Real-Time Profitability Of Published Anomalies: An Out-Of-Sample Test

QUARTERLY JOURNAL OF FINANCE(2013)

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摘要
Empirical evidence on the out-of-sample performance of asset-pricing anomalies is mixed so far and arguably is often subject to data-snooping bias. This paper proposes a method that can significantly reduce this bias. Specifically, we consider a long-only strategy that involves only published anomalies and non-forward-looking filters and that each year recursively picks the best past-performer among such anomalies over a given training period. We find that this strategy can outperform the equity market even after transaction costs. Overall, our results suggest that published anomalies persist even after controlling for data-snooping bias.
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关键词
Published anomalies,data-snooping bias,asset-pricing anomalies,out-of-sample test
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