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Detecting Depression in Social Media using Fine-Grained Emotions

机译:使用细粒度的情绪检测社交媒体中的抑郁

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Nowadays social media platforms are the most popular way for people to share information, from work issues to personal matters. For example, people with health disorders tend to share their concerns for advice, support or simply to relieve suffering. This provides a great opportunity to proactively detect these users and refer them as soon as possible to professional help. We propose a new representation called Bag of Sub-Emotions (BoSE), which represents social media documents by a set of fine-grained emotions automatically generated using a lexical resource of emotions and sub-word embeddings. The proposed representation is evaluated in the task of depression detection. The results are encouraging; the usage of fine-grained emotions improved the results from a representation based on the core emotions and obtained competitive results in comparison to state of the art approaches.
机译:如今社交媒体平台是人们分享信息的最受欢迎方式,从工作问题到个人事务。例如,有健康障碍的人倾向于分享他们对咨询,支持或简单地缓解痛苦的担忧。这提供了主动检测这些用户的绝佳机会,并尽快将它们推荐给专业的帮助。我们提出了一种称为副情感(BOSE)的新代表,它由一系列细粒度的情绪自动使用情绪和子词嵌入来自动生成的细粒度情绪。所提出的表示是在抑郁检测的任务中进行评估。结果令人鼓舞;基于核心情绪的核心情绪,使用细粒情绪的使用改善了结果,并与最先进的方法相比,获得了竞争结果。

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