识别希伯来语Facebook中的滥用评论

Chaya Liebeskind, Shmuel Liebeskind
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引用次数: 13

摘要

在本研究中,我们的目标是将评论分类为辱骂性或非辱骂性。我们开发了一个希伯来语的用户评论语料库,对辱骂性语言进行了注释。然后,我们研究了用于评论滥用分类的高度稀疏n-图表示和更密集的字符n-图表示。由于社交媒体上的评论通常很短,我们还研究了四维降维方法,它产生了将相似的词分解成组的词向量。我们表明,字符n-图表示在识别辱骂评论的任务中优于所有其他表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Abusive Comments in Hebrew Facebook
In this study, we aim to classify comments as abusive or non-abusive. We develop a Hebrew corpus of user comments annotated for abusive language. Then, we investigate highly sparse n-grams representations as well as denser character n-grams representations for comment abuse classification. Since the comments in social media are usually short, we also investigate four dimension reduction methods, which produce word vectors that collapse similar words into groups. We show that the character n-grams representations outperform all the other representation for the task of identifying abusive comments.
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