Systematic Literature Review Of Hate Speech Detection With Text Mining

R. Rini, Ema Utami, A. D. Hartanto
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引用次数: 11

Abstract

Along with the increasing activity on social media, hate speech is getting out of control. Hate speech detection can be done by utilizing text mining technology. There have been many hate speech detection studies conducted. To identify and analyze research trends, data sources, methods and features used in hate speech detection, this systematic literature review was created. Until early 2020, the topics of hate speech were found, including hate speech against minorities, religion, women, the general election agenda, and politics. Sources of data that are widely used to be used as datasets come from twitter. Hate speech is not only classified into HS (hate speech) and Non-HS (non-hate speech) but can be further classified into racism, sexism, offensive, abusive, threats of violence and others. Of the 38 studies that meet inclusion and exclusion, there are 26 algorithms and 28 features that have been used to detect hate speech. However, these methods and features do not necessarily guarantee a good hate detection performance. Hate speech classification performance is also influenced by the dataset, the features chosen, the number of classes and mutually exclusive classes.
基于文本挖掘的仇恨语音检测系统文献综述
随着社交媒体上的活动越来越多,仇恨言论正在失控。仇恨语音检测可以利用文本挖掘技术来实现。已经进行了许多仇恨言论检测研究。为了识别和分析仇恨言论检测的研究趋势、数据来源、方法和特征,本文进行了系统的文献综述。直到2020年初,仇恨言论的主题被发现,包括针对少数民族、宗教、妇女、大选议程和政治的仇恨言论。被广泛用作数据集的数据源来自twitter。仇恨言论不仅分为HS(仇恨言论)和Non-HS(非仇恨言论),还可以进一步分为种族主义、性别歧视、攻击性、辱骂性、暴力威胁等。在38项符合包容性和排除性的研究中,有26种算法和28种特征被用于检测仇恨言论。然而,这些方法和特征并不能保证良好的仇恨检测性能。仇恨言论分类性能还受到数据集、所选择的特征、类别数量和互斥类别的影响。
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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