Big Ideas
These blog entries offer some big ideas of lasting value relevant for investing and trading.
September 12, 2024 - Big Ideas, Bonds, Commodity Futures, Equity Premium, Real Estate
How does the performance of the global multi-class market look when evaluated at a monthly frequency? In their August 2024 paper entitled “The Risk and Reward of Investing”, Ronald Doeswijk and Laurens Swinkels assess global investing rewards and risks via an exhaustive $150 trillion portfolio of investable global assets priced at a monthly frequency, enabling greater granularity of risk estimates than does the annual frequency used in prior research. They consider five asset classes: equities, real estate, non-government bonds, government bonds and commodities. For these classes and the multi-class market, they examine stability of Sharpe ratios and severity, frequency and duration of drawdowns. Their default base currency is the U.S. dollar, but they measure effects of choosing one of nine other currencies on global market portfolio performance. They calculate excess investment returns generally relative to government bill yields as a proxy for return on savings. Using monthly returns for all investable global assets with reinvested dividends during 1970 through 2022, they find that:
Keep Reading
August 8, 2024 - Big Ideas, Equity Premium
Has ease of access to, and processing of, firm accounting data suppressed stock anomalies by leveling the information playing field? In their July 2024 paper entitled “The Effect of New Information Technologies on Asset Pricing Anomalies”, David Hirshleifer and Liang Ma test the effects of mandating Electronic Data Gathering, Analysis and Retrieval (EDGAR) during April 1993 to May 1996 and eXtensible Business Reporting Language (XBRL) during 2009 to 2011 on well-known stock return anomalies attributed to mispricing. EDGAR makes firm accounting data available electronically, and XBRL reduces the cost of processing such data by making it machine readable. They focus on eight anomalies, five of which rely on accounting data (accruals, net operating assets, investment-to-assets ratio, asset growth and gross profitability) and three of which rely on market data (momentum, net stock issuance and composite equity issuance). They examine effects of EDGAR/XBRL implementations on each anomaly individually, on the five accounting anomalies in aggregate and on the three non-accounting anomalies in aggregate. They carefully consider EDGAR/XBRL implementation dates and fiscal years by firm to compare anomalies for implemented and non-implemented sets of stocks. Using firm characteristics and monthly returns for a broad sample of U.S. common stocks during July 1992 through June 1997 (July 2009 through June 2012) for the EDGAR (XBRL) sample, they find that: Keep Reading
August 7, 2024 - Big Ideas
What are the best ways to apply backtesting in the development of investment strategies? In their July 2024 paper entitled “The Three Types of Backtests”, Jacques Joubert, Dragan Sestovic, Illya Barziy, Walter Distaso and Marcos Lopez de Prado offer guidance on backtesting best practices by reviewing:
- Strengths and weaknesses of the three main types of backtests (walk-forward, resampling and Monte Carlo simulation).
- Ways to enhance the quality of backtests.
- Mitigation of the confounding effects of running multiple tests on the same data.
Based on theoretical and practical considerations, they conclude that:
Keep Reading
May 6, 2024 - Big Ideas, Investing Expertise
Do widely used associational (rather than causal) methods used by researchers to specify factor models of asset returns work? In their March 2024 paper entitled “The Case for Causal Factor Investing”, Marcos Lopez de Prado, Alex Lipton and Vincent Zoonekynd describe the shortcomings of associational methods of factor model development. They address p-hacking (data snooping), with focus on interferences from variables called colliders (causally influenced by two or more variables) and confounders (influencing both dependent and independent variables). They further describe what can be done to correct these shortcomings. Based on logical/mathematical analysis and the body of financial markets research, they conclude that:
Keep Reading
April 1, 2024 - Big Ideas
Technological disruption (as experienced with widespread electrification and the rise of the world-wide web, and imagined for artificial intelligence) is a recurring feature of human history. Such disruptions presents risks and opportunities for investors. How can investors manage such risk? In their February 2024 paper entitled “Technological Disruption and Long-Term Investors: Managing Risk and Opportunities”, Alistair Barker, Ashby Monk and Dane Rook describe approaches to managing investment risks from technological disruptions of varying scales and velocities. Using outputs of interviews with 20 elite long-term investors worldwide, they find that:
Keep Reading
March 12, 2024 - Big Ideas, Investing Expertise
Some exchange-traded funds (ETF) focus on capturing potentially attractive factor premiums or thematic niches. Their histories offer a way to test these concepts live. We have conducted many such tests, listed here to offer a global view.
