quantitative progression to how we ate, He, and communicating it to the channel. So thanks to everybody for for another great episode, and thanks to the index standard for being such a great sponsor and friend of the show for the last year,

paul_tyler:
Yeah,

ramsey_d_smith:
Yeah.

paul_tyler:
hey, thank you all and

jay_watson:
It’s a pleasure,

paul_tyler:
once again thank

jay_watson:
thank

paul_tyler:
our

jay_watson:
you.

paul_tyler:
listeners. Listen. send us feed back. Call us. I get text. I get calls. I know everyone else does, and give us your opinions

bruno_caron:
M.

paul_tyler:
and we. we’ll continue this. the discussion, this topic. I think it’s really important for our business

bruno_caron:
M.

paul_tyler:
and join us kin next week for another episode of that annuity show.

Laura Dinan HaberEpisode 184: The Next Steps In FIA Index Recommendations with Branislav Nikolic and Jay Watson
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Episode 176: Thoughtfully Recommending Indices with Laurence Black and Branislav Nikolic

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# 176 – Thoughtfully Recommending Indices with Laurence Black and Branislav Nikolic

Indices continue to proliferate within the fixed indexed annuity market. Yes, choice is good for the client but it can create a complicated environment for the agent or advisor. Laurence Black, Founder of the Index Standard and Branislav Nikolic join us again to talk about how their company makes providing good information easier.

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Episode Transcript

The discussion is not meant to provide any legal, tax, or investment advice with respect to the purchase of an insurance product. A comprehensive evaluation of a consumer’s needs and financial situation should always occur in order to help determine if an insurance product may be appropriate for each unique situation.

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[paul_tyler]: hi

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[branislav_nikolic]: oh

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[paul_tyler]: this is paul tyler and welcome to
another episode of that annuity show bruno

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[branislav_nikolic]: yeah

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[paul_tyler]: welcome

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[bruno_caron]: thank you great to be here and
excited about

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[paul_tyler]: tessa

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00:00:13,765 –> 00:00:14,166
[bruno_caron]: our guests

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[paul_tyler]: glad you got your yahyeahtisa good to
see you

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[bruno_caron]: yeah

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[tisa_rabun_marshall]: to see you good morning

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[paul_tyler]: yeah we’ve been

13
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[bruno_caron]: m

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[paul_tyler]: busy on a lot of fronts last
few weeks haven’t we

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[tisa_rabun_marshall]: i

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[paul_tyler]: and ramsey looks

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[ramsey_d_smith]: ah

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[paul_tyler]: like you’re i think you’re broadcasting from
an undisclosed location today

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[ramsey_d_smith]: indeed

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00:00:30,343 –> 00:00:30,684
[paul_tyler]: correct

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00:00:30,698 –> 00:00:32,601
[ramsey_d_smith]: looks kind of like a wine seller
doesn’t it but

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[paul_tyler]: yeah

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00:00:33,756 –> 00:00:33,776
[tisa_rabun_marshall]: m

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[ramsey_d_smith]: it’s not

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[paul_tyler]: yeah ah

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[ramsey_d_smith]: a very

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[paul_tyler]: ah

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[ramsey_d_smith]: happy

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[tisa_rabun_marshall]: right

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[ramsey_d_smith]: to be here and really excited to
welcome lawrence black in the end standard uh

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[ramsey_d_smith]: the the index standard has been our
lead sponsor for the better part of the

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[ramsey_d_smith]: last year so we’re really excited to
have them on they’re doing a lot of

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[ramsey_d_smith]: very interesting things in and helping the
the index community unpack the best way to

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[ramsey_d_smith]: allocate industies and the best way to
understand their role in a broader portfolio so

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[ramsey_d_smith]: with that lawrence i want to start
out with you and you also have a

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[ramsey_d_smith]: special guest a new addition to your
team you’re going to want to introduce

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[branislav_nikolic]: m

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[ramsey_d_smith]: as well so i will pass it
on to you for that

39
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[laurence]: indeed so good morning every one it’s
great to join you so as you guys

40
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[laurence]: know it i’ve been with you a
couple of times in the past great to

41
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[laurence]: be back here again and i’m delighted
to introduce brand nicolitch who’s just joined us

42
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[laurence]: from from begpardon let me try a
re

43
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[branislav_nikolic]: m

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[laurence]: do that again hey good morning it’s
great to join you i’m delighted to introduce

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[laurence]: branslanicolich

46
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[ramsey_d_smith]: oh

47
00:01:38,852 –> 00:01:43,880
[laurence]: who’s just joined us from chanics he
was ahead of research and he was therefore

48
00:01:43,940 –> 00:01:48,527
[laurence]: about almost a decade and the index
standard we’ve got a lot of index expertise

49
00:01:48,627 –> 00:01:51,150
[laurence]: and it’s great to kind of expand
our capabilities

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00:01:50,542 –> 00:01:50,625
[ramsey_d_smith]: ah

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[laurence]: with brand slabs in depth insurance knowledge

52
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[ramsey_d_smith]: fantastic

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[paul_tyler]: welcome yeah

54
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[branislav_nikolic]: thank you extremely

55
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[paul_tyler]: you want

56
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[branislav_nikolic]: happy to be here

57
00:02:00,529 –> 00:02:02,011
[paul_tyler]: yeah yeah tell us

58
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[ramsey_d_smith]: yeah

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00:02:02,611 –> 00:02:05,394
[paul_tyler]: tell us it’s a little bit about
your back story how did how did you

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00:02:05,434 –> 00:02:07,055
[paul_tyler]: get into the annuity space

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00:02:08,047 –> 00:02:08,917
[ramsey_d_smith]: oh

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[branislav_nikolic]: so my story with annuities was polly
haphazard so old way through school i thought

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00:02:14,385 –> 00:02:18,049
[branislav_nikolic]: i would end up on a trading
desk somewhere be a proper quant and i

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00:02:18,389 –> 00:02:23,657
[branislav_nikolic]: had enormous luck to meet motinmilevsky extreme
early in my career and started working for

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00:02:24,138 –> 00:02:28,465
[branislav_nikolic]: for his start up later joined chanics
which is again an industry leader on data

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00:02:28,525 –> 00:02:36,578
[branislav_nikolic]: analytics for annuities spent good almost ten
years there leading research and really helping antics

67
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[branislav_nikolic]: build their capabilities in all sorts of
annuities in terms of platforms for exchanges that’s

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[branislav_nikolic]: how i lawrence and j and i
really saw the two missions extremely complimentary and

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[branislav_nikolic]: i always saw the index as a
fuel to the annuity and i always was

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[branislav_nikolic]: saying that it’s important these

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[ramsey_d_smith]: m

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[branislav_nikolic]: two things

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[ramsey_d_smith]: oh

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[branislav_nikolic]: evaluated together so we started talking and
i’m extremely happy to have joined the team

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00:03:01,183 –> 00:03:03,608
[branislav_nikolic]: and to be side by side with
lawrence and j

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[ramsey_d_smith]: yeah

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[paul_tyler]: ah

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[branislav_nikolic]: oh

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[paul_tyler]: lawrence so actually we saw each other
in person it was it was tremendous i

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[laurence]: indeed

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[paul_tyler]: i made the very last minute decision
to tend naa this year and a f

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[paul_tyler]: a for those of you who were
wont to look at this up had their

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[paul_tyler]: conference in california showed up and lawrence
you were on a great platform talking about

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[paul_tyler]: kind of the landscape of product design
and industiesn maybe for our audience you could

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[paul_tyler]: just sort of give us talk to
us a little bit more about the problem

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[paul_tyler]: you’re solving and you know what’s taking
place in the market today

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[laurence]: sure thanks paul because you know a
lot is happening so let me just sort

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[laurence]: of give everyone little bit of background
about what we

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[ramsey_d_smith]: oh

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[laurence]: do so at the end of standard
we all know there’s so much complexity in

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[laurence]: this market with induces and the pay
offs so what we do at the end

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[laurence]: next standard which were really trying to
simplify decode and mystify all this complexity and

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00:04:04,754 –> 00:04:07,641
[laurence]: we do it in a couple of
ways we’ve got a lot of research

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00:04:07,490 –> 00:04:07,573
[ramsey_d_smith]: he

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[laurence]: that we help people giving them insights
as to what products and industries to select

96
00:04:13,664 –> 00:04:19,880
[laurence]: we also actually rate and evaluate every
single index used in the insurance space we

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00:04:19,980 –> 00:04:25,751
[laurence]: give it a platinum gold silver bronze
rating and then we actually have some forward

98
00:04:25,791 –> 00:04:29,617
[laurence]: looking forecast to help people think about
the future because we all know the future

99
00:04:29,657 –> 00:04:33,223
[laurence]: is going to be different so we
have some forecast and then we’ve actually on

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00:04:33,263 –> 00:04:38,853
[laurence]: the of these forecasts we’ve actually launched
some model allications so allicating

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[ramsey_d_smith]: yeah

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[laurence]: to an annuity can be really tough
with sort of fifteen crediting lines so we’ve

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[laurence]: actually built a tool to help people
with

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[ramsey_d_smith]: yeah

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[laurence]: a tough selection now i just want
to give you some background about the index

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[laurence]: industry so one interesting

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[ramsey_d_smith]: yeah

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[laurence]: fact it’s actually almost a trillion dollar
industry no one knows about it so i

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[laurence]: call it like a niche market

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[branislav_nikolic]: ah

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[laurence]: that’s a trillion dollars

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[ramsey_d_smith]: yeah

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[laurence]: so you know we see in the
u s insurance space there’s probably is the

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[laurence]: bulk of risk control industries probably about
half that but actually risk control industries are

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[laurence]: used in germany

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[ramsey_d_smith]: yeah

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[laurence]: and in switzerland

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[ramsey_d_smith]: oh

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[laurence]: actually used in the insurance

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[ramsey_d_smith]: ye

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[laurence]: space they use risk control industries in
mutual funds then another big portion is structure

