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Should You Invest In Microcap Stocks

Summary Investing in microcap stocks can be very lucrative. If you have the dedication and time to put into research, microcap investing may be for you. History has shown that a microcap investing strategy can outperform major indices. Why Do I Invest in Microcaps? When I first started investing, I was a full time college student also working full time in a meat department (> 40/week). Not only was I going to school full time and working full time, but I was engaged to my soon to be wife, running a few small business ventures, and reading voraciously (mainly books on finance/economics). Balancing all of these activities while having a social life really was not that easy. So when I started to get into investing, I really was not doing very heavy due diligence. The due diligence that I performed on a company mainly consisted of reading one year’s worth of 10-Ks and 10-Qs, looking/reading other investment research on a chosen stock, and maybe, just maybe writing a quick thesis on why I wanted to invest in that company. Compared to what I do now, my due diligence was pitiful. Since I did not have the time and energy to dig into a company, I pretty much bought into popular companies that everyone else on Wall Street was buying (Apple (NASDAQ: AAPL ), Waste Management (NYSE: WM ), National Oilwell Varco (NYSE: NOV ), Nordstrom (NYSE: JWN ), and Tempur Sealy International (NYSE: TPX )). I made okay returns and the dividends were nice, but the returns that I did make were not exceptional. As time passed, I ended up graduating from college, and getting married. I soon had a lot more time to research companies. I ended up buying a company called Independent Bank (NASDAQ: IBCP ), and within a few months, made > 50% return. That is when I started to realize the potential unfollowed microcap stocks had over large cap stocks. Check out what has happened to IBCP in the past three years. I do not work in a meat department anymore, I am not going to college, and I am not planning a wedding. What I do now is research and write about investing ideas full time. Since I now have the time to dig into companies that others tend to overlook, the microcap world of investing is perfect for me. I have always been the kind of person who does things the majority of individuals do not do (the white sheep/rebel). Investing in overlooked companies that the masses are not piling into is perfect for me. Note: Readers should know that I do not limit myself strictly to microcap stocks. If I see value in a large cap stock, I am not hesitant to take a position, if I see value and opportunity. In fact, a percentage of my portfolio is in a few large cap names (NOV, Ensco PLC (NYSE: ESV ) and Chicago Bridge & Iron (NYSE: CBI )). They are not huge positions and only make up a small percentage of my overall portfolio. As time passes there will be less of a dedication to my portfolio to names like these and more of a dedication to microcap stocks. I would not be surprised to see 100% of my portfolio dedicated to stocks with a sub $50mm market cap in the near future. The Types of Microcaps I Buy There are basically three different microcaps stocks that I buy for my portfolio. The first type, which to me is very interesting and really shows that the stock market is not efficient is the world of NCAV stocks. NCAV stocks are companies that are trading for less than their net current asset value. These stocks are very badly punished companies that look like they are pretty much headed for a bankruptcy. Despite the poor past performance of these companies, they have a proven statistical history of outperforming > 28% average return/year. If you are going to buy a NCAV stock, you must be an active investor. These companies are not buy and hold companies. You buy these companies to get one last puff on that cigar. You can make very good money buying and selling NCAV stocks, but you must be an active investor. Most investors do not like buying broken businesses, so NCAV investing is not for them. Overall, if you want to beat the market, buying and selling NCAV stocks, gives you a very good chance of making the former happen. Note: When Warren Buffett was young, buying and selling NCAV stocks is how he made tons of money. He has said that the years in which he was buying these kinds of companies were his best years ever as an investor. Another kind of microcap stock that I buy are low EV/EBITDA companies. It has been said that the EV/EBITDA ratio could be the single best ratio around. In the past 20 years , low EV/EBITDA stocks have returned 2,227%, which has destroyed the returns of the S&P 500. Now if you incorporate low EV/EBITDA ratios with microcap stocks, you can make a significant return. It has been proven that the smaller the company the better long-term results. Check out the picture below that goes to prove the former. I believe that incorporating the low EV/EBITDA ratio into a microcap strategy can be very rewarding in the long run. The final microcap investing strategy, that I have just started to incorporate in my research is a microcap stock that is growing at a very fast rate > 20%/year. If you can find a microcap stock that is growing at a double-digit rate, staying profitable, and has a very bright future, you may have the potential to invest in a multi-bagger. Take a look at a company called Zagg Inc. (NASDAQ: ZAGG ). Back in the day, you could have bought this company for 20% and are expected to continue. This company would be a great long-term holding at the right price. Command Center (OTCQB: CCNI ) Market Cap 39.05 M Cash 5.15 M Shares Outstanding 65.62 M Debt 1.24 M Revenues 93.50 M Insider Ownership 26.30% EBITDA 5.87 M FCF 7.5 M CCNI has gotten hammered lately since the company is indirectly tied to the energy industry. Despite the stock falling, the company has been able to grow its revenues, and it still remains profitable. Management is currently buying back shares and has plans to continue as well. I really like how this company is FCF positive and the simple business model of this company. CCNI’s EV/EBITDA is 5.26 and is significantly undervalued on a comp basis. These are just a few microcap stocks that I am currently following. As of right now, I hold SPRS and I am planning on taking a position in IWRGF as time permits me to do so. There are a ton of other microcap stocks that I watch and write on as well. I would really love to know what kind of microcap stocks you invest in or are watching. Message me if you have an idea. If it looks intriguing I may do research for you. Should you Invest in Microcaps? Microcap stocks are not for everyone. If you do not have time to dedicate to studying microcap investments, I would suggest not to invest in microcap stocks. I believe that you must be an active investor willing to dedicate tons of time to microcap stocks if you are interested in investing in them. Thus, investing in microcap stocks is not a passive pastime like buying ETFs or mutual funds. But if you are an active investor who loves to do in-depth research, microcap investing may be for you. I have provided a few Seeking Alpha authors below who are great microcap writers. If you are interested in microcaps, I suggest that you follow them. Good luck everybody and happy microcap investing. Editor’s Note: This article covers one or more stocks trading at less than $1 per share and/or with less than a $100 million market cap. Please be aware of the risks associated with these stocks. Disclosure: I am/we are long NOV, SPRS, ESV, CBI. (More…) I wrote this article myself, and it expresses my own opinions. I am not receiving compensation for it (other than from Seeking Alpha). I have no business relationship with any company whose stock is mentioned in this article.

