Robust Estimation and Inference for High-Dimensional Panel Data Models

75 Pages Posted: 18 Feb 2025

See all articles by Jiti Gao

Jiti Gao

Monash University

Fei Liu

Nankai University

Bin Peng

Monash University - Department of Econometrics and Business Statistics

Yayi Yan

Shanghai University of Finance and Economics

Abstract

This paper provides the relevant literature with a complete toolkit for conducting robust estimation and inference about the parameters of interest involved in a high-dimensional panel data framework. Specifically, (1) we allow for non-Gaussian, serially and cross-sectionally correlated and heteroskedastic error processes, (2) we develop an estimation method for high-dimensional long-run covariance matrix using a thresholded estimator, (3) we also allow for the number of regressors to grow faster than the sample size. Methodologically and technically, we develop two Nagaev–types of concentration inequalities: one for a partial sum and the other for a quadratic form, subject to a set of easily verifiable conditions. Leveraging these two inequalities, we derive a non-asymptotic bound for the LASSO estimator, achieve asymptotic normality via the node-wise LASSO regression, and establish a sharp convergence rate for the thresholded heteroskedasticity and autocorrelation consistent (HAC) estimator. We demonstrate the practical relevance of these theoretical results by investigating a high-dimensional panel data model with interactive effects. Moreover, we conduct extensive numerical studies using simulated and real data examples.

Keywords: Asset Pricing, Concentration Inequality, Heavy-Tailed Distribution, High-Dimensional Long-Run Covariance Matrix

Suggested Citation

Gao, Jiti and Liu, Fei and Peng, Bin and Yan, Yayi, Robust Estimation and Inference for High-Dimensional Panel Data Models. Available at SSRN: https://ssrn.com/abstract=5143722 or http://dx.doi.org/10.2139/ssrn.5143722

Jiti Gao

Monash University ( email )

23 Innovation Walk
Wellington Road
Clayton, 3800
Australia

Fei Liu

Nankai University ( email )

94 Weijin Road
Tianjin, 300071
China

Bin Peng (Contact Author)

Monash University - Department of Econometrics and Business Statistics ( email )

900 Dandenong Road
Caulfield East, VIC 3145
Australia

Yayi Yan

Shanghai University of Finance and Economics ( email )

China

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
11
Abstract Views
70
PlumX Metrics