Empowering hate speech detection: leveraging linguistic richness and deep learning

Gde Bagus, Janardana Abasan, Erwin Budi Setiawan
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Abstract

Social media has become a vital part of most modern human personal life. Twitter is one of the social media that was formed from the development of communication technology. A lot of social media gives users the freedom to express themselves. This facility is misused by users, so hate speech is spread. Designing a system to detect hate speech intelligently is needed. This study uses the hybrid deep learning (HDL) and solo deep learning (SDL) approach with the convolutional neural networks (CNN) and bidirectional gated recurrent unit (Bi-GRU) algorithm. There are 4 models built, namely CNN, Bi-GRU, CNN+Bi-GRU, and Bi-GRU+CNN. Term frequency-inverse document frequency (TF-IDF) is used for feature extraction, which is to get linguistic features to be analyzed and studied. FastText is used to perform feature expansion to minimize mismatched vocabulary. Four scenarios are run. CNN with an accuracy of 87.63%, Bi-GRU produces an accuracy of 87.46%, CNN+Bi-GRU provides an accuracy of 87.47% and Bi-GRU+CNN provides an accuracy of 87.34%. The ability of this approach to understand the context is qualified. HDL outperforms SDL in terms of n-gram type, where HDL can understand sentences broken down by hybrid n-gram types, namely Unigram-Bigram-Trigram which is a complex n-gram hybrid.
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增强仇恨言论检测能力:利用语言的丰富性和深度学习
社交媒体已成为大多数现代人个人生活的重要组成部分。Twitter 就是随着通信技术的发展而形成的社交媒体之一。很多社交媒体给予用户表达自己的自由。用户滥用这一便利,导致仇恨言论的传播。因此需要设计一个系统来智能检测仇恨言论。本研究采用混合深度学习(HDL)和独奏深度学习(SDL)方法,使用卷积神经网络(CNN)和双向门控递归单元(Bi-GRU)算法。共构建了 4 个模型,即 CNN、Bi-GRU、CNN+Bi-GRU 和 Bi-GRU+CNN。特征提取使用了词频-反向文档频率(TF-IDF),以获得待分析和研究的语言特征。FastText 用于执行特征扩展,以尽量减少不匹配词汇。运行了四个场景。CNN 的准确率为 87.63%,Bi-GRU 的准确率为 87.46%,CNN+Bi-GRU 的准确率为 87.47%,Bi-GRU+CNN 的准确率为 87.34%。这种方法理解上下文的能力是合格的。HDL 在 n-gram 类型方面优于 SDL,HDL 可以理解按混合 n-gram 类型细分的句子,即 Unigram-Bigram-Trigram 这种复杂 n-gram 混合类型。
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来源期刊
Bulletin of Electrical Engineering and Informatics
Bulletin of Electrical Engineering and Informatics Computer Science-Computer Science (miscellaneous)
CiteScore
3.60
自引率
0.00%
发文量
0
期刊介绍: Bulletin of Electrical Engineering and Informatics publishes original papers in the field of electrical, computer and informatics engineering which covers, but not limited to, the following scope: Computer Science, Computer Engineering and Informatics[...] Electronics[...] Electrical and Power Engineering[...] Telecommunication and Information Technology[...]Instrumentation and Control Engineering[...]
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