Parameter-Specific Bias Diagnostics in Random-Effects Panel Data Models
Methodology
2026-03-13 v5
Abstract
The Hausman specification test assesses the random-effects specification by comparing the random-effects estimator with a fixed-effects alternative. This note shows how a recently proposed bias diagnostic for linear mixed models can complement that test in random-effects panel-data applications. The diagnostic delivers parameter-specific internal estimates of finite-sample bias, together with permutation-based -values, from a single fitted random-effects model. We illustrate its use in a gasoline-demand panel and in a value-added model for teacher evaluation using publicly available \textsf{R} packages, and we discuss how the resulting coefficient-specific bias summaries can be incorporated into routine practice.
Cite
@article{arxiv.2412.20555,
title = {Parameter-Specific Bias Diagnostics in Random-Effects Panel Data Models},
author = {Andrew T. Karl},
journal= {arXiv preprint arXiv:2412.20555},
year = {2026}
}