论文标题
线性混合效应模型中方差成分的经验可能性推断
Empirical Likelihood Inference of Variance Components in Linear Mixed-Effects Models
论文作者
论文摘要
线性混合效应模型被广泛用于分析重复测量数据,包括聚类和纵向数据,其中固定效应和方差成分的推断非常重要。与已经进行了充分研究的固定效应推断不同,由于固定效果的边界和滋扰参数,对方差组件的推断更具挑战性。现有方法通常需要关于随机效应和随机错误的强烈分布假设。在本文中,我们开发了基于经验的可能性方法,用于在存在固定效应的情况下推断方差成分。得出了提出的方差组件的经验可能性比率统计量的Wilks定理的非参数版本。我们还针对与一系列相关结果相关的多种方差成分开发了经验可能性测试。模拟研究表明,当违反随机效应的高斯分布假设时,所提出的方法比常用的似然比检验表现出更好的1型误差控制。我们应用了该方法来研究澳大利亚双胞胎研究中可穿戴设备测量的体育活动的遗传力,并观察到这种活动只有在0.375到0.514的分位数范围内才能遗传。
Linear mixed-effects models are widely used in analyzing repeated measures data, including clustered and longitudinal data, where inferences of both fixed effects and variance components are of importance. Unlike the fixed effect inference that has been well studied, inference on the variance components is more challenging due to null value being on the boundary and the nuisance parameters of the fixed effects. Existing methods often require strong distributional assumptions on the random effects and random errors. In this paper, we develop empirical likelihood-based methods for the inference of the variance components in the presence of fixed effects. A nonparametric version of the Wilks' theorem for the proposed empirical likelihood ratio statistics for variance components is derived. We also develop an empirical likelihood test for multiple variance components related to a sequence of correlated outcomes. Simulation studies demonstrate that the proposed methods exhibit better type 1 error control than the commonly used likelihood ratio tests when the Gaussian distributional assumptions of the random effects are violated. We apply the methods to investigate the heritability of physical activity as measured by wearable device in the Australian Twin study and observe that such activity is heritable only in the quantile range from 0.375 to 0.514.