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OBJECTIVE BAYESIAN HYPOTHESIS TESTING IN BINOMIAL REGRESSION MODELS WITH INTEGRAL PRIOR DISTRIBUTIONS

机译:具有积分先验分布的二项回归模型的目标贝叶斯假设检验

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摘要

In this work we apply the methodology of integral priors to deal with Bayesian model selection in nested binomial regression models with a general link function. These models are often used to investigate associations and risks in epidemiological studies where one goal is to find whether or not an exposure is a risk factor for developing a certain disease; the purpose of the current paper is to test the effect of specific exposure factors. We formulate the problem as a Bayesian model selection one and solve it using objective Bayes factors. To elicit prior distributions on the regression coefficients of the binomial regression models, we rely on the methodology of integral priors that is nearly automatic as it only requires the specification of estimation reference priors and it does not depend on tuning parameters or on hyperparameters.
机译:在这项工作中,我们应用积分先验的方法来处理具有一般链接函数的嵌套二项式回归模型中的贝叶斯模型选择。这些模型通常用于调查流行病学研究中的关联和风险,其中一个目标是确定暴露是否是某种疾病的危险因素。本文的目的是测试特定暴露因素的影响。我们将该问题公式化为贝叶斯模型选择之一,并使用客观贝叶斯因子对其进行求解。为了在二项式回归模型的回归系数上得出先验分布,我们依赖于积分先验的方法,该方法几乎是自动的,因为它只需要指定估计参考先验,并且不依赖于调整参数或超参数。

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