AQR Style Premia Alternative I, AQR Style Premia Alternative LV I, September 2015

By Samuel Lee Objective and strategy AQR’s Style Premia Alternative, or SPA, strategy offers leveraged, market-neutral exposure to the four major investing “styles” AQR has identified: Value , the tendency for fundamentally cheap assets to beat expensive assets. Momentum , the tendency for relative performance in assets to persist over the short run (about one to twelve months). Carry , the tendency for high-yield assets to beat low-yield assets. Defensive , the tendency for low-volatility assets to offer higher volatility-adjusted returns than high-volatility assets. To make the cut as a bona fide style, a strategy has to be persistent, pervasive, dynamic, liquid, transparent and systematic. SPA offers pure exposure to these styles across virtually all major markets, including stocks, bonds, currencies, and commodities. It removes big, intentional directional bets by going long and short and hedging residual market exposure. As with all alternative investments, the goal is to create returns uncorrelated with conventional portfolio returns. SPA sizes its positions by volatility, not nominal dollars. In quant-speak, risk is often used as shorthand for volatility, a convention I will adopt. Of course, volatility is not risk (though they are awfully correlated in many situations). SPA’s strategic risk allocations to each style are as follows: 34% each to value and momentum, 18% to defensive, and 14% to carry. Its strategic risk allocations to each asset class are as follows: 30% to global stock selection, 20% each to equity markets and fixed income, and 15% each to currencies and commodities. There is a bias to the value and momentum styles, perhaps reflecting AQR’s greater confidence in and longer history with them. Risk allocations drift based on momentum and “style agreement,” where high-conviction positions are leveraged up relative to low-conviction positions. The strategy’s overall risk target falls in steps in the event of a drawdown and rises as losses are recouped. These overlays embody some of the hard-knock knowledge speculators have acquired over the decades: bet on your best ideas, cut losers and ride winners, and cut capital at risk when one is trading poorly. SPA targets a Sharpe ratio of 0.7 over a market cycle. AQR offers two flavors to the public: the 10% volatility-targeted AQR Style Premia Alternative Fund Inst (MUTF: QSPIX ) and the 5%-vol AQR Style Premia Alternative LV Fund Inst (MUTF: QSLIX ). Adviser AQR Capital Management, LLC, was founded in 1998 by a team of ex-Goldman Sachs quant investors led by Clifford S. Asness, David G. Kabiller, Robert J. Krail, and John M. Liew. AQR stands for Applied Quantitative Research. The firm’s bread and butter has long been trading value and momentum together, an idea Asness studied in his PhD dissertation at the University of Chicago. (Asness’s PhD advisor was none other than Eugene Fama, father of modern finance and one of the co-formulators of the efficient market hypothesis.) When the firm started up, it was hot. It had one of the biggest launches of any hedge fund up to that point. Then the dot-com bubble inflated. The widening gap in valuations between value and growth stocks almost sunk AQR. According to Asness , the firm was six months away from going out of business. When the bubble burst, the firm’s returns soared and so did its assets. The good times rolled until the financial crisis shredded its returns . Firm-wide assets from peak-to-trough went from $39.1 billion to $17.2 billion. The good times are back: As of June-end, AQR has $136.2 billion under management. The two near-death experiences have instilled in AQR a fear of concentrated business risks. In 2009, AQR began to diversify away from its flighty institutional clientele by launching mutual funds to entice stickier retail investors. The firm has also launched new strategies at a steady clip, including managed futures, risk parity, and global macro. AQR has a strong academic bent. Its leadership is sprinkled with economics and finance PhDs from top universities, particularly the University of Chicago. The firm has poached academics with strong publishing records, including Andrea Frazzini, Lasse Pedersen, and Tobias Moskowitz. Its researchers and leaders are still active in publishing papers. The firm’s principals are critical of hedge funds that charge high fees on strategies that are largely replicable. AQR’s business model is to offer up simplified quant versions of these strategies and charge relatively low fees. Managers Andrea Frazzini, Jacques A. Friedman, Ronen Israel, and Michael Katz. Frazzini was a finance professor at University of Chicago and a rising star before he joined AQR. He is now a principal on AQR’s Global Stock Selection team. Friedman is head of the Global Stock Selection team and worked at Goldman Sachs with the original founders prior to joining AQR. Israel is head of Global Alternative Premia and prior to AQR was a senior analyst at Quantitative Financial Strategies Inc. Katz leads AQR’s macro and fixed-income team. Frazzini is the most recognizable, as he has the fortune of having a last name that’s first in alphabetical order and publishing several influential studies in top finance journals, including ” Betting Against Beta ” with his colleague Lasse Pedersen. Unlisted is the intellectual godfather of SPA, Antti Ilmanen, a University of Chicago finance PhD who authored Expected Returns , an imposing but plainly-written tome that synthesizes the academic literature as it relates to money management. Though written years before SPA was conceived, Expected Returns can be read as an extended argument for an SPA-like strategy. Strategy capacity and closure AQR has a history of closing funds and ensuring its assets don’t overwhelm the capacity of its strategies. When the firm launched in 1998, it could have started with $2 billion but chose to manage only half of that, according to founding partner David Kabiller . Of its mutual funds, AQR has already closed its Multi-Strategy Alternative, Diversified Arbitrage and Risk Parity mutual funds. However, AQR will meet additional demand by launching additional funds that are tweaked to have more capacity. As of the end of 2014, AQR reported a little over $3 billion in its SPA composite return record. Given the strategy’s strong recent returns, assets have almost certainly grown through capital appreciation and inflows. Because AQR uses many of the same models or signals in different formats and even in different strategies, the effective amount of capital dedicated to at least some components of SPA’s strategy is higher than the amount reported by AQR. Management’s stake in the fund As of Dec. 31, 2014, the strategy’s managers had no assets in the low-volatility SPA fund and little in the standard-volatility SPA fund. One trustee had less than $50,000 in QSPIX. Collectively, the managers had $170,004 to $700,000 in the SPA mutual