Working Paper

Dissecting Characteristics Nonparametrically

Joachim Freyberger, Andreas Neuhierl, Michael Weber
CESifo, Munich, 2017

CESifo Working Paper No. 6391

We propose a nonparametric method to test which characteristics provide independent information for the cross section of expected returns. We use the adaptive group LASSO to select characteristics and to estimate how they affect expected returns nonparametrically. Our method can handle a large number of characteristics, allows for a exible functional form, and is insensitive to outliers. Many of the previously identified return predictors do not provide incremental information for expected returns, and nonlinearities are important. Our proposed method has higher out-of-sample explanatory power compared to linear panel regressions, and increases Sharpe ratios by 50%.

CESifo Category
Monetary Policy and International Finance
Empirical and Theoretical Methods
Keywords: cross section of returns, anomalies, expected returns, model selection
JEL Classification: C140, C520, C580, G120