Adaptive Interventions with User-Defined Goals for Health Behavior Change
Mandyam, Aishwarya, Joerke, Matthew, Engelhardt, Barbara E., Brunskill, Emma
–arXiv.org Artificial Intelligence
Physical inactivity remains a major public health concern, having associations with adverse health outcomes such as cardiovascular disease and type-2 diabetes. Mobile health applications present a promising avenue for low-cost, scalable physical activity promotion, yet often suffer from small effect sizes and low adherence rates, particularly in comparison to human coaching. Goal-setting is a critical component of health coaching that has been underutilized in adaptive algorithms for mobile health interventions. This paper introduces a modification to the Thompson sampling algorithm that places emphasis on individualized goal-setting by optimizing personalized reward functions. As a step towards supporting goal-setting, this paper offers a balanced approach that can leverage shared structure while optimizing individual preferences and goals. We prove that our modification incurs only a constant penalty on the cumulative regret while preserving the sample complexity benefits of data sharing. In a physical activity simulator, we demonstrate that our algorithm achieves substantial improvements in cumulative regret compared to baselines that do not share data or do not optimize for individualized rewards.
arXiv.org Artificial Intelligence
Nov-15-2023
- Country:
- North America > United States (0.15)
- Genre:
- Research Report > Experimental Study (0.68)
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