Optimal Immunization Policy Using Dynamic Programming
Atiye Alaeddini, Daniel Klein

TL;DR
This paper introduces a dynamic programming framework for determining optimal immunization policies under uncertainty, modeling the problem as a POMDP to improve decision-making in public health interventions.
Contribution
It presents a novel AI-based method using stochastic dynamic programming to compute reactive vaccination strategies in uncertain, dynamic health environments.
Findings
Framework for optimal health policy design under uncertainty
Identification of optimal timing for health interventions
Quantification of decision-relevant information value
Abstract
Decisions in public health are almost always made in the context of uncertainty. Policy makers are responsible for making important decisions, faced with the daunting task of choosing from amongst many possible options. This task is called planning under uncertainty, and is particularly acute when addressing complex systems, such as issues of global health and development. Uncertainty leads to cautious or incorrect decisions that cost time, money, and human life. It is with this understanding that we pursue greater clarity on, and methods to address optimal policy making in health. Decision making under uncertainty is a challenging task, and all too often this uncertainty is averaged away to simplify results for policy makers. Our goal in this work is to implement dynamic programming which provides basis for compiling planning results into reactive strategies. We present here a…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Reinforcement Learning in Robotics · Adaptive Dynamic Programming Control
