arXiv Analytics

Sign in

arXiv:2102.10583 [stat.CO]AbstractReferencesReviewsResources

Inverse Gaussian Process regression for likelihood-free inference

Hongqiao Wang, Ziqiao Ao, Tengchao Yu, Jinglai Li

Published 2021-02-21Version 1

In this work we consider Bayesian inference problems with intractable likelihood functions. We present a method to compute an approximate of the posterior with a limited number of model simulations. The method features an inverse Gaussian Process regression (IGPR), i.e., one from the output of a simulation model to the input of it. Within the method, we provide an adaptive algorithm with a tempering procedure to construct the approximations of the marginal posterior distributions. With examples we demonstrate that IGPR has a competitive performance compared to some commonly used algorithms, especially in terms of statistical stability and computational efficiency, while the price to pay is that it can only compute a weighted Gaussian approximation of the marginal posteriors.

Related articles: Most relevant | Search more
arXiv:1107.5959 [stat.CO] (Published 2011-07-29, updated 2012-07-18)
Expectation-Propagation for Likelihood-Free Inference
arXiv:1512.00205 [stat.CO] (Published 2015-12-01)
Divide and conquer in ABC: Expectation-Progagation algorithms for likelihood-free inference
arXiv:1502.05503 [stat.CO] (Published 2015-02-19)
Classification and Bayesian Optimization for Likelihood-Free Inference