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[laurence]: products we estimate there’s probably two hundred
and fifty billion in instructure products that actually

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[laurence]: are linked to these risk control industries
and then actually you have this of bank

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[laurence]: market where they’re doing direct transactions with
big institutions that’s probably another two hundred billions

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[laurence]: so in total we think it’s around
about a trillion dollar market

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[ramsey_d_smith]: so that’s incredible i mean one of
the things though that is

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[branislav_nikolic]: oh

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[ramsey_d_smith]: that has been interesting about the market
is it’s gotten it’s been characterized by a

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[ramsey_d_smith]: lot more choice and there’s a lot
of value in an adit a choice but

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[ramsey_d_smith]: with with those choices becomes many many
more complicated decisions

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[laurence]: yeah

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[ramsey_d_smith]: and you know so i guess a
question you know that that i have for

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[ramsey_d_smith]: you like so what sort of what
are your various target audiences i can see

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[ramsey_d_smith]: i can certainly see why retail retail

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[laurence]: m

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[ramsey_d_smith]: consumers would want to be able to
decode all the choices but i would imagine

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[ramsey_d_smith]: that institutions are almost similarly challenged so
what are your target audiences for your product

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[ramsey_d_smith]: lines yeah

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[laurence]: so we’re actually kind of targeting that
that whole gammit we want

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[ramsey_d_smith]: hm

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[laurence]: to help organizations with the selection and
due diligence of these industies want to help

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[laurence]: organizations who selling them that they can
use our reports to kind of position them

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[laurence]: and and in the end consumer i
mean the main reason i’m actually here and

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[laurence]: doing this is i want m and
ms smith who are buying these policies to

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[laurence]: do better right

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[ramsey_d_smith]: oh

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[laurence]: by building choosing

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[ramsey_d_smith]: oh

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[laurence]: better industries and building diverse portfolios and
let me just make one quick comment about

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[bruno_caron]: oh

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[laurence]: the industries because

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[tisa_rabun_marshall]: m

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[laurence]: you know i think we hear a
lot about the comp lexity but also on

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[laurence]: the sort of flip side is actually
it’s really wonderful because what we’re now

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[ramsey_d_smith]: m

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[laurence]: seeing is a lot of the users
are actually getting access to techniques that only

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[laurence]: used by hedge funds or big pension
funds i can give any example there’s a

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[laurence]: technique called mean verace optimization just a
fancy way of saying give me the best

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[laurence]: aplication to target a certain level of
risk that was kind of actually harry make

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[laurence]: its came up with that technique in
the late fifties he wanted no ball prize

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[laurence]: for up until a couple of years
ago you only had big pension funds and

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[laurence]: big hedge funds were using that ut
now amazingly that technique is an indusies and

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[laurence]: we can all access that so that’s
actually a really wonderful innovation that all of

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[laurence]: us can use that

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[branislav_nikolic]: oh

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[ramsey_d_smith]: yeah

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[laurence]: to do better

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[branislav_nikolic]: yeah m

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[bruno_caron]: that’s that’s wonderful and can you talk
you talk a little bit more about those

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[bruno_caron]: those actual metrics and in practice what
type of metrics it you used to rate

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[bruno_caron]: s

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[ramsey_d_smith]: oh

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[bruno_caron]: h i mean you list plenty in
terms of calculating and measuring those like like

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[bruno_caron]: capital risk metric efficiency metric return metric

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[ramsey_d_smith]: m

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[bruno_caron]: what are those metrics and what do
they mean

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[ramsey_d_smith]: m

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[bruno_caron]: for people who ultimately use them

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[laurence]: he great question bruno

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[bruno_caron]: yeah

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[laurence]: so we actually look at about thirty
five

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[bruno_caron]: yeah

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[laurence]: metrics and i’m going

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[branislav_nikolic]: ah

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[laurence]: to loosely break them down into

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[branislav_nikolic]: oh

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[laurence]: three groups so the first group is

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[bruno_caron]: yeah

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[laurence]: we really want to look at the
complex city of each

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[bruno_caron]: oh

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[laurence]: index how it’s designed and the availability
of the rules and who’s calculating that the

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[laurence]: key thing is is really that complexity
we’ll look at the dirt the diversification we’ll

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[laurence]: look and see if the rules are
available well look and see if there’s an

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[laurence]: independent index calculation

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[ramsey_d_smith]: oh

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[laurence]: agent and we like to see those
things and by the way what we prefer

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[laurence]: to see when we’re looking at an
index is simpler is better than an index

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[laurence]: with lots of no second category is
what you touched on

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[bruno_caron]: oh

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[laurence]: will look at a lot of

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[paul_tyler]: yeah

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[laurence]: metrics like such as returns and volatility
but there we want to kind of go

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[laurence]: under the hood and we look at
something called v which is v a r

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[laurence]: but it’s just simply a metric that
tells you how much you can possibly

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[ramsey_d_smith]: what does

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[laurence]: lose

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[ramsey_d_smith]: that spell

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[laurence]: so we

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[ramsey_d_smith]: out

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[laurence]: want

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[ramsey_d_smith]: to

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[laurence]: to look

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[ramsey_d_smith]: lawrence

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[laurence]: at that

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[ramsey_d_smith]: for those on our audience

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[laurence]: yeah

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[ramsey_d_smith]: who don’t

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[bruno_caron]: i

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[ramsey_d_smith]: know

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[bruno_caron]: i

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[ramsey_d_smith]: what that spells out

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[branislav_nikolic]: oh

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[laurence]: we’re

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[ramsey_d_smith]: to

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[laurence]: going to keep it

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[bruno_caron]: oh

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[laurence]: simple

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[ramsey_d_smith]: okay

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[laurence]: we just look under the hood and
we kind

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[ramsey_d_smith]: okay

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[laurence]: of figure out the max that you
could lose

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[ramsey_d_smith]: right

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[laurence]: we also look at you know the
number of months that the index has positive

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[laurence]: on negative returns look at another technical
measure that says have you got a propensity

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[laurence]: for positive returns

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[ramsey_d_smith]: m

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[laurence]: we also look at large big outliers
as well to see if you’ve got any

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[laurence]: positive or large negative outlines again that
tells us a lot and then the final

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[laurence]: categories we actually look forward and we
actually bring in some of our forecast to

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[laurence]: try and also have a forward looking
measure

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[paul_tyler]: yeah

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[laurence]: so we score each nex out of
a hundred then we market on a bell

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[laurence]: shaped curve when we allocate platinum gold
silver bronze and then we also have watch

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[laurence]: and neutral as our worst categories

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[paul_tyler]: so lawrence if if i’m an advisor
selling one

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[ramsey_d_smith]: oh

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[paul_tyler]: of our one of our own companies
products to tsa and i’ve got the materials

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[paul_tyler]: in front of my the table because
the virtual table i have a lot of

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[paul_tyler]: personal risk at stake here right i
could recommend

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[ramsey_d_smith]: m

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[paul_tyler]: induces that creator the next two years

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[laurence]: yeah

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[paul_tyler]: um i could uh come over the
recommendations that are all kind of bunched up

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[paul_tyler]: in one in a couple i may
think i’ve diversified the actual

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[ramsey_d_smith]: oh

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[paul_tyler]: industries when in fact i’ve put all
her retirement into sort of one sector m

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[paul_tyler]: sometimes advisers simply default of saying look
tis just pick three or four of these

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[paul_tyler]: and let’s divide by that number and
put them in these industries oh and by

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[paul_tyler]: the way we now have best interest
standards now coming down the pike what

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[laurence]: yeah

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[paul_tyler]: does that process look like do i
spend more time with her lawrence do i

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[paul_tyler]: have better tools do i go in
with sort of pre set recommendations what does

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[paul_tyler]: that this looks like two or three
years from now

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[laurence]: you know that’s great let me answer
that in two parts and i would love

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[laurence]: to bring in brandon slave to answer

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[ramsey_d_smith]: m

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[laurence]: the second part here so you know
let me give you a couple of thoughts

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[laurence]: you know firstly i think the future
is going to be different from the past

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[laurence]: so always looking at these past historical
returns is probably not going to be optimal

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[laurence]: you know and let me give you
some some simple examples right firstly the last

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[laurence]: decade we had low inflation

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[ramsey_d_smith]: ye okay

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[laurence]: low interest rates no

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[ramsey_d_smith]: last

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[laurence]: tech

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[ramsey_d_smith]: week

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[laurence]: tail wins and globalization and it was
a great environment for large cap tech going

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[laurence]: forward i think everyone recognizes right we
see higher inflation we see higher rates we

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[laurence]: see dglobalization you know and the tech
is being regulated

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[branislav_nikolic]: oh

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[laurence]: beg pardon a recent big merger just
got blocked between microsopt and activision visit so

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[laurence]: that you know the world is going
to be different going forward so you know

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[laurence]: i think there are a lot of
people who are just alicating you know hundred

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[laurence]: percent to a bench mark index so
we want to encourage people to look forward

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[laurence]: so the way we do that at
the end ex standard we actually take the

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[laurence]: wisdom of wall street we actually go
and collect about thirty five asset managers and

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[laurence]: banks their ten year forward looking returns
and then what we do is we actually

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[laurence]: apply these these actual

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[branislav_nikolic]: m

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[laurence]: expected returns to each index and then
we’re able to produce

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[branislav_nikolic]: m

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[laurence]: a forward looking forecast for each index

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[branislav_nikolic]: oh

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[laurence]: so hand of the brands who is
going to talk about one of our latest

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[laurence]: innovations on what we’ve been doing around
kind of making that more useful for an

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[laurence]: f i a over over to you
brandslep

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[branislav_nikolic]: thank you laurence so so again the
key for me and one thing that i’m

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[branislav_nikolic]: extremely passionate about is how does this
to your point all get sold or how

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[branislav_nikolic]: is this presented over virtual or actual
kitchen table right because again who are the

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[branislav_nikolic]: buyers of annuities or pre retires or
early retires and you have two motives when

