Welcome to Investing the Templeton Way!
April 14, 2023

19: Ryan Myers on Quantitative Investing

19: Ryan Myers on Quantitative Investing

Fundamental and Quantitative Research Strategies for Investing with Ryan Myers

One of the benefits to investing is the range of research driven approaches that investors can employ towards making their investment decisions. After careful study and practice, investors often choose between or may even blend fundamental and quantitative strategies. Both fundamental and quantitative strategies incorporate a substantial use and analysis financial data, but fundamental approaches delve much further into the qualitative aspects of the company, including management quality, competitive positioning, capital allocation decisions and often an estimation of a firm’s intrinsic value. Conversely, quantitative strategies remain considerably more numbers driven regarding both investment selection and portfolio management. While some observers may believe quantitative investing overlooks important qualitative elements, proponents of the quantitative discipline can point to a dispassionate investment process that removes emotion and the pitfalls of human persuasion. In reality, both approaches work, and astute investors often incorporate elements from both fundamental and quantitative strategies into their approach.

Ryan Myers, a Portfolio Manager at Causeway Capital Management, joins us to talk more about these strategies for investing in global small-cap equities. Mr. Myers is a quantitative portfolio manager at Causeway. He joined the firm in June 2013 and has been a portfolio manager since January 2021. His responsibilities include alpha research, stock selection, and portfolio construction. Mr. Myers earned a BA, magna cum laude, in economics from Harvard University, where he was elected to Phi Beta Kappa. He earned an MBA from the Stanford Graduate School of Business, where he was an Arjay Miller Scholar. Mr. Myers currently serves on the Board of Trustees of the Yosemite Conservancy, an organization dedicated to supporting projects and programs that preserve Yosemite National Park and enrich the visitor experience.

 

What You Will Learn:

●        [00:01] Episode intro and a quick bio of the guest, Ryan Myers

●        [02:45] Ryan’s role at Causeway Capital Management 

●        [03:23] His backstory and what led him to the investing career path

●        [05:44] Ryan’s views on the current international small-cap equities

●        [11:31] How the rising interest rates in the US are affecting the international markets

●        [17:07] Macro and micro factors Ryan and his company pay attention to before investing

●        [23:52] Number of stocks in the stock universe

●        [27:18] Factors Ryan uses to weigh on the international stocks to invest

●        [32:40] Number of stocks in the Causeway Capital Management portfolio

●        [35:30] How the quantitative team sorts the stock companies selected for investment

●        [41:59] The meaning and causes of rebalancing portfolio in investments

●        [44:30] Why quantitative investing needs to be evolutionary

●        [47:15] The use of machine learning and AI to influence portfolio decisions

●        [52:25] Ryan’s competitive advantage to the quantitative approach to small caps

●        [59:24] What keeps Ryan awake in this investment strategy

●        [01:01:12] Call to action and ending the show

Website: https://www.causewaycap.com
Linkedin: https://www.linkedin.com/in/

The information presented in this podcast or available on the website is not intended as and shall not be construed as financial advice. This podcast is produced for entertainment value. Investing is inherently risky. And I encourage you to seek financial advice from a professional who is aware of the facts and circumstances of your individual situation.

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Thanks.

Transcript

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Hi, welcome to Investing the Templeton Way podcast.

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I'm your host Lauren Templeton.

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And I'm your co-host, Scott Phillips.

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We're really excited to introduce today's guest, Ryan Myers.

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Ryan is portfolio manager at Causeway Capital.

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He joined Causeway in 2013 and has been a portfolio manager since January 2021.

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His responsibilities include alpha, research, stock, selection, and portfolio construction.

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And I'm here to causeway Capital, Mr. Myers served as chief investment officer of iron,

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castle, asset management.

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An investment partnership focused on midcap US equities.

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From 2007 to 2008, Mr. Myers worked as an analyst at Canyon Partners where he covered the

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cable, media, telecom, and satellite sectors.

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Prior to that, Mr. Myers was an associate for Oak Tree Capital Management and the Distress

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Opportunities Group and he began his professional career as an investment banking analyst at Goldman Sachs

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and Technology, Media, and Telecom Group.

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Mr. Myers earned a BA, Magna Cum Laude, and Economics from Harvard University, where he was elected

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to Phi Beta Kappa.

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He earned an MBA from the Stanford Graduate School of Business.

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Mr. Myers also serves on the Board of Trustees of the Yosemite Conservancy, an organization dedicated

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to supporting projects and programs that preserve Yosemite National Park and enrich the visitor

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experience.

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And it's with great pleasure.

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We welcome Ryan Myers.

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Thank you for having me, Lauren, and Scott.

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Yeah, so tell me specifically about your role at Causeway and what Causeway focuses on.

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Right, so I am a portfolio manager at Causeway for our emerging markets equity strategy and

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our international small cap equity strategy.

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And Causeway in general, we're a global investment manager, approximately 40 billion under

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management.

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And we really bring a unique approach to investing where we try to blend both fundamental

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and quantitative inputs in all of our strategies.

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Great.

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Well, tell me what got you started in investing?

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What led you to this career path?

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Yeah, I mean, fortunately my parents got me saving very early, although it was sort of just

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in your standard savings accounts.

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In college, I became much more interested in high school in economics.

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By studying, I gained an appreciation for this historical importance of economics in sort of

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shaping history, I feel that people are really a product of the economic times, the macroeconomic

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backdrop that they're brought up in.

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Also, you know, people respond to incentives.

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And so understanding that is very interesting to me.

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I took my first corporate finance class in college and just became much more interested in taking

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the macro down to the micro understanding companies.

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And I think I'm naturally curious.

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And so I just love learning about new industries, learning about business models.

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And so, you know, from there, it was sort of a natural extension to sort of go into the

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buy side and finding companies to invest in.

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Yeah, it's interesting that you were interested in economics in high school.

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I mean, it's the dismal science.

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And you must have had a very good economics teacher, too.

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I did.

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That kept you interested in it.

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I did.

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I'd say I became much more interested in college.

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I got to study with people like Larry Summers and Martin Feldstein.

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And they really bring a lot of passion to the subject, which makes it easier as a student always.

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Yeah, that's amazing.

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I'm jealous of that.

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I was economics major at the University of the South.

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We call it the Harvard of the South.

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It is not Harvard.

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I had some good economics teachers, though.

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I do appreciate them.

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Well, tell me, in your role at Causeway.

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And you're focused on emerging markets and international small cab equities.

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Tell me what are your views on the current markets, specifically towards small cab international

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equities or emerging market equities?

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Yeah, I think it's an interesting time.

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Certainly, we're, you know, today in March 2023, I think there's a divergence going on where

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we see a lot of headwinds to growth in the US and to a lesser extent in developed international.

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But when you turn to emerging markets, you see China getting a lot of tailwinds from its reopening.

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You see India as well. Between the two of them,

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they're about 45% of the emerging markets index.

