Publisher:
International Society for Bayesian Analysis (ISBA)
Issued date:
2015-06-01
Citation:
Cabras, S., Castellanos Nueda, M. E., & Ruli, E. (2015). Approximate Bayesian Computation by Modelling Summary Statistics in a Quasi-likelihood Framework. Bayesian Analysis, 10 (2), pp. 411 - 439
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Ministerio de Economía y Competitividad (España)
Sponsor:
Maria Eugenia Castellanos was partially funded by Ministerio de Ciencia e Innovación grant
MTM2013-42323. Stefano Cabras has been partially funded by Ministerio de Ciencia e Innovación
grant MTM2013-42323, ECO2012-38442, RYC-2012-11455 and together with Erlis Ruli
were partially funded by Ministero dell’Istruzione, dell’Univesità e della Ricerca of Italy. All
authors have been partially financially supported by Regione Autonoma della Sardegna under
grant CRP-59903.
Project:
Gobierno de España. ECO2012-38442 Gobierno de España. RYC-2012-11455 Gobierno de España. MTM2013-42323
Keywords:
Estimating function
,
Likelihood-free methods
,
Markov chain Monte Carlo
,
Proposal distribution
,
Pseudo-likelihood
Approximate Bayesian Computation (ABC) is a useful class of methods for Bayesian inference when the likelihood function is computationally intractable. In practice, the basic ABC algorithm may be inefficient in the presence of discrepancy between prior and posApproximate Bayesian Computation (ABC) is a useful class of methods for Bayesian inference when the likelihood function is computationally intractable. In practice, the basic ABC algorithm may be inefficient in the presence of discrepancy between prior and posterior. Therefore, more elaborate methods, such as ABC with the Markov chain Monte Carlo algorithm (ABC-MCMC), should be used. However, the elaboration of a proposal density for MCMC is a sensitive issue and very difficult in the ABC setting, where the likelihood is intractable. We discuss an automatic proposal distribution useful for ABC-MCMC algorithms. This proposal is inspired by the theory of quasi-likelihood (QL) functions and is obtained by modelling the distribution of the summary statistics as a function of the parameters. Essentially, given a real-valued vector of summary statistics, we reparametrize the model by means of a regression function of the statistics on parameters, obtained by sampling from the original model in a pilot-run simulation study. The QL theory is well established for a scalar parameter, and it is shown that when the conditional variance of the summary statistic is assumed constant, the QL has a closed-form normal density. This idea of constructing proposal distributions is extended to non constant variance and to real-valued parameter vectors. The method is illustrated by several examples and by an application to a real problem in population genetics.[+][-]