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[branislav_nikolic]: one is guaranteed income for life one
is the accumulation with a protected protected downside

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[branislav_nikolic]: either or you are looking for your
index more often than not to provide basis

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[branislav_nikolic]: of growth if you’re looking on the
accumulation side obvious if you’re looking on the

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[branislav_nikolic]: income side you have more and more
products coming in with the ability to harvest

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[branislav_nikolic]: some of that index growth and trans
laded into um cost of living adjustment on

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[branislav_nikolic]: your income going forward one way or
the other you have to understand the annuity

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[branislav_nikolic]: which i will which i like to
think of as like as an engine or

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[branislav_nikolic]: a car and you have to think
of an index which i like to think

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[branislav_nikolic]: of as a fuel you can have
like perfect grade fuel you put in a

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[branislav_nikolic]: bad engine doesn’t go you have a
perfect car put put a basic gasoline in

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[branislav_nikolic]: it sant go either like it starts
to cling you need the best combination and

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[branislav_nikolic]: this is where i believe that looking
into forecasts first of all coming from a

313
00:14:28,217 –> 00:14:33,526
[branislav_nikolic]: lawrence was mentioning with of all street
transformed into how these indessinduscis will do going

314
00:14:33,586 –> 00:14:38,434
[branislav_nikolic]: forward putting down through the annuities to
achieve something that we call it in stand

315
00:14:38,834 –> 00:14:43,883
[branislav_nikolic]: the net forecast yield basically trying to
what would the annuity with a given crediting

316
00:14:43,963 –> 00:14:49,011
[branislav_nikolic]: strategy on a given index provide over
over the next ten years and then on

317
00:14:49,092 –> 00:14:54,080
[branislav_nikolic]: top of that now look into all
of these options and see which two three

318
00:14:54,260 –> 00:15:00,150
[branislav_nikolic]: five options will give you the highest
expected return going forward so again thinking about

319
00:15:00,410 –> 00:15:05,178
[branislav_nikolic]: the design of the engine whether it’s
a strategy whether it’s a parameters are you

320
00:15:05,238 –> 00:15:09,283
[branislav_nikolic]: paying a fee it or not what
type of index are you putting to it

321
00:15:09,363 –> 00:15:12,926
[branislav_nikolic]: if it’s a bench mark you’re usually
getting a fraction of a return if it’s

322
00:15:12,966 –> 00:15:18,276
[branislav_nikolic]: a volatility control you get a multiple
now let’s say that you get ten per

323
00:15:18,356 –> 00:15:22,591
[branislav_nikolic]: cent return on a bench marine dex
and you get half of it okay ten

324
00:15:22,651 –> 00:15:26,056
[branislav_nikolic]: percent are we going to get ten
per cent next year the year after i

325
00:15:26,097 –> 00:15:30,324
[branislav_nikolic]: don’t know but if you get well
till controlled index and you get two three

326
00:15:30,464 –> 00:15:36,613
[branislav_nikolic]: times of it even if it returns
two three percent you’re already doing doing much

327
00:15:36,653 –> 00:15:40,778
[branislav_nikolic]: better all of this has to be
taken taken into context the other one is

328
00:15:40,838 –> 00:15:48,860
[branislav_nikolic]: that probably the truth lies somewhere in
between looking into the history and seeing high

329
00:15:48,940 –> 00:15:54,562
[branislav_nikolic]: returns are you going to see these
going forward no you’re going to see exactly

330
00:15:54,602 –> 00:15:59,430
[branislav_nikolic]: what’s happening in the forecast probably not
but i think these two are perfect basis

331
00:15:59,470 –> 00:16:03,396
[branislav_nikolic]: for conversation one for legal legal reasons
you got to do it because that’s how

332
00:16:03,437 –> 00:16:08,821
[branislav_nikolic]: you sell the annuity and the other
one is to basically show that up done

333
00:16:08,881 –> 00:16:13,149
[branislav_nikolic]: some thinking outside of the box in
terms of due diligence and what could happen

334
00:16:13,269 –> 00:16:17,536
[branislav_nikolic]: and again use this as a cheat
cheat to show how well you understand the

335
00:16:17,596 –> 00:16:20,672
[branislav_nikolic]: whole car plus the fee on a
race track

336
00:16:24,297 –> 00:16:25,660
[ramsey_d_smith]: so a quick question here

337
00:16:25,596 –> 00:16:26,766
[tisa_rabun_marshall]: oh

338
00:16:26,141 –> 00:16:29,586
[ramsey_d_smith]: so this this makes a lot of
sense right for a variety of

339
00:16:29,580 –> 00:16:30,720
[branislav_nikolic]: yeah

340
00:16:29,646 –> 00:16:36,718
[ramsey_d_smith]: reasons and the question is has anybody
done this before has there been has there

341
00:16:36,778 –> 00:16:41,615
[ramsey_d_smith]: been primarily a focus on history and
in particular back testing

342
00:16:42,934 –> 00:16:45,197
[laurence]: yeah i think there’s been such

343
00:16:45,180 –> 00:16:46,440
[branislav_nikolic]: oh

344
00:16:45,278 –> 00:16:50,346
[laurence]: a focus in on the industry and
back testing and listen it has a place

345
00:16:50,506 –> 00:16:50,647
[laurence]: but

346
00:16:50,529 –> 00:16:50,692
[ramsey_d_smith]: yeah

347
00:16:51,147 –> 00:16:52,369
[laurence]: what we like to say is

348
00:16:52,448 –> 00:16:52,468
[ramsey_d_smith]: i

349
00:16:53,071 –> 00:16:57,324
[laurence]: take the back test and take the
all cast and sort of think about the

350
00:16:57,538 –> 00:16:57,619
[ramsey_d_smith]: no

351
00:16:57,625 –> 00:17:01,912
[laurence]: using it together let me give you
like a common sense example that we we’ve

352
00:17:01,952 –> 00:17:07,662
[laurence]: been thinking about so right now some
of the large cap tech industries have the

353
00:17:07,722 –> 00:17:13,595
[laurence]: last ten years historical returns of sixteen
per cent so let’s kind of apply common

354
00:17:13,675 –> 00:17:15,116
[laurence]: logic and let’s take apple

355
00:17:14,910 –> 00:17:15,578
[branislav_nikolic]: yeah

356
00:17:15,576 –> 00:17:20,601
[laurence]: apples the largest constituent of a lot
of pig teck industries so apple the market

357
00:17:20,661 –> 00:17:25,256
[laurence]: cap right now is about two point
four trillion so if i take that two

358
00:17:25,316 –> 00:17:29,624
[laurence]: point four trillion and i’m going to
compound it at sixteen percent like many

359
00:17:29,647 –> 00:17:29,667
[ramsey_d_smith]: m

360
00:17:30,025 –> 00:17:34,858
[laurence]: is shown in the the software illustrations
actually that means in ten years time apple

361
00:17:34,898 –> 00:17:40,558
[laurence]: is going to have to have a
market cap of ten trillion dollars now maybe

362
00:17:40,598 –> 00:17:40,919
[laurence]: that’s going

363
00:17:40,957 –> 00:17:41,617
[ramsey_d_smith]: yeah

364
00:17:40,959 –> 00:17:41,940
[laurence]: to happen but

365
00:17:41,850 –> 00:17:42,630
[branislav_nikolic]: yeah

366
00:17:42,000 –> 00:17:42,762
[laurence]: like let me give you some

367
00:17:42,660 –> 00:17:42,942
[branislav_nikolic]: yeah

368
00:17:42,802 –> 00:17:49,112
[laurence]: context the german g p is three
point eight trillion so it might happen right

369
00:17:49,413 –> 00:17:50,214
[laurence]: but that’s we

370
00:17:50,280 –> 00:17:50,300
[branislav_nikolic]: m

371
00:17:50,414 –> 00:17:54,842
[laurence]: want to encourage people to be diverse
because you know i was just saying i

372
00:17:54,882 –> 00:17:58,187
[laurence]: think it’s going to be a decade
of discomfort right we’ve seen the end of

373
00:17:58,248 –> 00:18:02,238
[laurence]: globalization is going to be difficult so
i think you want to be diverse right

374
00:18:03,114 –> 00:18:07,821
[laurence]: look at emerging markets there their historic
or returns for the last ten years kind

375
00:18:07,861 –> 00:18:11,326
[laurence]: of like about zero maybe they’re going
to do better right you want to put

376
00:18:11,367 –> 00:18:11,387
[laurence]: a

377
00:18:11,409 –> 00:18:11,430
[branislav_nikolic]: m

378
00:18:11,427 –> 00:18:15,433
[laurence]: little bit of money in there right
now everyone’s so bearish about europe but maybe

379
00:18:15,473 –> 00:18:19,200
[laurence]: you want to sprinkle a little bit
in there too so we just think being

380
00:18:19,260 –> 00:18:26,051
[laurence]: diversified is really important and with our
innovation of helping people to choose across complicated

381
00:18:26,452 –> 00:18:31,360
[laurence]: crediting strategies that brands have just outlined
we take that complicated choice between they say

382
00:18:31,761 –> 00:18:35,669
[laurence]: choosing fifty percent of a bench mark
index or two hundred per cent in a

383
00:18:35,730 –> 00:18:40,530
[laurence]: risk control index just make that into
an apples to apples conversation where we can

384
00:18:40,581 –> 00:18:40,682
[branislav_nikolic]: oh

385
00:18:40,630 –> 00:18:43,718
[laurence]: say maybe you’re gonna get five here
and maybe you goin to get eight here

386
00:18:44,199 –> 00:18:45,782
[laurence]: to build a diversified portfolio

387
00:18:46,560 –> 00:18:50,887
[branislav_nikolic]: one thing lawrence that i would like
to add again lawrence being an expert to

388
00:18:50,927 –> 00:18:54,433
[branislav_nikolic]: what i call fuel and industries again
like its great great insight but again looking

389
00:18:54,493 –> 00:18:59,241
[branislav_nikolic]: into just these strategies that you get
in these annuities strategies they are built to