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And they're both expected to put up mid to high single digit GDP growth this year.

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And so you have a very big, you know, counter-influence to the slowing growth in the US

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internationally.

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And so I think it's a very interesting time to be investing internationally.

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When you get to small cap specifically, it's also interesting that, you know, small caps typically

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trade at a premium to their large cap peers because of the perceived growth.

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And yet now, especially internationally, we see that that space trading roughly in line from

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the multiples perspective with larger caps, which hasn't really happened very often historically,

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really have to go back to the TMT bubble, the global financial crisis to see that,

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them trading at parity basically from a multiples perspective.

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Yeah, sure.

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We've seen some of that, too.

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Yeah, Ryan, following up on that, the international space appears from our perspective very

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discounted versus large-cap US names.

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And it was interesting to get your insight into the kind of the deeper trenches of the international

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market, the small caps and how they're trading in line with the international broader multiples.

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I'm wondering, to what extent are you, or you see differentials between, let's say, Europe and

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Asia, define all regions attractive, does one stand out versus the other?

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What do your thoughts on that?

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We, you know, we're finding more opportunities in emerging right now.

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I think whenever you enter sort of a risk-off stance, like as happened in the last few

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weeks and months, I think,

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the perceived riskier parts of the investment landscape tend to sell off a little more.

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So that includes international, that includes small cap, that includes emerging markets.

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And so I think the intersection of all three is very interesting now.

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We're overweight countries like Korea, Thailand, our international small cap strategy

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currently and part of that is the function of just the fact that, from a valuation perspective,

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some of those countries appear very attractive, especially when you compare it to the US,

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which the US has outperformed international, both emerging and developed international for the better

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part of a decade now.

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But these are inherently cyclical, right?

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I mean, throughout the 2000s, international was outperforming the US, late 1980s, late 1970s, same thing.

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And so, you know, inevitably this is cyclical.

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I think Europe is relatively attractive as well.

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You're seeing, I think there's been a preference for dividends in Europe for some time.

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And so the dividend yield in Europe has been higher than that in the US for some time.

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But more recently, the buyback yield is now higher in Europe than in the US.

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And it hasn't been that case for 20 years.

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And so I think there's a lot, a lot going for international right now.

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Also the dollar, the US dollar has been a major headwind to US-based international investors,

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again for the better part of a decade.

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And if you believe that the Fed is near the end of its current hiking cycle, I think you can

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make a strong argument that having non-US dollar exposure may finally prove to be a tailwind

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for US-based investors.

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But is that consistent with what you two are seeing as well?

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It is, you know, just as kind of pivoting off this conversation towards something that's probably

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evolving as we speak and gaining steam in these international global perspectives.

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The banking headlines out of the US have been, I think, shaken up a lot of investors who

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may have ignored balance sheets at their own risk.

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But balance sheets are a huge factor in investing.

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And you kind of ignore them at your own peril.

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So I'm wondering, when you look at things going on in the US, whether it's Silicon Valley Bank

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or Credit Suisse, which will just for two is a global franchise for these purposes, you've

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seen bad behaviors, chasing you, misallocation of resources, how do you compare what we're

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seeing kind of being exposed through higher interest rates in the US versus the international

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markets?

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On down these same rabbit holes, what is your view on credit and capital allocation in these markets?

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Is it a better picture than what we're seeing unfold here?

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Yeah, it's a good question.

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I think in general, generally speaking, international banks are a little better off than what

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we're seeing in the US.

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Obviously in the US, what got Silicon Valley Bank into trouble was both a mismatch in

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duration on their balance sheet, as well as a lot of paper losses that ultimately became

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realized when they saw depositor outflows.

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And I'd say, especially within emerging markets, it's interesting because this cycle,

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emerging market central banks really led the Fed in terms of increasing interest rates.

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So you saw the likes of Brazil, other large EM countries proactively increasing interest rates

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in advance of the Fed in 2021, beginning in early 2021.

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And so it had a few effects.

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First of all, they were used to the higher rates before the US was.

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And it also insulated their currencies as well to some degree.

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And so looking forward, I think if you look at the performance of European banks and

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emerging market banks, they've largely held in pretty well because they've avoided some

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of those issues that we're seeing in US regional banks.

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Now undoubtedly, we're going to see more regulation coming down for regional banks in the US, which

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will ultimately decrease lending and be yet another drag to economic growth in the near term.

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But I think what we're hearing too and as we're learning more about Silicon Valley Bank,

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Signature Bank, that they had fairly unique issues as well and probably not the proverbial

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canary in the coal mine that we thought a few weeks ago.

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But it's a reminder that we are in a tougher credit environment.

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And that's certainly not going away.

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As you said, it really pays to understand capital structure and balance sheets in this environment.

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And we've seen just in the last few weeks, a sell-off in some of the more highly levered companies,

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those that need to tap the capital markets in the next few years have certainly sold off more

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than clean balance sheet companies.

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No question.

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And then I also think this would be interesting to get your view.

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When you look at the emerging markets in particular, 8% inflation, that really

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shook up things here in the US, but they've seen inflation.

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You go to Brazil.

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They've had 1,000% inflation.

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So there's this institutional memory of these corporate managers in place.

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They know what can go wrong.

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They've seen it all.

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And while people in the US are a little bit flat-footed from all this, I'm wondering if you

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see just a more conservative backdrop from a balance sheet standpoint in some of these markets,

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because these guys know what can happen.

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They get starved of capital every so often, and they know that they have to be prepared for that.

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Yeah, that's fair.

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And certainly from a macroeconomic perspective, emerging markets have had many crises.

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If you go back to the 90s, certainly you had Mexico in 94.

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You had the Asian financial crisis in '97 - '98.

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And over time, a lot of adjustments because of that, you've seen a lot more floating exchange rates.

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You see a lot fewer external vulnerabilities in the form of current account deficits than we used to see.

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And so, certainly that would extend to the lessons learned into banks as well.

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You know, I'd say in general, banks are far more well capitalized than they have been historically.

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Mostly as a result of lessons learned from the global financial crisis.

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And so, if you look at some of the European bank balance sheets, they're very strong.

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Relative to the US and relative to certainly how they were post GFC.

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And so, yeah, you could argue that they're pretty well insulated against any near-term financial crisis.

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So, another question that came to mind.

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I know we've talked a lot about these macroeconomic factors,

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grabbing the headlines, they have everyone's attention. But I'm wondering just from a process standpoint,

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tell us a little bit about how you differentiate your weights between macrofactors as microfactors.

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Is your portfolio constructed more on a bottom-up basis?

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Or do you have macro e-factors that filter in or maybe exclude some markets?

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Just give us an idea of how you approach these matters.

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Yeah, well, how we approach international small caps specifically as we're, you know,

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from a primarily a quantitative approach, we're able to blend together multiple sources of alpha.

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You know, our foundation as a firm is really in value investing.

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And so, value receives the largest weight in the final assessment of any stock.

