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Sentiment Analysis of Arabic Tweets about Violence Against Women using Machine Learning

机译:机器学习对妇女暴力行为的阿拉伯语推文的情感分析

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Social Media platforms, such as Twitter became a significant pulse in smart societies that are shaping our communities by sensitizing people's information and perceptions across living areas over space and time. Social media sentiment analysis helps in recognizing people's emotions and attitudes and helps in assessing various public issues, such as, women's rights and violence against women. In this paper, we used the sentence based sentiment analysis to study the notion of women's rights. We collected Arabic dialect tweets from the whole Arab world as data via a Twitter API, then we cleaned the data to use it in the classification step. We have examined different types of traditional classification algorithms namely, Support Vector Machine, K-Nearest-Neighbour, Decision Trees, and Naive Bayes. Then, we compared these results with deep learning results. Finally, we compared the classification results using the precision, recall and accuracy measurements. We found that the Support Vector Machine algorithm gained the best results, while the Naive Bayes was the worst. We also noticed that there is an increasing attention to women's rights in the Arab world.
机译:社交媒体平台,如Twitter在聪明的社会中成为一个重要的脉搏,通过敏感人们在空间和时间的生活地区敏感人们的信息和看法来塑造我们的社区。社交媒体情绪分析有助于认识到人们的情绪和态度,并有助于评估各种公共问题,例如妇女的权利和对妇女的暴力行为。在本文中,我们使用了基于句子的情绪分析来研究妇女权利的概念。我们通过Twitter API从整个阿拉伯世界中收集阿拉伯语方言推文,然后我们清理数据以在分类步骤中使用它。我们已经检查了不同类型的传统分类算法,即支持向量机,K-Istally邻居,决策树和天真贝叶斯。然后,我们将这些结果与深入学习结果进行了比较。最后,我们使用精度,召回和准确度测量进行了比较了分类结果。我们发现支持向量机算法获得了最佳效果,而幼稚的贝叶斯是最糟糕的。我们还注意到,在阿拉伯世界的妇女权利上越来越高兴。

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