Differentiable Agent-based Epidemiology
Mechanistic simulators are an indispensable tool for epidemiology to explore the behavior of complex, dynamic infections under varying conditions and navigate uncertain environments. Agent-based models (ABMs) are an increasingly popular simulation paradigm that can represent the heterogeneity of con...
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Zusammenfassung: | Mechanistic simulators are an indispensable tool for epidemiology to explore
the behavior of complex, dynamic infections under varying conditions and
navigate uncertain environments. Agent-based models (ABMs) are an increasingly
popular simulation paradigm that can represent the heterogeneity of contact
interactions with granular detail and agency of individual behavior. However,
conventional ABM frameworks are not differentiable and present challenges in
scalability; due to which it is non-trivial to connect them to auxiliary data
sources. In this paper, we introduce GradABM: a scalable, differentiable design
for agent-based modeling that is amenable to gradient-based learning with
automatic differentiation. GradABM can quickly simulate million-size
populations in few seconds on commodity hardware, integrate with deep neural
networks and ingest heterogeneous data sources. This provides an array of
practical benefits for calibration, forecasting, and evaluating policy
interventions. We demonstrate the efficacy of GradABM via extensive experiments
with real COVID-19 and influenza datasets. |
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DOI: | 10.48550/arxiv.2207.09714 |