| Literature DB >> 34305482 |
Meghendra Singh1, Achla Marathe1, Madhav V Marathe1, Samarth Swarup1.
Abstract
Computational epidemiologists frequently employ large-scale agent-based simulations of human populations to study disease outbreaks and assess intervention strategies. The agents used in such simulations rarely capture the real-world decision-making of human beings. An absence of realistic agent behavior can undermine the reliability of insights generated by such simulations and might make them ill-suited for informing public health policies. In this paper, we address this problem by developing a methodology to create and calibrate an agent decision making model for a large multi-agent simulation, using survey data. Our method optimizes a cost vector associated with the various behaviors to match the behavior distributions observed in a detailed survey of human behaviors during influenza outbreaks. Our approach is a data-driven way of incorporating decision making for agents in large-scale epidemic simulations.Entities:
Keywords: Agent based simulation; Human behavior modeling; Markov decision processes
Year: 2018 PMID: 34305482 PMCID: PMC8300053
Source DB: PubMed Journal: Proc Int Joint Conf Auton Agents Multiagent Syst ISSN: 1548-8403