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Objective Bayes Covariate-Adjusted Sparse Graphical Model Selection

机译:目标贝叶斯协变量校正的稀疏图形模型选择

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We present an objective Bayes method for covariance selection in Gaussian multivariate regression models having a sparse regression and covariance structure, the latter being Markov with respect to a directed acyclic graph (DAG). Our procedure can be easily complemented with a variable selection step, so that variable and graphical model selection can be performed jointly. In this way, we offer a solution to a problem of growing importance especially in the area of genetical genomics (eQTL analysis). The input of our method is a single default prior, essentially involving no subjective elicitation, while its output is a closed form marginal likelihood for every covariate-adjusted DAG model, which is constant over each class of Markov equivalent DAGs; our procedure thus naturally encompasses covariate-adjusted decomposable graphical models. In realistic experimental studies, our method is highly competitive, especially when the number of responses is large relative to the sample size.
机译:我们提出了一种客观的贝叶斯方法,用于在具有稀疏回归和协方差结构的高斯多元回归模型中选择协方差,相对于有向无环图(DAG),后者是马尔可夫。我们的程序可以轻松地通过变量选择步骤进行补充,以便可以同时执行变量和图形模型选择。通过这种方式,我们为日益重要的问题提供了解决方案,尤其是在遗传基因组学领域(eQTL分析)。我们方法的输入是一个单一的默认先验,基本上不涉及主观启发,而它的输出是每个协变量调整后的DAG模型的封闭形式边际可能性,在每个Markov等效DAG类上都是恒定的;因此,我们的程序自然包含了协变量调整后的可分解图形模型。在现实的实验研究中,我们的方法具有很高的竞争力,尤其是当响应的数量相对于样本量较大时。

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