论文标题

结构化等级相关矩阵的假设检验

Hypothesis tests for structured rank correlation matrices

论文作者

Perreault, Samuel, Neslehova, Johanna, Duchesne, Thierry

论文摘要

大量变量的联合建模通常需要缩小降低策略,从而导致基础相关矩阵的结构假设,例如变量子集中的相等成对相关性。因此,基础相关矩阵对于模型规范和模型验证都是感兴趣的。在本文中,我们开发了以下假设:肯德尔等级相关矩阵的条目是少量参数的线性组合。当尺寸固定和随样本尺寸生长时,研究了提出的测试统计的渐近行为。我们特别注意部分交换性的限制假设,其中包含完全交换性作为特殊情况。我们表明,在部分交换性下,测试统计数据及其大样本分布简化了,从而带来了计算优势和更好的测试性能。我们提出了各种可扩展的数值策略来实施所提出的程序,通过当地替代方案下的模拟和功率计算来调查其行为,并证明它们在各个地理位置在平均海平面的真实数据集中使用。

Joint modeling of a large number of variables often requires dimension reduction strategies that lead to structural assumptions of the underlying correlation matrix, such as equal pair-wise correlations within subsets of variables. The underlying correlation matrix is thus of interest for both model specification and model validation. In this paper, we develop tests of the hypothesis that the entries of the Kendall rank correlation matrix are linear combinations of a smaller number of parameters. The asymptotic behavior of the proposed test statistics is investigated both when the dimension is fixed and when it grows with the sample size. We pay special attention to the restricted hypothesis of partial exchangeability, which contains full exchangeability as a special case. We show that under partial exchangeability, the test statistics and their large-sample distributions simplify, which leads to computational advantages and better performance of the tests. We propose various scalable numerical strategies for implementation of the proposed procedures, investigate their behavior through simulations and power calculations under local alternatives, and demonstrate their use on a real dataset of mean sea levels at various geographical locations.

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