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.

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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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