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Discovering latent affective dynamics among individuals in online mental health-related communities

机译:在与心理健康相关的在线社区中的个人中发现潜在的情感动态

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Discovering dynamics of emotion and mood changes for individuals has the potential to enhance the diagnosis and treatment of mental disorders. In this paper we study affective transitions and dynamics among individuals in online mental health communities. Using social media as form of `sensor', we crawl a large dataset of blogs posted by online communities whose descriptions declared to be associated with affective disorder conditions such as depression, anxiety, or autism. We then apply nonnegative matrix factorization model to extract the common and individual factors of affective transitions across groups of individuals in different levels of affective disorders. We examine the latent patterns of emotional transitions and investigate the effects of emotional transitions across the cohorts. Our framework is novel as it utilizes social media as an online sensing platform of mood and emotional dynamics. Hence, our work has implication in constructing systems to screen individuals and communities at high risks of mental health problems in online settings.
机译:发现个人情绪和情绪变化的动态可能会增强精神障碍的诊断和治疗。在本文中,我们研究了在线心理健康社区中个体之间的情感转变和动态。我们使用社交媒体作为“传感器”的形式,检索了由在线社区发布的博客的大型数据集,这些博客的描述被宣称与诸如抑郁症,焦虑症或自闭症等情感性疾病相关。然后,我们应用非负矩阵分解模型来提取不同级别的情感障碍人群中情感转变的共同因素和个体因素。我们研究了情绪过渡的潜在模式,并研究了整个人群中情绪过渡的影响。我们的框架新颖,因为它利用社交媒体作为情绪和情感动态的在线感知平台。因此,我们的工作对构建用于筛选在线环境中存在精神健康问题高风险的个人和社区的系统具有重要意义。

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