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But again, from a diversification of alpha approach, we're able to blend in measures of growth,

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momentum. What we call competitive strength, which is really quality assessing a company's

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competitive mode. But then also blend in certain top-down metrics. And so, in international small

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caps that are a little more driven by company specific issues, management decisions,

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the weight is basically 90% company specific 10% top-down. When we're looking at the larger cap

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emerging market space, it's 75% company specific 25% top-down.

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Well, we find is that small caps tend to be a lot more idiosyncratically driven.

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I mean, their success or failure really comes down to the decisions that

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management is making. And so, we put a lot of emphasis on company specific metrics. But at the

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same time, you can't ignore what's happening at the macro level. You know, we see their 24 emerging

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market countries in our EM universe, their 46 international small cap countries in our universe.

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And so, you need to make trade-offs, ultimately, between the opportunities set in all of those countries.

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And so, the macro piece certainly helps us, you know, looking at things like

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changes in GDP growth, sovereign CDS, interest rate curves, inflation, budget forecasts, current account

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deficits, foreign exchange reserves, that all matters as a US-based investor, ultimately, when you're

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going to take your profits out in US dollars, it definitely pays to understand those aspects as well.

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Absolutely. And then how do you rule of law on property rights factor in, do you just take some

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countries off the table because you're not comfortable? I'd say that the really

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dicey countries generally aren't in our universe to begin with. Most of the countries, we invest in

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have, you know, some history of strong property rights. We do have certain political risk

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inputs into our top-down models, so we do try to make an assessment. At Causeway too, we have a full

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fundamental team. And so, we're not making decisions in isolation. We try to get their input on our

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entire portfolio periodically to get anything that you can't quantify, basically. We're

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realists in the fact that, you can't quantify everything in the world. There are certain

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aspects that are just outside the scope of quantitative analysis. Usually it comes down to corporate

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events, but sometimes it's regulatory changes, litigation, M&A, things like that that are

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very difficult. So our fundamental team has been very valuable, especially recently given recent events,

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obviously Russia, Ukraine last year, but even more specific

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changes, such as the Japanese government change their reimbursement policy for certain

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healthcare companies a couple of years ago, and that impacted some of our healthcare holdings.

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Our real estate team alerted us to certain irresponsible lending practices on the

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part of various Chinese developers and so we exited some of those positions. And so having

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some of that real world feedback, it has been very helpful for us as well. 

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How do you think about, where obviously you invest in certain emerging market

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countries, or the geopolitical risks are elevated. So, how do you approach that?

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We need to feel protected as shareholders, just that there's certain property rights in place.

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And I think the tricky thing with emerging markets is just - if you're just reading about

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the country generally and their laws and the books, they all kind of look okay, but then there's a matter of

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enforcement. And you've got to really figure out to what extent you are protected.

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And that there's never a placement for getting in and getting local knowledge of the markets and understanding

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how things really work. Like India is a fantastic example of that. And then China has just changed so much

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over our investment careers. You know, we held stocks in China. I would say coming out of the

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taper tantrum. So that was mid-2015 when the emerging markets basically collapsed in value.

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There were a number of attractive businesses at very low valuations. We bought

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Alibaba then. But then, by mid-2020, we were completely out of China because we were just

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unsettled by what was going on geopolitically. Well, and from a regulatory perspective, I mean,

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you saw a crackdown on online education companies, real estate companies. It's just like one domino

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after the next and ultimately, you would have to know someone within the Chinese government to

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know, okay, what's next on the chopping block to be really comfortable? It's exactly right. So it

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changed so much in that five years. We were very uncomfortable with that. 

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I pushed a little bit on your process. So you're running a quantitative process. Tell me about your

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universe. Is that, is your universe that MSAC, MSCI, Acrex, US, small cap, international,

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universe? That's right. Yeah. How many stocks are in that universe? Yeah. So it's a fascinating

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universe of stocks. Um, there are over 4,300 stocks in that Acrex, US, small cap index 

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and, if you take a step back and look at the overall international opportunity set, Acrex, US, IMI,

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small caps are 14% weight, you know, the way that MSCI constructs their indices. 

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But actually, they're close to two thirds of that universe by number. And then even if you include the US,

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even if you take a very broad global universe and take the Acrex, IMI, those international small

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cap companies are still 47%. So, close to half of the global investment universe is those international

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small cap companies. And so we just see, you know, a wealth of of opportunity set,

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given that, that broad index. And the index is unique too and that you don't have the concentration

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issues that you have in larger cap indices. And so the largest single constituent in that index

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is only 20 basis points. The top 10 or 1.7%. I mean, you compare that to the MSCI, USA, which is very

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similar to S&P 500. You know, you're looking at 24% weight for the top 10 companies. And

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so because of that lack of concentration, it's also very difficult for companies to replicate

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that universe passively. There's one ETF, the SS from, from Vanguard, that generates

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5% tracking error every year to the underlying index that it's seeking to replicate. And that's

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no ding on Vanguard. It's a byproduct of just the fact that this very broad flat index is very

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difficult to replicate on a daily basis, which creates an amazing opportunity for an active manager.

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Yeah, what about country exposure within the index? Is there a consolidation in certain countries or

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I mean the largest weights are to Japan, UK. But they're still relatively small.

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I think Japan's the largest that about 20% of the index. But what's also unique is that 

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China has a much lower weight in small caps than it does in large caps. It obviously has these

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very big mega cap companies like Alibaba and Tencent. But when you go into small caps,

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China is only about 2 to 3% weight in the index. And so if you're concerned about some of

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those issues that we spoke about, it's just much less of a presence overall. Yeah, that's an interesting

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point. So you start with this universe and then you're going to run your model. You'll have your

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00:26:57,760 --> 00:27:04,960
alpha model and you are using certain factors to weight stocks. And can you tell me a little bit

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00:27:04,960 --> 00:27:11,840
about the factors that you're using? I saw in a past interview you talked about value being the largest

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component and then growth and then some type of quality factor as well. That's right. Yeah,

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00:27:18,560 --> 00:27:24,560
value receives the largest weight in our weighting.  Every stock in our

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00:27:24,560 --> 00:27:32,080
universe gets a unique weighting. We try to appeal to the marginal buyer of every stock and sort of

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upweight the most attractive aspect of every stock. But that said, value still receives the largest

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00:27:39,520 --> 00:27:46,720
weight across the board. We have sectors, specific models that our fundamental analysts help us

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derive, focus on what are the most important value metrics for every sector. Growth matters,

293
00:27:53,360 --> 00:27:59,280
but long-term growth as well, shorter term growth in the form of estimate upgrades. We find that

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once the sentiment is changing, that's generally a good time to get on board. Momentum does work,

295
00:28:08,560 --> 00:28:14,800
especially in less efficient asset classes such as international small cap. We look at the

296
00:28:14,800 --> 00:28:23,920
focal companies momentum. But also the momentum of the broader network. And so we look at the

297
00:28:23,920 --> 00:28:30,720
momentum of companies competitors and suppliers and customers. Generally what you see, it's very interesting.

