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Skilled Mutual Fund Selection: False Discovery Control Under Dependence

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  • Lijia Wang
  • Xu Han
  • Xin Tong

Abstract

Selecting skilled mutual funds through the multiple testing framework has received increasing attention from finance researchers and statisticians. The intercept α of Carhart four-factor model is commonly used to measure the true performance of mutual funds, and positive α’s are considered as skilled. We observe that the standardized ordinary least-square estimates of α’s across the funds possess strong dependence and nonnormality structures, indicating that the conventional multiple testing methods are inadequate for selecting the skilled funds. We start from a decision theoretical perspective, and propose an optimal multiple testing procedure to minimize a combination of false discovery rate and false nondiscovery rate. Our proposed testing procedure is constructed based on the probability of each fund not being skilled conditional on the information across all of the funds in our study. To model the distribution of the information used for the testing procedure, we consider a mixture model under dependence and propose a new method called “approximate empirical Bayes” to fit the parameters. Empirical studies show that our selected skilled funds have superior long-term and short-term performance, for example, our selection strongly outperforms the S&P 500 index during the same period.

Suggested Citation

  • Lijia Wang & Xu Han & Xin Tong, 2023. "Skilled Mutual Fund Selection: False Discovery Control Under Dependence," Journal of Business & Economic Statistics, Taylor & Francis Journals, vol. 41(2), pages 578-592, April.
  • Handle: RePEc:taf:jnlbes:v:41:y:2023:i:2:p:578-592
    DOI: 10.1080/07350015.2022.2044337
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