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Suicide Ideation Detection via Social and Temporal User Representations using Hyperbolic Learning

机译:通过使用双曲学习的社交和时间用户表示自杀式思想检测

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Recent psychological studies indicate that individuals exhibiting suicidal ideation increasingly turn to social media rather than mental health practitioners. Personally contextualiz-ing the buildup of such ideation is critical for accurate identification of users at risk. In this work, we propose a framework jointly leveraging a user's emotional history and social information from a user's neighborhood in a network to contextualize the interpretation of the latest tweet of a user on Twitter. Reflecting upon the scale-free nature of social network relationships, we propose the use of Hyperbolic Graph Convolution Networks, in combination with the Hawkes process to learn the historical emotional spectrum of a user in a time-sensitive manner. Our system significantly outperforms state-of-the-art methods on this task, showing the benefits of both socially and personally contextualized representations.
机译:最近的心理学研究表明,表现出自杀意念的个体越来越转向社交媒体,而不是心理健康从业者。 个人上下智能的构建对于准确地识别风险的用户来说至关重要。 在这项工作中,我们提出了一个框架,该框架共同利用了用户在网络中的用户社区中的情感历史和社交信息,以便在Twitter上形成对用户最新推文的解释。 反映社交网络关系无规模性质,我们建议使用双曲线图卷积网络,与鹰过程结合使用,以时间敏感的方式学习用户的历史情绪范围。 我们的系统在此任务上显着优于最先进的方法,展示了社会和个人情境化表示的益处。

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