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Modeling the Detection of Textual Cyberbullying

机译:造型检测文本讯连丝器

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The scourge of cyberbullying has assumed alarming proportions with an ever-increasing number of adolescents admitting to having dealt with it either as a victim or as a bystander. Anonymity and the lack of meaningful supervision in the electronic medium are two factors that have exacerbated this social menace. Comments or posts involving sensitive topics that are personal to an individual are more likely to be internalized by a victim, often resulting in tragic outcomes. We decompose the overall detection problem into detection of sensitive topics, lending itself into text classification sub-problems. We experiment with a corpus of 4500 YouTube comments, applying a range of binary and multiclass classifiers. We find that binary classifiers for individual labels outperform multiclass classifiers. Our findings show that the detection of textual cyberbullying can be tackled by building individual topic-sensitive classifiers.
机译:网络欺凌的祸害假设令人惊叹的比例,越来越多的青少年承认是作为受害者或作为旁观者处理。电子媒介中的匿名和缺乏有意义的监督是加剧了这种社会威胁的两个因素。涉及个人对个人的敏感主题的评论或帖子更有可能被受害者内部化,往往导致悲惨的结果。我们将整体检测问题分解为检测敏感主题,借给文本分类子问题。我们试验4500 YouTube评论的语料库,应用一系列二进制和多字数分类器。我们发现个体标签的二进制分类器优于多字数分类器。我们的研究结果表明,可以通过构建单个主题敏感的分类器来解决文本网络欺凌的检测。

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