funds. Although these are piddling amounts compared to the millions the managers make every year, the SPA strategy is tax inefficient. If the managers wanted significant exposure to the strategies, they would probably do so through the partnerships AQR offers to high-net-worth investors. But would they do that? AQR, like most quant shops, attempts to scarf down as much as possible the “free lunch” of diversification. The managers are well aware that their human capital is tied to AQR’s success and so they would probably not want to concentrate too heavily in its potent leveraged strategies. Opening date QSPIX opened on October 30, 2013. QSLIX opened on September 17, 2014. The live performance composite began on September 1, 2012. Minimum investment The minimum investment varies depending on share class, broker-dealer and channel. For individual investors, a Fidelity IRA offers the lowest hurdle: a mere $2,500 for the I share class of the normal and low-volatility flavors of SPA. Or you can get access through an advisor. Otherwise, the hurdles are steep: $5 million for the I class, $1 million for the N class, and $50 million for the R6 class. Expense ratio The I class for the normal and low-volatility versions cost 1.50% and 0.85%, respectively. The N classes costs 0.25% more and the R6 classes costs 0.10% less. The per-unit price of exposure to SPA is lower the higher the volatility of the strategy. QSPIX targets 10% vol and costs 1.5%. QSLIX targets 5% vol and costs 0.85%. Anyone can replicate a position in QSLIX by simply halving the amount invested in QSPIX and putting the rest in cash. The effective expense ratio of a half QSPIX, half cash clone strategy is 0.75%. Comments Among right-thinking passive investors who count fees by the basis point, AQR’s SPA strategy elicits revulsion. It’s expensive, leveraged, complicated, hard to understand, and did I mention expensive? To make the strategy easier to swallow, some passive-investing advocates argue SPA is “passive” because it’s transparent, systematic, and involves no discretionary stock selection or market forecasting. This definition is not universally accepted by academics, or even by AQR. The purer, technical definition of passive investing is a strategy that replicates market weightings, and indeed this definition is used by the venerable William Sharpe in his famous essay, ” The Arithmetic of Active Management .” I do not think SPA is passive in any widely understood sense of the word. In fact, I think it’s about as active as you can get within a mutual fund. And I also happen to think SPA is a great fund. Regardless of my warm feelings for the strategy, I consider SPA suitable only for a rare kind of nerd, not the investing public. Though SPA is aggressively active, its intellectual roots dig deep into the foundations of financial theory that underpin what are commonly thought to be “passive” strategies, particularly value- and size-tilted stock portfolios (DFA has made a big business selling them). The nerds among you will have quickly caught on that what AQR calls a style is nothing more than a factor, a decades-old idea that sprung from academic finance. For the non-nerds: A factor, loosely speaking, is a fundamental building block that explains asset returns. Most stocks move together, as if their crescendos and diminuendos were orchestrated by the hand of some invisible conductor. This co-movement is attributed to the equity market factor. According to factor theory, a factor generates a positive excess return called a premium as reward for the distinct risk it represents. It is now widely agreed that two factors pervade virtually all markets: value and momentum (size has long been criticized as weak). AQR’s researchers – including some of the leading lights in finance – argue there are two more: carry and defensive. They’ve marshalled data and theoretical arguments that share an uncanny family resemblance with the data and arguments marshalled to justify the size and value factors. The SPA strategy is a potent distillation of the factor-theoretical approach to investing. If you believe the methods that produced the research demonstrating the value and size effects are sound, then you have to admit that those same tools applied to different data sets may yield more factors that can be harvested. OK, I’ve blasted you with theory. On to more practical matters. Who should invest in this fund? Investors who believe active management can produce market-beating results and are willing to run some unusual but controllable risks. How much capital should one dedicate to it? Depends on how much you trust the strategy, the managers, and so on. I personally would invest up to 30% of my personal money in the fund (and may do so soon!), but that’s only because I have a high taste for unconventionality, decades of earnings ahead of me, high conviction in the strategy and people, and a pessimistic view of competing options (other alternatives as well as conventional stocks and bonds). Swedroe, on the other hand, says he has 3% of his portfolio in it. How should it be assessed? At a minimum, an alternative has to produce positive excess returns that are uncorrelated to the returns of conventional portfolios to be worthwhile. However, AQR is making a rather bold claim: It has identified four distinct strategies that produce decent returns on a standalone basis and are both largely uncorrelated with each other and conventional portfolios. When combined and leveraged, the resulting portfolio is expected to produce a much steadier stream of positive returns, also uncorrelated with conventional portfolios. So far, the strategy is working as advertised. Returns have been good and uncorrelated. In back-tests, the strategy only really suffered during the dot-com bubble and the financial crisis. Even then, returns weren’t horrendous. Is AQR’s 0.7 Sharpe ratio target reasonable? I think so, but I would be ecstatic with 0.5. What are its major risks? Aside from leverage, counterparty, operational, credit, etc., I worry about a repeat of the quant meltdown of August 2007. It’s thought that a long-short hedge fund suddenly liquidated its positions then. Because many hedge funds dynamically adjust their positions based on recent volatility and returns, the sudden price movements induced by the liquidation set off a self-reinforcing cycle where more and more hedge funds cut the same positions. The stampede to the exits resulted in huge and sudden losses. However, the terror was short-lived. The funds that sold out lost a lot of money; the funds that held onto their positions looked fine by month-end. AQR is cognizant of this risk and so keeps its holdings liquid and doesn’t go overboard with the leverage. However, it is hard for outsiders to assess whether AQR is doing enough to mitigate this risk. I think they are, because I trust AQR’s people, but I’m well aware that I could be wrong. Bottom line One of the best alternative funds available to mutual-fund investors.

