函数数据协方差结构差异的稳健非参数假设检验

Pub Date : 2023-03-25 DOI:10.1002/cjs.11767
Kelly Ramsay, Shoja'eddin Chenouri
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引用次数: 0

摘要

我们开发了一组鲁棒的非参数假设检验,用于检测几个功能数据总体的协方差算子之间的差异。这些测试称为FKWC测试,基于功能数据深度排名。这些测试即使在数据是重尾的情况下也能很好地工作,这在模拟和理论上都得到了证明。这些测试还提供了其他一些好处,它们在零假设下有一个简单的分布,它们的计算成本很低,并且它们具有变换不变性。我们表明,在一般替代假设下,这些检验在温和的非参数假设下是一致的。作为这项工作的结果,我们引入了一个新的功能深度函数,称为l2 -根深度,它可以很好地用于检测协方差核之间的幅度差异。我们提出了在局部替代方案下使用l2根深度的FKWC测试的分析。在模拟中,当真正的协方差核具有严格的正特征值时,我们表明这些测试比它们的竞争对手具有更高的功率,同时仍然保持其标称大小。我们还提供了一种计算样本大小和执行多重比较的方法。
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Robust nonparametric hypothesis tests for differences in the covariance structure of functional data

We develop a group of robust, nonparametric hypothesis tests that detect differences between the covariance operators of several populations of functional data. These tests, called functional Kruskal–Wallis tests for covariance, or FKWC tests, are based on functional data depth ranks. FKWC tests work well even when the data are heavy-tailed, which is shown both in simulation and theory. FKWC tests offer several other benefits: they have a simple asymptotic distribution under the null hypothesis, they are computationally cheap, and they possess transformation-invariance properties. We show that under general alternative hypotheses, these tests are consistent under mild, nonparametric assumptions. As a result, we introduce a new functional depth function called L 2 -root depth that works well for the purposes of detecting differences in magnitude between covariance kernels. We present an analysis of the FKWC test based on L 2 -root depth under local alternatives. Through simulations, when the true covariance kernels have an infinite number of positive eigenvalues, we show that these tests have higher power than their competitors while maintaining their nominal size. We also provide a method for computing sample size and performing multiple comparisons.

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