基于监督分类的英语推文仇恨言论检测方法

N. Solomon Praveen Kumar, Dr. M.S Mythili
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引用次数: 0

摘要

随着社会对互联网上仇恨和骚扰威胁的担忧日益增加,人们对检测仇恨言论的关注也越来越多。这项研究着眼于具有超参数调优的SGD分类器在检测tweet中的仇恨言论方面的表现。它描述了用随机梯度下降(SGD)分类器对英文推文进行分类。文本文档的分类取决于它们的内容,这些内容根据预定义的类别划分为组。在该系统中实现了术语频率(TF)和反文档频率(IDF)参数。使用随机梯度下降法(SGD)生成学习独立特征的分类器,并使用Accuracy和F1-score评估性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Supervised Classification Approach for Detecting Hate Speech in English Tweets
As social concerns about threats of hatred and harassment have grown on the internet, there has been a lot of attention paid to detecting hate speech. This research looks at how well SGD classifiers with hyper-parameter tuning perform at detecting hate speech in tweets. It describes the categorization of English tweets with stochastic gradient descent (SGD) classifiers. The categorization of text documents depends on their content, which is divided into groups based on predefined categories. The Term-Frequency (TF) and Inverse-Document Frequency (IDF) parameters are implemented in the proposed system. A Stochastic Gradient Descent method (SGD) is used to generate classifiers that learn independent features, and performance is assessed using Accuracy and F1-score.
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