The Sustainable Active Investing Framework: Simple, But Not Easy

Summary In order to achieve sustainable success as an active investor, one needs skill, an understanding of human psychology, and an appreciation of market incentives (behavioral finance). In today’s world of instant information, super computers, and interconnected markets, true arbitrage – profits earned with zero risk after all possible costs – rarely, if ever, exists. To be successful over the long haul, an active investor needs to be good at identifying market opportunities created by poor investors, but also skilled at identifying situations where savvy market participants are unable or unwilling to act. For a long-term investor, value investing was the optimal decision, but for many of the smartest asset managers in the world, value investing was simply not feasible as a business. By Wesley R. Gray, Ph.D. The debate over passive versus active investing is akin to Eagles vs. Cowboys or Coke vs. Pepsi. In short, once our preference for one style over the other is established, it becomes a proven fact or incontrovertible reality in our minds. This post is not meant to convert a passive investor into an active investor; however, we do explain why we believe some active investing approaches can logically beat passive strategies over a reasonably long-time horizon (clearly it won’t work forever ). Our framework also helps investors decipher the quantitative ” factor zoo ,” to determine if data-mining computers have actually identified a sustainable active strategy or a pipe dream. We cannot overemphasize that identifying sustainable alpha in the market is no cakewalk. More importantly, being smart, having superior stock-picking skills, or amassing an army of PhDs to crunch data is only half of the equation. Even with those tools, you are still only one shark in a tank filled with other sharks. All sharks are smart, all sharks have an MBA or PhD from a fancy school, and all the sharks know how to analyze a company. Maintaining an edge in these shark-infested waters is no small feat, and one that only a handful of investors has accomplished. In order to achieve sustainable success as an active investor, one needs skill, an understanding of human psychology, and an appreciation of market incentives (behavioral finance). We start our journey where mine began: as an aspiring PhD student studying at the University of Chicago. Let the adventure begin… Into the Lion’s Den: Pitching Market Inefficiency in the Land of Efficient Markets I entered the University of Chicago Finance PhD program 13 years ago (Fall 2002). It was the beginning of a painful, but highly enlightening journey into the world of advanced finance. For context, the UChicago finance department maintains a rich legacy associated with having established, and successfully defended, the Efficient Market Hypothesis (EMH). PhD students in the department spend their first 2 years in grueling, graduate-level finance courses infused with highly technical mathematics and statistics. The final 2-4 years are dedicated to dissertation research. I would describe these conditions as: “sweatshop factory meets international mathematics competition.” The program was tough. After surviving my first 2 years of intellectual waterboarding, I needed a break. I took a unique “sabbatical,” and decided to join the United States Marine Corps for 4 years. Long story short: I wanted to serve and I wasn’t getting any younger. I returned to the PhD program in 2008 to finish my dissertation. My time in the Marines taught me a lot of things, but one lesson stood out from the rest: ” Make Bold Moves .” And of course, what is the boldest move one can do at the University of Chicago? Write research that claims markets aren’t perfectly efficient. OK…sounds bold…how the heck are we going to show this? Inefficient Market Mavericks: Value Investors I wanted to determine if traditional value-investors can “beat the market.” I had been following a value investing strategy with my own account for over 10 years. I was a tried-and-true believer in the Ben Graham mantra: margin of safety. The story that long-term value investing beats the market was compelling, but much of the rhetoric in academic circles, and the research published in top-tier academic journals, suggested otherwise. The “value” debate was reinvigorated by the famous Fama and French 1992 paper, ” The Cross-Section of Expected Stock Returns .” The paper sparked a debate over whether or not the so-called “value premium,” or the large spread in historical returns between cheap stocks and expensive stocks, was due to extra risk or to mispricing. The risk-based argument for the value premium didn’t sit well with me as a Ben Graham aficionado. Graham and Buffett were famous for beating the market over long periods of time by buying cheap stocks. I began digging. I started collecting data on nearly 4,000 stock picks submitted by top fund experts, asset managers, and value enthusiasts to Joel Greenblatt’s website, ValueInvestorsClub.com . And this wasn’t just any club. Highly selective, screened for quality, and regarded as one of the best sites on the web for market ideas, these members were true heavy hitters in the value investing arena (see appendix for details). After a year of toil and anguish, I compiled all 4,000+ recommendations into a database so I could conduct a thorough analysis. The results were extremely compelling-there was strong evidence that these “Varsity Value Investors” exhibited significant stock picking skills. Excited to share my new findings, I eagerly drafted a paper, which included the following abstract: Figure 1a: “Value investors have stock picking skills.” (click to enlarge) I immediately sent my draft dissertation to my advisor, who happened to be the godfather of the Efficient Market Hypothesis. Eugene Fama, a strong – if not the strongest – supporter of EMH reviewed my results. The response I received was less than ideal: Figure 1b: “Your conclusion has to be false.” (click to enlarge) I sped down to Dr. Fama’s office to get some clarification. The last thing I wanted was a year’s worth of blood, sweat, and tears to get tossed out the window. I had to know exactly why Dr. Fama disagreed. Sweating profusely, with the prospect of the PhD title slowly slipping away, I asked one of the world’s most famous financial economists, for clarification. Fama responded: “Listen, the data and analysis are sound, you simply can’t say that, “value investors have stock picking skills,” but instead you need to qualify that statement with, ” the sample of value investors we investigated ,” have stock picking skills.” I sat back, relieved . Sounds like I might graduate after all. Prof. Fama was correct: My findings did not suggest that all value investors have skill, merely the sample I was investigating had skill. Crisis averted. I graduated the following year, with my research affirming, at least for me, that markets were not perfectly efficient. But nagging questions abounded: What gives a certain investor “skill”? What characteristics drive alpha? Why can one active manager (winner) systematically take money from another active manager (loser)? Enter behavioral finance and “rational” investors As I plowed through thousands of stock-picking proposals, one key takeaway was present. These analysts were good. They all had skill. They all were smart. They all made compelling cases that, statistically, outperformed in aggregate. But that couldn’t be the only reason why they outperformed. As I mentioned above, everyone in this market is smart and capable…intellect alone can’t be the driver of superior returns. What enabled these varsity stock pickers to buy low and sell high and why was the Efficient Market Hypothesis not stopping them ? Enter behavioral finance. John Maynard Keynes, a shrewd observer of financial markets and a successful investor, highlights the paradox that behavioral finance represents. At one point, Keynes was nearly wiped out while speculating on leveraged currencies (despite being a highly successful investor). This downfall led him to share one of the greatest investing mantras of all time: ” Markets can remain irrational longer than you can remain solvent .” – attributed to John Maynard Keynes Keynes’ quip highlights two key elements of real world markets that the efficient market hypothesis doesn’t consider: investors can be irrational and arbitrage is risky. In academic parlance, “investors can be irrational” boils down to an understanding of psychology. “Arbitrage is risky” boils down to what academics call “limits to arbitrage”, or market frictions. These two elements – psychology and market frictions – are the building