Lexicon-Based Indonesian Local Language Abusive Words Dictionary to Detect Hate Speech in Social Media

Mardhiya Hayaty, Sumarni Adi, A. D. Hartanto
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引用次数: 5

Abstract

Background: Hate speech is an expression to someone or a group of people that contain feelings of hate and/or anger at people or groups. On social media users are free to express themselves by writing harsh words and share them with a group of people so that it triggers separations and conflicts between groups. Currently, research has been conducted by several experts to detect hate speech in social media namely machine learning-based and lexicon-based, but the machine learning approach has a weakness namely the manual labelling process by an annotator in separating positive, negative or neutral opinions takes time long and tiringObjective: This study aims to produce a dictionary containing abusive words from local languages in Indonesia. Lexicon-base is very dependent on the language contained in dictionary words. Indonesia has thousands of tribes with 2500 local languages, and 80% of the population of Indonesia use local languages in communication, with the result that a significant challenge to detect hate speech of social media.Methods: Abusive words surveys are conducted by using proportionate stratified random sampling techniques in 4 major tribes on the island of Java, namely Betawi, Sundanese, Javanese, MadureseResults: The experimental results produce 250 abusive words dictionary from 4 major Indonesian tribes to detect hate speech in Indonesian social media by using the lexicon-based approach. Conclusion: A stratified random sampling technique has been conducted in 4 major Indonesian tribes to produce 250 abusive words for hate speech detection using the lexicon-based approach.
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基于词典的印尼当地语言辱骂词词典,用于检测社交媒体中的仇恨言论
背景:仇恨言论是指对某人或一群人表达仇恨和/或愤怒的情绪。在社交媒体上,用户可以自由地表达自己,写下严厉的话语,并与一群人分享,从而引发群体之间的分离和冲突。目前,几位专家已经进行了研究,以检测社交媒体中的仇恨言论,即基于机器学习和基于词典的研究,但机器学习方法有一个弱点,即由注释者手动标记过程,以区分积极,消极或中立的意见需要很长时间和令人厌倦。目的:本研究旨在制作一本包含印度尼西亚当地语言辱骂词的词典。词典基础非常依赖于字典中单词所包含的语言。印度尼西亚有数千个部落,有2500种当地语言,80%的印度尼西亚人口使用当地语言进行交流,因此,检测社交媒体上的仇恨言论是一个重大挑战。方法:采用比例分层随机抽样技术对爪哇岛4个主要部落,即巴达维人、巽他人、爪哇人、马杜雷人进行辱骂词调查。结果:实验结果生成了印度尼西亚4个主要部落的250个辱骂词词典,采用基于词典的方法检测印度尼西亚社交媒体中的仇恨言论。结论:采用分层随机抽样技术,在印度尼西亚4个主要部落中提取了250个辱骂词,并使用基于词典的方法进行仇恨言论检测。
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