Pre-processing for approximate Bayesian computation in image analysis


Autoria(s): Moores, Matthew T.; Drovandi, Christopher C.; Mengersen, Kerrie; Robert, Christian P.
Data(s)

2015

Resumo

Most of the existing algorithms for approximate Bayesian computation (ABC) assume that it is feasible to simulate pseudo-data from the model at each iteration. However, the computational cost of these simulations can be prohibitive for high dimensional data. An important example is the Potts model, which is commonly used in image analysis. Images encountered in real world applications can have millions of pixels, therefore scalability is a major concern. We apply ABC with a synthetic likelihood to the hidden Potts model with additive Gaussian noise. Using a pre-processing step, we fit a binding function to model the relationship between the model parameters and the synthetic likelihood parameters. Our numerical experiments demonstrate that the precomputed binding function dramatically improves the scalability of ABC, reducing the average runtime required for model fitting from 71 hours to only 7 minutes. We also illustrate the method by estimating the smoothing parameter for remotely sensed satellite imagery. Without precomputation, Bayesian inference is impractical for datasets of that scale.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/79642/

Publicador

Springer New York LLC

Relação

http://eprints.qut.edu.au/79642/1/Precomp_ABC.pdf

DOI:10.1007/s11222-014-9525-6

Moores, Matthew T., Drovandi, Christopher C., Mengersen, Kerrie, & Robert, Christian P. (2015) Pre-processing for approximate Bayesian computation in image analysis. Statistics and Computing, 25(1), pp. 23-33.

Direitos

Copyright 2014 Springer Science+Business Media

The final publication is available at Springer via http://dx.doi.org/10.1007/s11222-014-9525-6

Fonte

ARC Centre of Excellence for Mathematical & Statistical Frontiers (ACEMS); Science & Engineering Faculty

Palavras-Chave #010400 STATISTICS #Approximate Bayesian Computation #Hidden Markov random field #Indirect inference #Potts/Ising model #Quasi-likelihood #Sequential Monte Carlo
Tipo

Journal Article