Publication | Open Access
Approximate Bayesian Computation and Simulation-Based Inference for Complex Stochastic Epidemic Models
87
Citations
64
References
2018
Year
Bayesian StatisticBayesian Decision TheoryEngineeringAbc MethodsEpidemiological DynamicComplex SystemsComputational EpidemiologyBayesian InferenceStochastic SimulationInfectious Disease ModellingUncertainty QuantificationBiostatisticsBayesian MethodsModeling And SimulationPublic HealthStatistical ModelingStatisticsBayesian Hierarchical ModelingInfectious Disease EpidemiologySimulation-based InferenceEpidemiologyBayesian StatisticsStatistical InferenceApproximate Bayesian Computation
Approximate Bayesian Computation (ABC) and other simulation-based inference methods are becoming increasingly used for inference in complex systems, due to their relative ease-of-implementation. We briefly review some of the more popular variants of ABC and their application in epidemiology, before using a real-world model of HIV transmission to illustrate some of challenges when applying ABC methods to high-dimensional, computationally intensive models. We then discuss an alternative approach—history matching—that aims to address some of these issues, and conclude with a comparison between these different methodologies.
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