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Reliability and efficiency of algorithms for computing the significance of the Mann–Whitney test

机译:计算曼恩·惠特尼检验的重要性的算法的可靠性和效率

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Motivated by recent applications of the Mann–Whitney U test to large data sets we took a critical look at current methods for computing its significance. Surprisingly, we found that the two fastest and most popular tools for exact computation of the test significance, Dinneen and Blakesley’s and Harding’s, can exhibit large numerical errors even in moderately large datasets. In addition, another method proposed by Pagano and Tritchler also suffers from a similar numerical instability and can produce inaccurate results. This motivated our development of a new algorithm, mw-sFFT, for the exact computation of the Mann–Whitney test with no ties. Among the class of exact algorithms that are numerically stable, mw-sFFT has the best complexity: O(m 2 n) versus O(m 2 n 2) for others, where m and n are the two sample sizes. This asymptotic efficiency is also reflected in the practical runtime of the algorithm. In addition, we also present a rigorous analysis of the propagation of numerical errors in mw-sFFT to derive an error guarantee for the values computed by the algorithm. The reliability and efficiency of mw-sFFT make it a valuable tool in compuational applications and we plan to provide open-source libraries for it in C++ and Matlab.
机译:受曼恩·惠特尼(Mann-Whitney U)检验最近在大数据集上的应用的推动,我们对计算其重要性的当前方法进行了批判性研究。令人惊讶地,我们发现,即使是在中等规模的数据集中,用于准确计算测试重要性的两个最快,最受欢迎的工具Dinneen和Blakesley和Harding的工具也可能会出现较大的数值误差。此外,Pagano和Tritchler提出的另一种方法也存在类似的数值不稳定性,并且可能产生不准确的结果。这激励了我们开发新算法mw-sFFT的目的,该算法可以精确地计算曼恩-惠特尼检验,而无任何联系。在数值稳定的一类精确算法中,mw-sFFT具有最高的复杂度:O(m 2 n)与O(m 2 n 2 < / sup>),其中m和n是两个样本大小。该渐近效率也反映在算法的实际运行时间中。此外,我们还对mw-sFFT中数值误差的传播进行了严格分析,以得出算法所计算值的误差保证。 mw-sFFT的可靠性和效率使其成为计算应用程序中的重要工具,我们计划在C ++和Matlab中为其提供开源库。

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