This paper presents objective priors for robust Bayesian estimation against outliers based on divergences. The minimum $\gamma$-divergence estimator is well-known to work well estimation against heavy contamination. The robust Bayesian methods by using quasi-posterior distributions based on divergences have been also proposed in recent years. In objective Bayesian framework, the selection of default prior distributions under such quasi-posterior distributions is an important problem. In this study, we provide some properties of reference and moment matching priors under the quasi-posterior distribution based on the $\gamma$-divergence. In particular, we show that the proposed priors are approximately robust under the condition on the contamination distribution without assuming any conditions on the contamination ratio. Some simulation studies are also presented.
翻译:本文件介绍了基于差异的稳健贝叶斯人对外部线的稳健估算的客观前科。 最小 $\gamma$- divegence 估计值是众所周知的,可以很好地估计严重污染。 近年来还提出了基于差异的稳健的巴伊斯人方法。 在目标巴伊斯人框架内,在这种准外部线分布下选择默认的前科分配是一个重要问题。在本研究中,我们提供了基于 $\gamma$- divegence 估计值的准前科的一些参考属性和与前科的相对应。特别是,我们表明,在污染分布条件下,拟议的前科在不假定任何污染比率条件的条件下大致是稳健的。还介绍了一些模拟研究。