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Dyadic Reinforcement Learning

Authors :
Li, Shuangning
Niell, Lluis Salvat
Choi, Sung Won
Nahum-Shani, Inbal
Shani, Guy
Murphy, Susan
Publication Year :
2023

Abstract

Mobile health aims to enhance health outcomes by delivering interventions to individuals as they go about their daily life. The involvement of care partners and social support networks often proves crucial in helping individuals managing burdensome medical conditions. This presents opportunities in mobile health to design interventions that target the dyadic relationship -- the relationship between a target person and their care partner -- with the aim of enhancing social support. In this paper, we develop dyadic RL, an online reinforcement learning algorithm designed to personalize intervention delivery based on contextual factors and past responses of a target person and their care partner. Here, multiple sets of interventions impact the dyad across multiple time intervals. The developed dyadic RL is Bayesian and hierarchical. We formally introduce the problem setup, develop dyadic RL and establish a regret bound. We demonstrate dyadic RL's empirical performance through simulation studies on both toy scenarios and on a realistic test bed constructed from data collected in a mobile health study.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.07843
Document Type :
Working Paper