Do Anomalies Really Predict Market Returns? New Data and New Evidence

Author:

Cakici Nusret1,Fieberg Christian234,Metko Daniel5,Zaremba Adam678

Affiliation:

1. Gabelli School of Business, Fordham University , New York, NY, USA

2. School of International Business, City University of Applied Sciences , Bremen, Germany

3. Department of Economics and Management, University of Luxembourg , Luxembourg, Luxembourg

4. Department of Finance, Concordia University , Montreal, Canada

5. Faculty of Business Studies and Economics, University of Bremen , Bremen, Germany

6. Montpellier Business School , Montpellier, France

7. Department of Investment and Financial Markets, Institute of Finance, Poznan University of Economics and Business , Poznań, Poland

8. Department of Finance and Tax, Faculty of Commerce, University of Cape Town , South Africa

Abstract

Abstract Using new data from US and global markets, we revisit market risk premium predictability by equity anomalies. We apply a repertoire of machine-learning methods to forty-two countries to reach a simple conclusion: anomalies, as such, cannot predict aggregate market returns. Any ostensible evidence from the USA lacks external validity in two ways: it cannot be extended internationally and does not hold for alternative anomaly sets—regardless of the selection and design of factor strategies. The predictability—if any—originates from a handful of specific anomalies and depends heavily on seemingly minor methodological choices. Overall, our results challenge the view that anomalies as a group contain helpful information for forecasting market risk premia.

Funder

National Science Center of Poland

Publisher

Oxford University Press (OUP)

Subject

Finance,Economics and Econometrics,Accounting

Reference57 articles.

1. Idiosyncratic volatility and the cross section of expected returns;Bali;Journal of Financial and Quantitative Analysis,2008

2. Global factor premiums;Baltussen;Journal of Financial Economics,2021

3. Salience theory and the cross-section of stock returns: international and further evidence;Cakici;Journal of Financial Economics,2022

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