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Bayesian tests on components of the compound symmetry covariance matrix

机译:复合对称协方差矩阵成分的贝叶斯检验

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摘要

Complex dependency structures are often conditionally modeled, where random effects parameters are used to specify the natural heterogeneity in the population. When interest is focused on the dependency structure, inferences can be made from a complex covariance matrix using a marginal modeling approach. In this marginal modeling framework, testing covariance parameters is not a boundary problem. Bayesian tests on covariance parameter(s) of the compound symmetry structure are proposed assuming multivariate normally distributed observations. Innovative proper prior distributions are introduced for the covariance components such that the positive definiteness of the (compound symmetry) covariance matrix is ensured. Furthermore, it is shown that the proposed priors on the covariance parameters lead to a balanced Bayes factor, in case of testing an inequality constrained hypothesis. As an illustration, the proposed Bayes factor is used for testing (non-)invariant intra-class correlations across different group types (public and Catholic schools), using the 1982 High School and Beyond survey data.
机译:复杂的依存关系结构通常是有条件的建模,其中随机效应参数用于指定总体中的自然异质性。当关注点放在依赖关系结构上时,可以使用边际建模方法从复杂的协方差矩阵中进行推断。在此边缘建模框架中,测试协方差参数不是边界问题。假设多元正态分布观测值,建议对复合对称结构的协方差参数进行贝叶斯检验。为协方差分量引入创新的适当先验分布,以确保(复合对称性)协方差矩阵的正定性。此外,证明了在检验不等式约束假设的情况下,针对协方差参数提出的先验导致平衡的贝叶斯因子。作为说明,使用1982年高中和超越调查数据,建议的贝叶斯因子用于测试不同群体类型(公立和天主教学校)之间的(非)不变的类内相关性。

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