Spoiled for Choice? Personalized Recommendation for Healthcare Decisions: A Multi-Armed Bandit Approach
Tongxin Zhou, Yingfei Wang, Lu (Lucy) Yan, Yong Tan

TL;DR
This paper introduces a multi-armed bandit-based recommendation framework for online healthcare interventions that adaptively learns user preferences and promotes diversity, addressing choice overload and enhancing engagement.
Contribution
It proposes a novel MAB-driven recommendation system with deep-learning feature engineering and diversity constraints tailored for healthcare decision support.
Findings
The framework effectively learns user preferences over time.
It outperforms existing recommendation systems in experiments.
Diversity constraints improve recommendation variety.
Abstract
Online healthcare communities provide users with various healthcare interventions to promote healthy behavior and improve adherence. When faced with too many intervention choices, however, individuals may find it difficult to decide which option to take, especially when they lack the experience or knowledge to evaluate different options. The choice overload issue may negatively affect users' engagement in health management. In this study, we take a design-science perspective to propose a recommendation framework that helps users to select healthcare interventions. Taking into account that users' health behaviors can be highly dynamic and diverse, we propose a multi-armed bandit (MAB)-driven recommendation framework, which enables us to adaptively learn users' preference variations while promoting recommendation diversity in the meantime. To better adapt an MAB to the healthcare context,…
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Taxonomy
TopicsMobile Health and mHealth Applications · Advanced Bandit Algorithms Research
