Using Agent-Based Simulation to Investigate Behavioral Interventions in a Pandemic Simulating Behavioral Interventions in a Pandemic
Publication date
2022
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Abstract
Simulation is a useful tool for evaluating behavioral interventions when the adoption rate among a population is uncertain. Individual agent models are often prohibitively expensive, but, unlike stochastic models, allow studying compliance heterogeneity. In this paper we demonstrate the feasibility of evaluating behavioral intervention policies using large-scale data-driven agent-based simulations. We explain how the simulation is calibrated with respect to real-world data, and demonstrate the utility of our approach by studying the effectiveness of interventions used in Virginia in early 2020 through counterfactual simulations.
Keywords
Agent-based Computational Epidemiology, Agent-based Modeling, Belief-Desire-Intention, Complex Social Simulation, Multi-agent Simulation, Normative Reasoning, Policy Evaluation, Synthetic Population, General Computer Science
Citation
de Mooij, J, Dell’Anna, D, Bhattacharya, P, Dastani, M, Logan, B & Swarup, S 2022, 'Using Agent-Based Simulation to Investigate Behavioral Interventions in a Pandemic Simulating Behavioral Interventions in a Pandemic', CEUR Workshop Proceedings, vol. 3182. < https://ceur-ws.org/Vol-3182 >