390
00:18:59,681 –> 00:19:04,469
[branislav_nikolic]: harvest the sharp growth you have strategies
that give you cap return so basically you’re

391
00:19:04,489 –> 00:19:08,316
[branislav_nikolic]: looking for a pause that have some
they’re looking for just positive return and then

392
00:19:08,356 –> 00:19:13,765
[branislav_nikolic]: you’re good you have those they are
looking for consistently positive return without any volatility

393
00:19:13,865 –> 00:19:14,085
[branislav_nikolic]: in them

394
00:19:14,947 –> 00:19:15,667
[ramsey_d_smith]: oh

395
00:19:15,328 –> 00:19:19,094
[branislav_nikolic]: how to know again you can have
your view of the market have your outlook

396
00:19:19,695 –> 00:19:23,782
[branislav_nikolic]: but how exactly you know where to
put on so if your money you don’t

397
00:19:23,822 –> 00:19:27,087
[branislav_nikolic]: have to you don’t have to know
that’s why it’s good to diversify that’s why

398
00:19:27,167 –> 00:19:33,518
[branislav_nikolic]: it’s good to diversify strategies crsindusties and
basically get all of these tools available to

399
00:19:33,578 –> 00:19:37,056
[branislav_nikolic]: you working for the for the end
user which is the most important piece

400
00:19:38,589 –> 00:19:38,710
[paul_tyler]: this

401
00:19:38,745 –> 00:19:38,825
[ramsey_d_smith]: and

402
00:19:38,771 –> 00:19:38,831
[paul_tyler]: is

403
00:19:38,886 –> 00:19:38,906
[ramsey_d_smith]: a

404
00:19:38,891 –> 00:19:38,912
[paul_tyler]: a

405
00:19:38,946 –> 00:19:39,067
[ramsey_d_smith]: key

406
00:19:38,972 –> 00:19:39,455
[paul_tyler]: complicated

407
00:19:39,168 –> 00:19:39,732
[ramsey_d_smith]: element of this

408
00:19:39,959 –> 00:19:40,362
[paul_tyler]: problem

409
00:19:42,447 –> 00:19:46,313
[ramsey_d_smith]: it’s gonna say a key element of
this is that um figuring

410
00:19:46,050 –> 00:19:46,736
[branislav_nikolic]: oh

411
00:19:46,433 –> 00:19:50,480
[ramsey_d_smith]: out how diversified you are not a
simple problem right so it’s not just

412
00:19:50,580 –> 00:19:50,863
[branislav_nikolic]: yeah

413
00:19:51,241 –> 00:19:52,944
[ramsey_d_smith]: um you know joe the advisor

414
00:19:52,740 –> 00:19:53,610
[branislav_nikolic]: yeah

415
00:19:53,144 –> 00:19:57,291
[ramsey_d_smith]: saying i’d like i’d like so i’d
like some europe i’d like like some us

416
00:19:57,331 –> 00:20:02,340
[ramsey_d_smith]: exposure et cetera because there are there
are correlations across those various assets as well

417
00:20:02,440 –> 00:20:04,343
[ramsey_d_smith]: so it’s i think

418
00:20:04,294 –> 00:20:04,520
[laurence]: oh

419
00:20:04,383 –> 00:20:09,091
[ramsey_d_smith]: that folks in the audience that would
they’re using a platform like this it’s important

420
00:20:09,131 –> 00:20:14,199
[ramsey_d_smith]: to understand that that it’s you can’t
really do it properly unless you have a

421
00:20:14,240 –> 00:20:21,027
[ramsey_d_smith]: pretty sophisticated engine under the hood to
be able to capture not just the obvious

422
00:20:21,087 –> 00:20:25,654
[ramsey_d_smith]: sources of diversification but also the less
obvious places where you may be is not

423
00:20:25,694 –> 00:20:26,696
[ramsey_d_smith]: as diversified as you think

424
00:20:27,959 –> 00:20:28,100
[paul_tyler]: yeah

425
00:20:28,795 –> 00:20:29,596
[laurence]: that’s a great point

426
00:20:29,400 –> 00:20:29,542
[branislav_nikolic]: ye

427
00:20:29,817 –> 00:20:33,743
[laurence]: and you know we do work with
chanics to get some of the data and

428
00:20:33,843 –> 00:20:39,493
[laurence]: brands joined us from them and actually
on our staff we’ve got mostly quits you

429
00:20:39,533 –> 00:20:43,079
[laurence]: know we have j watson who’s one
of our other partners he’s got a quant

430
00:20:43,199 –> 00:20:47,847
[laurence]: background we’ve got trent mckenna who also
has masters in finance j has a ph

431
00:20:47,887 –> 00:20:47,907
[laurence]: d

432
00:20:48,067 –> 00:20:48,087
[ramsey_d_smith]: m

433
00:20:48,107 –> 00:20:51,232
[laurence]: and brand slave has masters and working
on his ph d so

434
00:20:51,420 –> 00:20:51,643
[branislav_nikolic]: yeah

435
00:20:51,994 –> 00:20:53,236
[laurence]: i’ve only got an m b a
so i’m

436
00:20:53,160 –> 00:20:53,402
[branislav_nikolic]: yeah

437
00:20:53,296 –> 00:20:53,416
[laurence]: like

438
00:20:53,317 –> 00:20:53,521
[ramsey_d_smith]: yeah

439
00:20:53,496 –> 00:20:54,999
[laurence]: i feel you know these guys are

440
00:20:55,470 –> 00:20:56,790
[branislav_nikolic]: yeah

441
00:20:55,860 –> 00:21:00,187
[laurence]: the smart guys that we have here
and yeahit’it’s very complicated and we spend a

442
00:21:00,368 –> 00:21:00,528
[laurence]: lot

443
00:21:00,476 –> 00:21:01,166
[paul_tyler]: oh

444
00:21:00,568 –> 00:21:04,074
[laurence]: of time modeling that out but the
key thing is we want to make it’s

445
00:21:04,234 –> 00:21:06,095
[laurence]: simple for people and present an

446
00:21:06,057 –> 00:21:06,077
[branislav_nikolic]: m

447
00:21:06,276 –> 00:21:09,659
[laurence]: apples to apples comparison we want to
help people and boil it down just what

448
00:21:09,699 –> 00:21:13,542
[laurence]: do you need to know here’s the
apples to apples comparison and here is a

449
00:21:13,582 –> 00:21:14,303
[laurence]: way to allocate

450
00:21:14,786 –> 00:21:15,071
[paul_tyler]: yeah

451
00:21:15,150 –> 00:21:15,170
[branislav_nikolic]: a

452
00:21:15,164 –> 00:21:16,491
[laurence]: this industry is too complicated

453
00:21:17,110 –> 00:21:17,252
[paul_tyler]: look

454
00:21:17,432 –> 00:21:21,599
[branislav_nikolic]: lawrence one thing that you touched on
and i think it’s important in ramsey asked

455
00:21:21,639 –> 00:21:24,944
[branislav_nikolic]: this like has anyone done any of
this before and i think that we are

456
00:21:25,004 –> 00:21:29,712
[branislav_nikolic]: trying basically to raise the tide i
think that this industry requires all the parties

457
00:21:29,772 –> 00:21:34,921
[branislav_nikolic]: to collaborate and i think this is
where we get again great data and some

458
00:21:35,021 –> 00:21:37,645
[branislav_nikolic]: simple calculations for mechanics we have our
our index

459
00:21:38,617 –> 00:21:38,878
[ramsey_d_smith]: yeah

460
00:21:38,747 –> 00:21:40,910
[branislav_nikolic]: index forecast we have our

461
00:21:40,826 –> 00:21:40,987
[ramsey_d_smith]: yeah

462
00:21:41,010 –> 00:21:42,031
[branislav_nikolic]: model locations

463
00:21:42,343 –> 00:21:42,506
[ramsey_d_smith]: yes

464
00:21:42,431 –> 00:21:45,054
[branislav_nikolic]: we are willing to work with others
because at the end of the day i

465
00:21:45,114 –> 00:21:49,678
[branislav_nikolic]: think this is a tide and i
think that shift has to happen it’s important

466
00:21:49,738 –> 00:21:55,141
[branislav_nikolic]: for it to happen again for again
for the end user it’s the most important

467
00:21:55,181 –> 00:22:01,606
[branislav_nikolic]: that this ship happens and legal point
of view will catch up the illustrations their

468
00:22:01,686 –> 00:22:06,514
[branislav_nikolic]: legal requirements the important part of it
but they don’t tell a full story and

469
00:22:06,594 –> 00:22:11,322
[branislav_nikolic]: we are trying to augment that story
that makes it more palatable and easier to

470
00:22:11,362 –> 00:22:16,751
[branislav_nikolic]: have as a conversation today but two
years from now if things don’t turn out

471
00:22:17,413 –> 00:22:20,397
[branislav_nikolic]: like what was shown in illustration that’s
the most important bit

472
00:22:20,887 –> 00:22:21,109
[ramsey_d_smith]: oh

473
00:22:21,256 –> 00:22:25,924
[paul_tyler]: yea let me talk a little bit
more about what diversity actually means

474
00:22:25,777 –> 00:22:26,038
[ramsey_d_smith]: yah

475
00:22:26,805 –> 00:22:27,266
[paul_tyler]: i like the

476
00:22:27,186 –> 00:22:27,307
[ramsey_d_smith]: yah

477
00:22:27,306 –> 00:22:32,795
[paul_tyler]: fact lawrence you say we encourage people
to look at back tested returns against four

478
00:22:32,956 –> 00:22:36,401
[paul_tyler]: acid returns there’s also a time factor
right because

479
00:22:37,276 –> 00:22:37,297
[ramsey_d_smith]: m

480
00:22:37,804 –> 00:22:43,874
[paul_tyler]: if you think about possible outcomes you
may have one fund that appears to have

481
00:22:44,490 –> 00:22:44,993
[branislav_nikolic]: oh

482
00:22:44,495 –> 00:22:50,605
[paul_tyler]: highest likelihood or industry of great returns
but there are also some outliers right through

