Multiway empirical likelihood
Abstract
This paper develops a general methodology to conduct statistical inference for observations indexed by multiple sets of entities. We propose a novel multiway empirical likelihood statistic that converges to a chi-square distribution under the non-degenerate case, where corresponding Hoeffding type decomposition is dominated by linear terms. Our methodology is related to the notion of jackknife empirical likelihood but the leave-out pseudo values are constructed by leaving columns or rows. We further develop a modified version of our multiway empirical likelihood statistic, which converges to a chi-square distribution regardless of the degeneracy, and discover its desirable higher-order property compared to the t-ratio by the conventional Eicker-White type variance estimator. The proposed methodology is illustrated by several important statistical problems, such as bipartite network, generalized estimating equations, and three-way observations.
Cite
@article{arxiv.2108.04852,
title = {Multiway empirical likelihood},
author = {Harold D Chiang and Yukitoshi Matsushita and Taisuke Otsu},
journal= {arXiv preprint arXiv:2108.04852},
year = {2024}
}
Comments
29 pages, 2 tables