Suicide Risk Assessment on Social Media with Semi-Supervised Learning.

Max Lovitt, Haotian Ma, Song Wang, Yifan Peng
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Abstract

With social media communities increasingly becoming places where suicidal individuals post and congregate, natural language processing presents an exciting avenue for the development of automated suicide risk assessment systems. However, past efforts suffer from a lack of labeled data and class imbalances within the available labeled data. To accommodate this task's imperfect data landscape, we propose a semi-supervised framework that leverages labeled (n=500) and unlabeled (n=1,500) data and expands upon the self-training algorithm with a novel pseudo-label acquisition process designed to handle imbalanced datasets. To further ensure pseudo-label quality, we manually verify a subset of the pseudo-labeled data that was not predicted unanimously across multiple trials of pseudo-label generation. We test various models to serve as the backbone for this framework, ultimately deciding that RoBERTa performs the best. Ultimately, by leveraging partially validated pseudo-labeled data in addition to ground-truth labeled data, we substantially improve our model's ability to assess suicide risk from social media posts.

基于半监督学习的社交媒体自杀风险评估
随着社交媒体社区日益成为有自杀倾向的人发帖和聚集的地方,自然语言处理为开发自动自杀风险评估系统提供了一条令人兴奋的途径。然而,过去的努力受到缺乏标记数据和可用标记数据中的类不平衡的影响。为了适应这项任务的不完美数据环境,我们提出了一个半监督框架,利用标记(n=500)和未标记(n= 1500)数据,并通过一种新的伪标签获取过程扩展自训练算法,旨在处理不平衡数据集。为了进一步确保伪标签质量,我们手动验证了伪标签生成的多个试验中未一致预测的伪标签数据子集。我们测试了各种模型作为这个框架的主干,最终决定RoBERTa表现最好。最终,通过利用部分验证的伪标签数据和基本事实标签数据,我们大大提高了模型评估社交媒体帖子自杀风险的能力。
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