An Agent-Based Model of COVID-19 Diffusion to Plan and Evaluate
Intervention Policies
- URL: http://arxiv.org/abs/2108.08885v1
- Date: Thu, 19 Aug 2021 19:23:17 GMT
- Title: An Agent-Based Model of COVID-19 Diffusion to Plan and Evaluate
Intervention Policies
- Authors: Gianpiero Pescarmona, Pietro Terna, Alberto Acquadro, Paolo
Pescarmona, Giuseppe Russo, Emilio Sulis and Stefano Terna
- Abstract summary: The model includes the structural data of Piedmont, an Italian region.
The model is generative of complex epidemic dynamics emerging from the consequences of agents' actions and interactions.
- Score: 0.09236074230806579
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A model of interacting agents, following plausible behavioral rules into a
world where the Covid-19 epidemic is affecting the actions of everyone. The
model works with (i) infected agents categorized as symptomatic or asymptomatic
and (ii) the places of contagion specified in a detailed way. The infection
transmission is related to three factors: the characteristics of both the
infected person and the susceptible one, plus those of the space in which
contact occurs. The model includes the structural data of Piedmont, an Italian
region, but we can easily calibrate it for other areas. The micro-based
structure of the model allows factual, counterfactual, and conditional
simulations to investigate both the spontaneous or controlled development of
the epidemic. The model is generative of complex epidemic dynamics emerging
from the consequences of agents' actions and interactions, with high
variability in outcomes and stunning realistic reproduction of the successive
contagion waves in the reference region. There is also an inverse generative
side of the model, coming from the idea of using genetic algorithms to
construct a meta-agent to optimize the vaccine distribution. This agent takes
into account groups' characteristics -- by age, fragility, work conditions --
to minimize the number of symptomatic people.
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