483
00:22:50,665 –> 00:22:51,607
[paul_tyler]: some cases where

484
00:22:51,541 –> 00:22:51,994
[laurence]: hm

485
00:22:52,829 –> 00:22:57,977
[paul_tyler]: wow tsa could get zero she might
get twenty and return she might get a

486
00:22:58,078 –> 00:22:59,700
[paul_tyler]: zero now if she’s

487
00:22:59,677 –> 00:22:59,800
[laurence]: yeah

488
00:22:59,760 –> 00:23:02,785
[paul_tyler]: about to retire two years from now
and start to pull money

489
00:23:02,786 –> 00:23:02,806
[laurence]: a

490
00:23:02,946 –> 00:23:06,331
[paul_tyler]: out how do i factor in the
possibility

491
00:23:05,949 –> 00:23:05,990
[laurence]: a

492
00:23:06,492 –> 00:23:08,575
[paul_tyler]: that there might be a zero here

493
00:23:09,444 –> 00:23:13,871
[laurence]: yeah right there’s so so much in
what you’ve asked me that

494
00:23:13,980 –> 00:23:15,030
[branislav_nikolic]: yeah

495
00:23:14,292 –> 00:23:15,333
[laurence]: d love to talk about so

496
00:23:15,300 –> 00:23:15,563
[branislav_nikolic]: oh

497
00:23:16,155 –> 00:23:22,004
[laurence]: you know great thought so the first
thing is i think everyone really expect bench

498
00:23:22,084 –> 00:23:27,089
[laurence]: mark industries to give positive returns right
the last ten years accepted this year we’ve

499
00:23:27,129 –> 00:23:30,692
[laurence]: just seen positive return so people have
been treated and we all have this recency

500
00:23:30,812 –> 00:23:35,409
[laurence]: bias now this year we’re probably going
to see a negative on many of the

501
00:23:35,449 –> 00:23:40,136
[laurence]: major bench marks and next year if
you look at some of the one year

502
00:23:40,237 –> 00:23:43,462
[laurence]: forecasts that some of the investment banks
put out a couple of investment banks are

503
00:23:43,522 –> 00:23:44,644
[laurence]: calling for negative

504
00:23:44,400 –> 00:23:44,420
[branislav_nikolic]: m

505
00:23:44,684 –> 00:23:48,550
[laurence]: returns so i think people are going
to be shocked so what you really want

506
00:23:48,611 –> 00:23:53,058
[laurence]: to do is find industries that ying
and yang when you know one is up

507
00:23:53,358 –> 00:23:56,408
[laurence]: the other one’s down and vice versa
right so that’s what you got to find

508
00:23:56,568 –> 00:23:57,892
[laurence]: industries that yang and yang

509
00:23:58,249 –> 00:23:58,469
[bruno_caron]: oh

510
00:23:59,054 –> 00:24:03,178
[laurence]: then you want to blend them in
now why is this important i got to

511
00:24:03,258 –> 00:24:06,801
[laurence]: tell you i think the most important
thing in finance that we all tend to

512
00:24:06,862 –> 00:24:13,190
[laurence]: forget is compounding compounding is the magic
in finance right just by eking out a

513
00:24:13,230 –> 00:24:18,239
[laurence]: little positive return each year the next
year you’re compounding on a higher number so

514
00:24:18,740 –> 00:24:23,267
[laurence]: if you can get your client even
two or three and versus zero that

515
00:24:23,284 –> 00:24:23,367
[bruno_caron]: ah

516
00:24:23,367 –> 00:24:25,110
[laurence]: next year you’re going to start at
one o three

517
00:24:25,020 –> 00:24:25,890
[branislav_nikolic]: yeah

518
00:24:25,711 –> 00:24:27,093
[laurence]: kind of compound that return so

519
00:24:27,480 –> 00:24:27,765
[branislav_nikolic]: yeah

520
00:24:27,594 –> 00:24:30,960
[laurence]: compounding is the magic that’s what you
want to do is just get your clients

521
00:24:31,140 –> 00:24:34,110
[laurence]: a little positive return and you can
build wealth like that

522
00:24:34,980 –> 00:24:37,484
[branislav_nikolic]: lawrence i would like to kind of
add to that a bit and i think

523
00:24:37,504 –> 00:24:40,068
[branislav_nikolic]: this is an important one so when
you look into bench mark industries in the

524
00:24:40,128 –> 00:24:44,355
[branislav_nikolic]: last thirty years let’s say you would
see that we had like periods there will

525
00:24:44,415 –> 00:24:47,701
[branislav_nikolic]: last like seven or ten years and
then we have a correction so there was

526
00:24:47,761 –> 00:24:51,908
[branislav_nikolic]: no period of twenty years that you
had like positive high positive return there was

527
00:24:52,028 –> 00:24:56,315
[branislav_nikolic]: always something happening in the middle that
would kind of take us back and then

528
00:24:56,335 –> 00:24:57,657
[branislav_nikolic]: you have like the star

529
00:24:57,709 –> 00:24:57,830
[bruno_caron]: ye

530
00:24:57,738 –> 00:24:59,882
[branislav_nikolic]: grow look at a history of those
industries

531
00:24:59,749 –> 00:25:00,014
[bruno_caron]: oh

532
00:25:00,222 –> 00:25:04,431
[branislav_nikolic]: you had periods in thirties forties fifties
even sixties

533
00:25:04,240 –> 00:25:04,341
[bruno_caron]: ah

534
00:25:04,512 –> 00:25:07,618
[branislav_nikolic]: that they had like a constant seven
percent return so if we are

535
00:25:08,134 –> 00:25:08,154
[laurence]: m

536
00:25:08,490 –> 00:25:10,914
[branislav_nikolic]: we can go back at a time
i think that

537
00:25:11,584 –> 00:25:11,888
[laurence]: oh

538
00:25:11,655 –> 00:25:15,281
[branislav_nikolic]: our conversation today will be obsolete if
you have a index returning seven percent year

539
00:25:15,421 –> 00:25:19,869
[branislav_nikolic]: over here here we are talking about
people thinking of averages but the sequence of

540
00:25:19,929 –> 00:25:23,712
[branislav_nikolic]: returns there’s a lot and then that’s
what i think will lawrence is saying i

541
00:25:23,752 –> 00:25:29,057
[branislav_nikolic]: would try to relate to the annuity
folks a little bit different is basically saying

542
00:25:29,097 –> 00:25:33,346
[branislav_nikolic]: that if you have a seven or
ten year annuity are you better off getting

543
00:25:34,670 –> 00:25:36,954
[branislav_nikolic]: solid returns three five

544
00:25:36,919 –> 00:25:36,939
[bruno_caron]: m

545
00:25:37,014 –> 00:25:41,441
[branislav_nikolic]: or seven out of out of ten
years or you should get positive return in

546
00:25:41,521 –> 00:25:45,107
[branislav_nikolic]: all ten of them and again depending
how these are using the plan if you’re

547
00:25:45,187 –> 00:25:50,236
[branislav_nikolic]: living of interest or or that a
fixed fixed credit you want it every year

548
00:25:50,416 –> 00:25:53,221
[branislav_nikolic]: and you want to be able to
plan so i guess it really matters how

549
00:25:53,301 –> 00:25:58,249
[branislav_nikolic]: you’re putting this into into into the
annuity as well another thing that became apparent

550
00:25:58,005 –> 00:25:58,026
[bruno_caron]: a

551
00:25:58,349 –> 00:25:59,912
[branislav_nikolic]: as ere doing the research for the
model

552
00:25:59,749 –> 00:26:00,010
[bruno_caron]: oh

553
00:25:59,972 –> 00:26:04,820
[branislav_nikolic]: of location was that there are some
strategies when you look on a forecast a

554
00:26:04,900 –> 00:26:08,266
[branislav_nikolic]: basis they don’t even bee to fix
rate again fixed rate a year ago we

555
00:26:08,286 –> 00:26:12,132
[branislav_nikolic]: wouldn’t be even talking about it but
today it is like three or four five

556
00:26:12,212 –> 00:26:12,693
[branislav_nikolic]: percent

557
00:26:13,031 –> 00:26:13,444
[laurence]: hm

558
00:26:13,294 –> 00:26:14,136
[branislav_nikolic]: and you have a strategy

559
00:26:13,789 –> 00:26:14,072
[bruno_caron]: yah

560
00:26:14,216 –> 00:26:15,197
[branislav_nikolic]: they have a forecast that

561
00:26:15,288 –> 00:26:15,349
[bruno_caron]: ah

562
00:26:15,297 –> 00:26:20,807
[branislav_nikolic]: any yield or return less than that
now that begs the question why at all

563
00:26:20,887 –> 00:26:26,674
[branislav_nikolic]: participate why don’t ye some of the
security of the high fixed rates going forward

564
00:26:27,094 –> 00:26:31,579
[branislav_nikolic]: and combine that with some with some
other industries again what five per cent will

565
00:26:32,360 –> 00:26:35,605
[branislav_nikolic]: keep you up with inflation of seven
i don’t think so but i don’t think

566
00:26:35,665 –> 00:26:39,431
[branislav_nikolic]: inflation of seven is going to be
year after year so a lot of a

567
00:26:39,491 –> 00:26:43,618
[branislav_nikolic]: lot of things to unpack and it’s
why i think that locating across everything that’s

568
00:26:43,658 –> 00:26:54,384
[branislav_nikolic]: available within annuity looking into this is
the recification strategy versification banking on historically high

569
00:26:54,765 –> 00:26:58,658
[branislav_nikolic]: rates i think there’s a lot a
lot to consider

570
00:26:59,714 –> 00:27:03,200
[laurence]: and actually barn said there’s also another
complexity you sort of people have the choice

571
00:27:03,260 –> 00:27:06,546
[laurence]: sort i choose a one year point
to point or two year or three year