blocks for behavioral finance (depicted in Figure 2, below). Figure 2: The 2 Pillars of Behavioral Finance See Nick Barberis’ website for examples of excellent scholarly behavioral finance research http://faculty.som.yale.edu/nicholasbarberis/ First, let’s discuss limits to arbitrage, more commonly referred to as market frictions. The efficient market hypothesis predicts that prices reflect fundamental value. Why? People are greedy and any mispricings are immediately corrected by those smart, savvy investors that can make a quick profit. But in today’s world of instant information, super computers, and interconnected markets, true arbitrage – profits earned with zero risk after all possible costs – rarely, if ever, exists. Most arbitrage involves some form of cost or risk (risk of buying at the wrong price, risk of paying high transaction costs, liquidity, etc). Let’s look at a simple example: Arbitraging oranges: Oranges in Florida cost $1 each. Oranges in California cost $2 each. The fundamental value of an orange is $1 (Assumption for the example). The EMH suggests arbitrageurs will buy in Florida and sell in California until California oranges cost $1. But what if it costs $1 to ship oranges from Florida to California? Prices are decidedly not correct – the fundamental value of an orange is $1. But there is no free lunch since the frictional costs are a limit to arbitrage. In short, the smart, savvy arbitrageurs are prevented from exploiting the opportunity (in this case, due to frictional costs). Next, a discussion of psychology. Newsflash: human beings are not rational 100% of the time. To any one who has been married, driven without wearing a seat belt, or hit the snooze button on their alarm clock, this should be pretty clear. And the literature from top psychologists is overwhelming for remaining naysayers. Daniel Kahneman, the Nobel-prize winning psychologist, and author of New York Times Bestseller Thinking, Fast and Slow , tells a story of 2 modes of thinking: System 1 and System 2. System 1 is the “think fast, survive in the jungle” portion of the human brain. When we start to run away from a poisonous snake (even if later on, it turns out to be a stick), you are relying on your trusty System 1. System 2 is the analytic and calculating portion of the brain that is slower, but 100% rational. When you are comparing the costs benefits of refinancing your mortgage, you are likely using System 2. System 1 keeps us alive in the jungle. System 2 helps us make rational decisions for long-term benefit. Both serve their purpose; however, sometimes one system can muscle onto the turf of the other. When System 1 starts making System 2 decisions, we can get in a lot of trouble. Do any of these sound familiar? “That diamond bracelet was so beautiful, I just had to buy it.” “Dessert comes free with dinner, of course, I had to have some.” “Home prices never seem to go down. We gotta buy!” Unfortunately, the efficiency of System 1 comes with drawbacks-what keeps us alive in the jungle isn’t necessarily what saves us from ourselves in the markets. Now, let’s combine our irrational investors (System 1 types) with the limits of arbitrage that we discussed above (smart people that simply can’t take advantage of the System 1 types for some reason). Combining the bad behaviors with the limits that smart people run into could be a very compelling strategy indeed. For example, consider the concept of “noise traders” (think day traders that ignore fundamentals and trade on “gut” – classic System 1 types). These irrational noise traders dislocate prices, but because they are irrational, arbitragers have a hard time pinning down the timing when these System 1 types will make their trades. Thus, an element of risk arises when an arbitrageur tries to exploit an irrational noise trader. Brad De Long, Andrei Shleifer, Larry Summers, and Robert Waldmann describe this phenomenon, ” Noise Trader Risk in Financial Markets ,” in the Journal of Political Economy in 1990. Here is the abstract from the paper: We present a simple overlapping generations model of an asset market in which irrational noise traders with erroneous stochastic beliefs both affect prices and earn higher expected returns . The unpredictability of noise traders’ beliefs creates a risk in the price of the asset that deters rational arbitragers from aggressively betting against them. As a result, prices can diverge significantly from fundamental values even in the absence of fundamental risk. Moreover, bearing a disproportionate amount of risk that they themselves create enables noise traders to earn a higher expected return than rational investors do. The model sheds light on a number of financial anomalies, including the excess volatility of asset prices, the mean reversion of stock returns, the underpricing of closed-end mutual funds, and the Mehra-Prescott equity premium puzzle. Let’s translate this into English: Day traders mess up prices, but these people are idiots, and you can’t really time the strategy of an idiot, so most smart people don’t even try take advantage of them. Consequently, prices move around a lot more than they should because no one is stopping the idiots. Moreover, since prices move around a lot more, the returns can be higher, so idiots think they are actually good at timing markets, which incentivizes more idiots to do more idiotic things. This combination of bad behavior and market frictions describes what behavioral finance is all about: Behavioral bias + market frictions = interesting impacts on market prices. And while this working definition of behavioral finance may seem simple, clearly, the debate surrounding behavioral finance is far from settled. In one corner, the efficient market clergy claims that behavioral finance is heresy, reserved for those economists who have lost their way from the “truth.” They point to the evidence that active managers can’t beat the market and incorrectly conclude that prices are always efficient as a result. In the other corner, practitioners that leverage “behavioral bias” suggest that they have an edge because they exploit investors with behavioral bias. Yet, practitioners who make this claim often have terrible performance. So what is the disconnect? The disconnect lies in the fact that both sides of the argument fail to assess both the bad behaviors of the market AND the limits to arbitrage. Passive investors assume there are no limits to arbitrage and markets are perfectly efficient. Practitioners who claim to exploit behavioral bias believe they are the smartest poker players at the table, but they ignore the fact there are other smart poker players who have also identified behavioral bias in the marketplace. Good Investing is like Good Poker: Pick the Right Table Behavioral finance outlines a framework for being a successful active investor: Identify market situations where behavioral bias is driving prices from fundamentals (e.g., identify market opportunity) Identify the actions/incentives of the smartest market participants (e.g., identify market competition) Find situations where mispricing is high and competition is low In the context of poker, a similar strategy is critical for success: Know the fish at the table (opportunity is high) Know the sharks at the table (competition is low) Find a table with a lot of fish and few sharks In Figure 3 below, the graphic outlines the questions we must ask as an active investor in the marketplace. Who is the worst poker player at the table? Who is the best poker player at the table? To be successful over the long-haul, an active investor needs to be good at identifying market opportunities created by poor investors, but also skilled at identifying situations where savvy market participants are unable or unwilling to act. Figure 3: Identifying Opportunity in the Market (click to enlarge) Understanding the Worst Poker Players While stationed in Iraq, I saw stunning displays of poor decision-making. Obviously, in areas where violence could break out at any moment, it was of paramount importance to stay focused on standard operating procedures. But in extreme conditions where temperatures regularly reached over 125 degrees, stressed and sleep-deprived humans can sometimes do irrational things. In Figure 4, I am situated at a combat checkpoint in Haditha, a village in Al Anbar Province. I am explaining to my Iraqi counterparts how to set up a tactical checkpoint. A quick inspection of the photograph highlights how a stressful environment can make some people do irrational things. My Iraqi friend directly beside me in the photo is wearing a Kevlar helmet, carrying extra ammunition, and has a water source on his gear. These are all