论文标题

社交媒体上基于情绪的精神障碍建模

Emotion-based Modeling of Mental Disorders on Social Media

论文作者

Guo, Xiaobo, Sun, Yaojia, Vosoughi, Soroush

论文摘要

根据世界卫生组织(WHO)的说法,四分之一的人将在生活中的某个时刻受到精神障碍的影响。但是,在世界许多地方,由于对精神疾病的污名,对心理健康及其相关症状的无知,患者并未积极寻求专业诊断。在本文中,我们提出了一个模型,用于使用Reddit上的对话被动检测精神障碍。具体而言,我们专注于以不同的情绪模式(称为情绪障碍)为特征的精神障碍的子集:主要的抑郁,焦虑和双相情感障碍。通过被动(即未提及的)检测,我们可以鼓励患者寻求精神疾病的诊断和治疗。我们提出的模型与该领域的其他工作不同,因为我们的模型完全基于情绪状态,并且这些用户在Reddit上的过渡之间的过渡,而先前的工作通常基于基于内容的表示(例如N-grams,语言模型嵌入式等)。我们表明,基于内容的表示受域和主题偏差的影响,因此并未概括,另一方面,我们的模型抑制了特定于主题的信息,因此在不同的主题和时间之间很好地概括了。我们对模型检测不同情绪障碍和模型的普遍性的能力进行实验。我们的实验表明,尽管我们的模型与基于内容的模型(例如BERT)相当,但在时间和主题之间概括了很多。

According to the World Health Organization (WHO), one in four people will be affected by mental disorders at some point in their lives. However, in many parts of the world, patients do not actively seek professional diagnosis because of stigma attached to mental illness, ignorance of mental health and its associated symptoms. In this paper, we propose a model for passively detecting mental disorders using conversations on Reddit. Specifically, we focus on a subset of mental disorders that are characterized by distinct emotional patterns (henceforth called emotional disorders): major depressive, anxiety, and bipolar disorders. Through passive (i.e., unprompted) detection, we can encourage patients to seek diagnosis and treatment for mental disorders. Our proposed model is different from other work in this area in that our model is based entirely on the emotional states, and the transition between these states of users on Reddit, whereas prior work is typically based on content-based representations (e.g., n-grams, language model embeddings, etc). We show that content-based representation is affected by domain and topic bias and thus does not generalize, while our model, on the other hand, suppresses topic-specific information and thus generalizes well across different topics and times. We conduct experiments on our model's ability to detect different emotional disorders and on the generalizability of our model. Our experiments show that while our model performs comparably to content-based models, such as BERT, it generalizes much better across time and topic.

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