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Learning Behavioral Representations from Wearable Sensors

机译:从穿戴传感器中学习行为表示

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摘要

Continuous collection of physiological data from wearable sensors enables temporal characterization of individual behaviors. Understanding the relation between an individual's behavioral patterns and psychological states can help identify strategies to improve quality of life. One challenge in analyzing physiological data is extracting the underlying behavioral states from the temporal sensor signals and interpreting them. Here, we use a non-parametric Bayesian approach to model sensor data from multiple people and discover the dynamic behaviors they share. We apply this method to data collected from sensors worn by a population of hospital workers and show that the learned states can cluster participants into meaningful groups and better predict their cognitive and psychological states. This method offers a way to learn interpretable compact behavioral representations from multivariate sensor signals.
机译:从可穿戴传感器的整个生理数据集合可以进行个性行为的时间表征。了解个人行为模式和心理状态之间的关系可以帮助确定改善生活质量的策略。分析生理数据的一个挑战是从时间传感器信号中提取底层行为状态并解释它们。在这里,我们使用非参数贝叶斯方法来从多个人员模拟传感器数据,并发现它们共享的动态行为。我们将这种方法应用于医院工人佩戴的传感器收集的数据,并表明学习国家可以将参与者聚集成有意义的群体,并更好地预测其认知和心理状态。该方法提供了一种学习来自多变量传感器信号的可解释的紧凑行为表示的方法。

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