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Effect of Mood, Social Connectivity and Age in Online Depression Community via Topic and Linguistic Analysis

机译:通过主题和语言分析对情绪,社交连通性和年龄在在线抑郁症社区中的影响

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Depression afflicts one in four people during their lives. Several studies have shown that for the isolated and mentally ill, the Web and social media provide effective platforms for supports and treatments as well as to acquire scientific, clinical understanding of this mental condition. More and more individuals affected by depression join online communities to seek for information, express themselves, share their concerns and look for supports. For the first time, we collect and study a large online depression community of more than 12,000 active members from Live Journal. We examine the effect of mood, social connectivity and age on the online messages authored by members in an online depression community. The posts are considered in two aspects: what is written (topic) and how it is written (language style). We use statistical and machine learning methods to discriminate the posts made by bloggers in low versus high valence mood, in different age categories and in different degrees of social connectivity. Using statistical tests, language styles are found to be significantly different between low and high valence cohorts, whilst topics are significantly different between people whose different degrees of social connectivity. High performance is achieved for low versus high valence post classification using writing style as features. The finding suggests the potential of using social media in depression screening, especially in online setting.
机译:抑郁症困扰着四分之一的人。多项研究表明,对于孤立的精神病患者,Web和社交媒体提供了有效的平台来进行支持和治疗,并获得了对这种精神状况的科学,临床的了解。越来越多的抑郁症患者加入了在线社区,以寻求信息,表达自己,分享他们的担忧并寻求支持。我们首次收集和研究了一个来自Live Journal的大型在线抑郁症社区,其中有12,000多名活跃成员。我们研究了情绪,社交联系和年龄对在线抑郁症社区成员撰写的在线消息的影响。这些帖子从两个方面考虑:写的内容(主题)和写的方式(语言样式)。我们使用统计和机器学习方法来区分博客作者在低价情绪和高价情绪,不同年龄类别和不同程度的社交联系中发表的帖子。通过统计测试,发现低和高价人群的语言风格明显不同,而社交联系程度不同的人的话题也明显不同。以写作风格为特征,针对低价和高价职位分类实现了高性能。该发现表明,在抑郁症筛查中,尤其是在线环境中,使用社交媒体的潜力。

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