Using keywords in the automatic classification of language of gender violence

Héctor Castro Mosqueda, Antonio Rico Sulayes
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Abstract

This paper employs lexical analysis tools, quantitative processing methods, and natural language processing procedures to analyze language samples and identify lexical items that support automatic topic detection in natural language processing. This paper discusses how keyword extraction, a technique from corpus linguistics, can be employed in obtaining features that improve automatic classification; in particular, this research is concerned with extracting keywords from a corpus obtained from social networks. The corpus consists of 1,841,385 words and is subdivided into three sub-corpora that have been categorized according to the topic of the comments in each one of them. These three topics are violence against women, violence against the LGBT community, and violence in general. The corpus has been obtained by scraping comments from YouTube videos that address issues such as street harassment, femicide, feminist movements, drug trafficking, forced disappearances, equal marriage, among others. The topic detection tasks performed with the corpus extracted from the social media showed that the keywords rendered a 98% accuracy when classifying the collection of comments from 51 videos, as one of the three categories mentioned above, and 92% when classifying almost 7,500 comments individually. When keywords were removed from the classification task and all words were used to perform the classification task, accuracy dropped by an average of 17%. These results support the argument for keyword relevance in automatic topic detection.
使用关键词对性别暴力语言进行自动分类
本文采用词法分析工具、定量处理方法和自然语言处理程序对语言样本进行分析,识别支持自然语言处理中自动主题检测的词法项。本文讨论了语料库语言学中的关键字提取技术如何用于获取特征以提高自动分类;特别是,本研究关注的是从社交网络获得的语料库中提取关键字。该语料库由1841385个词组成,分为三个子语料库,根据每个子语料库中评论的主题进行分类。这三个主题分别是针对女性的暴力,针对LGBT群体的暴力,以及一般意义上的暴力。该语料库是通过从YouTube视频中抓取评论获得的,这些视频涉及街头骚扰、杀害女性、女权运动、贩毒、强迫失踪、平等婚姻等问题。使用从社交媒体中提取的语料库执行的主题检测任务表明,在对51个视频的评论集合进行分类时,关键词的准确率为98%(如上所述的三类之一),在对近7500条评论进行单独分类时,关键词的准确率为92%。当从分类任务中删除关键字并使用所有单词执行分类任务时,准确率平均下降了17%。这些结果支持自动主题检测中关键字相关性的论点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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