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Atlanta Marriott Marquis, L505
Hosted By:
Econometric Society
Cross-Sectional Asset Pricing
Paper Session
Sunday, Jan. 6, 2019 1:00 PM - 3:00 PM
- Chair: Svetlana Bryzgalova, London Business School
Kernel Trick for the Cross Section
Abstract
Characteristics-based asset pricing implicitly assumes that factor betas or risk prices are linear functions of pre-specified characteristics. Present value identities, such as Campbell-Shiller or clean-surplus accounting, however, clearly predict that expected returns are highly non-linear functions of all characteristics. While basic non-linearities can be easily accommodated by adding non-linear functions to the set of characteristics, the problem quickly becomes infeasible once interactions of characteristics are considered. I propose a method to construct a stochastic discount factor (SDF) when the set of characteristics is extended to an arbitrary---potentially infinitely-dimensional---set of non-linear functions of original characteristics. The method borrows ideas from a machine learning technique known as the "kernel trick" to circumvent the curse of dimensionality. I find that allowing for interactions and non-linearities of characteristics leads to substantially more efficient SDFs; out-of-sample Sharpe ratios for the implied MVE portfolio double.Dissecting Spurious Factors with Cross-Sectional Regressions
Abstract
This paper develops a methodology for testing for spurious factors within beta-pricing models, specifically designed for when the number of assets N is large but the time series dimension is fixed, and possibly very small. Our approach builds on the conventional OLS CSR procedure, which appears to exhibit many desirable properties when N becomes large.Discussant(s)
Shrihari Santosh
,
University of Maryland
Michael Weber
,
University of Chicago
Cesare Robotti
,
University of Warwick
JEL Classifications
- G1 - General Financial Markets
- C5 - Econometric Modeling