Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/34337
Title: Deep reinforcement learning for large-scale epidemic control
Authors: LIBIN, Pieter 
Moonens, Arno
Verstraeten, Timothy
Perez-Sanjines, Fabian
HENS, Niel 
Lemey, Philippe
Nowé, Ann
Issue Date: 2021
Publisher: SPRINGER INTERNATIONAL PUBLISHING AG
Source: Dong, Y., Ifrim, G., Mladenić, D., Saunders, C., Van Hoecke, S. (Ed.), Machine Learning and Knowledge Discovery in Databases. Applied Data Science and Demo Track. ECML PKDD 2020, Springer, p. 155-170.
Series/Report: Lecture Notes in Computer Science
Series/Report no.: 12461
Abstract: Epidemics of infectious diseases are an important threat to public health and global economies. Yet, the development of prevention strategies remains a challenging process, as epidemics are non-linear and complex processes. For this reason, we investigate a deep reinforcement learning approach to automatically learn prevention strategies in the context of pandemic influenza. Firstly, we construct a new epidemiological meta-population model, with 379 patches (one for each administrative district in Great Britain), that adequately captures the infection process of pandemic influenza. Our model balances complexity and computational efficiency such that the use of reinforcement learning techniques becomes attainable. Secondly, we set up a ground truth such that we can evaluate the performance of the 'Proximal Policy Optimization' algorithm to learn in a single district of this epidemiological model. Finally, we consider a large-scale problem, by conducting an experiment where we aim to learn a joint policy to control the districts in a community of 11 tightly coupled districts, for which no ground truth can be established. This experiment shows that deep reinforcement learning can be used to learn mitigation policies in complex epidemiological models with a large state space. Moreover, through this experiment, we demonstrate that there can be an advantage to consider collaboration between districts when designing prevention strategies.
Keywords: Computer Science - Learning;Computer Science - Learning;Computer Science - Artificial Intelligence;Computer Science - Multiagent Systems
Document URI: http://hdl.handle.net/1942/34337
Link to publication/dataset: http://arxiv.org/abs/2003.13676v1
ISBN: 978-3-030-67669-8
978-3-030-67670-4
DOI: 10.1007/978-3-030-67670-4_10
ISI #: 000716884800010
Category: C1
Type: Proceedings Paper
Validations: ecoom 2022
Appears in Collections:Research publications

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