| Literature DB >> 30216145 |
Abstract
We consider Bayesian inference problems with computationally intensive likelihood functions. We propose a Gaussian process (GP)-based method to approximate the joint distribution of the unknown parameters and the data, built on recent work (Kandasamy, Schneider, & Póczos, 2015). In particular, we write the joint density approximately as a product of an approximate posterior density and an exponentiated GP surrogate. We then provide an adaptive algorithm to construct such an approximation, where an active learning method is used to choose the design points. With numerical examples, we illustrate that the proposed method has competitive performance against existing approaches for Bayesian computation.Year: 2018 PMID: 30216145 DOI: 10.1162/neco_a_01127
Source DB: PubMed Journal: Neural Comput ISSN: 0899-7667 Impact factor: 2.026