Robust Factor Analysis without Moment Constraint

06/15/2020
by   He Yong, et al.
0

In large-dimensional factor analysis, existing methods, such as principal component analysis (PCA), assumed finite fourth moment of the idiosyncratic components, in order to derive the convergence rates of the estimated factor loadings and scores. However, in many areas, such as finance and macroeconomics, many variables are heavy-tailed. In this case, PCA-based estimators and their variations are not theoretically underpinned. In this paper, we investigate into the L_1 minimization on the factor loadings and scores, which amounts to assuming a temporal and cross-sectional median structure for panel observations instead of the mean pattern in L_2 minimization. Without any moment constraint on the idiosyncratic errors, we correctly identify the common components for each variable. We obtained the convergence rates of a computationally feasible L_1 minimization estimators via iteratively alternating the median regression cross-sectionally and serially. Bahardur representations for the estimated factor loadings and scores are provided under some mild conditions. Simulation experiments checked the validity of the theory. In addition, a Robust Information Criterion (RIC) is proposed to select the factor number. Our analysis on a financial asset returns data set shows the superiority of the proposed method over other state-of-the-art methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/14/2019

Large-dimensional Factor Analysis without Moment Constraints

Large-dimensional factor model has drawn much attention in the big-data ...
research
01/29/2020

Network-Assisted Estimation for Large-dimensional Factor Model with Guaranteed Convergence Rate Improvement

Network structure is growing popular for capturing the intrinsic relatio...
research
08/28/2018

Robust Factor Number Specification for Large-dimensional Factor Model

The accurate specification of the number of factors is critical to the v...
research
03/06/2023

Huber Principal Component Analysis for Large-dimensional Factor Models

Factor models have been widely used in economics and finance. However, t...
research
03/26/2022

Manifold Principle Component Analysis for Large-Dimensional Matrix Elliptical Factor Model

Matrix factor model has been growing popular in scientific fields such a...
research
01/27/2022

A projection based approach for interactive fixed effects panel data models

This paper presents a new approach to estimation and inference in panel ...
research
12/25/2022

Mining the Factor Zoo: Estimation of Latent Factor Models with Sufficient Proxies

Latent factor model estimation typically relies on either using domain k...

Please sign up or login with your details

Forgot password? Click here to reset