. . . and the Cross-Section of Expected Returns
Author(s) -
Campbell R. Harvey,
Yan Liu,
Heqing Zhu
Publication year - 2014
Publication title -
sandp global market intelligence research paper series
Language(s) - English
Resource type - Reports
DOI - 10.3386/w20592
Subject(s) - section (typography) , cross section (physics) , computer science , physics , operating system , astronomy
Hundreds of papers and hundreds of factors attempt to explain the cross-section of expected returns. Given this extensive data mining, it does not make any economic or statistical sense to use the usual significance criteria for a newly discovered factor, e.g., a t-ratio greater than 2.0. However, what hurdle should be used for current research? Our paper introduces a multiple testing framework and provides a time series of historical significance cutoffs from the first empirical tests in 1967 to today. Our new method allows for correlation among the tests as well as missing data. We also project forward 20 years assuming the rate of factor production remains similar to the experience of the last few years. The estimation of our model suggests that a newly discovered factor needs to clear a much higher hurdle, with a t-ratio greater than 3.0. Echoing a recent disturbing conclusion in the medical literature, we argue that most claimed research findings in financial economics are likely false.
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