Deep Learning Based Cyberbullying Detection in Bangla Language

Sristy Shidul Nath, Razuan Karim, Mahdi H. Miraz
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Abstract

The Internet is currently the largest platform for global communication including expressions of opinions, reviews, contents, images, videos and so forth. Moreover, social media has now become a very broad and highly engaging platform due to its immense popularity and swift adoption trend. Increased social networking, however, also has detrimental impacts on the society leading to a range of unwanted phenomena, such as online assault, intimidation, digital bullying, criminality and trolling. Hence, cyberbullying has become a pervasive and worrying problem that poses considerable psychological and emotional harm to the people, particularly amongst the teens and the young adults. In order to lessen its negative effects and provide victims with prompt support, a great deal of research to identify cyberbullying instances at various online platforms is emerging. In comparison to other languages, Bangla (also known as Bengali) has fewer research studies in this domain. This study demonstrates a deep learning strategy for identifying cyberbullying in Bengali, using a dataset of 12282 versatile comments from multiple social media sites. In this study, a two-layer bidirectional long short-term memory (Bi-LSTM) model has been built to identify cyberbullying, using a variety of optimisers as well as 5-fold cross validation. To evaluate the functionality and efficacy of the proposed system, rigorous assessment and validation procedures have been employed throughout the project. The results of this study reveals that the proposed model’s accuracy, using momentum-based stochastic gradient descent (SGD) optimiser, is 94.46%. It also reflects a higher accuracy of 95.08% and a F1 score of 95.23% using Adam optimiser as well as a better accuracy of 94.31% in 5-fold cross validation.
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基于深度学习的孟加拉语网络欺凌检测
互联网是目前全球最大的交流平台,包括意见表达、评论、内容、图片、视频等。此外,社交媒体因其巨大的受欢迎程度和迅速采用的趋势,现已成为一个非常广泛和极具吸引力的平台。然而,社交网络的发展也对社会产生了不利影响,导致了一系列不受欢迎的现象,如网络攻击、恐吓、数字欺凌、犯罪和嘲弄。因此,网络欺凌已成为一个普遍存在且令人担忧的问题,对人们的心理和情感造成了相当大的伤害,尤其是在青少年和年轻成年人中。为了减少网络欺凌的负面影响并为受害者提供及时的支持,大量旨在识别各种网络平台上的网络欺凌事件的研究正在兴起。与其他语言相比,孟加拉语在这一领域的研究较少。本研究利用来自多个社交媒体网站的 12282 条多功能评论数据集,展示了一种识别孟加拉语网络欺凌的深度学习策略。在这项研究中,我们建立了一个双层双向长短期记忆(Bi-LSTM)模型,利用各种优化器和 5 倍交叉验证来识别网络欺凌。为了评估所建议系统的功能和功效,整个项目采用了严格的评估和验证程序。研究结果表明,使用基于动量的随机梯度下降(SGD)优化器,建议模型的准确率为 94.46%。使用亚当优化器时,准确率为 95.08%,F1 分数为 95.23%,在 5 倍交叉验证中的准确率为 94.31%。
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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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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