298
00:28:30,720 --> 00:28:40,160
There's a trickle down of information from large caps to small caps. For example, if Apple reports

299
00:28:40,160 --> 00:28:48,160
really great iPhone sales, it may take a day or two for that positive news to filter down to some

300
00:28:48,160 --> 00:28:57,360
of Apple smaller cap suppliers. We find a lot of value added from just looking at the broader momentum

301
00:28:57,360 --> 00:29:06,400
of companies network. And then finally, as you said, yeah, competitive strength. We developed

302
00:29:06,400 --> 00:29:15,440
that factor group a few years ago, really in reaction to value underperforming for so long.

303
00:29:16,240 --> 00:29:23,120
And it really came down to avoiding value traps. The companies that look cheap, but they look cheap

304
00:29:23,120 --> 00:29:30,720
into perpetuity is their earnings decline to zero. And we really took a lot of inspiration from

305
00:29:30,720 --> 00:29:38,320
Michael Porter and his five forces framework. Obviously, he was more focused at the industry level.

306
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We're trying to apply that to the company level. But we're looking for companies with the strong

307
00:29:45,200 --> 00:29:54,160
competitive mode. And typically those are companies that exhibit long-term uptrends in margins and market

308
00:29:54,160 --> 00:30:02,000
share in returns. We also examine the industry structure for further and more concentrated industries.

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But then we also look at balance sheet as well. We want to make sure that these companies have

310
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a balance sheet that will not get them into trouble during times like this. And so ultimately,

311
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through those factors, we're trying to identify the companies with the business models, with the pricing

312
00:30:22,960 --> 00:30:33,360
power, with the balance sheets to do well in not great economic times like we're seeing.

313
00:30:34,960 --> 00:30:41,200
Well, this is a really unsophisticated question, but you take the 4300 companies. You run your

314
00:30:41,200 --> 00:30:47,600
screen on the 4300 companies - that's going to differ a bit per industry, especially when you're

315
00:30:47,600 --> 00:30:54,240
looking at valuation metrics. You're going to come up with some type of score. Are you ranking these

316
00:30:55,360 --> 00:31:04,800
on the total 4300 or within industry? And then how do you decide the industry and country allocation?

317
00:31:04,800 --> 00:31:11,120
So you're trying to match the index or you're looking at the total overall rank of the 4300

318
00:31:11,120 --> 00:31:19,120
companies like a composite ranking. Yeah. Ultimately, you're right. We're trying to rank the

319
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entire universe, the advantage of a quantum approach is we can do that very easily on a daily basis.

320
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And look at the entire opportunity set, you know, from most attractive to lease attractive.

321
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You're right. There are some issues with comparing to companies. And so that's why we

322
00:31:36,560 --> 00:31:43,520
we typically sector neutralize and country neutralize our value scores. And so we're not 

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directly comparing emerging markets to developed. Obviously there's a valuation difference there. We're not

324
00:31:49,920 --> 00:31:55,760
directly comparing financials to, let's say, IT. Obviously there's sort of a structural

325
00:31:55,760 --> 00:32:02,160
multiple difference there as well. So we're looking for, for chief companies within their sector

326
00:32:02,160 --> 00:32:09,680
and within their country when we're doing those comparisons. We do, and that tends to create a fairly

327
00:32:09,680 --> 00:32:15,840
balanced portfolio just by itself. We do have certain portfolio level constraints so we'll constrain

328
00:32:15,840 --> 00:32:24,560
our country exposure to plus or minus 5% of the index. We have a fairly tight, even at the

329
00:32:24,560 --> 00:32:30,800
stock level plus or minus 2% versus the index. As I said, in the case of international small gaps,

330
00:32:30,800 --> 00:32:38,240
the largest constituent is only 20 basis points by itself. And so really it's just an upward cap

331
00:32:38,240 --> 00:32:44,240
on exposure. So how many stocks are typically in your portfolio? In our international small cap

332
00:32:44,240 --> 00:32:53,680
strategy, typically we're about 135 today, ranges between 120 and 200. We're a little more

333
00:32:53,680 --> 00:33:01,360
concentrated versus your typical pure quantitative manager, which some of them have hundreds of stocks.

334
00:33:02,320 --> 00:33:09,040
And partly because of our fundamental team gives us more confidence, more conviction in the stocks

335
00:33:09,040 --> 00:33:15,600
that we do hold. Yeah, I'm surprised that you actually said 120 to 200 because I also read

336
00:33:15,600 --> 00:33:21,440
that you're using your optimizing the portfolio for 100 different risk factors. And I would have

337
00:33:21,440 --> 00:33:27,120
just guessed your answer to be like 300, 400 companies because when you get those super optimized

338
00:33:27,120 --> 00:33:34,000
portfolios, you need all the holdings. Yeah, that's true. It's very easily to go sort of overboard

339
00:33:34,000 --> 00:33:42,480
on the risk and really over-neutralize a portfolio. We do have a sophisticated approach to risk where

340
00:33:42,480 --> 00:33:49,760
really whenever you're buying a stock, you're buying, I like to think of it as you're buying a basket

341
00:33:49,760 --> 00:33:56,720
of risks with uncertain payoffs. And a lot of those risks are company-specific, but far more

342
00:33:56,720 --> 00:34:02,640
are shared risks within the country you're investing in or the sector or the currency or even the

343
00:34:02,640 --> 00:34:10,640
style of the company that you're buying. And so our risk model tries to, basically

344
00:34:10,640 --> 00:34:19,280
assess how well a stock will fit into the portfolio, how well it will diversify existing risk exposures.

345
00:34:19,280 --> 00:34:26,640
And so ultimately when we optimize the portfolio, we're trying to find the highest expected return

346
00:34:27,120 --> 00:34:33,520
per unit of risk. But it's just so fascinating again going back to the universe,

347
00:34:33,520 --> 00:34:40,160
the international stock in the universe. If you take the average correlation between every single pair

348
00:34:40,160 --> 00:34:48,160
of stocks in the universe, it's only about 0.25. So the universe itself is so well diversified that

349
00:34:48,160 --> 00:34:55,280
if you start putting these into a portfolio, you get much greater diversification benefits than you do.

350
00:34:55,840 --> 00:35:02,720
Let's say, you know, US large cap portfolio, where the correlations tend to be much, much higher, much

351
00:35:02,720 --> 00:35:09,600
heavier. Yeah. Well that makes sense. So you're, you rank the companies, you're optimizing for

352
00:35:09,600 --> 00:35:14,960
certain risk factors. And then at what point do that does the fundamental team come in and take over?

353
00:35:14,960 --> 00:35:22,400
Is it right? I mean, that that seems like a lot of stocks for the group to cover, but at what point

354
00:35:22,400 --> 00:35:29,200
do they jump in and do stock-specific analysis or are they looking at industries? How does it work?

