José A. Ordoñez, Marcos O. Prates, Jorge L. Bazán, Victor H. Lachos
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引用次数: 0
Abstract
The choice of a prior distribution is a key aspect of the Bayesian method. However, in many cases, such as the family of power links, this is not trivial. In this article, we introduce a penalized complexity prior (PC prior) of the skewness parameter for this family, which is useful for dealing with imbalanced data. We derive a general expression for this density and show its usefulness for some particular cases such as the power logit and the power probit links. A simulation study and a real data application are used to assess the efficiency of the introduced densities in comparison with the Gaussian and uniform priors. Results show improvement in point and credible interval estimation for the considered models when using the PC prior in comparison to other well-known standard priors.
先验分布的选择是贝叶斯方法的一个关键方面。然而,在很多情况下,例如幂级数联立方程族,这并非易事。在本文中,我们为该系列引入了偏度参数的受惩罚复杂度先验(PC 先验),这对于处理不平衡数据非常有用。我们推导出了该密度的一般表达式,并展示了它在一些特殊情况下的实用性,如 power logit 和 power probit 链接。我们使用模拟研究和真实数据应用来评估引入的密度与高斯先验和均匀先验相比的效率。结果表明,与其他著名的标准先验相比,使用 PC 先验时,所考虑模型的点估计和可信区间估计都有所改进。