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Bayesian robustness under a skew-normal class of prior distribution

机译:偏态正态先验分布下的贝叶斯鲁棒性

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摘要

We develop a global sensitivity analysis to measure the robustness of the Bayesian estimators with respect to a class of prior distributions. This class arises when we consider multiplicative contamination of a base prior distribution. A similar structure was presented by van der Linde. Some particular specifications for this multiplicative contamination class coincide with well known families of skewed distributions. In this paper, we explore the skew-normal multiplicative contamination class for the prior distribution of the location parameter of a normal model. Results of a Bayesian conjugation and expressions for some measures of distance between posterior means and posterior variance are obtained. We also elaborate on the behavior of the posterior means and of the posterior variances through a simulation study.
机译:我们开发了一种全局敏感性分析,以衡量一类先验分布的贝叶斯估计量的鲁棒性。当我们考虑基本先验分布的乘性污染时,就会出现此类。 van der Linde提出了类似的结构。此乘性污染类别的某些特定规格与众所周知的偏态分布族一致。在本文中,我们探索了偏态-正态可乘污染类别,以用于正态模型的位置参数的先验分布。获得贝叶斯共轭的结果以及后均值与后方方差之间的距离度量的表达式。我们还通过模拟研究详细说明了后均值和后方差的行为。

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