The Conditional Capital Asset Pricing Model Revisited: Evidence from High-Frequency Betas

Published Online:https://doi.org/10.1287/mnsc.2019.3317

When using high-frequency data, the conditional capital asset pricing model (CAPM) can explain asset-pricing anomalies. Using conditional betas based on daily data, the model works reasonably well for a recent sample period. However, it fails to explain the size anomaly as well as three out of six of the anomaly component excess returns. Using high-frequency betas, the conditional CAPM is able to explain the size, value, and momentum anomalies. We further show that high-frequency betas provide more accurate predictions of future betas than those based on daily data. This result holds for both the time-series and the cross-sectional dimensions.

This paper was accepted by Karl Diether, finance.

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