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Double Penalized H-Likelihood for Selection of Fixed and Random Effects in Mixed Effects Models

机译:在混合效应模型中选择固定和随机效应的双重惩罚H似然

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The goal of this paper is to develop a double penalized hierarchical likelihood (DPHL) with a modified Cholesky decomposition for simultaneously selecting fixed and random effects in mixed effects models. DPHL avoids the use of data likelihood, whichusually involves a high-dimensional integral, to define an objective function for variable selection. The resulting DPHL-based estimator enjoys the oracle properties with no requirement on the convexity of loss function. Moreover, a two-stage algorithm is proposed to effectively implement this approach. An H-likelihood-based Bayesian information criterion (BIC) is developed for tuning parameter selection. Simulated data and a real data set are examined to illustrate the efficiency of the proposed method.
机译:本文的目的是开发一种带有修正的Cholesky分解的双重惩罚层次似然(DPHL),以便在混合效应模型中同时选择固定效应和随机效应。 DPHL避免使用通常涉及高维积分的数据似然来定义变量选择的目标函数。所得的基于DPHL的估计量具有oracle属性,而对损失函数的凸性没有要求。此外,提出了一种两阶段算法来有效地实现该方法。基于H可能性的贝叶斯信息准则(BIC)被开发用于调整参数选择。仿真数据和真实数据集进行了检查,以说明所提出方法的效率。

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