On default priors for robust Bayesian estimation with divergences
Abstract
This paper presents objective priors for robust Bayesian estimation against outliers based on divergences. The minimum -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 -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.
Cite
@article{arxiv.2004.13991,
title = {On default priors for robust Bayesian estimation with divergences},
author = {Tomoyuki Nakagawa and Shintaro Hashimoto},
journal= {arXiv preprint arXiv:2004.13991},
year = {2021}
}
Comments
22pages