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Asymptotic approximations to posterior distributions via conditional moment equations

机译:通过条件矩方程对后验分布的渐近逼近

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摘要

We consider asymptotic approximations to joint posterior distributions in situations where the full conditional distributions referred to in Gibbs sampling are asymptotically normal. Our development focuses on problems where data augmentation facilitates simpler calculations, but results hold more generally. Asymptotic mean vectors are obtained as simultaneous solutions to fixed point equations that arise naturally in the development. Asymptotic covariance matrices flow naturally from the work of Arnold & Press (1989) and involve the conditional asymptotic covariance matrices and first derivative matrices for conditional mean functions. When the fixed point equations admit an analytical solution, explicit formulae are subsequently obtained for the covariance structure of the joint limiting distribution, which may shed light on the use of the given statistical model. Two illustrations are given. [References: 21]
机译:在Gibbs抽样中提到的全部条件分布在渐近正态的情况下,我们考虑关节后分布的渐近近似。我们的开发专注于数据增强可以简化计算但结果更普遍的问题。渐近均值向量是开发中自然产生的定点方程的同时解。渐近协方差矩阵自然来自Arnold&Press(1989)的工作,涉及条件渐近协方差矩阵和条件均值函数的一阶导数矩阵。当不动点方程接受解析解时,随后将为联合极限分布的协方差结构获得显式公式,这可能有助于使用给定的统计模型。给出两个插图。 [参考:21]

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