The topic of robustness is experiencing a resurgence of interest in the statistical and machine learning communities. In particular, robust algorithms making use of the so-called median of means estimator were shown to satisfy strong performance guarantees for many problems, including estimation of the mean, covariance structure as well as linear regression. In this work, we propose an extension of the median of means principle to the Bayesian framework, leading to the notion of the robust posterior distribution. In particular, we (a) quantify robustness of this posterior to outliers, (b) show that it satisfies a version of the Bernstein-von Mises theorem that connects Bayesian credible sets to the traditional confidence intervals, and (c) demonstrate that our approach performs well in applications.
翻译:稳健性专题正在引起对统计和机器学习界的兴趣,特别是,使用所谓的手段中位数的稳健算法被证明能满足许多问题的强有力的绩效保障,包括平均值、共变结构和线性回归的估计。在这项工作中,我们建议将手段原则中位数扩大到巴耶斯框架,从而形成稳健的后方分布概念。特别是,我们(a) 将这一后方的稳健性量化到外端,(b) 显示它满足了将巴耶斯人可信的组合与传统信任间隔联系起来的伯恩斯坦-冯米塞斯理论的版本,(c) 表明我们的做法在应用中表现良好。