Recent Developments in Factor Models and Applications in Econometric Learning

Posted: 9 Nov 2021

See all articles by Jianqing Fan

Jianqing Fan

Princeton University - Department of ORFE

Kunpeng Li

Capital University of Economics and Business

Yuan Liao

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

Date Written: November 2021

Abstract

This article provides a selective overview of the recent developments in factor models and their applications in econometric learning. We focus on the perspective of the low-rank structure of factor models and particularly draw attention to estimating the model from the low-rank recovery point of view. Our survey mainly consists of three parts. The first part is a review of new factor estimations based on modern techniques for recovering low-rank structures of high-dimensional models. The second part discusses statistical inferences of several factor-augmented models and their applications in statistical learning models. The final part summarizes new developments dealing with unbalanced panels from the matrix completion perspective.

Suggested Citation

Fan, Jianqing and Li, Kunpeng and Liao, Yuan, Recent Developments in Factor Models and Applications in Econometric Learning (November 2021). Annual Review of Financial Economics, Vol. 13, pp. 401-430, 2021, Available at SSRN: https://ssrn.com/abstract=3957754 or http://dx.doi.org/10.1146/annurev-financial-091420-011735

Jianqing Fan (Contact Author)

Princeton University - Department of ORFE ( email )

Princeton, NJ
United States

Kunpeng Li

Capital University of Economics and Business

Beijing
China

Yuan Liao

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

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