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Bayesian emulation and history matching of <tt>JUNE</tt>

Ian Vernon, Jonathan Owen, Joseph Aylett-Bullock, Carolina Cuesta-Lazaro, Jonathan Frawley, Arnau Quera-Bofarull, Aidan Sedgewick, Difu Shi, Henry Truong, Mahshid Turner, Joseph Walker, Tristan Caulfield, K. Fong, Frank Krauss

2022Philosophical Transactions of the Royal Society A Mathematical Physical and Engineering Sciences19 citationsDOIOpen Access PDF

Abstract

We analyze JUNE: a detailed model of COVID-19 transmission with high spatial and demographic resolution, developed as part of the RAMP initiative. JUNE requires substantial computational resources to evaluate, making model calibration and general uncertainty analysis extremely challenging. We describe and employ the uncertainty quantification approaches of Bayes linear emulation and history matching to mimic JUNE and to perform a global parameter search, hence identifying regions of parameter space that produce acceptable matches to observed data, and demonstrating the capability of such methods. This article is part of the theme issue 'Technical challenges of modelling real-life epidemics and examples of overcoming these'.

Topics & Concepts

EmulationComputer scienceMatching (statistics)Bayesian probabilityCalibrationBayes' theoremData miningTransmission (telecommunications)Machine learningOperations researchData scienceArtificial intelligenceStatisticsMathematicsEconomic growthEconomicsTelecommunicationsCOVID-19 epidemiological studiesGaussian Processes and Bayesian InferenceStatistical Methods and Inference
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