Machine-Learning the Skill of Mutual Fund Managers
Ron Kaniel,
Zihan Lin,
Markus Pelger and
Stijn Van Nieuwerburgh
No 18129, CEPR Discussion Papers from Centre for Economic Policy Research
Abstract:
We show, using machine learning, that fund characteristics can consistently differentiate high from low-performing mutual funds, before and after fees. The outperformance persists for more than three years. Fund momentum and fund flow are the most important predictors of future risk-adjusted fund performance, while characteristics of the stocks that funds hold are not predictive. Returns of predictive long-short portfolios are higher following a period of high sentiment. Our estimation with neural networks enables us to uncover novel and substantial interaction effects between sentiment and both fund flow and fund momentum.
Keywords: Mutual; fund; performance (search for similar items in EconPapers)
JEL-codes: C45 G11 G12 G17 G23 (search for similar items in EconPapers)
Date: 2023-04
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Related works:
Journal Article: Machine-learning the skill of mutual fund managers (2023) 
Working Paper: Machine-Learning the Skill of Mutual Fund Managers (2022) 
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