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Resampling-based multiple comparison procedure with application to point-wise testing with functional data

机译:基于重采样的多重比较程序适用于功能数据的逐点测试

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摘要

In this paper we describe a coherent multiple testing procedure for correlated test statistics such as are encountered in functional linear models. The procedure makes use of two different p-value combination methods: the Fisher combination method and the Šidák correction-based method. P-values for Fisher’s and Šidák’s test statistics are estimated through resampling to cope with the correlated tests. Building upon these two existing combination methods, we propose the smallest p-value as a new test statistic for each hypothesis. The closure principle is incorporated along with the new test statistic to obtain the overall p-value and appropriately adjust the individual p-values. Furthermore, a shortcut version for the proposed procedure is detailed, so that individual adjustments can be obtained even for a large number of tests. The motivation for developing the procedure comes from a problem of point-wise inference with smooth functional data where tests at neighboring points are related. A simulation study verifies that the methodology performs well in this setting. We illustrate the proposed method with data from a study on the aerial detection of the spectral effect of below ground carbon dioxide leakage on vegetation stress via spectral responses.
机译:在本文中,我们为相关的测试统计量(如功能线性模型中遇到的情况)描述了一个连贯的多重测试程序。该过程使用两种不同的p值组合方法:Fisher组合方法和基于Šidák校正的方法。 Fisher和Šidák的测试统计信息的P值是通过重新采样来估算的,以应对相关的测试。在这两种现有组合方法的基础上,我们针对每个假设提出最小的p值作为新的检验统计量。闭包原理与新的测试统计信息结合使用,以获得总体p值并适当调整各个p值。此外,还详细介绍了所建议程序的快捷方式,因此即使进行大量测试也可以进行单独调整。开发该程序的动机来自使用平滑函数数据进行逐点推理的问题,该函数涉及到相邻点的测试。仿真研究验证了该方法在这种情况下的性能良好。我们通过对地下二氧化碳泄漏通过光谱响应对植被胁迫的光谱效应进行空中探测的研究数据来说明所提出的方法。

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