41

On The Gaussian Approximation To Bayesian Posterior Distributions

Mathematics and Statistics (MS), 2020
Abstract

The present article derives the minimal number NN of observations needed to consider a Bayesian posterior distribution as Gaussian. Two examples are presented. Within one of them, a chi-squared distribution, the observable xx as well as the parameter ξ\xi are defined all over the real axis, in the other one, the binomial distribution, the observable xx is an entire number while the parameter ξ\xi is defined on a finite interval of the real axis. The required minimal NN is high in the first case and low for the binomial model. In both cases the precise definition of the measure μ\mu on the scale of ξ\xi is crucial.

View on arXiv
Comments on this paper