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Hate Speech Detection on Twitter Using Multinomial Logistic Regression Classification Method

机译:使用多项式Lo​​gistic回归分类方法对Twitter的仇恨语音检测

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摘要

In today's social media, especially Twitter is very important for the success and destruction of one's image due to the many sentences of opinion that can compete the users. Examples of phrases that mean evil refer to hate speech to others. Evil perspectives can be categorized in hate speech, which hate speech is regulated in Article 28 of the ITE Law. Not a few people who intentionally and unintentionally oppose a social media that contains hate speech. Unfortunately social media does not have the ability to aggregate information about an existing conversation into a conclusion. One way to draw conclusion from aggregation results is to use text mining. In this paper to classify whether the text in the sentence contains elements of hate speech or not. The author hopes in this paper can make how to classify element of hate speech in text by computer, which later speech of the can be recognized. By using Multinomial Logistic Regression method. The author hopes after this application the computer can know and classify the existence of hate speech on a text from social media Twitter. From the results of tests that have been done the average precision of 80.02, recall 82%, and accuracy of 87.68%.
机译:在当今的社交媒体中,尤其是Twitter对于成功和破坏个人形象非常重要,这是因为有很多可以与用户竞争的观点。表示邪恶的短语示例是指对他人的仇恨言论。仇恨言论可以归类为邪恶的观点,仇恨言论在《 ITE法》第28条中有规定。有不少人有意无意地反对包含仇恨言论的社交媒体。不幸的是,社交媒体无法将有关现有对话的信息汇总为结论。从聚合结果中得出结论的一种方法是使用文本挖掘。本文对句子中的文本是否包含仇恨言论进行分类。作者希望本文能够通过计算机对文本中的仇恨言论要素进行分类,从而识别出后来的言论。通过使用多项逻辑回归方法。作者希望在此应用程序之后,计算机可以知道并分类来自社交媒体Twitter的文本上存在仇恨言论的情况。从已经完成的测试结果来看,平均精度为80.02,召回率为82%,准确性为87.68%。

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