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Bayesian variable selection for correlated covariates via colored cliques

机译:通过彩色集团对相关协变量的贝叶斯变量选择

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We propose a Bayesian method to select groups of correlated explanatory variables in a linear regression framework. We do this by introducing in the prior distribution assigned to the regression coefficients a random matrix G that encodes the group structure. The groups can thus be inferred by sampling from the posterior distribution of G. We then give a graph-theoretic interpretation of this random matrix G as the adjacency matrix of cliques. We discuss the extension of the groups from cliques to more general random graphs, so that the proposed approach can be viewed as a method to find networks of correlated covariates that are associated with the response.
机译:我们提出一种贝叶斯方法来选择线性回归框架中的相关解释变量组。为此,我们在分配给回归系数的先验分布中引入了一个随机矩阵G,该矩阵对组结构进行编码。因此,可以通过从G的后验分布中进行采样来推断出这些组。然后,我们将这个随机矩阵G作为集团的邻接矩阵,进行图论解释。我们讨论了从集团到更一般的随机图的组扩展,因此所提出的方法可以看作是一种找到与响应相关的相关协变量网络的方法。

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