State-Varying Factor Models of Large Dimensions

36 Pages Posted: 1 Feb 2018 Last revised: 15 Oct 2020

See all articles by Markus Pelger

Markus Pelger

Stanford University - Department of Management Science & Engineering

Ruoxuan Xiong

Emory University

Date Written: October 14, 2020

Abstract

This paper develops an inferential theory for state-varying factor models of large dimensions. Unlike constant factor models, loadings are general functions of some recurrent state process. We develop an estimator for the latent factors and state-varying loadings under a large cross-section and time dimension. Our estimator combines nonparametric methods with principal component analysis. We derive the rate of convergence and limiting normal distribution for the factors, loadings and common components. In addition, we develop a statistical test for a change in the factor structure in different states. We apply the estimator to U.S. Treasury yields and S&P500 stock returns. The systematic factor structure in treasury yields differs in times of booms and recessions as well as in periods of high market volatility. State-varying factors based on the VIX capture significantly more variation and pricing information in individual stocks than constant factor models.

Keywords: Factor Analysis, Principle Components, State-Varying, Nonparametric, Kernel-Regression, Large-Dimensional Panel Data, Large N and T

JEL Classification: C14, C38, C55, G12

Suggested Citation

Pelger, Markus and Xiong, Ruoxuan, State-Varying Factor Models of Large Dimensions (October 14, 2020). Available at SSRN: https://ssrn.com/abstract=3109314 or http://dx.doi.org/10.2139/ssrn.3109314

Markus Pelger

Stanford University - Department of Management Science & Engineering ( email )

473 Via Ortega
Stanford, CA 94305-9025
United States

Ruoxuan Xiong (Contact Author)

Emory University ( email )

36 Eagle Row
Atlanta, GA 30322-0001
United States
4707273668 (Phone)

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