通过社会参与支持心理健康的智能网络-人类系统

A. J. Majumder, Jack Wilson Dedmondt, Sean Jones, Amir A. Asif
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引用次数: 3

摘要

可穿戴设备和社交媒体的广泛采用正在产生关于人们日常生活中行为的人口规模数据。在本文中,一个嵌入式的网络-人类系统(CHS)通过生理、行为和社会数据来监测一个人的心理健康。然后,这三种数据流将被转发到医疗行业专业人士使用的应用程序中,从而允许远程监控用户的心理健康,而无需面对面访谈可能带来的不确定性。对一组被试进行了实验和验证,被试有不同的测试场景,包括快乐、悲伤、愤怒和中立的状态。我们建议使用机器学习分类算法,使用生理数据来预测一个人的情绪状态。该系统可以区分不同的情绪状态,准确率为92.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Smart Cyber-Human System to Support Mental Well-Being through Social Engagement
The widespread adoption of wearable devices and social media is generating population-scale data about people's behavior as situated in their everyday lives. In this paper, an embedded Cyber-Human System (CHS) is used to monitor a person's mental health via physiological, behavioral, and social data. These three data streams will then be relayed to an application used by a professional within the medical industry, to allow remote monitoring of the user's mental health without the uncertainty that face-to-face interviews can introduce. Experimentation and verification have been conducted on a group of test subjects with different test scenarios including a happy, sad, angry, and neutral state of being. We propose to use physiological data to predict a person's emotional state using a machine learning classification algorithm. The proposed system can distinguish between the different emotional states with an accuracy of 92.9%.
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