572
00:27:06,766 –> 00:27:10,933
[laurence]: up to a six year right and
that’s another complexity that we look at and

573
00:27:10,993 –> 00:27:13,821
[laurence]: try figure that out so yeah there’s
a lot going on in these in these

574
00:27:13,881 –> 00:27:14,142
[laurence]: products

575
00:27:16,919 –> 00:27:17,400
[bruno_caron]: a lot’s going

576
00:27:17,377 –> 00:27:17,618
[ramsey_d_smith]: oh

577
00:27:17,480 –> 00:27:21,587
[bruno_caron]: on to say the least and i
think there’s a lot of material in what

578
00:27:22,489 –> 00:27:24,292
[bruno_caron]: to unpack and what you just said

579
00:27:25,050 –> 00:27:25,920
[branislav_nikolic]: yeah

580
00:27:25,113 –> 00:27:34,108
[bruno_caron]: in terms of decumulation the sequence of
return uh and all that diversification um if

581
00:27:34,268 –> 00:27:39,657
[bruno_caron]: we put all the pieces together you
you mentioned that

582
00:27:39,547 –> 00:27:39,807
[ramsey_d_smith]: oh

583
00:27:39,797 –> 00:27:48,852
[bruno_caron]: yeah you’re launching this the model application
for for f i as um first of

584
00:27:48,893 –> 00:27:53,200
[bruno_caron]: all can you tell us a little
bit of you know some of the uh

585
00:27:53,661 –> 00:28:00,452
[bruno_caron]: the time line behind that and what
does that mean ultimately for for the consumer

586
00:28:00,592 –> 00:28:04,681
[bruno_caron]: and how are they going to be
able to use that that’s past to

587
00:28:06,314 –> 00:28:10,361
[laurence]: thanks bruno so we’ve we’ve been working
on this for the last year it’s taken

588
00:28:10,441 –> 00:28:16,291
[laurence]: us some time to model out more
than three thousand crediting strategies and then figure

589
00:28:16,371 –> 00:28:17,613
[laurence]: out an application so

590
00:28:17,580 –> 00:28:17,820
[branislav_nikolic]: yeah

591
00:28:17,794 –> 00:28:19,837
[laurence]: you’re going to be launching in january

592
00:28:20,169 –> 00:28:20,349
[branislav_nikolic]: yeah

593
00:28:20,578 –> 00:28:24,565
[laurence]: um you know we’re starting to tell
people and in fact we’re grateful to be

594
00:28:24,645 –> 00:28:27,910
[laurence]: here on on the on the podcast
right now and that’s part of our mission

595
00:28:27,990 –> 00:28:32,658
[laurence]: to tell people and so through the
course of december we’ll be letting a lot

596
00:28:32,698 –> 00:28:37,727
[laurence]: of our partners insurance carriers know and
then mid mid to end of jane we’ll

597
00:28:37,767 –> 00:28:41,172
[laurence]: be launching formally going to market and
telling everyone about it

598
00:28:41,311 –> 00:28:41,351
[branislav_nikolic]: m

599
00:28:41,633 –> 00:28:42,454
[laurence]: make and available

600
00:28:42,579 –> 00:28:42,600
[branislav_nikolic]: m

601
00:28:42,955 –> 00:28:47,300
[laurence]: we’ve already got one or two partners
who’ve signed on so we’re excited because it

602
00:28:47,340 –> 00:28:49,503
[laurence]: helps our mission we want to see
people do better

603
00:28:52,717 –> 00:28:53,217
[ramsey_d_smith]: so i was

604
00:28:53,160 –> 00:28:53,381
[branislav_nikolic]: yeah

605
00:28:53,638 –> 00:29:03,211
[ramsey_d_smith]: i was recently in a conversation with
listen fairly sizable financial institution in you know

606
00:29:03,271 –> 00:29:09,019
[ramsey_d_smith]: in the advisory space i’ll say and
they were trying to figure out different ways

607
00:29:09,139 –> 00:29:15,510
[ramsey_d_smith]: to to incorporate more annuities into their
their platform and one of the challenges was

608
00:29:15,570 –> 00:29:21,240
[ramsey_d_smith]: that increasingly the advisors were being asked
less and less to make investment decisions and

609
00:29:21,260 –> 00:29:25,647
[ramsey_d_smith]: they were more focused on relationship management
and so the implication of that is that

610
00:29:25,687 –> 00:29:25,787
[ramsey_d_smith]: the

611
00:29:25,944 –> 00:29:26,089
[laurence]: yeah

612
00:29:26,308 –> 00:29:32,703
[ramsey_d_smith]: that the investment strategies the acid application
strategies actually come from a central source right

613
00:29:33,085 –> 00:29:36,087
[ramsey_d_smith]: and the centralized sources need to use

614
00:29:36,157 –> 00:29:36,342
[laurence]: yeah

615
00:29:36,568 –> 00:29:41,617
[ramsey_d_smith]: rely on models that use a lot
of data and so you think about use

616
00:29:41,717 –> 00:29:47,587
[ramsey_d_smith]: cases what you’re building here lawrence and
brandaslav is that you’re bringing you’re bringing robt

617
00:29:47,748 –> 00:29:53,204
[ramsey_d_smith]: data you know where it didn’t exist
before so that it can potentially be used

618
00:29:53,384 –> 00:29:57,231
[ramsey_d_smith]: at a you know at a sort
of an entity level

619
00:29:57,137 –> 00:29:57,281
[laurence]: kay

620
00:29:57,331 –> 00:30:01,117
[ramsey_d_smith]: if you will i like to call
it factory settings right at an entity level

621
00:30:01,698 –> 00:30:07,067
[ramsey_d_smith]: nd level for larger financial institutions so
that at the end of the day know

622
00:30:07,347 –> 00:30:11,094
[ramsey_d_smith]: the advisor the advisor will be able
to rely on something that’s been fully veded

623
00:30:11,655 –> 00:30:15,581
[ramsey_d_smith]: at an institutional level but in order
for all that to work you know you

624
00:30:15,641 –> 00:30:20,109
[ramsey_d_smith]: have to have reliable data and to
your point earlier it didn’t really didn’t exist

625
00:30:20,469 –> 00:30:27,830
[ramsey_d_smith]: across the whole sort of spectrum of
offerings until guys launch this product so grat

626
00:30:30,174 –> 00:30:34,061
[laurence]: yeah thank you know i’ll make a
remark and then see if brandon has anything

627
00:30:34,121 –> 00:30:38,268
[laurence]: to add you know one of the
things we see having worked for a large

628
00:30:38,328 –> 00:30:42,876
[laurence]: financial institution in my in my prior
life one of the key things is everyone

629
00:30:42,956 –> 00:30:44,920
[laurence]: wants some kind of forecast

630
00:30:45,007 –> 00:30:45,108
[paul_tyler]: ah

631
00:30:45,301 –> 00:30:50,912
[laurence]: expected returns expected volatility what’s the correlation
they need those to plug into their model

632
00:30:52,064 –> 00:30:55,369
[laurence]: and in the annuity space there’s been
nothing now with what we do at the

633
00:30:55,429 –> 00:31:00,758
[laurence]: ende standard we’re able to provide expected
returns expected volatility and we know the correlation

634
00:31:00,838 –> 00:31:06,330
[laurence]: so we can help feel those those
dis sons that these institutions are having we

635
00:31:06,390 –> 00:31:12,104
[laurence]: can provide the imputs and i think
my final observation is this that i think

636
00:31:12,144 –> 00:31:17,473
[laurence]: if you were to use some of
the expect to expected returns we see i

637
00:31:17,553 –> 00:31:21,901
[laurence]: think the annuities would get a bigger
allocation than they have been because you know

638
00:31:21,981 –> 00:31:26,369
[laurence]: they have no downside risking case of
fear arilayouknow it’s kept and some

639
00:31:26,400 –> 00:31:26,640
[branislav_nikolic]: oh

640
00:31:26,409 –> 00:31:30,416
[laurence]: of the expected returns might be three
four five six very consistent so i think

641
00:31:30,437 –> 00:31:33,082
[laurence]: they get a larger allocation and that
would surprise

642
00:31:32,802 –> 00:31:32,967
[branislav_nikolic]: yeah

643
00:31:33,142 –> 00:31:34,744
[laurence]: a lot of people brand left

644
00:31:35,852 –> 00:31:40,440
[branislav_nikolic]: yeah i think there’s there’s like to
two levels of this conversation one is how

645
00:31:40,480 –> 00:31:44,667
[branislav_nikolic]: do you incorporate is in the broader
porfolia and when lawrence mentioned knowing what this

646
00:31:44,727 –> 00:31:50,597
[branislav_nikolic]: could return at what level of i
think would make advisors more comfortable again we

647
00:31:50,677 –> 00:31:55,565
[branislav_nikolic]: have a generation of advisors who grew
up in a in a bull market right

648
00:31:55,705 –> 00:32:02,256
[branislav_nikolic]: and would you ever consider an annuity
a safe investment downside when you never had

649
00:32:02,356 –> 00:32:06,183
[branislav_nikolic]: to now i think we are getting
to that realization that that that that’s goin

650
00:32:06,223 –> 00:32:11,652
[branislav_nikolic]: to start happening and again a lot
of great too is available out there a

651
00:32:11,712 –> 00:32:18,643
[branislav_nikolic]: lot of a lot of parties providing
phenomenal either end to end processes or optimal

652
00:32:18,784 –> 00:32:25,398
[branislav_nikolic]: product locations or simulators of how well
you do where you lock should locate your

653
00:32:25,498 –> 00:32:31,701
[branislav_nikolic]: assets the key is that no one
knew how to project ger quotes the annuity

654
00:32:31,781 –> 00:32:32,943
[branislav_nikolic]: going forward and i

655
00:32:33,013 –> 00:32:33,034
[laurence]: m

656
00:32:33,023 –> 00:32:36,487
[branislav_nikolic]: think this is this is important piece
that we that we bring bring bring to