- “U.S. Equity Premium?” – evidence from simple tests on about 21 years of data suggests that stock market leadership shifts between the U.S. and other developed markets over time, but the U.S. may be better overall.
- “Tech Equity Premium?” – evidence from simple tests on 24 years of data suggests long boom, short bust for a tech/innovation-concentrated portfolio. It does not support belief in risk-adjusted outperformance.
- “Measuring the Size Effect with Capitalization-based ETFs” – evidence from simple tests of capitalization-based ETFs with nearly 22 years of data offers little support for belief in a long-term, reliably exploitable size effect among U.S. stocks.
- “Do Equal Weight ETFs Beat Cap Weight Counterparts?” – evidence from simple tests on some equal-weight U.S. equity ETFs offers little support for belief that equal weighting substantially and reliably beats capitalization weighting on a net basis.
- “Measuring the Value Premium with Value and Growth ETFs” – evidence from simple tests with 21.6 years of available data does not support belief that investors reliably capture a value premium via popular value-growth ETFs.
- “Are Equity Momentum ETFs Working?” – available evidence on attractiveness of momentum-oriented U.S. stock and sector ETFs is less than compelling.
- “Are Stock Quality ETFs Working?” – available evidence offers little support for belief that quality ETFs reliably beat respective benchmarks.
- “Are Low Volatility Stock ETFs Working?” – available evidence on attractiveness of low volatility stock ETFs is mixed, with recent data undermining belief in reliability of low volatility outperformance.
- “Are Equity Multifactor ETFs Working?” – available evidence offers very little support for belief that equity multifactor ETFs beat their benchmarks, or that they offer material diversification with comparable performance.
- “Are Hedge Fund ETFs Working?” – evidence on attractiveness of hedge fund-oriented ETFs is mostly negative.
- “Are Managed Futures ETFs Working?” – available evidence on attractiveness of managed futures ETFs in aggregate (but with recent short-sample exceptions) suggests that any benefits from diversification of equities and fixed income are unlikely to compensate for poor absolute returns.
- “Best Safe Haven ETF?” – evidence from simple tests over available and common sample periods suggests that silver, gold, longer-term U.S. Treasuries and investment grade corporate bonds are safe havens, while crude oil is clearly not.
- “Do High-dividend Stock ETFs Beat the Market?” – evidence from data for high-dividend U.S. stock ETFs does not support belief that high-dividend stocks reliably outperform the broad U.S. stock market.
- “Are ESG ETFs Attractive?” – available evidence suggests that ESG ETFs do not perform much differently from selected benchmarks.
- “How Are Renewable Energy ETFs Doing?” – available evidence on attractiveness of renewable energy ETFs is adverse overall, but with bursts of market outperformance perhaps due to novelty.
- “How Are Robotics-AI ETFs Doing?” – available evidence is that robotics-AI ETFs are less attractive than the broader technology exposure offered by QQQ.
- “How Are AI-powered ETFs Doing?” – available evidence does not support belief that ETFs using AI to select and weight assets are particularly attractive.
- “Are iShares Core Allocation ETFs Attractive?” – available evidence regarding attractiveness of iShares Core Asset Allocation ETFs is mixed to negative.
- “Are Target Retirement Date Funds Attractive?” – evidence offers little support for belief that target retirement date mutual funds are preferable to simple stocks-bonds diversification.
- “How Are TIPS ETFs Doing?” – available evidence on attractiveness of TIPS ETFs is mostly favorable after the recent inflation burst, with shorter duration funds offering more reliable inflation protection.
- “Are Equity Index Covered Call ETFs Working?” – available evidence on attractiveness of equity index covered call ETFs as either substitutes for or diversifiers of underlying stock indexes is generally adverse.
