Power Enhancement of Permutation-Augmented Partial-Correlation Tests via Fixed-Row Permutations
Power Enhancement of Permutation-Augmented Partial-Correlation Tests via Fixed-Row Permutations
Permutation-based partial-correlation tests guarantee finite-sample Type I error control under any fixed design and exchangeable noise, yet their power can collapse when the permutation-augmented design aligns too closely with the covariate of interest. We remedy this by fixing a design-driven subset of rows and permuting only the remainder. The fixed rows are chosen by a greedy algorithm that maximizes a lower bound on power. This strategy reduces covariate-permutation collinearity while preserving worst-case Type I error control. Simulations confirm that this refinement maintains nominal size and delivers substantial power gains over original unrestricted permutations, especially in high-collinearity regimes.
Tianyi Wang、Guanghui Wang、Zhaojun Wang、Changliang Zou
数学
Tianyi Wang,Guanghui Wang,Zhaojun Wang,Changliang Zou.Power Enhancement of Permutation-Augmented Partial-Correlation Tests via Fixed-Row Permutations[EB/OL].(2025-06-03)[2025-07-16].https://arxiv.org/abs/2506.02906.点此复制
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