Exploring the Pareto front of multi-objective COVID-19 mitigation policies using reinforcement learning
Mathieu Reymond, Conor F. Hayes, Lander Willem, Roxana R\u{a}dulescu,, Steven Abrams, Diederik M. Roijers, Enda Howley, Patrick Mannion, Niel Hens,, Ann Now\'e, Pieter Libin

TL;DR
This paper applies deep multi-objective reinforcement learning to epidemic models, specifically analyzing COVID-19 mitigation strategies to balance health outcomes and societal costs, using Pareto front approximation.
Contribution
It introduces a multi-objective Markov decision process for epidemic modeling and extends Pareto Conditioned Networks to continuous action spaces in this context.
Findings
PCN successfully learns to balance mitigation measures and health outcomes.
The approach provides a set of Pareto-optimal policies for COVID-19 deconfinement.
Multi-objective reinforcement learning is feasible in complex epidemiological models.
Abstract
Infectious disease outbreaks can have a disruptive impact on public health and societal processes. As decision making in the context of epidemic mitigation is hard, reinforcement learning provides a methodology to automatically learn prevention strategies in combination with complex epidemic models. Current research focuses on optimizing policies w.r.t. a single objective, such as the pathogen's attack rate. However, as the mitigation of epidemics involves distinct, and possibly conflicting criteria (i.a., prevalence, mortality, morbidity, cost), a multi-objective approach is warranted to learn balanced policies. To lift this decision-making process to real-world epidemic models, we apply deep multi-objective reinforcement learning and build upon a state-of-the-art algorithm, Pareto Conditioned Networks (PCN), to learn a set of solutions that approximates the Pareto front of the…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Viral Infections and Outbreaks Research · COVID-19 and Mental Health
