使用fastText的仇恨言论和辱骂语言分类

Guntur Budi Herwanto, Annisa Maulida Ningtyas, Kurniawan Eka Nugraha, I. Nyoman Prayana Trisna
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引用次数: 19

摘要

仇恨言论被定义为基于某人所代表的特定群体的特征(如种族、民族)煽动暴力或偏见的言论、文字、行动或表演。在本研究中,我们使用连续词袋(CBOW)和fastText算法建立了仇恨言论分类模型。之所以选择这种算法,是因为它能够达到很好的性能,特别是在利用字符级别信息的罕见词情况下。基于这个结果,我们可以看到,没有单一的、普遍的变异比其他变异表现得更好。但一般来说,使用Wiki预训练向量的模型优于不使用预训练向量的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hate Speech and Abusive Language Classification using fastText
Hate speeches are defined as utterances, writings, actions, or performances that are intended to incite violence or prejudice against a person on the basis of the characteristics of a particular group that he or she is representing, such as race, ethnicity. In this study, we built a hate speech classification model using word representation with continous bag of words (CBOW) and fastText algorithm. This algorithms was chosen, because it is able to achieve a good performance, specially in the case of rare words by making use of character level information. Based on this result, we can see that there is no single, universal variations that outperform other. But in general, models that use pre-trained vectors from Wiki outperform models that do not use pre-trained vectors.
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