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Bayesian Variable Selection under Collinearity of Parameters

机译:参数共线性下的贝叶斯变量选择

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摘要

In this study, we highlight some interesting facts about Bayesian variable selection methods for linear regression models in settings where the design matrix exhibits strong collinearity. We first demonstrate via real data analysis and simulation studies that summaries of the posterior distribution based on marginal and joint distributions may give conflicting results for assessing the importance of strongly correlated covariates. The natural question is which one should be used in practice. The simulation studies suggest that osterior inclusion probabilities and Bayes factors that evaluate the importance of correlated covariates jointly are more appropriate and some priors may be more adversely affected in such a setting. To obtain a better understanding behind the phenomenon, we study some examples with Zellner?s g-prior. The results show that strong collinearity may lead to a multimodal posterior distribution over models, in which joint summaries are more appropriate than marginal summaries. Thus, we recommend a routine examination of the correlation matrix and calculation of the joint inclusion probabilities for correlated covariates, in addition to marginal inclusion probabilities for assessing the importance of covariates in Bayesian variable selection.
机译:在这项研究中,我们重点介绍了在设计矩阵表现出强共线性的情况下,用于线性回归模型的贝叶斯变量选择方法的一些有趣事实。我们首先通过真实数据分析和模拟研究证明,基于边际和联合分布的后验分布汇总可能会给出相互矛盾的结果,以评估强相关协变量的重要性。自然的问题是在实践中应该使用哪一个。模拟研究表明,后骨包容率和贝叶斯因子共同评估相关协变量的重要性,在这种情况下,某些先验条件可能会受到更大的不利影响。为了更好地理解这种现象,我们使用Zellner的g先验研究了一些示例。结果表明,强共线性可能导致模型的多峰后验分布,其中联合汇总比边际汇总更合适。因此,除了评估贝叶斯变量选择中协变量重要性的边际包含概率之外,我们建议对相关矩阵进行例行检查并计算相关协变量的联合包含概率。

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