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Group-Driven Reinforcement Learning for Personalized mHealth Intervention

机译:个性化mHealth干预的小组驱动强化学习

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Due to the popularity of smartphones and wearable devices nowadays, mobile health (mHealth) technologies are promising to bring positive and wide impacts on people's health. State-of-the-art decision-making methods for mHealth rely on some ideal assumptions. Those methods either assume that the users are completely homogenous or completely heterogeneous. However, in reality, a user might be similar with some, but not all, users. In this paper, we propose a novel group-driven reinforcement learning method for the mHealth. We aim to understand how to share information among similar users to better convert the limited user information into sharper learned RL policies. Specifically, we employ the K-means clustering method to group users based on their trajectory information similarity and learn a shared RL policy for each group. Extensive experiment results have shown that our method can achieve clear gains over the state-of-the-art RL methods for mHealth.
机译:由于当今智能手机和可穿戴设备的普及,移动健康(mHealth)技术有望为人们的健康带来积极而广泛的影响。移动医疗的最新决策方法依赖于一些理想的假设。这些方法假定用户是完全同质的或完全异质的。但是,实际上,用户可能与某些(但不是全部)用户相似。在本文中,我们提出了一种针对mHealth的新型群体驱动的强化学习方法。我们旨在了解如何在相似的用户之间共享信息,以将有限的用户信息更好地转换为更清晰的学习RL策略。具体来说,我们采用K-means聚类方法根据用户的轨迹信息相似性对其进行分组,并为每个组学习共享的RL策略。大量的实验结果表明,与mHealth的最新RL方法相比,我们的方法可获得明显的收益。

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