rational decisions: Kevlar helmets are important because mortar rounds can kill you. Rational reaction: wear your Kevlar helmet! Ammunition is important because shooting back can save you. Rational reaction: carry ammunition! Water is important because 125 degree heat can kill you. Rational reaction: carry water! While all of these things sound rational, the Iraqi on the far right isn’t wearing a Kevlar, isn’t carrying extra ammo, and doesn’t have a source of water. Figure 4: Chaotic Environments + Emotion + Stress = Bad-Decision Making (click to enlarge) Is my irrational Iraqi friend abnormal? Not really. All human beings suffer from behavioral bias and these biases are magnified in stressful situations. After all, we’re only human. Below I laundry list a plethora of biases that can affect investment decisions on the “financial battlefield”: Overconfidence (“I’ve been right before…”) Optimism (“Markets always go up”) Self-attribution bias (I called that stock price increase…) Endowment effect (“I have worked with this manager for 25 years, he has to be good”) Anchoring (“The market was up 50% last year, I think it will return between 45 and 55% this year.”) Availability (“You see the terrible results last quarter? This stock is a total dog!”) Framing (“Do you prefer a bond that has a 99% chance of paying its promised yield or one with a 1% chance of default? – hint, it’s the same bond) Psychology research is clear : humans are flawed decision-makers. But even if we identify poor investor behavior, that doesn’t necessarily mean a market opportunity exists that we can exploit. As discussed, other smart investors will surely be privy to the situation and they will immediately exploit the opportunity, putting pressure on our ability to profitably take advantage of market participants. We want to avoid competition, but to avoid competition, we need to understand the competition. Understanding the Best Poker Players In the context of financial markets, the best pokers players are often those investors managing the largest amounts of money. They are the hedge funds with all-star managers or institutional titans running massive fund complexes. The resources available to these investors are incredible and vast. One can rarely overpower this sort of opponent. Thankfully, overpowering isn’t the only way to slay Goliath. One can out maneuver these titans because many top players are hamstrung by economic incentives. Before we dive into the incentives of these pokers players, let’s quickly review the concept of arbitrage. The textbook definition of “arbitrage” involves a costless investment that generates riskless profits, by taking advantage of mispricings across different instruments representing the same security. In practice, arbitrage entails costs as well as the assumption of risk, and for these reasons there are limits to the effectiveness of arbitrage. There is ample evidence for such limits to arbitrage. Examples include the following: Fundamental Risk. Arbitragers may identify a mispricing of a security that does not have a perfect substitute that enables riskless arbitrage. If a piece of bad news affects the substitute security involved in hedging, the arbitrager may be subject to unanticipated losses. An example would be Ford and GM – similar stocks but they are not the same company. Noise Trader Risk. Noise traders limit arbitrage. Once a position is taken, noise traders may drive prices farther from fundamental value, and the arbitrageur may be forced to invest additional capital, which may not be available, forcing an early liquidation of the position. Implementation Costs. Short selling is often used in the arbitrage process, although it can be expensive due to the “short rebate,” which represents the costs to borrow the stock to be sold short. In some cases, such borrowing costs may exceed potential profits. If short rebate’s fees are 10% or 20%, then arbitrage profits must exceed these costs to achieve profitability. That’s a tall order. The three frictions mentioned are important, but the biggest, most underestimated, issue for many smart poker players are the incentives of their clients: Performance Requirements/Agency Costs. The biggest short-circuit to the arbitrage process is limits imposed by performance expectations. Consider the pressures produced by “tracking error,” or the tendency of returns to deviate from a benchmark. Say you have a job investing the pensions of 100,000 firemen. You have a choice of investment strategies. You can invest in: Strategy A: A strategy that you know (by some magical means) will beat the market by 1% per year over 25 years. You also know that you will never underperform the index by more than 1% in a given year; or Strategy B: An arbitrage strategy that you know (again by some magical means) will outperform the market, on average, by 5% per year over the next 25 years. The catch is that you also know that you will have a 5-year period where you underperform by 5% per year. Which strategy do you choose? If you are a professional money manager, the choice is often obvious, despite being sub-optimal for their investors: choose A and avoid getting fired. Why choose A? It a bad long-term strategy relative to B! The incentives of an investment manager are complex. Fund managers are not the owners of the capital, but work on behalf of someone who owns the capital. Financial mercenaries, if you will. These managers sometimes make decisions that ensure they maintain a job, but not necessarily maximize risk-adjusted returns for their investors. For these managers, relative performance is everything and tracking error is dangerous. In the example above, the tracking error on strategy B is just too painful to digest. Those firemen are going to start screaming bloody murder during the 5 years of underperformance, and the manager won’t be around long enough to see the rebound when it occurs after year 5. But if the manager follows strategy A, he can avoid career risk and the fireman’s pension will not endure the stress of a prolonged downturn. Over long time frames, this arbitrage opportunity is a mile wide – you could drive a proverbial truck through it. But this agency problem – the fact that the owners of the capital can, in lean times, begin to doubt the abilities of the arbitrageur and pull their capital – precludes smart managers from taking advantage of it! The threat of short-term tracking-error is very real. The following quotes are from a WSJ article written on Ken Heebner’s CGM Focus Fund. First, the WSJ facts on Ken’s fund performance: “Ken Heebner’s $3.7 billion CGM Focus Fund, rose more than 18% annually and outpaced its closest rival by more than three percentage points.” Next, the WSJ facts on the performance of investors in Ken’s fund: “Too bad investors weren’t around to enjoy much of those gains. The typical CGM Focus shareholder lost 11% annually in the 10 years ending Nov. 30, according to investment research firm Morningstar Inc.” Ken’s fund compounded at 18% a year, and yet, the investors in the fund lost 11% a year, a reflection of the typical investor’s inability to time in and out of Ken’s fund. When Ken’s fund was underperforming (and the opportunity was high), they pulled capital; when his fund was outperforming (and opportunity was low), they invested more capital. On net, Ken looks like a genius, but few investors actually gained from Ken’s ability-a lose-lose proposition. Ken’s Heebner’s experience highlights this conflict of interest problem for asset managers. The dynamics of this problem are explored in a ground-breaking 1997 Journal of Finance paper by Andrei Shleifer and Robert Vishny, appropriately called, ” The Limits of Arbitrage .” The takeaway from Ken Heebner’s experience and Shleifer and Vishny’s insights is as follows: Smart money managers avoid long-term market opportunities if their investors are focused on the short term. And can you blame them? If an asset manager is compared to a benchmark every month, year, or even five years, then the client clearly cares more about short-term performance as opposed to long-term returns. Whether the asset manager is proactively protecting his / her job, or the client is actively driving the conversation around near-sighted metrics, the end result is the same. Keys to Long-Term Active Management Success We’ve outlined a few elements of the marketplace. First, some investors are probably making poor investment decisions, and second, some managers are unable to exploit genuine market opportunities. We encapsulate these elements in a simple equation for sustainable long-term performance in Figure 5. Figure 5: The Long-Term Performance Equation (click to enlarge) The long-term performance