End-to-end Personalization of Digital Health Interventions using Raw Sensor Data with Deep Reinforcement Learning : A comparative study in digital health interventions for behavior change

Ali el Hassouni, M. Hoogendoorn, A. Eiben, M. V. Otterlo, Vesa Muhonen
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引用次数: 6

Abstract

We introduce an end-to-end reinforcement learning (RL) solution for the problem of sending personalized digital health interventions. Previous work has shown that personalized interventions can be obtained through RL using simple, discrete state information such as the recent activity performed. In reality however, such features are often not observed, but instead could be inferred from noisy, low-level sensor information obtained from mobile devices (e.g. accelerometers in mobile phones). One could first transform such raw data into discrete activities, but that could throw away important details and would require training a classifier to infer these discrete activities which would need a labeled training set. Instead, we propose to directly learn intervention strategies for the low-level sensor data end-to-end using deep neural networks and RL. We test our novel approach in a self-developed simulation environment which models, and generates, realistic sensor data for daily human activities and show the short-and long-term efficacy of sending personalized physical workout interventions using RL policies. We compare several different input representations and show that learning using raw sensor data is nearly as effective and much more flexible. CCS CONCEPTS • Computing methodologies → Reinforcement learning; Sequential decision making; Online learning settings;
使用原始传感器数据和深度强化学习的数字健康干预的端到端个性化:行为改变的数字健康干预的比较研究
我们介绍了一种端到端强化学习(RL)解决方案,用于发送个性化数字健康干预措施的问题。先前的研究表明,个性化干预可以通过RL获得,使用简单的、离散的状态信息,如最近进行的活动。然而,在现实中,这些特征往往没有被观察到,而是可以从从移动设备(例如移动电话中的加速度计)获得的嘈杂的低水平传感器信息中推断出来。人们可以首先将这些原始数据转换为离散的活动,但这可能会丢掉重要的细节,并且需要训练分类器来推断这些离散的活动,这需要一个标记的训练集。相反,我们建议使用深度神经网络和强化学习直接学习端到端的低级传感器数据的干预策略。我们在一个自主开发的模拟环境中测试了我们的新方法,该环境为日常人类活动建模并生成真实的传感器数据,并显示了使用RL策略发送个性化体育锻炼干预措施的短期和长期效果。我们比较了几种不同的输入表示,并表明使用原始传感器数据进行学习几乎同样有效,而且更加灵活。•计算方法→强化学习;顺序决策;在线学习设置;
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