A MULTI-PLATFORM APPROACH USING HYBRID DEEP LEARNING MODELS FOR AUTOMATIC DETECTION OF HATE SPEECH ON SOCIAL MEDIA

Hyellamada Simon, Benson YUSUF BAHA, Etemi Joshua Garba
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引用次数: 1

Abstract

Hate speech on online social networks is a general problem across social media platforms that has the potential of causing physical harm to the society. The growing number of hateful comments on the Internet and the rate at which tweets and posts are published per second on social media make it a challenging task to manually identify and remove the hateful commentsfrom such posts. Although numerous publications have proposed machine learning approaches to detect hate speech and other antisocial online behaviours without concentrating on blocking the hate speech from being published on social media. Similarly, prior publications on deep learning and multi-platform approaches did not work on the topic of detecting hate speech in Englishlanguage comments on Twitter and Facebook. This paper proposed a deep learning approach based on a hybrid of convolutional neural network (CNN) and long short-term memory (LSTM) with pre-trained GloVe words embedding to automatically detect and block hate speech on multiple social media platforms including Twitter and Facebook. Thus, datasets were collected from Twitter and Facebook which were annotated as hateful and non-hateful. A set of features were extracted from the datasets based on word embedding mechanism, and the word embeddings were fed into our deep learning framework. The experiment was carried out as a three independent tasks approach. The results show that our hybrid CNN-LSTM approach in Task 1 achieved an f1-score of 0.91, Task 2 obtained an f1-score of 0.92, and Task 3 achieved an f1-score of 0.87. Thus, there is outstanding performance in classifying text as Hate speech or non-hate speech in all the considered metrics. Based on the findings, we conclude that hatespeech can be detected and blocked on social media before it can reach the public.
一种多平台方法,使用混合深度学习模型自动检测社交媒体上的仇恨言论
在线社交网络上的仇恨言论是社交媒体平台上的一个普遍问题,有可能对社会造成身体伤害。互联网上仇恨评论的数量越来越多,社交媒体上每秒发布推文和帖子的速度也越来越快,这使得人工识别和删除这些帖子中的仇恨评论成为一项具有挑战性的任务。尽管许多出版物已经提出了机器学习方法来检测仇恨言论和其他反社会在线行为,而不是专注于阻止仇恨言论在社交媒体上发布。同样,之前关于深度学习和多平台方法的出版物在检测Twitter和Facebook上的英语评论中的仇恨言论方面也不起作用。本文提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)的混合深度学习方法,并通过预训练的GloVe词嵌入来自动检测和阻止包括Twitter和Facebook在内的多个社交媒体平台上的仇恨言论。因此,从Twitter和Facebook收集的数据集被标注为可恨和非可恨。基于词嵌入机制从数据集中提取一组特征,并将这些特征输入到深度学习框架中。实验以三个独立任务的方式进行。结果表明,我们的混合CNN-LSTM方法在Task 1中的f1-score为0.91,Task 2的f1-score为0.92,Task 3的f1-score为0.87。因此,在所有考虑的指标中将文本分类为仇恨言论或非仇恨言论方面表现出色。基于这些发现,我们得出结论,仇恨言论可以在社交媒体上被发现并阻止,然后才能传播给公众。
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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