情绪波动:用情绪的时间测量来识别推特上的抑郁症

Xuetong Chen, M. Sykora, Thomas W. Jackson, Suzanne Elayan
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引用次数: 94

摘要

抑郁症是世界上最常见的精神障碍之一。随着在线社交网络平台的日益普及和数据科学的进步,通过分析语言风格、情绪、在线社交网络等活动痕迹,越来越多的研究致力于通过社交媒体来理解精神障碍。然而,基本情绪的作用及其随时间的变化,在现有的工作中尚未得到充分的探讨。在本文中,我们提出了一种新的方法,通过将八种基本情绪作为Twitter帖子随时间变化的特征,包括对这些特征的时间分析,来识别患有抑郁症或有抑郁症风险的用户。结果表明,情绪相关的表达可以揭示个体的心理状态,从这些表达中测量的情绪显示出在Twitter上识别抑郁症的预测能力。我们还证明,随着时间的推移,个体情绪的变化承载着额外的信息,可以进一步提高情绪作为特征的有效性,从而提高我们在这项任务中提出的模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What about Mood Swings: Identifying Depression on Twitter with Temporal Measures of Emotions
Depression is among the most commonly diagnosed mental disorders around the world. With the increasing popularity of online social network platforms and the advances in data science, more research efforts have been spent on understanding mental disorders through social media by analysing linguistic style, sentiment, online social networks and other activity traces. However, the role of basic emotions and their changes over time, have not yet been fully explored in extant work. In this paper, we proposed a novel approach for identifying users with or at risk of depression by incorporating measures of eight basic emotions as features from Twitter posts over time, including a temporal analysis of these features. The results showed that emotion-related expressions can reveal insights of individuals' psychological states and emotions measured from such expressions show predictive power of identifying depression on Twitter. We also demonstrated that the changes in an individual's emotions as measured over time bear additional information and can further improve the effectiveness of emotions as features, hence, improve the performance of our proposed model in this task.
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