Rank-based score tests for high-dimensional regression coefficients

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Abstract

This article is concerned with simultaneous tests on linear regression coefficients in high-dimensional settings. When the dimensionality is larger than the sample size, the classic F-test is not applicable since the sample covariance matrix is not invertible. Recently, [5] and [17] proposed testing procedures by excluding the inverse term in F-statistics. However, the efficiency of such F-statistic-based methods is adversely affected by outlying observations and heavy tailed distributions. To overcome this issue, we propose a robust score test based on rank regression. The asymptotic distributions of the proposed test statistic under the high-dimensional null and alternative hypotheses are established. Its asymptotic relative efficiency with respect to [17]'s test is closely related to that of the Wilcoxon test in comparison with the t-test. Simulation studies are conducted to compare the proposed procedure with other existing testing procedures and show that our procedure is generally more robust in both sizes and powers.

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Feng, L., Zou, C., Wang, Z., & Chen, B. (2013). Rank-based score tests for high-dimensional regression coefficients. Electronic Journal of Statistics, 7(1), 2131–2149. https://doi.org/10.1214/13-EJS839

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