Deep Learning Techniques For Spamming And Cyberbullying Detection

M. Meenakshi, P. Shyam Babu, V. Hemamalini
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Abstract

Social media allows people to exchange their views on different topics. However, some users post offensive comments on social media, which is known as cyberbullying, and some scam users by posting fake links in the comment section which adversely affects the user experience on those platforms. Thus regulation of contents in social media has become a growing need. The metrics for the regulations can be achieved by detecting these comments using deep learning techniques and machine learning algorithms Gaussian Naive Bayes, Logistic regression, Decision tree classifier, Adaboost classifier, Random forest classifier, MBERT and BERT, Gaussian Naive Bayes, Logistic Regression for cyberbullying and spamming respectively.This paper aims at detecting cyberbullying and spamming with the help of the techniques mentioned above for spamming and cyberbullying detection in English and Tanglish. Furthermore, it compares a number of supervised techniques, including standard and ensemble methods. Ensemble supervised methods have the capability to outperform conventional supervised methods, according to the evaluation of the results. The fine tuned classification BERT model (Bidirectional Encoder Representations from Transformers) and MBERT(Multilingual BERT) are based on Transformers, are used for cyberbullying detection and machine learning algorithms which include Gaussian Naive Bayes and Logistic regression have been used for spam detection. We do a comparative study between deep learning and machine learning algorithms. Compared to machine learning algorithms, deep learning algorithm BERT performed better at detecting spamming comments.
垃圾邮件和网络欺凌检测的深度学习技术
社交媒体允许人们就不同的话题交换意见。然而,一些用户在社交媒体上发表攻击性评论,这被称为网络欺凌,还有一些用户通过在评论区发布虚假链接来欺骗用户,这对这些平台上的用户体验产生了不利影响。因此,对社交媒体内容的监管已经成为一种日益增长的需求。规则的度量可以通过使用深度学习技术和机器学习算法(分别用于网络欺凌和垃圾邮件的高斯朴素贝叶斯、逻辑回归、决策树分类器、Adaboost分类器、随机森林分类器、MBERT和BERT、高斯朴素贝叶斯、逻辑回归)检测这些评论来实现。本文旨在利用上述技术对英语和唐式英语中的垃圾邮件和网络欺凌进行检测。此外,它比较了一些监督技术,包括标准和集成方法。根据对结果的评价,集成监督方法具有优于传统监督方法的能力。微调分类BERT模型(来自变形金刚的双向编码器表示)和MBERT(多语言BERT)基于变形金刚,用于网络欺凌检测,机器学习算法(包括高斯朴素贝叶斯和逻辑回归)已用于垃圾邮件检测。我们对深度学习和机器学习算法进行了比较研究。与机器学习算法相比,深度学习算法BERT在检测垃圾评论方面表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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