使用机器学习技术的网络欺凌检测和仇恨言论识别

Tanmay Agrawal, V. Chakravarthy
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引用次数: 1

摘要

欺凌从一开始就很普遍,只是欺凌的方式在这些年来发生了变化,从身体欺凌到网络欺凌。willard(2004)将网络欺凌分为骚扰、诋毁、模仿等八种类型。社交媒体网站进入人们的视野已经有20年了,但并没有很多有效的措施来遏制社交欺凌,这已经成为近年来令人担忧的问题之一。我们的论文对网络欺凌检测方法进行了分析回顾,并评估了识别社交媒体上仇恨言论的方法。我们的目标是应用传统的监督分类方法以及一些新颖的集成机器学习技术,使用手动注释的开源数据集来实现这一目的。本文对各种监督算法进行了比较研究,包括标准监督算法和集成算法。基于准确度得到的分数对结果的评价表明,集成监督方法具有比传统监督方法更好的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyberbullying Detection and Hate Speech Identification using Machine Learning Techniques
Bullying has been prevalent since the beginning of time, It’s just the ways of bullying that have changed over the years, from physical bullying to cyberbullying. According to Williard (2004), there are eight types of cyberbullying such as harassment, denigration, impersonation, etc. It’s been around 2 decades since social media sites came into the picture, but there haven’t been a lot of effective measures to curb social bullying and it has become one of the alarming issues in recent times.Our paper presents an analytical review of cyberbullying detection approaches and assesses methods to recognize hate speech on social media. We aim to apply traditional supervised classification methods as well as some novel ensemble machine learning techniques using a manually annotated open-source dataset for this purpose. This paper does a comparative study of various Supervised algorithms, including standard, as well as ensemble methods. The evaluations of the result based upon the scores obtained by accuracy shows that Ensemble supervised methods have the potential to perform better than traditional supervised methods.
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