Accelerating ABC methods using Gaussian processes

01/07/2014
by   Richard D Wilkinson, et al.
0

Approximate Bayesian computation (ABC) methods are used to approximate posterior distributions using simulation rather than likelihood calculations. We introduce Gaussian process (GP) accelerated ABC, which we show can significantly reduce the number of simulations required. As computational resource is usually the main determinant of accuracy in ABC, GP-accelerated methods can thus enable more accurate inference in some models. GP models of the unknown log-likelihood function are used to exploit continuity and smoothness, reducing the required computation. We use a sequence of models that increase in accuracy, using intermediate models to rule out regions of the parameter space as implausible. The methods will not be suitable for all problems, but when they can be used, can result in significant computational savings. For the Ricker model, we are able to achieve accurate approximations to the posterior distribution using a factor of 100 fewer simulator evaluations than comparable Monte Carlo approaches, and for a population genetics model we are able to approximate the exact posterior for the first time.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/08/2021

Approximate Bayesian inference from noisy likelihoods with Gaussian process emulated MCMC

We present an efficient approach for doing approximate Bayesian inferenc...
research
10/20/2016

Gaussian process modeling in approximate Bayesian computation to estimate horizontal gene transfer in bacteria

Approximate Bayesian computation (ABC) can be used for model fitting whe...
research
11/17/2019

Iterative Construction of Gaussian Process Surrogate Models for Bayesian Inference

A new algorithm is developed to tackle the issue of sampling non-Gaussia...
research
05/03/2019

Parallel Gaussian process surrogate method to accelerate likelihood-free inference

We consider Bayesian inference when only a limited number of noisy log-l...
research
05/30/2023

Parallelized Acquisition for Active Learning using Monte Carlo Sampling

Bayesian inference remains one of the most important tool-kits for any s...
research
10/21/2019

Approximate Sampling using an Accelerated Metropolis-Hastings based on Bayesian Optimization and Gaussian Processes

Markov Chain Monte Carlo (MCMC) methods have a drawback when working wit...
research
01/19/2021

Sequential Bayesian Risk Set Inference for Robust Discrete Optimization via Simulation

Optimization via simulation (OvS) procedures that assume the simulation ...

Please sign up or login with your details

Forgot password? Click here to reset