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Dissecting Characteristics Nonparametrically
by
Neuhierl, Andreas
, Weber, Michael
, Freyberger, Joachim
in
Alternative approaches
/ Electronic publishing
/ Internet
/ Property
2020
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Do you wish to request the book?
Dissecting Characteristics Nonparametrically
by
Neuhierl, Andreas
, Weber, Michael
, Freyberger, Joachim
in
Alternative approaches
/ Electronic publishing
/ Internet
/ Property
2020
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Journal Article
Dissecting Characteristics Nonparametrically
2020
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Overview
We propose a nonparametric method to study which characteristics provide incremental information for the cross-section of expected returns. We use the adaptive group LASSO to select characteristics and to estimate how selected characteristics affect expected returns nonparametrically. Our method can handle a large number of characteristics and allows for a flexible functional form. Our implementation is insensitive to outliers. Many of the previously identified return predictors don’t provide incremental information for expected returns, and nonlinearities are important. We study our method’s properties in simulations and find large improvements in both model selection and prediction compared to alternative selection methods.
Publisher
Oxford University Press,Oxford Publishing Limited (England)
Subject
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