355
00:35:29,200 --> 00:35:36,480
Yes, so they give us input on trade dates. So whenever we're doing a rebound, so the portfolio

356
00:35:36,480 --> 00:35:42,240
will send the new stocks that are entering the portfolio to our fundamental team. We also have a

357
00:35:42,240 --> 00:35:50,560
standing monthly meeting where we will basically review the entire portfolio. And especially the

358
00:35:50,560 --> 00:35:56,720
largest active weights. And to the extent that they see something that's really not being picked up in

359
00:35:56,720 --> 00:36:03,360
our quantitative models, they'll provide that feedback. And ultimately, we can we can kick a stock out

360
00:36:03,360 --> 00:36:09,680
of the trade list even before it enters the portfolio. Or, you know, if something happens after the

361
00:36:09,680 --> 00:36:17,520
fact, obviously we had we had a few Russian holdings in early 2022 before the invasion,

362
00:36:17,520 --> 00:36:27,040
but some feedback from them helped us exit those names fairly quickly. And so ultimately, it's

363
00:36:27,040 --> 00:36:34,400
an innocent until proven guilty approach, I like to say. So we're not in the

364
00:36:34,400 --> 00:36:42,800
business of just overwriting our models every day. It really has to be something truly outside the scope

365
00:36:42,800 --> 00:36:48,400
of our of our models that's not being captured. But, you know, call it two to three times a

366
00:36:48,400 --> 00:36:56,480
quarter, we will trim a position back where we will kick it off the the buylist even before it's in

367
00:36:56,480 --> 00:37:02,480
our portfolio. Sure. It's very interesting to me. You know, I think most people don't realize how quantitative

368
00:37:02,480 --> 00:37:11,360
John Templeton was. He was so quantitative. He just did it in a time where you couldn't download

369
00:37:11,360 --> 00:37:18,720
information from Bloomberg to sell. And you just didn't have the computing ability that we have now.

370
00:37:18,720 --> 00:37:24,800
And it was much harder to do, which gave him an edge. But all the strategies I started and ran

371
00:37:24,800 --> 00:37:32,240
with him over the years all had a major quantitative component. And the way his three foundations

372
00:37:32,240 --> 00:37:39,440
manage money - they have a very quantitative process involved with manager selection and monitoring

373
00:37:39,440 --> 00:37:46,800
managers. And I'm always quick to remind the committee that if you're going to run a quantitative process,

374
00:37:46,800 --> 00:37:52,160
you have to consistently adhere to it. If you're going to override it all the time, you're really

375
00:37:52,160 --> 00:37:58,960
defeating all the benefits you get from what running a quantitative process. So it's really a very

376
00:37:58,960 --> 00:38:06,160
interesting approach to international small caps and emerging markets. I think it's really

377
00:38:06,160 --> 00:38:13,200
smart what you guys are doing. I have two more questions. I mean, maybe more, but two that immediately

378
00:38:13,200 --> 00:38:21,120
come to mind. One is, I would suspect there's a good bit of turnover in this strategy. Am I right or wrong?

379
00:38:21,120 --> 00:38:27,840
There's a fair amount. It really depends on the alpha decay of every factor you're looking at. So

380
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value in particular tends to be a factor that pays off over a long period of time as you're well aware of.

381
00:38:35,280 --> 00:38:42,560
And so once you blend in certain measures like momentum and earnings growth and sentiment,

382
00:38:42,560 --> 00:38:49,440
those tend to turn over a little faster in terms of what ranks high or low, depending on your time frame.

383
00:38:49,440 --> 00:38:57,520
But overall, we target a turnover below 100% annually in all of our strategies. And some of our

384
00:38:57,520 --> 00:39:04,160
more fundamentally oriented strategies are even far lower, more like 30%. And it really ultimately comes

385
00:39:04,160 --> 00:39:10,800
down to your weight on value because we all know that value pays off over a long period of time.

386
00:39:10,800 --> 00:39:18,720
And going back to John Templeton, obviously he was one of the first sort of adherence to behavioral

387
00:39:18,720 --> 00:39:25,120
finance too, which is really a core tenant in quantitative investing because, one thing that

388
00:39:25,120 --> 00:39:32,720
we like to do before we introduce a new factor is really understand why it works, right? And usually it

389
00:39:32,720 --> 00:39:39,680
comes down to some risk-based reason or behavioral-based reason or a limits to arbitrage-based

390
00:39:39,680 --> 00:39:46,080
reason. But, you take value and you say, okay, why does value work? It's been around for

391
00:39:46,080 --> 00:39:54,080
decades, even longer. It should be arbitraged out by now. And yet, you come back to some

392
00:39:54,080 --> 00:40:00,160
risk-based reasons, which are, okay, people think value companies are riskier, they may be prone to default.

393
00:40:00,160 --> 00:40:07,600
You get into a whole host of behavioral reasons why value works, right? 

394
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People like to buy the story stock that's very popular that you can easily, you know, talk about

395
00:40:13,760 --> 00:40:20,480
this, you know, long-term growth projection, the future. There's also sort of a lottery aspect

396
00:40:20,480 --> 00:40:26,480
of people investing where they want to go for the company that's going to get them, you know, 10x their

397
00:40:26,480 --> 00:40:32,960
money, right? But, but at the end of the day, those companies usually fail to perform, fail to really

398
00:40:32,960 --> 00:40:40,800
match the high level of expectations that are set. And so, so these things work and they continue to work.

399
00:40:40,800 --> 00:40:48,880
And the quantitative approach or at least some quantitative input

400
00:40:48,880 --> 00:40:56,960
to your process allows at least some level of removing those emotional biases that are really hardwired

401
00:40:56,960 --> 00:41:02,800
into into everyone, right? It's a discipline. And that's what I like about value investing. But,

402
00:41:02,800 --> 00:41:12,320
I think John Templeton was so wise when I started investing with him to make the strategies very quantitative.

403
00:41:12,320 --> 00:41:16,480
Because I think he was like, she's 24, she's never going to be able to manage her emotions.

404
00:41:17,120 --> 00:41:23,360
So, I'm just going to remove that component for her. And we're going to be managing the simple quantitative

405
00:41:23,360 --> 00:41:28,160
strategy and I'm not going to let her ever ride the strategy. I think that was genius. And then,

406
00:41:28,160 --> 00:41:33,680
you do that for a number of years and you become accustomed to occasionally losing money,

407
00:41:33,680 --> 00:41:39,920
not being upset about it and seeing it as a part of the process. And you're not always right 100%

408
00:41:39,920 --> 00:41:45,840
of the time. He said he was right 60% of the time. So, all of that makes so much sense to me.

