BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20251013T232431EDT-4858XLnVFV@132.216.98.100 DTSTAMP:20251014T032431Z DESCRIPTION:Inferring the spatial dynamics of infectious diseases via Gauss ian process emulation.\n\nStatistical inference for spatial models of infe ctious disease spread is often very computationally expensive. Such models are generally fitted in a Bayesian Markov chain Monte Carlo (MCMC) framew ork\, which requires multiple calculation of what is often a computational ly cumbersome likelihood function. This problem is especially severe when there are large numbers of latent variables to compute. Here\, we propose a method of inference based on so-called emulation techniques. Once again\ , the method is set in a Bayesian MCMC context\, but avoids calculation of the computationally expensive likelihood function by replacing it with a Gaussian process approximation of the likelihood function built from simul ated data. We show that such a method can be used to infer the model param eters and underlying characteristics of spatial disease systems\, and that this can be done in much more computationally efficient manner than full Bayesian MCMC allows.\n DTSTART:20170131T203000Z DTEND:20170131T213000Z LOCATION:Purvis Hall\, CA\, QC\, Montreal\, H3A 1A2\, 1020 avenue des Pins Ouest SUMMARY:Robert Deardon\, PhD\, University of Calgary URL:/channels/event/robert-deardon-phd-university-calg ary-265410 END:VEVENT END:VCALENDAR