equation has 2 core elements. First, sustainable alpha. By sustainable alpha, we mean a process that systematically exploits mispricings caused by behavioral bias in the marketplace (i.e., find the worst poker players). Next, sustainable clients. Sustainable clients are important, because many of the best poker players in the game (think large asset managers with a majority of the capital), are unable to pursue long-term opportunities because their client base is too focused on the short-term (i.e., find the best poker players and understand their actions). Based on the equation, if one could identify a processes with an edge (i.e., sustainable alpha) that require long-term discipline to exploit (i.e., sustainable clients), it is likely that this process will serve as a promising long-term strategy. Moving from Theory to Practice Much of the discussion above outlines an intellectual framework for successful active investing. The building blocks to create sustainable performance, framed appropriately, are simple to follow. To put a little bit of meat on the bone, we provide an example of how this construct works in practice. Our example is value investing, the practice of purchasing portfolios of firms with low prices to some fundamental price metric (e.g., P/E, P/B, or EBITDA/TEV). Figure 6 below is taken from our paper, ” Analyzing Valuation Measures: A Performance Horse Race over the Past 40 Years ,” published in the Journal of Portfolio Management. In the paper, we run a horse race among valuation metrics and tally the results. Row “1” is the performance of the top 20% most expensive stocks and row “5” is the performance of the 20% cheapest stocks, annually rebalanced. Figure 6: Value Investing Results (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. What do you notice? Across the board, the historical evidence is clear: cheap stocks have outperformed expensive stocks – by a wide margin. The equally-weighted portfolio of cheap stocks measured by EBITDA/TEV earns a 17.66% compounded annual return, whereas, the most expensive stock portfolio earns 7.97%-nearly a 10% spread in performance. A spread of ~10% per year, compounded over a long time period, would lead to huge differences in the value of a portfolio. One can argue over reasons why the spread is large-risk or mispricing-but nobody can dispute the empirical fact: Cheap stocks have outperformed expensive stocks. Now we Have the Facts. Next Step, Identify the Bad Poker Players at the Value Investing Table Let us first identify those market participants that are making poor decisions. The poor poker players at the value investing table were first discussed by Lakonishok, Shleifer and Vishny (LSV) in their paper, ” Contrarian Investment, Extrapolation, and Risk. ” The poor behavior they investigate is referred to as representative bias , a situation where investors naively extrapolate past growth rates too far into the future. Figure 7 below highlights the concept from the LSV paper using updated data from Dechow and Sloan’s 1997 paper, “Returns to Contrarian Investment Strategies: Tests of Naive Expectations Hypothesis.” The horizontal axis represents cheapness and sorts securities into buckets based on expensive stocks (low book-to-market ratios) and cheap stocks (high book-to-market ratios). The vertical axis represents past 5 year earnings growth rates for the respective valuation buckets. Stocks in Bucket 10 are the cheapest, and they exhibited (on average) ~ a negative 1% earnings growth over the past five years. The relationship is almost perfectly linear. Cheap stocks have terrible past earnings growth, whereas expensive stocks have had wonderful earnings growth over the past 5 years. No real surprise there, but interesting to see how the data fits so well to this relationship. Figure 7: Investors Extrapolate Past Growth Rates into the Future (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Figure 7 underscores the general market expectation that past earnings growth rates will continue into the future. Expensive firms are expensive because market participants believe past growth rates will continue. Meanwhile, cheap stocks are cheap for a reason – the market believes their poor past growth rates will continue as well. But does this really happen? Do cheap stocks have poor future growth and do expensive stocks have strong future growth? We can test whether or not this market assumption occurs, on average, OR if there is a systematic flaw in market expectations. In Figure 8, we look at what happens to earnings growth over the next five years . Specifically, did the cheap stocks continue to exhibit terrible earnings growth as predicted? Did expensive stocks maintain their terrific earnings growth? The chart below is evidence of systematically poor poker playing. The realized earnings growth (dark bars) systematically reverts to the average growth rate across the universe. Cheap stocks outperform growth expectations and expensive stocks underperform growth expectations, systematically . This unexpected deviation from expectations leads to price movements that are favorable for cheap “value” stocks, and unfavorable for expensive “growth” stocks. Growth investors underperform; value investors outperform; and passive investors receive something in between. This behavioral phenomena explains much of the spread in returns between value and growth securities. (We explore a related concept by Dechow and Sloan in the appendix ). Figure 8: Realized Growth Rates Systematically Mean-Revert (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. To summarize: Markets, on average, throw cheap stocks under the bus and clamor for expensive stocks. From a poker playing perspective, this is an example of a systematically poor strategy. Assuming that a great hand last round equals a winning hand in the next round is a losing approach. But that’s what people do in the financial markets! This is how the worst poker players are playing the game. But what are the best poker players doing and can they actually exploit the poor poker players? Who are the Best Poker Players at the Value Investing Table? It is unlikely that we will ever be the smartest investors in the world – somebody will always be smarter. But if we aren’t going to be the best poker player at the investing table, how can we win? We can win by finding those market opportunities where the smartest investors are reluctant to participate. But when will smart investors NOT want to participate? Using our example above, who wouldn’t want to partake in what appears to be a straightforward way to beat the market (buy cheap stocks, hold, sell once earnings growth reverts to the mean)? As mentioned previously, really smart investors often get endowed with large amounts of capital from a large group of investors (think DFA, AQR, Blackrock, Fidelity, and so forth). This makes sense on many levels-investors want to give their money to smart people. The challenge is that the really smart investors are often managing money on behalf of investors that suffer from behavioral biases (System 1 thinkers). Shleifer and Vishny highlight, and the Ken Heebner example confirms that many smart market participants are hamstrung by the short-term performance measures imposed upon them by their investors. “How did you perform against the benchmark this quarter? What do your results look like year to date? What new trends are you exploiting this month?” All of these questions are commonplace in the market. The threat of being fired and replaced with a passive portfolio of Vanguard funds is always close in the rearview mirror. And when job security / client expectations trump long-term value creation, funny things happen. So what is the difference between short-term (incorrect) and long-term (correct) horizons? How patient do our good poker players have to be in order to realize their edge? Let’s consider an example from 1994 to 1999. Barron’s famously stated the following regarding Warren Buffett’s relative performance: “Warren Buffett may be losing his magic touch.” Barron’s observation, in many respects, was fully warranted. Value investors as a group were destroyed by the market in the late 1990’s. Generic value investing (shown in Figure 9 below) underperformed the broader market by a large margin for 6 long years! Figure 9: Value Investing Can Underperform (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Clearly, being a value investor requires patience and faith that few investors possess. In theory, value investing is easy – buy and hold cheap stocks for the long haul – in practice, true value investing IS ALMOST IMPOSSIBLE . Using Ken French’s data , we examined just how painful it was to be a