409
00:41:45,840 --> 00:41:54,000
How do you make the decision to rebalance? Is it, we just rebalance every quarter

410
00:41:54,000 --> 00:42:01,440
or is there something you're looking for that causes the rebalance? We do. We actually run

411
00:42:01,440 --> 00:42:08,720
sort of a theoretical optimization every day so at any point in time you have the

412
00:42:08,720 --> 00:42:14,640
theoretically optimal portfolio that you would pick and you have your current portfolio, right?

413
00:42:14,640 --> 00:42:21,760
And over time, if you don't trade, those two will diverge. Now, to get from your current portfolio

414
00:42:21,760 --> 00:42:29,200
to that optimal portfolio, you have to trade. You have to undergo turnover. That's market impact.

415
00:42:29,200 --> 00:42:36,240
That's direct trading costs in the form of commissions and stamp duties and exactly. 

416
00:42:36,240 --> 00:42:41,680
And that's guaranteed negative alpha, right? When you spend that money,

417
00:42:42,240 --> 00:42:48,800
you're immediately losing that portion to alpha. And so, it's really a trade-off. And that's something

418
00:42:48,800 --> 00:42:56,000
that we try to analyze really on a daily basis. We see, okay, how much theoretical alpha could we pick

419
00:42:56,000 --> 00:43:03,120
up by trading the portfolio? And we look at that question under different turnover scenarios. And so,

420
00:43:03,120 --> 00:43:10,080
that enables us to both make the decision of when to trade, but then also how much turnover to use

421
00:43:10,080 --> 00:43:17,680
in a particular trade. So, in more volatile periods like we're seeing now, we may end up trading a little

422
00:43:17,680 --> 00:43:25,120
more often, expanding a little higher turnover overall because of the changing opportunities.

423
00:43:25,120 --> 00:43:32,720
But ultimately, to come back to your question, it usually works out to about once or twice per month

424
00:43:32,720 --> 00:43:39,840
that we're trading. And typically, it's, you know, relatively lower turnover. Again, we're

425
00:43:39,840 --> 00:43:46,000
targeting something below 100% annual turnover. But it's a great question in something that we

426
00:43:46,000 --> 00:43:52,480
analyze quite a lot because ultimately it's a question of

427
00:43:52,480 --> 00:44:00,560
how much can you improve your portfolio by undergoing that turnover? And then how much are you

428
00:44:00,560 --> 00:44:07,360
tinkering with your model or strategy? You know, John Templeton always said there are a hundred measuring

429
00:44:07,360 --> 00:44:11,920
sticks about you. If you've focused on what worked best five years ago, you're going to miss what's

430
00:44:11,920 --> 00:44:18,400
going to work best in the next five years. So, I imagine that you have to be adjusting some of those

431
00:44:18,400 --> 00:44:24,400
factors over time. What does that process look like? I mean, is it you all meet in a conference room

432
00:44:24,400 --> 00:44:31,520
and talk about it or, how does it work? Yeah, you're right. I think quantitative investing

433
00:44:32,480 --> 00:44:40,480
needs to be evolutionary because, you know, certain aspects do tend to be arbitrage to weigh over time

434
00:44:40,480 --> 00:44:45,520
to some extent. And so you need to adjust, but at the same time, as you said, you don't want to

435
00:44:45,520 --> 00:44:50,880
kick something out of your model just because it hasn't worked in the last year. And value is a great

436
00:44:50,880 --> 00:44:56,400
example. Value went through a very large extended period of underperformance

437
00:44:56,400 --> 00:45:05,520
in the 2010s. I've been telling you recently. And so, so where does that leave us? You know,

438
00:45:05,520 --> 00:45:10,720
two years ago, we could have looked at a back test over the last ten years and said, well, why do

439
00:45:10,720 --> 00:45:17,840
we even have value in our model? It hasn't been working. And that's where it really comes down to

440
00:45:17,840 --> 00:45:24,880
having a long-term perspective, looking at these performances over very long periods of time,

441
00:45:24,880 --> 00:45:33,280
understanding the reasons why a particular factor works, again, coming back to identifying a risk-based

442
00:45:33,280 --> 00:45:39,360
or behavioral-based reason why it works. And therefore, why it should continue to work going forward.

443
00:45:39,360 --> 00:45:47,440
But ultimately, you know, we're constantly looking at new data sets. Obviously, just with the proliferation

444
00:45:47,440 --> 00:45:57,520
of data, there are vendors sort of knocking on our door every day with some new data set. And some of them

445
00:45:57,520 --> 00:46:03,760
add value, some of them don't. I'd say, you know, 90% of the new factors we look at ultimately don't

446
00:46:03,760 --> 00:46:12,640
go into our models. We want to make sure that we understand why a factor works. We want to

447
00:46:12,640 --> 00:46:18,960
make sure it works over a long period of time. And we also want to make sure we're not replicating anything

448
00:46:18,960 --> 00:46:26,240
in our model that's in there already. If you introduce a new factor that's very highly correlated

449
00:46:26,240 --> 00:46:35,040
to something else, that sort of just confuses the model, creates some other issues too.

450
00:46:35,680 --> 00:46:43,440
And, you know, you ultimately, you don't want to, when we bring a new factor, ideally, we want to see it

451
00:46:43,440 --> 00:46:49,680
very lowly correlated with the other factors that are in our model. Yeah. So it's a very high bar.

452
00:46:49,680 --> 00:46:57,440
Yeah. So I have heard you comment on machine learning and how you guys are using machine learning

453
00:46:57,440 --> 00:47:06,880
to scrub earnings call transcripts. Can you speak about that? And then also about any uses of artificial

454
00:47:06,880 --> 00:47:13,280
intelligence or how that might be influencing your portfolio or you might be thinking about using these

455
00:47:13,280 --> 00:47:20,800
tools? Yeah. It's obviously a hot topic these days, especially with everyone's talk about 

456
00:47:20,800 --> 00:47:28,320
ChatGPT and how high school students are now not writing their own essays. They're just asking,

457
00:47:28,320 --> 00:47:37,760
please write me an essay on 20th century mercantilism or something. I'd say, you know, one of the pitfalls

458
00:47:37,760 --> 00:47:47,360
of quantitative investing is the danger to overfit a model. You must look for patterns where patterns

459
00:47:47,360 --> 00:47:53,120
don't exist or where they shouldn't continue to exist going forward. And so I could.

460
00:47:53,120 --> 00:47:58,240
I'm just coming up with a hypothetical example. Let's say, you know, all of the companies that start with

461
00:47:58,240 --> 00:48:04,720
the letter R, last year outperformed the market. Well, do you really want to create a strategy around

462
00:48:04,720 --> 00:48:10,240
buying the companies that start with the letter R? Probably not because there's no reason that that

463
00:48:10,240 --> 00:48:17,520
should continue going forward. And one of the big dangers with machine learning is it's sort of the

464
00:48:17,520 --> 00:48:25,920
ultimate overfitting machine. It will find patterns whether there's a pattern to be seen or not,

465
00:48:25,920 --> 00:48:32,720
whether there's some causal relationship or not. And so we've spent a lot more time

466
00:48:32,720 --> 00:48:42,320
than we typically do in proving some of our more machine learning-based factors. And as you mentioned,

467
00:48:42,320 --> 00:48:49,840
we're spending a lot of time using natural language processing to analyze conference call transcripts.

