Efficient MCMC for Gibbs Random Fields using pre-computation

10/11/2017
by   Aidan Boland, et al.
0

Bayesian inference of Gibbs random fields (GRFs) is often referred to as a doubly intractable problem, since the likelihood function is intractable. The exploration of the posterior distribution of such models is typically carried out with a sophisticated Markov chain Monte Carlo (MCMC) method, the exchange algorithm (Murray et al., 2006), which requires simulations from the likelihood function at each iteration. The purpose of this paper is to consider an approach to dramatically reduce this computational overhead. To this end we introduce a novel class of algorithms which use realizations of the GRF model, simulated offline, at locations specified by a grid that spans the parameter space. This strategy speeds up dramatically the posterior inference, as illustrated on several examples. However, using the pre-computed graphs introduces a noise in the MCMC algorithm, which is no longer exact. We study the theoretical behaviour of the resulting approximate MCMC algorithm and derive convergence bounds using a recent theoretical development on approximate MCMC methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/14/2017

Model comparison for Gibbs random fields using noisy reversible jump Markov chain Monte Carlo

The reversible jump Markov chain Monte Carlo (RJMCMC) method offers an a...
research
03/14/2012

Bayesian Parameter Estimation for Latent Markov Random Fields and Social Networks

Undirected graphical models are widely used in statistics, physics and m...
research
04/09/2020

Adaptive MCMC for synthetic likelihoods and correlated synthetic likelihoods

Approximate Bayesian computation (ABC) and synthetic likelihood (SL) are...
research
02/22/2018

Bayesian Lasso : Concentration and MCMC Diagnosis

Using posterior distribution of Bayesian LASSO we construct a semi-norm ...
research
08/09/2014

Bayesian Structure Learning for Markov Random Fields with a Spike and Slab Prior

In recent years a number of methods have been developed for automaticall...
research
06/09/2015

Variational consensus Monte Carlo

Practitioners of Bayesian statistics have long depended on Markov chain ...
research
02/10/2021

Real-Time Likelihood-free Inference of Roman Binary Microlensing Events with Amortized Neural Posterior Estimation

Fast and automated inference of binary-lens, single-source (2L1S) microl...

Please sign up or login with your details

Forgot password? Click here to reset