Published December 2021 | Version v1
Dissertation Open

Machine Learning in Empirical Asset Pricing

Creators

  • 1. University of Chicago

Contributors

Advisor:

Description

We perform a comparative analysis of machine learning methods for the canonical problemof empirical asset pricing: measuring asset risk premiums. We demonstrate large economic gains to investors using machine learning forecasts, in some cases doubling the performance of leading regression-based strategies from the literature. We identify the best-performing methods (trees and neural networks) and trace their predictive gains to allowing nonlinear predictor interactions missed by other methods. All methods agree on the same set of dominant predictive signals, a set that includes variations on momentum, liquidity, and volatility.

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Other
oai:uchicago.tind.io:3606

UChicago Information

Division(s)
Booth School of Business
Department(s)
Booth School of Business Dissertations