Stock return predictability: riding the risk premium
Subject
Finance
Publishing details
Social Sciences Research Network
Authors / Editors
Gomez-Cram R
Biographies
Publication Year
2018
Abstract
Past returns contain rich information about future returns. I propose an approach to estimate expected returns based on the full history of past returns, which is able to outperform the prevailing mean benchmark on a consistent basis, over long sample periods, and with monthly out-of-sample R2 statistics of at least 2% and annualized utility gains greater than 300 basis points. My approach allows for correlated shocks between unexpected and expected returns and ties expected return variations to business-cycle fluctuations. These properties generate different persistence, volatility, and serial correlation of expected returns across economic states and determine how the information in lagged returns is used to predict future returns. My approach has important implications for standard predictive regressions.
Series Number
3138833
Series
Social Sciences Research Network
Available on ECCH
No