Adaptive mobile behavior change intervention using reinforcement learning

Lihua Cai, Congyu Wu, K. Meimandi, M. Gerber
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引用次数: 3

Abstract

As smartphones become increasingly intimate and continuous companions, many opportunities are arising in human behavior sensing, modeling, and coaching. This position paper explores opportunities and challenges for mobile-based deployment of behavior change interventions. We suggest the adoption and extension of reinforcement learning for addressing these challenges, and we identify several key areas of future research that, on the basis of prior results, appear ripe for extending the benefits of reinforcement learning to human behavior change. These areas include stronger grounding of states in theories of human behavior, RL agent adaptation and decomposition, cooperative reinforcement learning, and in situ evaluation.
使用强化学习的适应性移动行为改变干预
随着智能手机成为越来越亲密和持续的伙伴,在人类行为感知、建模和指导方面出现了许多机会。本立场文件探讨了基于移动部署行为改变干预措施的机遇和挑战。我们建议采用和扩展强化学习来应对这些挑战,并且我们确定了未来研究的几个关键领域,基于先前的结果,将强化学习的好处扩展到人类行为改变方面似乎已经成熟。这些领域包括人类行为理论中更强的状态基础、强化学习代理的适应和分解、合作强化学习和原位评估。
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