Wild Bootstrap Inference for Linear Regressions with Many Covariates
Published: Jun 26, 2025
Last Updated: Jun 26, 2025
Authors:Wenze Li
Abstract
We propose a simple modification to the wild bootstrap procedure and establish its asymptotic validity for linear regression models with many covariates and heteroskedastic errors. Monte Carlo simulations show that the modified wild bootstrap has excellent finite sample performance compared with alternative methods that are based on standard normal critical values, especially when the sample size is small and/or the number of controls is of the same order of magnitude as the sample size.