Detecting Receptivity for mHealth Interventions

IF 0.7 Q4 TELECOMMUNICATIONS
Varun Mishra, F. Künzler, Jan-Niklas Kramer, E. Fleisch, T. Kowatsch, D. Kotz
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引用次数: 1

Abstract

Just-In-Time Adaptive Interventions (JITAI) have the potential to provide effective support for health behavior by delivering the right type and amount of intervention at the right time. The timing of interventions is crucial to ensure that users are receptive and able to use the support provided. Previous research has explored the association of context and user-specific traits on receptivity and built machine-learning models to detect receptivity after the study was completed. However, for effective intervention delivery, JITAI systems need to make in-the-moment decisions about a user's receptivity. In this study, we deployed machinelearning models in a chatbot-based digital coach to predict receptivity for physical-activity interventions. We included a static model that was built before the study and an adaptive model that continuously updated itself during the study. Compared to a control model that sent intervention messages randomly, the machine-learning models improved receptivity by up to 36%. Receptivity to messages from the adaptive model increased over time.
检测移动医疗干预的接受度
及时适应性干预(JITAI)有可能通过在适当的时间提供适当类型和数量的干预,为健康行为提供有效支持。干预的时机对于确保用户接受并能够使用所提供的支持至关重要。之前的研究已经探索了语境和用户特定特征对接受度的影响,并在研究完成后建立了机器学习模型来检测接受度。然而,为了有效地进行干预,JITAI系统需要对用户的接受能力做出即时决定。在这项研究中,我们在一个基于聊天机器人的数字教练中部署了机器学习模型,以预测对体育活动干预的接受程度。我们包括了一个在研究之前建立的静态模型和一个在研究过程中不断自我更新的自适应模型。与随机发送干预信息的控制模型相比,机器学习模型的接受度提高了36%。对来自自适应模型的消息的接受能力随着时间的推移而增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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