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Accurate Calibration of Agent-based Epidemiological Models with Neural Network Surrogates

13 October 2020
Rushil Anirudh
Jayaraman J. Thiagarajan
P. Bremer
T. Germann
S. D. Valle
F. Streitz
ArXiv (abs)PDFHTML
Abstract

Calibrating complex epidemiological models to observed data is a crucial step to provide both insights into the current disease dynamics, i.e.\ by estimating a reproductive number, as well as to provide reliable forecasts and scenario explorations. Here we present a new approach to calibrate an agent-based model -- EpiCast -- using a large set of simulation ensembles for different major metropolitan areas of the United States. In particular, we propose: a new neural network based surrogate model able to simultaneously emulate all different locations; and a novel posterior estimation that provides not only more accurate posterior estimates of all parameters but enables the joint fitting of global parameters across regions.

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