DISTANCES BETWEEN NESTED DENSITIES AND A MEASURE OF THE IMPACT OF THE PRIOR IN BAYESIAN STATISTICS

成果类型:
Article
署名作者:
Ley, Christophe; Reinert, Gesine; Swan, Yvik
署名单位:
Ghent University; University of Oxford; University of Liege
刊物名称:
ANNALS OF APPLIED PROBABILITY
ISSN/ISSBN:
1050-5164
DOI:
10.1214/16-AAP1202
发表日期:
2017
页码:
216-241
关键词:
steins method distributions
摘要:
this paper, we propose tight upper and lower bounds for the Wasser-stein distance between any two univariate continuous distributions with probability densities p(1) and p(2) having nested supports. These explicit bounds are expressed in terms of the derivative of the likelihood ratio p(1)/p(2) as well as the Stein kernel tau(1) of p(1). The method of proof relies on a new variant of Stein's method which manipulates Stein operators. We give several applications of these bounds. Our main application is in Bayesian statistics: we derive explicit data-driven bounds on the Wasser-stein distance between the posterior distribution based on a given prior and the no prior posterior based uniquely on the sampling distribution. This is the first finite sample result confirming the well-known fact that with well-identified parameters and large sample sizes, reasonable choices of prior distributions will have only minor effects on posterior inferences if the data are benign.