阿拉伯语短文本的仇恨语音检测

Abdullah Aref, Rana Husni Al Mahmoud, Khaled Taha, Mahmoud Al-Sharif
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引用次数: 7

摘要

情感分析的目的是从某一文本中自动提取观点并确定其情感。在本文中,我们引入了第一个公开可用的关于逊纳和什叶派(SSTD)的Twitter数据集,作为宗教仇恨言论的一部分,这是一般仇恨言论的子问题。此外,我们还提供了数据收集过程的详细审查和我们的注释指南,以保证可靠的数据集注释。我们在Twitter仇恨言论数据集上使用了许多独立的分类算法,包括Random Forest、Complement NB、DecisionTree和SVM以及两种深度学习方法CNN和RNN。我们进一步研究了词嵌入维数FastText和word2vec的影响。在我们所有的实验中,所有的分类算法都是使用随机分割的数据进行训练的(66%用于训练,34%用于测试)。这两个数据集是对原始数据集的分层抽样。CNN-FastText获得了最高的F-Measure(52.0%),其次是CNN-Word2vec(49.0%),表明使用FastText词嵌入的神经模型优于经典的基于特征的模型。
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Hate Speech Detection of Arabic Shorttext
The aim of sentiment analysis is to automatically extract the opinions from a certain text and decide its sentiment. In this paper, we introduce the first publicly-available Twitter dataset on Sunnah and Shia (SSTD), as part of a religious hate speech which is a sub problem of the general hate speech. We, further, provide a detailed review of the data collection process and our annotation guidelines such that a reliable dataset annotation is guaranteed. We employed many stand-alone classification algorithms on the Twitter hate speech dataset, including Random Forest, Complement NB, DecisionTree, and SVM and two deep learning methods CNN and RNN. We further study the influence of word embedding dimensions FastText and word2vec. In all our experiments, all classification algorithms are trained using a random split of data (66% for training and 34% for testing). The two datasets were stratified sampling of the original dataset. The CNN-FastText achieves the highest F-Measure (52.0%) followed by the CNN-Word2vec (49.0%), showing that neural models with FastText word embedding outperform classical feature-based models.
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