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Hypothesis testing in functional linear models

机译:功能线性模型中的假设检测

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摘要

Functional data arise frequently in biomedical studies, where it is often of interest to investigate the association between functional predictors and a scalar response variable. While functional linear models (FLM) are widely used to address these questions, hypothesis testing for the functional association in the FLM framework remains challenging. A popular approach to testing the functional effects is through dimension reduction by functional principal component (PC) analysis. However, its power performance depends on the choice of the number of PCs, and is not systematically studied. In this article, we first investigate the power performance of the Wald-type test with varying thresholds in selecting the number of PCs for the functional covariates, and show that the power is sensitive to the choice of thresholds. To circumvent the issue, we propose a new method of ordering and selecting principal components to construct test statistics. The proposed method takes into account both the association with the response and the variation along each eigenfunction. We establish its theoretical properties and assess the finite sample properties through simulations. Our simulation results show that the proposed test is more robust against the choice of threshold while being as powerful as, and often more powerful than, the existing method. We then apply the proposed method to the cerebral white matter tracts data obtained from a diffusion tensor imaging tractography study.
机译:在生物医学研究中经常出现功能数据,其中往往有兴趣地研究功能预测器和标量响应变量之间的关联。虽然功能线性模型(FLM)被广泛用于解决这些问题,但FLM框架中功能关联的假设检测仍然具有挑战性。一种普遍的测试功能效果的方法是通过功能主组件(PC)分析的尺寸减少。然而,其功率性能取决于PC的选择,而且没有系统地研究。在本文中,我们首先调查WALD型测试的功率性能,在选择功能协变量的PC的数量时,沃尔德型测试的功率性能,并表明功率对阈值的选择敏感。为了规避问题,我们提出了一种新的订购和选择主组件来构建测试统计数据的方法。所提出的方法考虑了与响应的关联和沿每个特征功能的变化。我们建立理论性质,并通过模拟评估有限的样品特性。我们的仿真结果表明,建议的测试对阈值的选择更加强大,同时与现有方法一样强大,往往更强大。然后,我们将所提出的方法应用于从扩散张量成像牵引牵引性研究获得的脑白质沟道数据。

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