基于堆叠加权集成(SWE)模型的Twitter仇恨语音检测

Sujatha Arun Kokatnoor, Balachandran Krishnan
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引用次数: 4

摘要

网络社交媒体扩大了互联网上的言论自由,如果影响到一个国家的局势或利益,这将成为一个令人不安的问题。仇恨言论是指使用敌对的、辱骂性的或攻击性的语言,针对拥有共同财产的某一群体,无论其性别、民族或种族(即种族主义)、信仰和宗教。因此,仇恨言论的自动检测在在线社交媒体中越来越重要,因为它可以在发布到网络之前过滤任何含有仇恨语言的信息。本文提出了一种用于仇恨言论检测的堆叠加权集成(SWE)模型。该模型集成了五个独立分类器:线性回归,Naïve贝叶斯,随机森林,硬投票和软投票。在Twitter®数据集上的实验结果显示,将推文分类为仇恨言论的二元分类准确率为95.54%,与独立分类器相比,性能有所提高。
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Twitter Hate Speech Detection using Stacked Weighted Ensemble (SWE) Model
Online Social Media has expanded the freedom of expression in the internet, which has become a disturbing problem if it has an impact on the situation or the interest of a country. Hate speech refers to the use of hostile, abusive or offensive language, directed at a certain group of people who share common property, whether it is their gender, ethnicity or race (i.e. racism), faith and religion. Therefore, auto detection of hate speeches has an increased importance in Online Social Media for filtering any message that has hatred language before posting it to the network. In this paper, a Stacked Weighted Ensemble (SWE) model is proposed for the detection of hate speeches. The model ensembles five standalone classifiers: Linear Regression, Naïve Bayes’, Random Forest, Hard Voting and Soft Voting. The experimental results on a Twitter® dataset has shown an accuracy of 95.54% in binary classification of tweets into hateful speech and an improved performance is noted compared to the standalone classifiers.
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