Bayesian design of experiments for intractable likelihood models using coupled auxiliary models and multivariate emulation
Bayesian design of experiments for intractable likelihood models using coupled auxiliary models and multivariate emulation
A Bayesian design is given by maximising an expected utility over a design space. The utility is chosen to represent the aim of the experiment and its expectation is taken with respect to all unknowns: responses, parameters and/or models. Although straightforward in principle, there are several challenges to finding Bayesian designs in practice. Firstly, the utility and expected utility are rarely available in closed form and require approximation. Secondly, the design space can be of high-dimensionality. In the case of intractable likelihood models, these problems are compounded by the fact that the likelihood function, whose evaluation is required to approximate the expected utility, is not available in closed form. A strategy is proposed to find Bayesian designs for intractable likelihood models. It relies on the development of an automatic, auxiliary modelling approach, using multivariate Gaussian process emulators, to approximate the likelihood function. This is then combined with a copula-based approach to approximate the marginal likelihood (a quantity commonly required to evaluate many utility functions). These approximations are demonstrated on examples of stochastic process models involving experimental aims of both parameter estimation and model comparison.
103-131
Overstall, Antony
c1d6c8bd-1c5f-49ee-a845-ec9ec7b20910
McGree, James
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Overstall, Antony
c1d6c8bd-1c5f-49ee-a845-ec9ec7b20910
McGree, James
45b9f60c-5ef2-4705-8882-f39bbd749f67
Overstall, Antony and McGree, James
(2019)
Bayesian design of experiments for intractable likelihood models using coupled auxiliary models and multivariate emulation.
Bayesian Analysis, 15 (1), .
(doi:10.1214/19-BA1144).
Abstract
A Bayesian design is given by maximising an expected utility over a design space. The utility is chosen to represent the aim of the experiment and its expectation is taken with respect to all unknowns: responses, parameters and/or models. Although straightforward in principle, there are several challenges to finding Bayesian designs in practice. Firstly, the utility and expected utility are rarely available in closed form and require approximation. Secondly, the design space can be of high-dimensionality. In the case of intractable likelihood models, these problems are compounded by the fact that the likelihood function, whose evaluation is required to approximate the expected utility, is not available in closed form. A strategy is proposed to find Bayesian designs for intractable likelihood models. It relies on the development of an automatic, auxiliary modelling approach, using multivariate Gaussian process emulators, to approximate the likelihood function. This is then combined with a copula-based approach to approximate the marginal likelihood (a quantity commonly required to evaluate many utility functions). These approximations are demonstrated on examples of stochastic process models involving experimental aims of both parameter estimation and model comparison.
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Accepted/In Press date: 15 January 2019
e-pub ahead of print date: 15 February 2019
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Local EPrints ID: 427639
URI: http://eprints.soton.ac.uk/id/eprint/427639
ISSN: 1931-6690
PURE UUID: 9a561650-2453-4fbd-8e6b-254eabca8e6e
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Date deposited: 24 Jan 2019 17:30
Last modified: 16 Mar 2024 03:53
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James McGree
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