Large-dimensional Factor Analysis without Moment Constraints

08/14/2019
by   Yong He, et al.
0

Large-dimensional factor model has drawn much attention in the big-data era, in order to reduce the dimensionality and extract underlying features using a few latent common factors. Conventional methods for estimating the factor model typically requires finite fourth moment of the data, which ignores the effect of heavy-tailedness and thus may result in unrobust or even inconsistent estimation of the factor space and common components. In this paper, we propose to recover the factor space by performing principal component analysis to the spatial Kendal's tau matrix instead of the sample covariance matrix. In a second step, we estimate the factor scores by the ordinary least square (OLS) regression. Theoretically, we show that under the elliptical distribution framework the factor loadings and scores as well as the common components can be estimated consistently without any moment constraint. The convergence rates of the estimated factor loadings, scores and common components are provided. The finite sample performance of the proposed procedure is assessed through simulations and an analysis of a macroeconomic dataset.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/15/2020

Robust Factor Analysis without Moment Constraint

In large-dimensional factor analysis, existing methods, such as principa...
research
12/14/2021

Dynamic Factor Models with Sparse VAR Idiosyncratic Components

We reconcile the two worlds of dense and sparse modeling by exploiting t...
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...
research
06/10/2018

Determining the dimension of factor structures in non-stationary large datasets

We propose a procedure to determine the dimension of the common factor s...
research
11/01/2018

Consistent estimation of high-dimensional factor models when the factor number is over-estimated

A high-dimensional r-factor model for an n-dimensional vector time serie...
research
06/05/2023

Robust Statistical Inference for Large-dimensional Matrix-valued Time Series via Iterative Huber Regression

Matrix factor model is drawing growing attention for simultaneous two-wa...
research
04/06/2021

Large factor model estimation by nuclear norm plus l_1 norm penalization

This paper provides a comprehensive estimation framework via nuclear nor...

Please sign up or login with your details

Forgot password? Click here to reset