Journal Article
The authors develop an approach that combines the estimation of monthly firm-level expected returns with an assignment of firms to (possibly) latent groups, both based upon observable
characteristics, using machine learning principles with linear models.
The best performing methods are flexible two-stage sparse models that capture group-membership predictive relationships. Portfolios formed to exploit such group-varying predictions based on a parsimonious set of characteristics deliver economically meaningful returns with low turnover.
The authors propose statistical tests based on nonparametric bootstrapping for their results, and detail
how different characteristics may matter for different groups of firms, making comparisons to the existing literature.
Faculty
Professor of Technology and Business
Adjunct Professor of Finance