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Testing multiple variance components in linear mixed-effects models

机译:在线性混合效应模型中测试多个方差分量

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摘要

Testing zero variance components is one of the most challenging problems in the context of linear mixed-effects (LME) models. The usual asymptotic chi-square distribution of the likelihood ratio and score statistics under this null hypothesis is incorrect because the null is on the boundary of the parameter space. During the last two decades many tests have been proposed to overcome this difficulty, but these tests cannot be easily applied for testing multiple variance components, especially for testing a subset of them. We instead introduce a simple test statistic based on the variance least square estimator of variance components. With this comes a permutation procedure to approximate its finite sample distribution. The proposed test covers testing multiple variance components and any subset of them in LME models. Interestingly, our method does not depend on the distribution of the random effects and errors except for their mean and variance. We show, via simulations, that the proposed test has good operating characteristics with respect to Type I error and power. We conclude with an application of our process using real data from a study of the association of hyperglycemia and relative hyperinsulinemia.
机译:在线性混合效应(LME)模型的背景下,测试零方差分量是最具挑战性的问题之一。在这种零假设下,似然比和得分统计的通常渐近卡方分布是不正确的,因为零位于参数空间的边界上。在过去的二十年中,已经提出了许多测试来克服这一困难,但是这些测试不能轻松地用于测试多个方差分量,尤其是用于测试其中的一个子集。相反,我们基于方差分量的方差最小二乘估计器引入一个简单的检验统计量。随之而来的是一个置换程序,以近似其有限的样本分布。拟议的测试涵盖测试多个方差成分及其在LME模型中的任何子集。有趣的是,除了均值和方差外,我们的方法不依赖于随机效应和误差的分布。通过仿真,我们表明,相对于I型误差和功率,建议的测试具有良好的工作特性。我们以对高血糖和相对高胰岛素血症相关研究的真实数据为基础,对我们的过程进行了应用。

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