KDD2021

Multi-Objective Model-based Reinforcement Learning for Infectious Disease Control

Runzhe Wan, Xinyu Zhang, Rui Song

被引用 23 次

摘要

Severe infectious diseases such as the novel coronavirus (COVID-19) pose a huge threat to public health. Stringent control measures, such as school closures and stay-at-home orders, while having significant effects, also bring huge economic losses. In the face of an emerging infectious disease, a crucial question for policymakers is how to make the trade-off and implement the appropriate interventions timely given the huge uncertainty. In this work, we propose a Multi-Objective Modelbased Reinforcement Learning framework to facilitate data-driven decision-making and minimize the overall long-term cost. Specifically, at each decision point, a Bayesian epidemiological model is first learned as the environment model, and then the proposed model-based multi-objective planning algorithm is applied to find a set of Pareto-optimal policies. This framework, combined with the prediction bands for each policy, provides a real-time decision support tool for policymakers. The application is demonstrated with the spread of COVID-19 in China. This paper is accepted at the 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD 2021). The authors are grateful to the anonymous reviewers for valuable comments and suggestions.