2008
DOI: 10.1098/rsif.2008.0172
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Approximate Bayesian computation scheme for parameter inference and model selection in dynamical systems

Abstract: Approximate Bayesian computation (ABC) methods can be used to evaluate posterior distributions without having to calculate likelihoods. In this paper, we discuss and apply an ABC method based on sequential Monte Carlo (SMC) to estimate parameters of dynamical models. We show that ABC SMC provides information about the inferability of parameters and model sensitivity to changes in parameters, and tends to perform better than other ABC approaches. The algorithm is applied to several well-known biological systems… Show more

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Cited by 1,316 publications
(1,718 citation statements)
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References 47 publications
(65 reference statements)
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“…It is, of course, in principle possible to use the KL divergence with respect to the distribution obtained with the full data as an overall benchmark, but in cases where this is indeed possible, it may be best to use the full data (see e.g. Toni et al (2009)) for inference rather than risk the information reduction inherent to most summary statistics.…”
Section: Discussionmentioning
confidence: 99%
“…It is, of course, in principle possible to use the KL divergence with respect to the distribution obtained with the full data as an overall benchmark, but in cases where this is indeed possible, it may be best to use the full data (see e.g. Toni et al (2009)) for inference rather than risk the information reduction inherent to most summary statistics.…”
Section: Discussionmentioning
confidence: 99%
“…In this paper we concentrate on the widely used algorithm of Toni et al (2009), Algorithm 4. This effectively performs repeated importance sampling, also known as population Monte Carlo (Cappé et al, 2004).…”
Section: Abc-pmcmentioning
confidence: 99%
“…The key difference to the ABC-PMC algorithm of Toni et al (2009) is that we have to take account of the weight for the set of ϕ values in the coupled simulation which will result in a simulation being accepted. For the household epidemic moments of λ G can easily be estimated from {(A (i) , w (i) T )} with a consistent estimate of E[h(λ G )|x * ] provided by…”
Section: A Pmc For Partially Coupled Abc Algorithmmentioning
confidence: 99%
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“…We illustrate this approach with a naive example. We apply the ABC method to the real bacterial data of 2 to estimate the parameters of the time change function and the intensity rate (see [5]) . The simplest rejection-ABC algorithm was implemented, assuming informative prior distributions for the Gompertz parameters.…”
Section: Bayesian Inferencementioning
confidence: 99%