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Testing for Covariate Effects in the Fully Nonparametric Analysis of Covariance Model

机译:协方差模型的完全非参数分析中的协变量效应检验

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摘要

Traditional inference questions in the analysis of covariance mainly focus on comparing different factor levels by adjusting for the continuous covariates, which are believed to also exert a significant effect on the outcome variable. Testing hypotheses about the covariate effects, although of substantial interest in many applications, has received relatively limited study in the semiparametriconparametric setting. In the context of the fully nonparametric analysis of covariance model of Akritas et al., we propose methods to test for covariate main effects and covariate-factor interaction effects. The idea underlying the proposed procedures is that covariates can be thought of as factors with many levels. The test statistics are closely related to some recent developments in the asymptotic theory for analysis of variance when the number of factor levels is large. The limiting normal distributions are established under the null hypotheses and local alternatives by asymptotically approximating a new class of quadratic forms. The test statistics bear similar forms to the classical F-test statistics and thus are convenient for computation. We demonstrate the methods and their properties on simulated and veal data.
机译:协方差分析中的传统推理问题主要集中在通过调整连续协变量来比较不同因子水平,据信这些变量也对结果变量产生重大影响。关于协变量效应的检验假设尽管在许多应用中引起了广泛关注,但在半参数/非参数设置中的研究相对有限。在Akritas等人的协方差模型的完全非参数分析的背景下,我们提出了测试协变量主效应和协变量-因子相互作用效应的方法。提议的过程所基于的思想是协变量可以被认为是具有许多水平的因素。当因子水平的数量很大时,检验统计量与渐近理论中用于方差分析的一些最新发展密切相关。通过渐近逼近一类新的二次形式,在零假设和局部替代项下建立了极限正态分布。检验统计量具有与经典F检验统计量类似的形式,因此便于计算。我们演示了方法及其在模拟和小牛肉数据上的特性。

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