REASSESSING FALSE DISCOVERIES IN MUTUAL FUND PERFORMANCE:

SKILL, LUCK, OR LACK OF POWER?

A REPLY

L. BARRAS*, O. SCAILLET** and R. WERMERS***

* McGill University ** Université de Genève and Swiss Finance Institute *** University of Maryland

 

Abstract

Andrikogiannopoulou and Papakonstantinou (AP; 2019) conduct an inquiry into the bias of the False Discovery Rate (FDR) estimators of Barras, Scaillet, and Wermers (BSW; 2010). In this Reply, we replicate their results, then further explore the bias issue by (i) using different parameter values, and (ii) updating the sample period. Over the original period (1975-2006), we show how reasonable adjustments to the parameter choices made by BSWand AP results in a sizeable reduction in the bias relative to AP. Over the updated period (1975-2018), we further show that the performance of the FDR improves dramatically across a large range of parameter values. Specifically, we find that the probability of misclassifying a fund with a true alpha of 2% per year is 32% (versus 65% in AP). Our results, in combination with those of AP, indicate that the use of the FDR in finance should be accompanied by a careful evaluation of the underlying data generating process, especially when the sample size is small.

Keywords : False Discovery Rate, Multiple Testing, Mutual Fund Performance.

JEL : C11, G12, G23.