Robust Two-Sample Mean Inference under Serial Dependence
Abstract
We propose robust two-sample tests for comparing means in time series. The framework accommodates a wide range of applications, including structural breaks, treatment-control comparisons, and group-averaged panel data. We first consider series HAR two-sample t-tests, where standardization employs orthonormal basis projections, ensuring valid inference under heterogeneity and nonparametric dependence structures. We propose a Welch-type t-approximation with adjusted degrees of freedom to account for long-run variance heterogeneity across the series. We further develop a series-based HAR wild bootstrap test, extending traditional wild bootstrap methods to the time-series setting. Our bootstrap avoids resampling blocks of observations and delivers superior finite-sample performance.
Cite
@article{arxiv.2512.11259,
title = {Robust Two-Sample Mean Inference under Serial Dependence},
author = {Ulrich Hounyo and Min Seong Kim},
journal= {arXiv preprint arXiv:2512.11259},
year = {2025}
}
Comments
55 pages, 1 figure