468
00:48:49,840 --> 00:48:57,760
And ultimately, you know, we've been at it for over two years now. We still haven't gotten

469
00:48:57,760 --> 00:49:04,640
comfortable enough to add it to our models because we've basically been in a road testing phase for

470
00:49:04,640 --> 00:49:12,320
some time where we now have it automated so that every single transcript that comes out in a day

471
00:49:12,320 --> 00:49:20,800
is summarized the next day and sent to our fundamental analysts. And it picks out the specific phrases and

472
00:49:20,800 --> 00:49:28,160
keywords that it's tacking onto to derive sort of a sentiment score. And ultimately, we want to make sure

473
00:49:28,160 --> 00:49:34,000
there are fundamental analysts who are actually listening to these calls who actually know the companies

474
00:49:34,000 --> 00:49:42,400
agree with the assessment of the algorithms of the read of the transcript. Because if that doesn't

475
00:49:42,400 --> 00:49:50,240
match up, then again, we're just sort of overfitting a model. And does that usually? 

476
00:49:50,240 --> 00:49:57,440
Well, we've made a lot of refinements. We're getting to a point where we're starting to feel comfortable.

477
00:49:57,440 --> 00:50:04,640
We will likely add that component to our models sometime this year, but after a lot of work. And

478
00:50:04,640 --> 00:50:13,520
it really just underscores the importance of understanding how the model is working and understanding

479
00:50:14,880 --> 00:50:22,720
why that factor or that sentiment score should continue to work. And because I think, again it's a major

480
00:50:22,720 --> 00:50:31,440
pitfall to that technology. It's amazing technology for what it does, but it's dangerous just to

481
00:50:31,440 --> 00:50:40,240
just to close your eyes and have a machine pick stocks. Sure. And if I were the fundamental

482
00:50:40,240 --> 00:50:49,440
analysts on your team, I might be absolutely not. I'm not sure because I'm worried about my job.

483
00:50:49,440 --> 00:50:56,960
Yeah, it's happened. And what's interesting though is we've seen companies start to adapt to

484
00:50:56,960 --> 00:51:05,520
a machine learning world. And so it's very interesting. Some companies before they deliver their

485
00:51:05,520 --> 00:51:12,400
prepared remarks, they will run it through machine learning algorithms to make sure that it's interpreted

486
00:51:12,400 --> 00:51:18,720
positively, which is just crazy. And I'm sure there are avoiding certain words and have got

487
00:51:18,720 --> 00:51:26,480
the advice to repeat certain words. That's a big set of advice that you will hear.

488
00:51:26,480 --> 00:51:33,040
Whole new world of earnings, game and ship. Oh, totally. And in the early

489
00:51:33,040 --> 00:51:38,400
days of machine learning, it was like, it was all about, how many analysts are congratulating

490
00:51:38,400 --> 00:51:45,280
the management team? How many times is the word "congratulations" appear in the Q&A? And that was

491
00:51:45,280 --> 00:51:53,120
an easy signal. But we think that there's a lot of gamesmanship now going on with that regard.

492
00:51:53,120 --> 00:52:00,400
I'm sure. Well, let me ask you this question. And you can answer it for your strategy. You can answer

493
00:52:00,400 --> 00:52:09,440
it for yourself or you can answer it for Causeway as just a business. What is your competitive

494
00:52:09,440 --> 00:52:15,520
advantage? If you had to name one thing, what is the competitive advantage of Ryan Meyers,

495
00:52:15,520 --> 00:52:23,520
Causeway, or the quantitative approach to international small caps, stock solution? Choose either one.

496
00:52:25,440 --> 00:52:32,080
With regard to international small caps specifically, it's an area that would be difficult to cover purely

497
00:52:32,080 --> 00:52:38,400
fundamentally. I would say with 4,300 stocks, let's say you have an analyst. Let's say you have an

498
00:52:38,400 --> 00:52:47,040
analyst covering 100 of those stocks. You still have to have 43 analysts because of the market caps,

499
00:52:47,040 --> 00:52:53,200
you know, you're only going to be able to run, we measure capacity or we estimate capacity

500
00:52:53,200 --> 00:53:03,200
to be 2 to 3 billion overall. And so it's an interesting space because it's very difficult to cover

501
00:53:03,200 --> 00:53:12,160
purely fundamentally. One of the big disadvantages to pure fundamental

502
00:53:12,160 --> 00:53:19,680
analysis is it takes time, right? I mean, you're going to spend days, weeks analyzing a company,

503
00:53:19,680 --> 00:53:26,800
talking with management teams, and at the end of the day, you may ultimately say, okay, well,

504
00:53:26,800 --> 00:53:34,960
that's fairly valued. Let's move on to the next one. And that's a big advantage to a quantitative

505
00:53:34,960 --> 00:53:43,280
approach. In that we can assess the universe, we can identify mispriced things really on a daily basis.

506
00:53:44,080 --> 00:53:50,800
But with that said, quantitative analysis has plenty of pitfalls to it as it tries to over-simplify the

507
00:53:50,800 --> 00:53:57,840
world. It misses certain aspects that are outside the scope of quantitative analysis. And so,

508
00:53:57,840 --> 00:54:03,440
you know, coming back to your question, I think a big competitive advantage of our approach and

509
00:54:03,440 --> 00:54:10,080
of Causeway is really the blending of quantitative and fundamental inputs. Because at the end of the day,

510
00:54:10,080 --> 00:54:18,560
I think both have their strengths, both have their limitations. And so, combining them in some respect,

511
00:54:18,560 --> 00:54:27,840
hopefully gives you the benefits of both approaches and minimizes the limitations. But it's hard to do.

512
00:54:27,840 --> 00:54:36,080
I mean, they're ultimately different approaches to the same question. And sometimes you arrive at

513
00:54:36,080 --> 00:54:43,440
a different conclusion. Yeah. And I loved earlier how you highlighted the behavioral aspect.

514
00:54:43,440 --> 00:54:50,080
Because that, to me, from a quant standpoint, that may be the biggest gift. Not only do you avoid

515
00:54:50,080 --> 00:54:58,400
the story stocks, most likely, fear of the value-based manager. But it's probably how your experience with John

516
00:54:58,400 --> 00:55:04,480
Templeton was. It's going to force you into some names as a fundamental guy. You probably, and I don't know

517
00:55:04,480 --> 00:55:10,720
about this one. But in so there are so many advantages to that starting point. Do you ever find,

518
00:55:10,720 --> 00:55:15,280
when you're putting together your portfolio, the stock shows up, you're

519
00:55:15,280 --> 00:55:20,720
fundamentally like, I don't know about this. But you just have to go with a model, or how do you

520
00:55:20,720 --> 00:55:27,520
all sort those out those situations? Yeah. I mean, I look at certain examples of because we're diverse.