value investor in the late ’90s. We examine the returns from 1/1/1994-12/31/1999 for a Value portfolio (High B/M quintile, VW returns), Growth portfolio (Low B/M quintile, VW returns), Risk-Free return (90-day T-Bills), and SP500 total return. Results are shown in Figure 10 below. All returns are total returns and include the reinvestment of distributions (e.g., dividends). Results are gross of fees. Figure 10: Summary Statistics (1994-1999) (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Talk about a beat-down! Looking at the annual returns (shown in Figure 11), value investing lost every year to a simple market allocation! Figure 11: Annual Returns (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. A plain vanilla index fund outperforms value six years in a row, sometimes by double digit figures! To simulate what these value managers went through, ask yourself this question: If your asset manager underperformed a benchmark for six years, at times by double digits, would you fire them? For 99.9% of investors, that answer would be a resounding YES (and giving someone a six-year trial period is probably out of the question as well). Most-if not all-professional asset managers would be fired given this underperformance. Truly active value investing is practically impossible to follow for many pros. After viewing the 6-year underperformance of value, we need to highlight 2 conclusions: For a long-term investor, a 6-year stretch of pain is a truly great thing. Why? Because the competition from the best pokers players is going to be limited, careers and tracking error trump performance! Sustainable active investing requires special clients. Disciplined investors with long-term horizons that are indifferent to short-term relative performance are essential. These unique clients are what we label “Sustainable Clients” in Figure 5. Now, suspend reality for a moment and let’s imagine that an active value manager had clients that didn’t flee for the exits in 1999. What would their hypothetical returns look like in the long run? As you can see below in Figure 12, value quickly recovers and outperforms the entire time period thereafter. Here are the returns to the same portfolios from 1/1/2000 – 12/31/2013, the 14 years following the 6-year underperformance: Figure 12: Summary Statistics (2000-2013) (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Sticking with the value strategy, although painful, was richly rewarded with a 5%+ edge – per year – over the market benchmark from 2000-2013. Over the entire cycle, patient, disciplined investors were also rewarded. Here are the results (Figure 13) over the entire time period, measured from 1/1/1994 to 12/31/2013: Figure 13: Summary Statistics (1994-2013) (click to enlarge) The results are hypothetical results and are NOT an indicator of future results and do NOT represent returns that any investor actually attained. Indexes are unmanaged, do not reflect management or trading fees, and one cannot invest directly in an index. Additional information regarding the construction of these results is available upon request. Bottom line: For a long-term investor, value investing was the optimal decision, but for many of the smartest asset managers in the world, value investing was simply not feasible as a business. Putting it all together We’ve used value investing as a laboratory to highlight how the sustainable active investing framework can identify long-term winning strategies. Value investing is not the only active strategy that fits nicely in this paradigm. There are other investing approaches that follow similar fact patterns, such as concentrated momentum, and concentrated low-volatility strategies. The lesson from all of these approaches is that successful active investing is simple, but not easy. If active investing were easy, everyone would do it, and if it were too complex, it probably wouldn’t work. In summary, our long-term performance equation highlights 2 required elements: A sustainable process that exploits systematic investor expectation errors. A sustainable clientele that has a true long-term horizon. (click to enlarge) These 2 pieces of the puzzle map back to the classic lessons of poker: Identify the worst poker player at the table. Identify the best poker player at the table. (click to enlarge) And these classic lessons map into the 2 pillars of behavioral finance: Understanding behavioral bias and how investors form expectations. Understanding market frictions and how they affect market participants. So the next time you hear some market commentator suggest that successful active investing is impossible, simply nod in agreement, and walk away. The less competition, the better. Appendix Value Investors Club Background Valueinvestorsclub.com (VIC) is an ” exclusive online investment club in which top investors share their best ideas. ” Many business publications have heralded the site as a top-quality resource for those who can attain membership (e.g., Financial Times, Barron’s, BusinessWeek, and Forbes ). Joel Greenblatt and John Petry, managers of a large hedge fund, Gotham Capital, founded the site in 2000 with $400,000 of start-up capital . Their goal was for VIC to be a place for the highest-quality ideas on the Web. The investment ideas submitted on the club’s site are broad but are best described as fundamentals-based. VIC states that it is open to any well thought out investment recommendation, but that it has particular focus on long or short equity or bond-based recommendations, traditional asset undervaluation situations, such as high book-to-market, low price-to-earnings, liquidations, etc., and investment ideas based on the notion of value as articulated by Warren Buffett (firms selling at a discount to their intrinsic value irrespective of common valuation ratios). VIC managers try to ensure that only members with significant “investment ability” are admitted to the club . Accordingly, membership in the club is capped at 250 and the approximate acceptance rate is 6% (Per email correspondence with VIC management). As a result of the low acceptance rate, membership started at 90 members in 2000 and did not reach the 250 cap until 2007. Admittance is based solely on a detailed write-up of an investment idea (typically 1000 to 2000 words). Employer background and prior portfolio returns are not part of the application process. If the quality of the independent research is satisfactory and the aspiring member deemed a credible contributor to the club, he is admitted. Once admitted, members are required to submit at least two “high-quality” investment ideas per year to continue as members and receive unrestricted access to the ideas and comments posted by the VIC community. Statistics Definitions CAGR: Compound annual growth rate Standard Deviation: Sample standard deviation Downside Deviation: Sample standard deviation, but only monthly observations below 41.67bps (5%/12) are included in the calculation Sharpe Ratio (annualized): Average monthly return minus treasury bills divided by standard deviation Sortino Ratio (annualized): Average monthly return minus treasury bills divided by downside deviation Worst Drawdown: Worst peak to trough performance (measured based on monthly returns) Naive Forecasts or Naive Reliance of Bad Forecasts? Dechow and Sloan 1997 argue that the value anomaly is not driven by naive extrapolation by irrational investors as LSV 1994 suggested, but rather, the outperformance of value stocks is driven by market participants’ flawed faith in analysts’ forecasts, which are systematically overoptimistic. In Appendix Figure below, Dechow and Sloan look at the relationship between the earnings growth forecasted by sell-side analysts and the actual earnings growth (note, the sample used below is different than the sample above due to I/B/E/S data constraints). The chart below first splits firms into 10 buckets based on their price. The left bucket contains the most expensive firms, while the far right bucket contains the cheapest firms. The black bars represent past earning growth rates, while the blue bars represent future earnings growth rates. What do we see? A few things: Systematic sell-side overoptimism (blue bars are always higher than the red bars) Mean-reversion in fundamentals, unappreciated by sell-side analysts (red bars are roughly equal across buckets) Appendix Figure: Value Investing Results (click to enlarge) If investors anchor on sell-side expectations about the future, investors will be most surprised when the realized growth on expensive stocks underwhelms forecasts, and investors will be least surprised when the realized growth rates on cheap stocks underwhelm forecasts. Original Post