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Do Cross-Sectional Predictors Contain Systematic Information?

Published online by Cambridge University Press:  10 May 2022

Joseph Engelberg
Affiliation:
University of California, San Diego Rady School of Management jengelberg@ucsd.edu
R. David McLean
Affiliation:
Georgetown University, McDonough School of Business dm1448@georgetown.edu
Jeffrey Pontiff*
Affiliation:
Boston College, Carroll School of Management
Matthew C. Ringgenberg
Affiliation:
University of Utah, David Eccles School of Business matthew.ringgenberg@eccles.utah.edu
*
pontiff@bc.edu (corresponding author)
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Abstract

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Firm-level variables that predict cross-sectional stock returns, such as price-to-earnings and short interest, are often averaged and used to predict market returns. Using various samples of cross-sectional predictors and accounting for the number of predictors and their interdependence, we find only weak evidence that cross-sectional predictors make good time-series predictors, especially out-of-sample. The results suggest that cross-sectional predictors do not generally contain systematic information.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press on behalf of the Michael G. Foster School of Business, University of Washington

Footnotes

The authors thank an anonymous referee, Hendrik Bessembinder (the editor), John Campbell, Mike Cooper, Amit Goyal, Robin Greenwood, Campbell Harvey, Travis Johnson, Bryan Kelly, Owen Lamont, Yan Liu, Seth Pruitt, Allan Timmermann, and Michael Wolf, and conference and seminar participants at the 2018 Society for Financial Studies Cavalcade, the 2019 American Finance Association, MIT (Accounting), TCU, UC-Berkeley, University of Kentucky, University of Michigan, UNLV, University of Utah, UC Riverside, University of Virginia, Washington University in St. Louis, University of Oxford, and Warwick Business School. All errors are our own.