521
00:55:27,520 --> 00:55:33,600
I mean, I'm a value investor at heart, too. And so I want to get a bargain. But occasionally our model

522
00:55:33,600 --> 00:55:40,080
will come up with these stocks that score pretty average on a value metric. But the

523
00:55:40,080 --> 00:55:47,120
growth in momentum is just all there and all the stars are aligning. And yeah, it sort of makes me

524
00:55:47,120 --> 00:55:55,120
question when, we have a stock right now, you know, an Indian small cap company that does

525
00:55:55,120 --> 00:56:01,840
sort of automated driving software. It trades at 40x next year's earnings. And as a value investor,

526
00:56:01,840 --> 00:56:07,440
I'm like, oh my goodness, what are we doing? And yet that stock has been one of our best performing

527
00:56:07,440 --> 00:56:15,120
stocks over the last few months. And so I think at some level you need to be comfortable

528
00:56:15,120 --> 00:56:22,720
with the diversification of alpha approach, the fact that sometimes

529
00:56:22,720 --> 00:56:29,360
you do have to pay for a stock up for a stock, right? I mean, if you just take a very simple approach and

530
00:56:29,360 --> 00:56:35,840
say the prices sort of you're taking an annuity approach to earnings.

531
00:56:35,840 --> 00:56:42,160
And ultimately, you should be willing to pay more for a company where those earnings are growing higher.

532
00:56:42,160 --> 00:56:49,680
And/or where the volatility of those earnings is lower. But, you know, you have to really,

533
00:56:50,560 --> 00:56:57,360
 have a systematic approach to that and be comfortable at the end of the day that your process

534
00:56:57,360 --> 00:57:04,480
is finding good bargains whether they're trading at a 3 P/E or a 30 P/E. 

535
00:57:04,480 --> 00:57:11,360
Yeah. And really, what I was getting at was kind of the other side of that coin, like the

536
00:57:11,360 --> 00:57:17,040
names that look scary or dicey. They're in the headlines for the wrong reasons, but you're

537
00:57:17,040 --> 00:57:23,040
quantitative, a model is probably saying no guys. This is one of them. You've got to buy it.

538
00:57:23,040 --> 00:57:29,600
You're right. Yeah. Now, I think, and I think my background in distressed debt gives me 

539
00:57:29,600 --> 00:57:38,800
some comfort in thinking that ultimately most assets have some value, right? It's just a matter of

540
00:57:38,800 --> 00:57:44,240
coming up with the fair price for that asset. And I think as a credit investor,

541
00:57:45,440 --> 00:57:52,640
you approach the world thinking, okay, what can go wrong with my investment thesis?=

542
00:57:52,640 --> 00:57:58,160
I don't have to have the equity worth anything for me to make money. I just need to

543
00:57:58,160 --> 00:58:03,440
make sure if I bought these bonds at 60 cents on the dollar, I just better 

544
00:58:03,440 --> 00:58:09,360
sure that the company's worth that much. And as long as it is, then I'll make my money back.

545
00:58:10,160 --> 00:58:17,920
As an equity investor, I think inherently we're trying to say, okay, what can go right? But, you know,

546
00:58:17,920 --> 00:58:25,120
the value part of the investor mindset is also asking, you know, what can go wrong? And I better be

547
00:58:25,120 --> 00:58:32,880
ultra conservative on my assumptions. And the stock still has upside from here. And so,

548
00:58:33,920 --> 00:58:40,720
I think you're right.Sometimes you really, it helps to sort of follow some

549
00:58:40,720 --> 00:58:48,800
frameworks, some rules-based approach to investing. Because, yeah, Lauren, you said that

550
00:58:48,800 --> 00:58:57,360
John Templeton was right 60% of the time. 60% looks pretty good to me. I'll take it. 

551
00:58:57,360 --> 00:59:02,560
Exactly. If you can get a successful investment, 60% of the time, you're definitely going to succeed.

552
00:59:03,520 --> 00:59:10,160
Yeah, that was really well said. I appreciate those comments. 

553
00:59:10,160 --> 00:59:17,360
I have one, one last question for you. What is keeping you up at night right now?

554
00:59:17,360 --> 00:59:23,360
What are you sitting there worried about when it comes to the market or this particular strategy?

555
00:59:23,360 --> 00:59:31,200
It seems like there's always a lot to potentially worry about.

556
00:59:32,960 --> 00:59:39,520
I think the geopolitical situation is something that we try to think about and try to review periodically.

557
00:59:39,520 --> 00:59:45,440
You know, we get a lot of questions from our investors right now. Since we invest in Taiwan,

558
00:59:45,440 --> 00:59:53,040
is China going to invade Taiwan?  Well, we don't think so, imminently.

559
00:59:53,040 --> 00:59:59,120
 But, we also didn't think that Russia was going to invade Ukraine early last year. And so I think assessing

560
01:00:00,000 --> 01:00:07,280
the geopolitical risks is something that's difficult. And it's difficult to do from a systematic perspective.

561
01:00:07,280 --> 01:00:15,200
You know, how do you really assess some of these larger geopolitical risk? It's very difficult to do.

562
01:00:15,200 --> 01:00:22,000
You know, the macro backdrop, I think I'm less worried about because we're all used to

563
01:00:22,000 --> 01:00:31,120
going through investment cycles. And I think a lot of people are saying,

564
01:00:31,120 --> 01:00:36,160
well, the Fed was too late to tighten and now they're potentially overthinking.

565
01:00:36,160 --> 01:00:42,480
It's that I think I'm less worried about. I think it will ultimately

566
01:00:42,480 --> 01:00:50,640
work out. I think inevitably whatever happens, we're in a higher cost of capital

567
01:00:50,640 --> 01:00:56,560
environment than we've been for the last 10 years. And I don't think that's going to change. 

568
01:00:56,560 --> 01:01:01,360
And as long as that doesn't change, I think value investing is going to have

569
01:01:01,360 --> 01:01:08,400
a decent runway from here. And so we're certainly optimistic looking forward from that front.

570
01:01:08,400 --> 01:01:15,120
fingers crossed. Yeah. Exactly. I really appreciate the time you've spent with us

571
01:01:15,120 --> 01:01:21,440
today. And this has been a great hour. I've learned a lot. And I appreciate hearing about your background

572
01:01:21,440 --> 01:01:27,040
and your strategies. So thank you so much. Well, thank you both as well. It's been a pleasure.

573
01:01:27,040 --> 01:01:34,000
Thank you for listening to Investing the Templeton Way. Please be sure to subscribe on your favorite

574
01:01:34,000 --> 01:01:40,000
podcasts player. To view the show notes and resources mentioned in today's show,

575
01:01:40,720 --> 01:01:48,240
head to investingthetempletonway.com.

576
01:01:48,240 --> 01:01:58,240
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