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Mood Detection and Prediction Based on User Daily Activities

机译:基于用户日常活动的情绪检测与预测

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Studies show that mood states influence our daily life quality and activities, and this is not the only way around. Mood also changes because of how we spend our days. In this paper, we use data on users' daily lives (known as lifelog) to both detect and predict their mood. The states of mood in this paper are based on Thayer's two-dimensional model of mood. This is the first research to analyze in depth the physical data collected in lifelog and its link to determinants and effects of mood including biometrics, physical activities, sleep quality, diet and user's environment. Our study shows that such link exists and is significant.
机译:研究表明,情绪状态会影响我们的日常生活质量和活动,这不是唯一的解决方法。心情也会因我们的生活方式而改变。在本文中,我们使用有关用户日常生活的数据(称为生活日志)来检测和预测他们的情绪。本文的情绪状态基于Thayer的二维情绪模型。这是第一项深入分析生活日志中收集到的身体数据及其与决定因素和情绪影响(包括生物识别,身体活动,睡眠质量,饮食和用户环境)的联系的研究。我们的研究表明这种联系存在并且很重要。

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