Decision-dependent distributionally robust Markov decision process method in dynamic epidemic control.

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Bibliographic Details
Title: Decision-dependent distributionally robust Markov decision process method in dynamic epidemic control.
Authors: Song, Jun1 (AUTHOR), Yang, William1 (AUTHOR), Zhao, Chaoyue1 (AUTHOR) cyzhao@uw.edu
Source: IISE Transactions. Apr2024, Vol. 56 Issue 4, p458-470. 13p.
Subjects: Markov processes, Real-time programming, Epidemics, Dynamic programming, Infectious disease transmission, Computational neuroscience
Abstract: In this article, we present a Distributionally Robust Markov Decision Process (DRMDP) approach for addressing the dynamic epidemic control problem. The Susceptible-Exposed-Infectious-Recovered (SEIR) model is widely used to represent the stochastic spread of infectious diseases, such as COVID-19. Although the Markov Decision Process (MDP) offers a mathematical framework for identifying optimal actions, such as vaccination and transmission-reducing intervention, to combat disease spread calculated using the SEIR model. However, uncertainties in these scenarios demand a more robust approach that is less reliant on error-prone assumptions. The primary objective of our study is to introduce a new DRMDP framework that allows for an ambiguous distribution of transition dynamics. Specifically, we consider the worst-case distribution of these transition probabilities within a decision-dependent ambiguity set. To overcome the computational complexities associated with policy determination, we propose an efficient Real-Time Dynamic Programming (RTDP) algorithm that is capable of computing optimal policies based on the reformulated DRMDP model in an accurate, timely, and scalable manner. Comparative analysis against the classic MDP model demonstrates that the DRMDP achieves a lower proportion of infections and susceptibilities at a reduced cost. [ABSTRACT FROM AUTHOR]
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Database: Engineering Source
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