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Detecting hate speech from tweets for sentiment analysis

机译:从推文中检测仇恨言论以进行情感分析

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In the era of the popularity of Social Networking Service (SNS), people became increasingly inseparable from mobile phones and computers. People want to get information and real-time updates from social media, and they want to know how many Internet citizens have comments and opinions on many dynamic news. The interaction among users on social networking platforms is usually positive, advisory and motivating and influential. However, sometimes people will also reveal objectionable content, such as hate speech, abusive and bullying or discriminatory words. According to multiple methods, we will find out which method has the best accuracy of detecting hate speech from tweets. Many papers using types of data for experimentation. The major innovation of this article is that we used different ratios of data to compare with multiple methods at the same time. As a result, good performance is obtained by using machine learning when data is small. The good results can be obtained by using deep learning when we use more data for our experiments. Using BiRNN can get the best results, compared with other methods we used. Even if this method is superior to other models, we have to consider the type of data set in the future.
机译:在社交网络服务(SNS)普及的时代,人们越来越与手机和计算机密不可分。人们想从社交媒体获取信息和实时更新,他们想知道有多少互联网公民对许多动态新闻有意见和看法。用户在社交网络平台上的互动通常是积极的,咨询性的,激励性的和有影响力的。但是,有时人们还会透露令人反感的内容,例如仇恨言论,辱骂和霸凌或歧视性用语。根据多种方法,我们将找出哪种方法具有从推文中检测仇恨语音的最佳准确性。许多论文使用数据类型进行实验。本文的主要创新之处在于,我们使用了不同的数据比率来同时与多种方法进行比较。结果,当数据较少时,通过使用机器学习可获得良好的性能。当我们在实验中使用更多数据时,通过使用深度学习可以获得良好的结果。与我们使用的其他方法相比,使用BiRNN可以获得最佳结果。即使此方法优于其他模型,我们将来也必须考虑数据集的类型。

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