Bayesian experimental design for models with intractable likelihoods


Autoria(s): Drovandi, Christopher C.; Pettitt, Anthony N.
Data(s)

16/10/2013

Resumo

In this paper we present a methodology for designing experiments for efficiently estimating the parameters of models with computationally intractable likelihoods. The approach combines a commonly used methodology for robust experimental design, based on Markov chain Monte Carlo sampling, with approximate Bayesian computation (ABC) to ensure that no likelihood evaluations are required. The utility function considered for precise parameter estimation is based upon the precision of the ABC posterior distribution, which we form efficiently via the ABC rejection algorithm based on pre-computed model simulations. Our focus is on stochastic models and, in particular, we investigate the methodology for Markov process models of epidemics and macroparasite population evolution. The macroparasite example involves a multivariate process and we assess the loss of information from not observing all variables.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/53924/

Publicador

Wiley-Blackwell Publishing Ltd.

Relação

http://eprints.qut.edu.au/53924/1/Design_Intract_Like.pdf

DOI:10.1111/biom.12081

Drovandi, Christopher C. & Pettitt, Anthony N. (2013) Bayesian experimental design for models with intractable likelihoods. Biometrics, 69(4), pp. 937-948.

Direitos

Copyright 2013 The International Biometric Society

The definitive version is available at www3.interscience.wiley.com

Fonte

School of Mathematical Sciences; Science & Engineering Faculty

Palavras-Chave #010400 STATISTICS #Approximate Bayesian computation #Bayesian experimental design #Markov chain Monte Carlo #Robust experimental design
Tipo

Journal Article