Identifying the Offensive Words in the Twitter Using Latent Semantic Analysis

Nahumi Nugrahaningsih, Ariesta Lestari, Devi Karolita
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Abstract

The technologies around social media has changed how people connect with others, how they access information even how they organize their political point of view. The vast technologies has made the message can be sent quickly, become widespread and even viral. The drawback of this technology is people can post anything, from the positive content to negative content and it can be viral. Information contains negative content or known as hate speech can encourage conflicts between groups in society. In Indonesia, there is no automated mechanism to detect whether the information in social media is hate speech or not. Therefore, it could takes time to identify a hate speech. A starting point to identify hate speech is the use of offensive words and slurs the in feature. Once the offensive words are identified, we can classified the tweet into hate speech or not. Machine learning can be used to identify potential hate speech in collection of text. This paper aims to identify the offensive words using machine learning approach.
利用潜在语义分析识别推特中的冒犯性词汇
围绕社交媒体的技术改变了人们与他人联系的方式,改变了他们获取信息的方式,甚至改变了他们组织政治观点的方式。巨大的技术使得信息可以快速发送,变得广泛甚至病毒式传播。这项技术的缺点是人们可以发布任何东西,从积极的内容到消极的内容,它可以是病毒式传播的。含有负面内容或仇恨言论的信息会助长社会群体之间的冲突。在印度尼西亚,没有自动机制来检测社交媒体上的信息是否是仇恨言论。因此,识别仇恨言论可能需要时间。识别仇恨言论的一个出发点是使用攻击性词汇和污言秽语。一旦识别出冒犯性词汇,我们就可以将推文归类为仇恨言论或非仇恨言论。机器学习可以用来识别文本集合中潜在的仇恨言论。本文旨在使用机器学习方法识别冒犯性词汇。
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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