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Context-Aware Probabilistic Models for Predicting Future Sedentary Behaviors of Smartphone Users

机译:上下文感知的概率模型,用于预测智能手机用户的未来久坐行为

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Sedentary behaviors are now prevalent as most modern jobs are done while seated. However, such sedentary behaviors have been found to increase the risk of several ailments including diabetes, cardiovascular disease, and all-cause mortality. Current interventions are mostly reactive and are triggered after the user has already been sedentary. Behavior change theory suggests that preventive sedentary interventions, which are triggered before a person becomes sedentary, are more likely to succeed. In this paper, we characterize user patterns of sedentary behaviors by analyzing smartphone-sensor data in a real-world dataset. Our work reveals location types (where), times of day/week (when), and smartphone contexts in which sedentary behaviors are most likely. Leveraging our findings, we then propose a set of context-aware probabilistic models that can predict sedentary behaviors in advance by analyzing smartphone sensor data. Our Context-Aware Predictive (CAP) models leverage smartphone-sensed contextual variables and the user's history of sedentary behaviors to predict their future sedentary behaviors. We rigorously analyze the performance of our models and discuss the implications of our work.
机译:现在,由于大多数现代工作是在坐下时完成的,因此久坐的行为现在很普遍。但是,已经发现这种久坐行为增加了包括糖尿病,心血管疾病和全因死亡率在内的多种疾病的风险。当前的干预措施大多是反应性的,并且在用户久坐后会触发。行为改变理论表明,在人变得久坐之前触发的预防性久坐干预措施更有可能成功。在本文中,我们通过分析现实世界数据集中的智能手机传感器数据来表征久坐行为的用户模式。我们的工作揭示了最有可能久坐行为的位置类型(位置),日/周的时间(何时)和智能手机上下文。然后,我们提出了一组上下文感知的概率模型,可以通过分析智能手机传感器数据来预测久坐行为。我们的上下文感知预测性(CAP)模型利用智能手机敏感的上下文变量和用户的久坐行为历史来预测其未来的久坐行为。我们严格分析模型的性能,并讨论工作的含义。

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