Automatic Detection of Perceived Stress in Campus Students Using Smartphones

M. Gjoreski, H. Gjoreski, M. Luštrek, M. Gams
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引用次数: 61

Abstract

This paper presents an approach to detecting perceived stress in students using data collected with smartphones. The goal is to develop a machine-learning model that can unobtrusively detect the stress level in students using data from several smartphone sources: accelerometers, audio recorder, GPS, Wi-Fi, call log and light sensor. From these, features were constructed describing the students' deviation from usual behaviour. As ground truth, we used the data obtained from stress level questionnaires with three possible stress levels: "Not stressed", "Slightly stressed" and "Stressed". Several machine learning approaches were tested: a general models for all the students, models for cluster of similar students, and student-specific models. Our findings show that the perceived stress is highly subjective and that only person-specific models are substantially better than the baseline.
智能手机对大学生压力感知的自动检测
本文提出了一种利用智能手机收集的数据来检测学生感知压力的方法。其目标是开发一种机器学习模型,该模型可以使用来自多个智能手机来源的数据(加速度计、录音机、GPS、Wi-Fi、通话记录和光传感器),不显眼地检测学生的压力水平。从这些特征中,我们构建了描述学生偏离正常行为的特征。作为基本事实,我们使用了从压力水平问卷中获得的数据,其中有三种可能的压力水平:“不紧张”,“轻微紧张”和“紧张”。测试了几种机器学习方法:针对所有学生的通用模型,针对相似学生的集群模型,以及针对学生的特定模型。我们的研究结果表明,感知到的压力是高度主观的,只有个人特定的模型比基线要好得多。
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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