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Classification of Helpful Comments on Online Suicide Watch Forums

机译:在线自杀观察论坛上有用评论的分类

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摘要

Among social media websites, Reddit has emerged as a widely used online message board for focused mental health topics including depression, addiction, and suicide watch (SW). In particular, the SW community/subreddit has nearly 40,000 subscribers and 13 human moderators who monitor for abusive comments among other things. Given comments on posts from users expressing suicidal thoughts can be written from any part of the world at any time, moderating in a timely manner can be tedious. Furthermore, Reddit's default comment ranking does not involve aspects that relate to the “helpfulness” of a comment from a suicide prevention (SP) perspective. Being able to automatically identify and score helpful comments from such a perspective can assist moderators, help SW posters to have immediate feedback on the SP relevance of a comment, and also provide insights to SP researchers for dealing with online aspects of SP. In this paper, we report what we believe is the first effort in automatic identification of helpful comments on online posts in SW forums with the SW subreddit as the use-case. We use a dataset of 3000 real SW comments and obtain SP researcher judgments regarding their helpfulness in the contexts of the corresponding original posts. We conduct supervised learning experiments with content based features including n-grams, word psychometric scores, and discourse relation graphs and report encouraging F-scores (≈ 80 – 90%) for the helpful comment classes. Our results indicate that machine learning approaches can offer complementary moderating functionality for SW posts. Furthermore, we realize assessing the helpfulness of comments on mental health related online posts is a nuanced topic and needs further attention from the SP research community.
机译:在社交媒体网站中,Reddit已成为一种广泛使用的在线留言板,用于关注精神健康主题,包括抑郁症,成瘾和自杀监测(SW)。特别是,SW社区/ subreddit拥有近40,000个订阅者和13位人类主持人,他们负责监控辱骂性评论等内容。可以在世界任何地方随时写出表达自杀想法的用户对帖子的评论,及时进行审核可能很乏味。此外,从自杀预防(SP)的角度来看,Reddit的默认评论排名不涉及与评论的“帮助”相关的方面。能够从这样的角度自动识别和评分有用的评论可以帮助主持人,帮助软件发布者对评论的SP相关性立即获得反馈,还可以为SP研究人员提供有关SP在线方面的见解。在本文中,我们报告了我们认为是在以SW subreddit为用例的情况下,自动识别SW论坛中在线帖子的有用评论的第一步。我们使用3000个真实SW评论的数据集,并获得SP研究人员在相应原始帖子的上下文中对其有用性的判断。我们进行基于内容的功能(包括n-gram,单词心理测验得分和语篇关系图)的监督学习实验,并报告令人鼓舞的F分数(≈80 – 90%)用于有用的评论类。我们的结果表明,机器学习方法可以为软件文章提供补充的审核功能。此外,我们意识到评估有关心理健康相关在线帖子的评论是否有用是一个微妙的话题,需要SP研究社区的进一步关注。

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