Missing Data in Asset Pricing Panels

Author:

Freyberger Joachim1,Hoeppner Bjoern1,Neuhierl Andreas2,Weber Michael3

Affiliation:

1. University of Bonn , Germany

2. Olin School of Business, Washington University in St Louis , USA

3. Booth School of Business, the University of Chicago , USA, CEPR, and NBER

Abstract

Abstract We propose a simple and computationally attractive method to deal with missing data in in cross-sectional asset pricing using conditional mean imputations and weighted least squares, cast in a generalized method of moments (GMM) framework. This method allows us to use all observations with observed returns; it results in valid inference; and it can be applied in nonlinear and high-dimensional settings. In simulations, we find it performs almost as well as the efficient but computationally costly GMM estimator. We apply our procedure to a large panel of return predictors and find that it leads to improved out-of-sample predictability.

Publisher

Oxford University Press (OUP)

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