Policy Optimization for Personalized Interventions in Behavioral Health
Jackie Baek, Justin J. Boutilier, Vivek F. Farias, Jonas Oddur, Jonasson, Erez Yoeli

TL;DR
This paper introduces DecompPI, a model-free policy optimization method for personalized behavioral health interventions that leverages historical data to improve long-term health outcomes efficiently, especially in resource-limited settings.
Contribution
DecompPI decomposes patient state spaces and approximates policy iteration, providing a theoretically guaranteed, data-driven approach for optimizing interventions without online experimentation.
Findings
DecompPI achieves similar efficacy to current methods with half the interventions.
Theoretical guarantees hold under randomized initial policies.
Empirical results demonstrate strong performance in real-world mobile health data.
Abstract
Behavioral health interventions, delivered through digital platforms, have the potential to significantly improve health outcomes, through education, motivation, reminders, and outreach. We study the problem of optimizing personalized interventions for patients to maximize a long-term outcome, where interventions are costly and capacity-constrained. We assume we have access to a historical dataset collected from an initial pilot study. We present a new approach for this problem that we dub DecompPI, which decomposes the state space for a system of patients to the individual level and then approximates one step of policy iteration. Implementing DecompPI simply consists of a prediction task using the dataset, alleviating the need for online experimentation. DecompPI is a generic model-free algorithm that can be used irrespective of the underlying patient behavior model. We derive…
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Taxonomy
TopicsMobile Health and mHealth Applications · Digital Mental Health Interventions · Mental Health Research Topics
