Learning Latent Factors from Diversified Projections and its Applications to Over-Estimated and Weak Factors

74 Pages Posted: 18 Sep 2019 Last revised: 4 Jun 2020

See all articles by Jianqing Fan

Jianqing Fan

Princeton University - Bendheim Center for Finance

Yuan Liao

Rutgers, The State University of New Jersey - Department of Economics

Date Written: August 31, 2019

Abstract

Estimations and applications of factor models often rely on the crucial condition that the number of latent factors is consistently estimated, which in turn also requires that factors be relatively strong, data are stationary and weak serial dependence, and the sample size be fairly large, although in practical applications, one or several of these conditions may fail. In these cases it is difficult to analyze the eigenvectors of the data matrix. To address this issue, we propose simple estimators of the latent factors using cross-sectional projections of the panel data, by weighted averages with pre-determined weights. These weights are chosen to diversify away the idiosyncratic components, resulting in ``diversified factors". Because the projections are conducted cross-sectionally, they are robust to serial conditions, easy to analyze and work even for finite length of time series. We formally prove that this procedure is robust to over-estimating the number of factors, and illustrate it in several applications, including post-selection inference, big data forecasts, large covariance estimation and factor specification tests. We also recommend several choices for the diversified weights.

Keywords: Large dimensions, random projections, over-estimating the number of factors, principal components, factor-augmented regression

Suggested Citation

Fan, Jianqing and Liao, Yuan, Learning Latent Factors from Diversified Projections and its Applications to Over-Estimated and Weak Factors (August 31, 2019). Available at SSRN: https://ssrn.com/abstract=3446097 or http://dx.doi.org/10.2139/ssrn.3446097

Jianqing Fan

Princeton University - Bendheim Center for Finance ( email )

26 Prospect Avenue
Princeton, NJ 08540
United States
609-258-7924 (Phone)
609-258-8551 (Fax)

HOME PAGE: http://orfe.princeton.edu/~jqfan/

Yuan Liao (Contact Author)

Rutgers, The State University of New Jersey - Department of Economics ( email )

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
181
Abstract Views
798
Rank
302,861
PlumX Metrics