Working paper

Bootstrap inference for fixed-effect models

Koen Jochmans, and Ayden Higgins

Abstract

The maximum-likelihood estimator of nonlinear panel data models with fixed effects is asymptotically biased under rectangular-array asymptotics. The literature has devoted substantial effort to devising methods that correct for this bias as a means to salvage standard inferential procedures. The chief purpose of this paper is to show that the (recursive, parametric) bootstrap replicates the asymptotic distribution of the (uncorrected) maximum-likelihood estimator and of the likelihood-ratio statistic. This justifies the use of confidence sets and decision rules for hypothesis testing constructed via conventional bootstrap methods. No modification for the presence of bias needs to be made.

Keywords

Bootstrap,; fixed effects; incidental parameter problem; inference, panel data;

JEL codes

  • C23: Panel Data Models • Spatio-temporal Models

Reference

Koen Jochmans, and Ayden Higgins, Bootstrap inference for fixed-effect models, TSE Working Paper, n. 22-1328, April 2022, revised December 2023.

See also

Published in

TSE Working Paper, n. 22-1328, April 2022, revised December 2023