References

Baker, M., and Wurgler, J.. “The Equity Share in New Issues and Aggregate Stock Returns.” Journal of Finance, 55 (2000), 22192257.CrossRefGoogle Scholar
Baker, M., and Wurgler, J.. “Investor Sentiment and the Cross‐Section of Stock Returns.” Journal of Finance, 61 (2006), 16451680.CrossRefGoogle Scholar
Baker, M., and Wurgler, J.. “Investor Sentiment in the Stock Market.” Journal of Economic Perspectives, 21 (2007), 129152.CrossRefGoogle Scholar
Barberis, N., and Thaler, R.A Survey of Behavioral Finance.” Handbook of the Economics of Finance, 1 (2003), 10531128.CrossRefGoogle Scholar
Bartsch, V.-S.; Dichtl, H.; Drobetz, W.; and Neuhierl, A.. “Data Snooping in Equity Premium Prediction.” Journal of International Forecasting, 37 (2021), 7294.Google Scholar
Benjamini, Y., and Yekutieli, D.. “The Control of the False Discovery Rate in Multiple Testing Under Dependency.” Annals of Statistics, 29 (2001), 11651188.CrossRefGoogle Scholar
Bossaerts, P., and Hillion, P.. “Implementing Statistical Criteria to Select Return Forecasting Models: What Do We Learn?Review of Financial Studies, 12 (1999), 405428.CrossRefGoogle Scholar
Campbell, J. Y.A Variance Decomposition for Stock Returns.” Economic Journal, 101 (1991), 157179.CrossRefGoogle Scholar
Campbell, J. Y., and Shiller, R. J.. “The Dividend-Price Ratio and Expectations of Future Dividends and Discount Factors.” Review of Financial Studies, 1 (1988), 195228.CrossRefGoogle Scholar
Campbell, J. Y., and Thompson, S.. “Predicting Excess Stock Returns Out of Sample: Can Anything Beat the Historical Average?Review of Financial Studies, 21 (2008), 15091531.CrossRefGoogle Scholar
Chen, A. Y.The Limits of p-Hacking: Some Thought Experiments.” Journal of Finance, 76 (2021), 24472480.CrossRefGoogle Scholar
Chen, A. Y., and Zimmerman, T.. “Publication Bias and the Cross-Section of Stock Returns.” Review of Asset Pricing Studies, 10 (2020), 249289.CrossRefGoogle Scholar
Chordia, T.; Goyal, A.; and Saretto, A.. “Anomalies and False Rejections.” Review of Financial Studies, 33 (2020), 21342179.CrossRefGoogle Scholar
Chordia, T.; Roll, R.; and Subrahmanyam, A.. “Order Imbalance, Liquidity and Market Returns.” Journal of Financial Economics, 65 (2002), 111130.CrossRefGoogle Scholar
Clark, T. E., and West, K. D.. “Approximately Normal Tests for Equal Predictive Accuracy in Nested Models.” Journal of Econometrics, 138 (2007), 291311.CrossRefGoogle Scholar
Cochrane, J. H.Volatility Tests and Efficient Markets: A Review Essay.” Journal of Monetary Economics, 27 (1991), 463485.CrossRefGoogle Scholar
Cooper, M., and Gulen, H.. “Is Time-Series-Based Predictability Evident in Real Time?Journal of Business, 79 (2006), 12631292.CrossRefGoogle Scholar
Cooper, M,; Gutierrez, R.; and Marcum, B.. “On the Predictability of Stock Returns in Real Time.” Journal of Business, 78 (2005), 469500.CrossRefGoogle Scholar
Dickey, D. A., and Fuller, W.. “Distribution of the Estimators for Autoregressive Time Series with a Unit Root.” Journal of the American Statistical Association, 74 (1979), 427431.Google Scholar
Dow, C. “Scientific Stock Speculation.” The Magazine of Wall Street (1920).Google Scholar
Dunn, O. J.Multiple Comparisons Among Means.” Journal of the American Statistical Association, 56 (1961), 5264.CrossRefGoogle Scholar
Engelberg, J.; McLean, R. D.; and Pontiff, J.. “Anomalies and News.” Journal of Finance, 73 (2018), 19712001.CrossRefGoogle Scholar
Fama, E. F., and French, K. R.. “The Cross‐Section of Expected Stock Returns.” Journal of Finance, 47 (1992), 427465.CrossRefGoogle Scholar
Fama, E. F., and French, K. R.. “A Five-Factor Asset Pricing Model.” Journal of Financial Economics, 116 (2015), 122.CrossRefGoogle Scholar
Foster, F. D.; Smith, T.; and Whaley, R. E.. “Assessing Goodness-of-Fit of Asset Pricing Models: The Distribution of the Maximal R 2. Journal of Finance, 52 (1997), 591607.Google Scholar
Gibson, T. The Pitfalls of Speculation. New York: The Moody Corporation (1906).Google Scholar
Goetzmann, W., and Jorion, P.. “Testing the Predictive Power of Dividend Yields.” Journal of Finance, 48 (1993), 663679.CrossRefGoogle Scholar
Goyal, A., and Santa-Clara, P.. “Idiosyncratic Risk Matters!Journal of Finance, 58 (2003), 9751007.CrossRefGoogle Scholar
Goyal, A., and Welch, I.. “A Comprehensive Look at the Empirical Performance of Equity Premium Prediction.” Review of Financial Studies, 21 (2008), 14551508.Google Scholar
Green, J.; Hand, J. R.; and Zhang, X. F.. “The Characteristics that Provide Independent Information About Average U.S. Monthly Stock Returns.” Review of Financial Studies, 30 (2017), 43894436.CrossRefGoogle Scholar
Harvey, C. R.; Liu, Y.; and Saretto, A.. “An Evaluation of Alternative Multiple Testing Methods for Finance Applications.” Review of Asset Pricing Studies, 10 (2020), 199248.CrossRefGoogle Scholar
Harvey, C. R.; Liu, Y.; and Zhu, H.. “…and the Cross-Section of Expected Returns.” Review of Financial Studies, 29 (2016), 568.CrossRefGoogle Scholar
Hirshleifer, D.; Hou, K.; and Teoh, S. H.. “Accruals, Cash Flows, and Aggregate Stock Returns.” Journal of Financial Economics, 91 (2009), 389406.CrossRefGoogle Scholar