657
00:32:36,547 –> 00:32:36,627
[branislav_nikolic]: the

658
00:32:36,561 –> 00:32:36,643
[paul_tyler]: ah

659
00:32:36,667 –> 00:32:44,366
[branislav_nikolic]: table again something that it’s showing not
only in the retail market but

660
00:32:44,376 –> 00:32:45,516
[tisa_rabun_marshall]: yeah

661
00:32:44,447 –> 00:32:49,495
[branislav_nikolic]: more importantly now spilling over into an
institutional market as well the people are adopting

662
00:32:49,555 –> 00:32:55,685
[branislav_nikolic]: these concepts d c pension plan level
that really kind of add the validity to

663
00:32:55,765 –> 00:33:00,493
[branislav_nikolic]: it and it kind of adds to
the eds conversation that if super conservative folks

664
00:33:00,694 –> 00:33:02,637
[branislav_nikolic]: and legal kind of legally aware

665
00:33:03,146 –> 00:33:03,896
[paul_tyler]: oh

666
00:33:04,361 –> 00:33:09,062
[branislav_nikolic]: are considering adding these into the mix
had to be a good thing so so

667
00:33:09,162 –> 00:33:12,846
[branislav_nikolic]: so at a lot a lot is
happening and we we we love to be

668
00:33:13,006 –> 00:33:15,049
[branislav_nikolic]: to be a part of part of
that conversation for sure

669
00:33:14,946 –> 00:33:15,127
[tisa_rabun_marshall]: oh

670
00:33:15,786 –> 00:33:20,534
[paul_tyler]: no i honestly think you could be
the next morning star right in the

671
00:33:20,670 –> 00:33:21,270
[branislav_nikolic]: oh

672
00:33:21,055 –> 00:33:23,919
[paul_tyler]: space i don’t know if that infringes
on cope

673
00:33:23,820 –> 00:33:24,265
[branislav_nikolic]: oh

674
00:33:24,040 –> 00:33:24,540
[paul_tyler]: rites but

675
00:33:24,484 –> 00:33:24,705
[laurence]: oh

676
00:33:25,101 –> 00:33:25,602
[paul_tyler]: lawrence that’s what

677
00:33:25,590 –> 00:33:25,870
[branislav_nikolic]: oh

678
00:33:25,642 –> 00:33:25,983
[paul_tyler]: i call you

679
00:33:26,631 –> 00:33:26,872
[branislav_nikolic]: yeah

680
00:33:26,684 –> 00:33:30,711
[paul_tyler]: so you know ve been doing so
much work with you know agents helping themselves

681
00:33:30,791 –> 00:33:31,232
[paul_tyler]: digitally

682
00:33:30,999 –> 00:33:31,200
[branislav_nikolic]: yeah

683
00:33:31,312 –> 00:33:33,495
[paul_tyler]: tell a story talking to consumers

684
00:33:33,345 –> 00:33:33,366
[tisa_rabun_marshall]: m

685
00:33:34,016 –> 00:33:39,525
[paul_tyler]: you know what goes through your mind
when you think about trying explain something this

686
00:33:39,626 –> 00:33:43,439
[paul_tyler]: complex on a website in a brosirt
in a video

687
00:33:43,609 –> 00:33:48,051
[tisa_rabun_marshall]: hm yeah i mean when i think
lawrence i heard you talk about you know

688
00:33:48,292 –> 00:33:51,196
[tisa_rabun_marshall]: the mer and missus smith or the
generic consumer

689
00:33:51,630 –> 00:33:52,710
[branislav_nikolic]: yeah

690
00:33:51,757 –> 00:33:57,648
[tisa_rabun_marshall]: are retiring out there thinking about planning
and de mystifying the idea of an annuity

691
00:33:57,709 –> 00:34:04,512
[tisa_rabun_marshall]: and the complexities of what we’re talking
about how does your presentation or or the

692
00:34:04,933 –> 00:34:08,679
[tisa_rabun_marshall]: educational tools at you’re offering how does
it break it down for them to kind

693
00:34:08,719 –> 00:34:14,849
[tisa_rabun_marshall]: of combat the emotional side of the
decision right um you’ve talked about the changing

694
00:34:15,911 –> 00:34:18,896
[tisa_rabun_marshall]: interest rates and inflation and all the
things that are ahead and a lot of

695
00:34:18,936 –> 00:34:23,183
[tisa_rabun_marshall]: the unknowns that are on head ahead
how does the tool kind of speak to

696
00:34:23,223 –> 00:34:23,384
[tisa_rabun_marshall]: that

697
00:34:23,454 –> 00:34:23,596
[laurence]: yeah

698
00:34:23,564 –> 00:34:26,688
[tisa_rabun_marshall]: emotional side oh i’ll say fear but

699
00:34:27,314 –> 00:34:27,743
[laurence]: damn

700
00:34:27,469 –> 00:34:30,953
[tisa_rabun_marshall]: at least sort of that uncertainty that’s
ahead and that agent or advisor bringing him

701
00:34:31,013 –> 00:34:32,875
[tisa_rabun_marshall]: through those conversations

702
00:34:32,190 –> 00:34:33,090
[branislav_nikolic]: yeah

703
00:34:34,354 –> 00:34:39,723
[laurence]: i think in a couple ways so
firstly what we do is for each index

704
00:34:39,943 –> 00:34:44,010
[laurence]: we evaluated so we’ll put a platinum
gold and silver

705
00:34:43,746 –> 00:34:43,908
[tisa_rabun_marshall]: okay

706
00:34:44,070 –> 00:34:44,992
[laurence]: and so on so that

707
00:34:45,028 –> 00:34:45,495
[tisa_rabun_marshall]: got reading

708
00:34:45,392 –> 00:34:48,718
[laurence]: you can add glance see what that
index is doing so it

709
00:34:48,722 –> 00:34:49,236
[tisa_rabun_marshall]: hm

710
00:34:48,758 –> 00:34:52,604
[laurence]: might be a little bit unfamiliar but
you get our sort of stamp of whether

711
00:34:52,644 –> 00:34:57,292
[laurence]: we think it’s a robust and well
designed index now the other thing we do

712
00:34:57,733 –> 00:35:03,445
[laurence]: is we all know finance is complex
and people love to use complicated

713
00:35:03,330 –> 00:35:03,596
[branislav_nikolic]: yeah

714
00:35:03,505 –> 00:35:04,368
[laurence]: language so we actually

715
00:35:04,290 –> 00:35:05,460
[branislav_nikolic]: yeah

716
00:35:04,448 –> 00:35:06,052
[laurence]: have a copy writer on our staff

717
00:35:06,177 –> 00:35:06,360
[tisa_rabun_marshall]: okay

718
00:35:06,714 –> 00:35:10,484
[laurence]: and we try and use straight forward
and clear language so i give you the

719
00:35:10,544 –> 00:35:16,560
[laurence]: example the way we would describe a
risk control index we just say cushions and

720
00:35:16,620 –> 00:35:17,102
[laurence]: it’s smooth

721
00:35:18,369 –> 00:35:18,512
[tisa_rabun_marshall]: yeah

722
00:35:18,504 –> 00:35:22,472
[laurence]: and then the final thing that we
do is we have our forecasting reports

723
00:35:22,800 –> 00:35:23,041
[branislav_nikolic]: yeah

724
00:35:23,804 –> 00:35:26,711
[laurence]: and we very clearly show here that
the last ten

725
00:35:26,639 –> 00:35:26,820
[branislav_nikolic]: yeah

726
00:35:26,771 –> 00:35:32,121
[laurence]: years maybe you got let’s say six
per cent and then here is what how

727
00:35:32,201 –> 00:35:35,206
[laurence]: we applied the wisdom of wall street
to that index and maybe you’re gonna get

728
00:35:35,867 –> 00:35:40,415
[laurence]: seven eight or nine or maybe you
got sixteen in history and we think you’re

729
00:35:40,435 –> 00:35:44,181
[laurence]: going to get full but we have
very clear bar chart so we try and

730
00:35:44,261 –> 00:35:52,475
[laurence]: provide people with visual simple language and
easy to understand demonicaswgoald platinum and

731
00:35:52,466 –> 00:35:53,156
[paul_tyler]: yeah

732
00:35:52,535 –> 00:35:52,836
[laurence]: so on

733
00:35:52,827 –> 00:35:53,256
[tisa_rabun_marshall]: hm

734
00:35:53,217 –> 00:35:55,683
[laurence]: to really help people when they’re making
those decisions

735
00:35:55,976 –> 00:35:56,436
[tisa_rabun_marshall]: yeah the gold

736
00:35:56,317 –> 00:35:56,500
[paul_tyler]: yeah

737
00:35:56,476 –> 00:35:58,578
[tisa_rabun_marshall]: silver plate that’s you know those are
the star

738
00:35:58,556 –> 00:35:58,879
[paul_tyler]: oh

739
00:35:58,678 –> 00:35:59,579
[tisa_rabun_marshall]: reviews rights really

740
00:35:59,486 –> 00:35:59,707
[paul_tyler]: oh

741
00:35:59,679 –> 00:36:00,140
[tisa_rabun_marshall]: at a glance

742
00:36:00,990 –> 00:36:01,231
[branislav_nikolic]: yah

743
00:36:01,261 –> 00:36:02,662
[tisa_rabun_marshall]: here’s the top middle and maybe

744
00:36:02,899 –> 00:36:03,039
[branislav_nikolic]: yah

745
00:36:03,142 –> 00:36:03,282
[tisa_rabun_marshall]: not

746
00:36:03,326 –> 00:36:03,694
[paul_tyler]: oh

747
00:36:03,382 –> 00:36:04,383
[tisa_rabun_marshall]: so good

748
00:36:04,755 –> 00:36:05,159
[laurence]: exactly

749
00:36:05,216 –> 00:36:05,396
[paul_tyler]: yeah

750
00:36:05,700 –> 00:36:06,143
[branislav_nikolic]: oh

751
00:36:05,765 –> 00:36:06,105
[tisa_rabun_marshall]: thank you

752
00:36:06,918 –> 00:36:06,938
[paul_tyler]: i

753
00:36:07,006 –> 00:36:07,027
[ramsey_d_smith]: m

754
00:36:07,058 –> 00:36:09,320
[paul_tyler]: love it bruno you know we’re close
to the top

