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Generalized Degrees of Freedom and Adaptive Model Selection in Linear Mixed-Effects Models

机译:线性混合效果模型中的广义自由度和自适应模型选择

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摘要

Linear mixed-effects models involve fixed effects, random effects and covariance structure, which require model selection to simplify a model and to enhance its interpretability and predictability. In this article, we develop, in the context of linear mixed-effects models, the generalized degrees of freedom and an adaptive model selection procedure defined by a data-driven model complexity penalty. Numerically, the procedure performs well against its competitors not only in selecting fixed effects but in selecting random effects and covariance structure as well. Theoretically, asymptotic optimality of the proposed methodology is established over a class of information criteria. The proposed methodology is applied to the BioCycle study, to determine predictors of hormone levels among premenopausal women and to assess variation in hormone levels both between and within women across the menstrual cycle.
机译:线性混合效果模型涉及固定效果,随机效应和协方差结构,需要模型选择来简化模型,并提高其可解释性和可预测性。在本文中,我们在线性混合效果模型中开发,广义自由度和由数据驱动模型复杂性惩罚定义的自适应模型选择过程。在数值上,该程序不仅在选择固定效应方面的竞争者对其竞争对手进行了良好,而是在选择随机效应和协方差结构方面。从理论上讲,建议方法的渐近最优性在一类信息标准方面建立。该提出的方法适用于生物循环研究,以确定前生物妇女的激素水平的预测因子,并评估在月经周期中妇女之间的激素水平的变化。

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