- “Are Equity Put-Write ETFs Working?” – available evidence on attractiveness of equity put-write ETFs is adverse.
- “Are IPO ETFs Working?” – available evidence on attractiveness of IPO ETFs is mixed, requiring very high risk tolerance of interested investors.
- “Are Preferred Stock ETFs Working?” – available evidence on attractiveness of preferred stock ETFs relative to a 60-40 stocks-bonds portfolio is largely negative.
- “Do Convertible Bond ETFs Attractively Meld Stocks and Bonds?” – available evidence suggests that convertible bond ETFs sometimes outperform and sometimes underperform a conventional 60-40 stocks-bonds portfolio.
- “Do ETFs Following Gurus/Insiders Work?” – available evidence on attractiveness of guru/insider-following stock ETFs is mostly adverse.
- “Congressional Trade Tracking ETFs” – limited available evidence suggests that investors should choose a fund mimicking holdings of Democrat rather than Republican members of Congress.
- “The Long and Short of Jim” – available evidence does not support belief that funds based on Jim Cramer’s stock/market recommendations reliably produce attractive short-term returns.
- “Live Test of the Stock Market Overnight Move Effect” – early evidence does not support belief in exploitability of the overnight move effect.
The upshot of the above items is that academic factor research and thematic speculations rarely translate to outperformance when implemented with ETFs.
A global caution is that the period since 2009 is strong for broad equity indexes, driven by a few large-capitalization firms. This trend may not persist.
February 2, 2024 - Big Ideas, Investing Expertise
Do linear factor model specification choices inherently produce out-of-sample underperformance of investment strategies seeking to exploit factor premiums? In their January 2024 paper entitled “Why Has Factor Investing Failed?: The Role of Specification Errors”, Marcos Lopez de Prado and Vincent Zoonekynd examine whether standard practices induce factor specification errors and how such errors might explain actual underperformance of popular factor investing strategies. They consider potential effects of confounding variables and colliding variables on factor model out-of-sample performance. Based on logical derivations, they conclude that: Keep Reading
August 2, 2023 - Big Ideas, Investing Expertise
What is the state of machine learning in finance? In their July 2023 paper entitled “Financial Machine Learning”, Bryan Kelly and Dacheng Xiu survey studies on the use of machine learning in finance to further its reputation as an indispensable tool for understanding financial markets. They focus on the use of machine learning for statistical forecasting, covering regularization methods that mitigate overfitting and efficient algorithms for screening a vast number of potential model specifications. They emphasize areas that have received the most attention to date, including return prediction, factor models of risk and return, stochastic discount factors and portfolio choice. Based on the body of machine learning research in finance, they conclude that: Keep Reading
June 26, 2023 - Big Ideas, Investing Expertise
What happens as more and more web-scraped training data for Large Language Models (LLM), such as ChatGPT, derives from outputs of predecessor LLMs? In their May 2023 paper entitled “The Curse of Recursion: Training on Generated Data Makes Models Forget”, Ilia Shumailov, Zakhar Shumaylov, Yiren Zhao, Yarin Gal, Nicolas Papernot and Ross Anderson investigate changes in LLM outputs as training data becomes increasingly LLM-generated. Based on simulations of this potential trend, they find that: Keep Reading
June 12, 2023 - Big Ideas, Strategic Allocation
In his 2023 book, The Uncertainty Solution: How to Invest with Confidence in the Face of the Unknown, author John Jennings seeks “to provide individual investors with mental models that will help them make better investment decisions, practice better investment behavior, and be better consumers of investment advice… This book is not about how to invest but rather how to think about investing. It is the culmination of my thirteen-year quest for investment wisdom… The mental models in this book describe the investment world as full of uncertainty, wild randomness, unpredictability, and pitfalls. There’s no easy path. But mental models that embrace reality—that take the world as it is, not how we think it is or want it to be—will make you a better investor and a better consumer of investment advice.” Based on his many years of wealth management experience, especially during the 2007-2008 Financial Crisis, he concludes that:
Keep Reading