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Marginal Conceptual Predictive Statistic for Mixed Model Selection

机译:混合模型选择的边际概念预测统计

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摘要

We focus on the development of model selection criteria in linear mixed models. In particular, we propose the model selection criteria following the Mallows’ Conceptual Predictive Statistic (Cp) [1] [2] in linear mixed models. When correlation exists between the observations in data, the normal Gauss discrepancy in univariate case is not appropriate to measure the distance between the true model and a candidate model. Instead, we define a marginal Gauss discrepancy which takes the correlation into account in the mixed models. The model selection criterion, marginal Cp, called MCp, serves as an asymptotically unbiased estimator of the expected marginal Gauss discrepancy. An improvement of MCp, called IMCp, is then derived and proved to be a more accurate estimator of the expected marginal Gauss discrepancy than MCp. The performance of the proposed criteria is investigated in a simulation study. The simulation results show that in small samples, the proposed criteria outperform the Akaike Information Criteria (AIC) [3] [4] and Bayesian Information Criterion (BIC) [5] in selecting the correct model; in large samples, their performance is competitive. Further, the proposed criteria perform significantly better for highly correlated response data than for weakly correlated data.
机译:我们专注于线性混合模型中模型选择标准的开发。特别是,我们建议在线性混合模型中遵循Mallows的概念预测统计(Cp)[1] [2]的模型选择标准。当数据中的观测值之间存在相关性时,单变量情况下的正常高斯差异不适合测量真实模型与候选模型之间的距离。相反,我们定义了一个边际高斯差异,在混合模型中考虑了相关性。模型选择标准,即边际Cp,称为MCp,用作预期边际高斯差异的渐近无偏估计。然后推导了一种称为IMCp的MCp改进,并证明它是比MCp更准确地估计预期边际高斯差异的方法。在模拟研究中研究了提出的标准的性能。仿真结果表明,在较小的样本中,选择正确的模型要优于Akaike信息标准(AIC)[3] [4]和贝叶斯信息标准(BIC)[5]。在大样本中,它们的性能具有竞争力。另外,对于高度相关的响应数据,所提出的标准的性能要明显优于对弱相关的数据。

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