Skip to main content
U.S. flag

An official website of the United States government

Context matters: Using reinforcement learning to develop human-readable, state-dependent outbreak response policies

May 20, 2019

The number of all possible epidemics of a given infectious disease that could occur on a given landscape is large for systems of real-world complexity. Furthermore, there is no guarantee that the control actions that are optimal, on average, over all possible epidemics are also best for each possible epidemic. Reinforcement learning (RL) has been used to develop machine-readable context-dependent solutions for complex problems with many possible realisations ranging from video-games to the game of Go. RL could be a valuable tool to generate context-dependent policies for outbreak response, though translating the resulting policies into simple rules that can be read and interpreted by human decision-makers remains a challenge. Here we illustrate the application of RL to the development of context-dependent outbreak response policies to minimise outbreaks of foot-and-mouth disease. We show that control based on the resulting context-dependent policies, which adapt interventions to the specific outbreak, result in smaller outbreaks than static policies. We further illustrate two approaches for translating the complex machine-readable policies into simple heuristics that can be evaluated by human decision-makers.

Publication Year 2019
Title Context matters: Using reinforcement learning to develop human-readable, state-dependent outbreak response policies
DOI 10.1098/rstb.2018.0277
Authors William J. M. Probert, Sandya Lakkur, Christopher J Fonnesbeck, Katriona Shea, Michael C. Runge, Michael J. Tildesley, Matthew J. Ferrari
Publication Type Article
Publication Subtype Journal Article
Series Title Philosophical Transactions of the Royal Society B: Biological Sciences
Index ID 70203783
Record Source USGS Publications Warehouse
USGS Organization Patuxent Wildlife Research Center