Hodrick, R.Dividend Yields and Expected Stock Returns: Alternative Procedures for Inference and Measurement.” Review of Financial Studies, 5 (1992), 357386.CrossRefGoogle Scholar
Holm, S.A Simple Sequentially Rejective Multiple Test Procedure.” Scandinavian Journal of Statistics, 6 (1979), 6570.Google Scholar
Hou, K.; Xue, C.; and Zhang, L.. “Digesting Anomalies: An Investment Approach.” Review of Financial Studies, 28 (2015), 650705.CrossRefGoogle Scholar
Huang, D., and Zhou, G.. “Upper Bounds on Return Predictability.” Journal of Financial and Quantitative Analysis, 52 (2017), 401425.CrossRefGoogle Scholar
Jacobs, H., and Müller, S.. “Anomalies Across the Globe: Once Public, No Longer Existent?Journal of Financial Economics, 135 (2020), 213230.CrossRefGoogle Scholar
Jegadeesh, N.Seasonality in Stock Price Mean Reversion: Evidence from the U.S. and the U.K.” Journal of Finance, 46 (1991), 14271444.CrossRefGoogle Scholar
Johnson, T.A Fresh Look at Return Predictability Using a More Efficient Estimator.” Review of Asset Pricing Studies, 9 (2019), 146.CrossRefGoogle Scholar
Kacperczyk, M.; Van Nieuwerburgh, S.; and Veldkamp, L., “A Rational Theory of Mutual Funds’ Attention Allocation.” Econometrica, 84 (2016), 571626.CrossRefGoogle Scholar
Kelly, B., and Pruitt, S.. “Market Expectations in the Cross‐Section of Present Values.” Journal of Finance, 68 (2013), 17211756.CrossRefGoogle Scholar
Kothari, S. P.; Lewellen, J.; and Warner, J.. “Stock Returns, Aggregate Earnings Surprises, and Behavioral Finance.” Journal of Financial Economics, 79 (2006), 537568.CrossRefGoogle Scholar
Lewellen, J.Predicting Returns with Financial Ratios.” Journal of Financial Economics, 74 (2004), 209235.CrossRefGoogle Scholar
Linnainmaa, J., and Roberts, M.. “The History of the Cross-Section of Stock Returns.” Review of Financial Studies, 31 (2018), 26062649.CrossRefGoogle Scholar
Lintner, J.The Valuation of Risky Assets and the Selection of Risky Investments in Stock Portfolios and Capital Budgets.” Review of Economics and Statistics, 47 (1965), 1337.CrossRefGoogle Scholar
McLean, R. D., and Pontiff, J.. “Does Academic Publication Destroy Stock Return Predictability?Journal of Finance, 71 (2016), 532.CrossRefGoogle Scholar
Neely, C.; Rapach, D.; Tu, J.; and Zhou, G.. “Forecasting the Equity Risk Premium: The Role of Technical Indicators.” Management Science, 60 (2014), 17721791.CrossRefGoogle Scholar
Nelson, C., and Kim, M.. “Predictable Stock Returns: The Role of Small Sample Bias.” Journal of Finance 48 (1993), 641661.CrossRefGoogle Scholar
Politis, D., and Romano, J.. “The Stationary Bootstrap.” Journal of the American Statistical Association, 89 (1994), 13031313.CrossRefGoogle Scholar
Pontiff, J.Costly Arbitrage: Evidence from Closed-End Funds.” Quarterly Journal of Economics, 111 (1996), 11351151.CrossRefGoogle Scholar
Pontiff, J.Costly Arbitrage and the Myth of Idiosyncratic Risk.” Journal of Accounting and Economics, 42 (2006), 3552.CrossRefGoogle Scholar
Pontiff, J., and Schall, L.. “Book-to-Market as a Predictor of Market Returns.” Journal of Financial Economics, 49 (1998), 141160.CrossRefGoogle Scholar
Rapach, D. E.; Ringgenberg, M. C.; and Zhou, G.. “Aggregate Short Interest and Return Predictability.” Journal of Financial Economics, 121 (2016), 4665.CrossRefGoogle Scholar
Romano, J.; Shaikh, A.; and Wolf, M.. “Formalized Data Snooping Based on Generalized Error Rates.” Econometric Theory, 24 (2008), 404447.CrossRefGoogle Scholar
Romano, J. P., and Wolf, M.. “Stepwise Multiple Testing as Formalized Data Snooping.” Econometrica, 73 (2005), 12371282.CrossRefGoogle Scholar
Romano, J., and Wolf, M.. “Efficient Computation of Adjusted p-Values for Resampling-Based Stepdown Multiple Testing.” Statistics and Probability Letters, 113 (2016), 3840.CrossRefGoogle Scholar
Ross, S. Neoclassical Finance. Princeton: Princeton University Press (2005).CrossRefGoogle Scholar
Seyhun, H. N.The Information Content of Aggregate Insider Trading.” Journal of Business, 61 (1988), 124.CrossRefGoogle Scholar
Sharpe, W.Capital Asset Prices: A Theory of Market Equilibrium Under Conditions of Risk.” Journal of Finance, 19 (1964), 425442.Google Scholar
Sloan, R.Do Stock Prices Fully Reflect Information in Accruals and Cash Flows About Future Earnings?Accounting Review, 71 (1996), 289315.Google Scholar
Stambaugh, R.Predictive Regressions.” Journal of Financial Economics, 54 (1999), 375421.CrossRefGoogle Scholar
Sullivan, R.; Timmermann, A.; and White, H.. “Data-Snooping, Technical Trade Rule Performance, and the Bootstrap.” Journal of Finance, 54 (1999), 16471691.CrossRefGoogle Scholar
Welch, I.Reproducing, Extending, Updating, Replicating, Reexamining, and Reconciling.” Critical Finance Review, 8 (2019), 301304.CrossRefGoogle Scholar
Wen, Q.Asset Growth and Stock Market Returns: A Time-Series AnalysisReview of Finance, 23 (2019), 599628.CrossRefGoogle Scholar
White, H.A Reality Check for Data Snooping.” Econometrica, 68 (2000), 10971126.CrossRefGoogle Scholar
Zhou, G.How Much Stock Return Predictability Can We Expect from an Asset Pricing Model?Economic Letters, 108 (2010), 184186.CrossRefGoogle Scholar
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