Wasserstein $F$-tests and confidence bands for the Fréchet regression of density response curves

Alexander Petersen, Xi Liu, A. Divani
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引用次数: 21

Abstract

Data consisting of samples of probability density functions are increasingly prevalent, necessitating the development of methodologies for their analysis that respect the inherent nonlinearities associated with densities. In many applications, density curves appear as functional response objects in a regression model with vector predictors. For such models, inference is key to understand the importance of density-predictor relationships, and the uncertainty associated with the estimated conditional mean densities, defined as conditional Frechet means under a suitable metric. Using the Wasserstein geometry of optimal transport, we consider the Frechet regression of density curve responses and develop tests for global and partial effects, as well as simultaneous confidence bands for estimated conditional mean densities. The asymptotic behavior of these objects is based on underlying functional central limit theorems within Wasserstein space, and we demonstrate that they are asymptotically of the correct size and coverage, with uniformly strong consistency of the proposed tests under sequences of contiguous alternatives. The accuracy of these methods, including nominal size, power, and coverage, is assessed through simulations, and their utility is illustrated through a regression analysis of post-intracerebral hemorrhage hematoma densities and their associations with a set of clinical and radiological covariates.
密度响应曲线的fr回归的Wasserstein $F$检验和置信带
由概率密度函数的样本组成的数据越来越普遍,这就需要开发与密度相关的固有非线性相关的分析方法。在许多应用中,密度曲线在带有向量预测器的回归模型中表现为功能响应对象。对于这样的模型,推断是理解密度-预测器关系的重要性的关键,以及与估计的条件平均密度相关的不确定性,定义为适当度量下的条件Frechet平均值。使用最佳输运的Wasserstein几何,我们考虑密度曲线响应的Frechet回归,并开发了全局和局部效应的测试,以及估计条件平均密度的同时置信带。这些对象的渐近行为是基于Wasserstein空间中潜在的泛函中心极限定理,我们证明了它们的渐近大小和覆盖是正确的,并且在相邻备选序列下所提出的检验具有一致的强一致性。通过模拟评估这些方法的准确性,包括标称大小、功率和覆盖范围,并通过脑出血后血肿密度的回归分析及其与一组临床和放射协变量的关联来说明它们的实用性。
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