755
00:36:09,318 –> 00:36:09,339
[branislav_nikolic]: a

756
00:36:09,360 –> 00:36:09,881
[paul_tyler]: of the hour i mean

757
00:36:09,937 –> 00:36:10,139
[ramsey_d_smith]: oh

758
00:36:09,941 –> 00:36:11,622
[paul_tyler]: what are your what

759
00:36:11,557 –> 00:36:11,738
[ramsey_d_smith]: oh

760
00:36:11,662 –> 00:36:11,863
[paul_tyler]: are your

761
00:36:11,860 –> 00:36:11,940
[bruno_caron]: ah

762
00:36:11,883 –> 00:36:13,464
[paul_tyler]: thoughts questions observations

763
00:36:14,324 –> 00:36:14,544
[bruno_caron]: well

764
00:36:14,846 –> 00:36:15,626
[paul_tyler]: oh

765
00:36:15,085 –> 00:36:16,307
[bruno_caron]: number one i think it’s

766
00:36:16,567 –> 00:36:16,811
[ramsey_d_smith]: oh

767
00:36:17,469 –> 00:36:18,391
[bruno_caron]: it’s wonderful

768
00:36:18,307 –> 00:36:18,327
[ramsey_d_smith]: m

769
00:36:18,511 –> 00:36:23,138
[bruno_caron]: that we’re going back or at least
you guys are going back to some of

770
00:36:23,319 –> 00:36:28,828
[bruno_caron]: basic some of the textbook concepts i
mean we live in a world of headlines

771
00:36:29,189 –> 00:36:29,489
[bruno_caron]: and you

772
00:36:29,460 –> 00:36:29,763
[branislav_nikolic]: yeah

773
00:36:29,509 –> 00:36:33,516
[bruno_caron]: know this is going on this is
going to just the fact that you’re framing

774
00:36:33,556 –> 00:36:38,524
[bruno_caron]: it that you’re actually putting it in
to a um some sort of framework some

775
00:36:38,584 –> 00:36:44,494
[bruno_caron]: sort of boundaries and sort of ratings
and in perspective with with the rest of

776
00:36:44,514 –> 00:36:49,242
[bruno_caron]: the economy i think that adds significant
value and i think that’s a that’s a

777
00:36:49,302 –> 00:36:52,386
[bruno_caron]: really that’s a very useful set for
for the industry

778
00:36:52,216 –> 00:36:52,237
[ramsey_d_smith]: m

779
00:36:54,138 –> 00:36:54,499
[paul_tyler]: ramsey

780
00:36:54,205 –> 00:36:54,512
[laurence]: thank you

781
00:36:55,057 –> 00:36:55,341
[ramsey_d_smith]: oh

782
00:36:55,112 –> 00:36:55,377
[branislav_nikolic]: thank you

783
00:36:55,423 –> 00:36:56,126
[paul_tyler]: you want you want to bring

784
00:36:56,174 –> 00:36:56,317
[ramsey_d_smith]: yeah

785
00:36:56,187 –> 00:36:56,448
[paul_tyler]: us some

786
00:36:57,027 –> 00:37:02,195
[ramsey_d_smith]: yeah so i wholeheartedly agree this is
this is an area that’s expanded

787
00:37:03,026 –> 00:37:03,312
[paul_tyler]: oh

788
00:37:03,187 –> 00:37:06,652
[ramsey_d_smith]: dramatically and again the choices expanded

789
00:37:06,656 –> 00:37:06,923
[paul_tyler]: oh

790
00:37:06,753 –> 00:37:10,859
[ramsey_d_smith]: much more quickly than the analytical framework
behind it and

791
00:37:10,925 –> 00:37:10,946
[paul_tyler]: m

792
00:37:11,200 –> 00:37:15,447
[ramsey_d_smith]: you know we live in a we
live in an environment where the elytics

793
00:37:15,390 –> 00:37:15,755
[branislav_nikolic]: yeah

794
00:37:15,487 –> 00:37:18,112
[ramsey_d_smith]: are important they’re important for legal reasons
they’re important for

795
00:37:18,101 –> 00:37:18,202
[branislav_nikolic]: ah

796
00:37:18,432 –> 00:37:23,801
[ramsey_d_smith]: just helping people make the make the
right decision they’re important for helping people feel

797
00:37:23,921 –> 00:37:30,552
[ramsey_d_smith]: comfortable with their decisions and you know
as as i mentioned before i think it’s

798
00:37:30,592 –> 00:37:36,562
[ramsey_d_smith]: going to be useful certainly at the
consumer level at the advisor level i think

799
00:37:36,742 –> 00:37:42,249
[ramsey_d_smith]: very importantly at the institutional level where
you know the burdens of the burdens of

800
00:37:42,870 –> 00:37:46,513
[ramsey_d_smith]: proof if you will are very high
i think that this is this is this

801
00:37:46,573 –> 00:37:51,327
[ramsey_d_smith]: is going to be very important and
and it’s something that gets asked about a

802
00:37:51,407 –> 00:37:53,871
[ramsey_d_smith]: lot of meetings when you’re if you’re
talking to

803
00:37:53,824 –> 00:37:54,454
[laurence]: oh

804
00:37:53,971 –> 00:37:57,497
[ramsey_d_smith]: larger insurance companies and this is something
that comes up a lot this isn’t this

805
00:37:57,537 –> 00:38:02,265
[ramsey_d_smith]: has been an unanswered question so i
think this is this is this is this

806
00:38:02,325 –> 00:38:03,106
[ramsey_d_smith]: is a great initiative

807
00:38:05,656 –> 00:38:07,900
[paul_tyler]: yeah lawrence you know you saw

808
00:38:08,107 –> 00:38:08,408
[ramsey_d_smith]: yeah

809
00:38:08,180 –> 00:38:08,841
[paul_tyler]: afa on

810
00:38:08,880 –> 00:38:09,750
[branislav_nikolic]: yeah

811
00:38:09,602 –> 00:38:10,163
[paul_tyler]: that discussion

812
00:38:10,140 –> 00:38:10,321
[branislav_nikolic]: ye

813
00:38:10,243 –> 00:38:11,926
[paul_tyler]: panel how much

814
00:38:12,157 –> 00:38:12,379
[ramsey_d_smith]: yeah

815
00:38:12,780 –> 00:38:13,620
[branislav_nikolic]: oh

816
00:38:13,248 –> 00:38:14,491
[paul_tyler]: independent marketing organizations

817
00:38:14,122 –> 00:38:14,286
[branislav_nikolic]: yeah

818
00:38:14,891 –> 00:38:18,577
[paul_tyler]: need this type of tool for their
marketers and for their agent so i think

819
00:38:18,617 –> 00:38:23,382
[paul_tyler]: the time couldn’t be better what’s the
best way for people to find out more

820
00:38:23,462 –> 00:38:26,024
[paul_tyler]: about your product or reach out to
you personally

821
00:38:27,034 –> 00:38:33,965
[laurence]: sure so our website has a lot
of greater information and that’s the index standard

822
00:38:34,025 –> 00:38:38,854
[laurence]: dot com and you can email us
at info at the index standard dot com

823
00:38:39,475 –> 00:38:44,062
[laurence]: i’m also pretty active on linked in
so brandon slab please follow us we also

824
00:38:44,122 –> 00:38:48,229
[laurence]: have linked in at the index standard
follow us and we kind of put some

825
00:38:48,429 –> 00:38:51,786
[laurence]: our insights there and of course our
newsletter as well with with you guys

826
00:38:52,516 –> 00:38:55,721
[paul_tyler]: excellent all right well listen thanks so
much for joining us we

827
00:38:55,770 –> 00:38:56,011
[branislav_nikolic]: yeah

828
00:38:55,781 –> 00:39:00,509
[paul_tyler]: want to thank all our listeners and
you know please give us feedback comments and

829
00:39:00,649 –> 00:39:02,412
[paul_tyler]: as long as they’re good bruno i

830
00:39:02,400 –> 00:39:02,701
[branislav_nikolic]: oh

831
00:39:02,492 –> 00:39:02,713
[paul_tyler]: actually

832
00:39:02,644 –> 00:39:02,726
[laurence]: ye

833
00:39:02,733 –> 00:39:04,676
[paul_tyler]: had somebody coming on my audio

834
00:39:04,661 –> 00:39:04,681
[branislav_nikolic]: m

835
00:39:04,796 –> 00:39:05,518
[paul_tyler]: editing skills and

836
00:39:06,319 –> 00:39:09,769
[bruno_caron]: uh

837
00:39:06,720 –> 00:39:06,981
[branislav_nikolic]: yah

838
00:39:07,601 –> 00:39:08,462
[paul_tyler]: a lack thereof

839
00:39:08,688 –> 00:39:08,889
[branislav_nikolic]: yah

840
00:39:09,244 –> 00:39:10,826
[paul_tyler]: so we we welcome all

841
00:39:10,710 –> 00:39:10,930
[branislav_nikolic]: yeah

842
00:39:11,067 –> 00:39:13,050
[paul_tyler]: and you know listen join us again
next

843
00:39:13,058 –> 00:39:13,078
[bruno_caron]: h

844
00:39:13,150 –> 00:39:16,316
[paul_tyler]: week for another episode of that annuity

845
00:39:16,419 –> 00:39:16,479
[branislav_nikolic]: ah

846
00:39:16,436 –> 00:39:17,242
[paul_tyler]: show thanks

847
00:39:20,767 –> 00:39:21,007
[ramsey_d_smith]: oh

848
00:39:33,487 –> 00:39:37,409
[ramsey_d_smith]: oh oh oh

Nick DesrocherEpisode 176: Thoughtfully Recommending Indices with Laurence Black and Branislav Nikolic
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