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PC priors for residual correlation parameters in one-factor mixed models

机译:单因素混合模型中的剩余相关参数的PC Proors

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Lack of independence in the residuals from linear regression motivates the use of random effect models in many applied fields. We start from the one-way anova model and extend it to a general class of one-factor Bayesian mixed models, discussing several correlation structures for the within group residuals. All the considered group models are parametrized in terms of a single correlation (hyper-parameter, controlling the shrinkage towards the case of independent residuals (iid). We derive a penalized complexity (PC) prior for the correlation parameter of a generic group model. This prior has desirable properties from a practical point of view: (ⅰ) it ensures appropriate shrinkage to the iid case; (ⅱ) it depends on a scaling parameter whose choice only requires a prior guess on the proportion of total variance explained by the grouping factor; (ⅲ) it is defined on a distance scale common to all group models, thus the scaling parameter can be chosen in the same manner regardless the adopted group model. We show the benefit of using these PC priors in a case study in community ecology where different group models are compared.
机译:线性回归中缺乏独立性的独立性促使在许多应用领域中使用随机效果模型。我们从单向ANOVA模型开始,并将其扩展到一般的单因素贝叶斯混合模型,讨论了群体残差内的几个相关结构。所有COMPED组模型都是根据单个相关性的参数化(超参数,控制朝向独立残差的情况(IID)的收缩。我们在通用组模型的相关参数之前获得惩罚复杂性(PC)。该之前具有所需的性质,从实际的角度来看因子;(Ⅲ)在所有组模型共有的距离级上定义,因此无论采用的组模型如何,都可以以相同的方式选择缩放参数。我们展示在社区中使用这些PC前沿的效果比较不同组模型的生态学。

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