AI & Multi-agent Systems for Data-centric Epidemic ForecastingOpen Website

Published: 01 Jan 2023, Last Modified: 21 Feb 2024AAMAS 2023Readers: Everyone
Abstract: Epidemic forecasting is a crucial tool for public health decision making and planning. There is, however, a limited understanding of how epidemics spread, largely due to other complex dynamics, most notably social and pathogen dynamics. With the increasing availability of real-time multimodal data, a new opportunity has emerged for capturing previously unobservable facets of the spatiotemporal dynamics of epidemics. In this regard, my work brings a data-centric perspective to public health via methodological advances in AI at the intersection of time series analysis, spatiotemporal mining, scientific ML, and multi-agent systems. This extended abstract focuses on our new techniques for end-to-end learning with mechanistic epidemiological models-based on differential equations and agent-based models-that bridge ML advances and traditional domain knowledge to leverage individual merits. I finalize discussing some future directions for my work.
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