Light and Widely Applicable MCMC: Approximate Bayesian Inference for Large Datasets
Methodology
2015-11-25 v2
Abstract
Light and Widely Applicable (LWA-) MCMC is a novel approximation of the Metropolis-Hastings kernel targeting a posterior distribution defined on a large number of observations. Inspired by Approximate Bayesian Computation, we design a Markov chain whose transition makes use of an unknown but fixed, fraction of the available data, where the random choice of sub-sample is guided by the fidelity of this sub-sample to the observed data, as measured by summary (or sufficient) statistics. LWA-MCMC is a generic and flexible approach, as illustrated by the diverse set of examples which we explore. In each case LWA-MCMC yields excellent performance and in some cases a dramatic improvement compared to existing methodologies.
Keywords
Cite
@article{arxiv.1503.04178,
title = {Light and Widely Applicable MCMC: Approximate Bayesian Inference for Large Datasets},
author = {Florian Maire and Nial Friel and Pierre Alquier},
journal= {arXiv preprint arXiv:1503.04178},
year = {2015}
}
Comments
26 pages