Bengali Fake Review Detection using Semi-supervised Generative Adversarial Networks

Q3 Arts and Humanities Icon Pub Date : 2023-03-01 DOI:10.1109/ICNLP58431.2023.00011
Md. Tanvir Rouf Shawon, G. M. Shahariar, F. Shah, Mohammad Shafiul Alam, M. S. Mahbub
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Abstract

This paper investigates the potential of semi-supervised Generative Adversarial Networks (GANs) to fine-tune pretrained language models in order to classify Bengali fake reviews from real reviews with a few annotated data. With the rise of social media and e-commerce, the ability to detect fake or deceptive reviews is becoming increasingly important in order to protect consumers from being misled by false information. Any machine learning model will have trouble identifying a fake review, especially for a low resource language like Bengali. We have demonstrated that the proposed semi-supervised GAN-LM architecture (generative adversarial network on top of a pretrained language model) is a viable solution in classifying Bengali fake reviews as the experimental results suggest that even with only 1024 annotated samples, BanglaBERT with semi-supervised GAN (SSGAN) achieved an accuracy of 83.59% and a f1-score of 84.89% outperforming other pretrained language models - BanglaBERT generator, Bangla BERT Base and BanglaElectra by almost 3%, 4% and 10% respectively in terms of accuracy. The experiments were conducted on a manually labeled food review dataset consisting of total 6014 real and fake reviews collected from various social media groups. Researchers that are experiencing difficulty recognizing not just fake reviews but other classification issues owing to a lack of labeled data may find a solution in our proposed methodology.
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基于半监督生成对抗网络的孟加拉语虚假评论检测
本文研究了半监督生成对抗网络(GANs)对预训练语言模型进行微调的潜力,以便对具有少量注释数据的孟加拉语虚假评论和真实评论进行分类。随着社交媒体和电子商务的兴起,为了保护消费者不被虚假信息误导,检测虚假或欺骗性评论的能力变得越来越重要。任何机器学习模型都难以识别虚假评论,尤其是对于孟加拉语这样的低资源语言。我们已经证明,所提出的半监督GAN- lm架构(基于预训练语言模型的生成对抗网络)是对孟加拉语虚假评论进行分类的可行解决方案,因为实验结果表明,即使只有1024个带注释的样本,具有半监督GAN (SSGAN)的BanglaBERT的准确率为83.59%,得分为84.89%,优于其他预训练语言模型- BanglaBERT生成器。在准确率方面,Bangla BERT Base和BanglaElectra分别提高了近3%、4%和10%。实验是在一个人工标记的食品评论数据集上进行的,该数据集包括从各种社交媒体组收集的6014条真实和虚假评论。由于缺乏标记数据而难以识别虚假评论和其他分类问题的研究人员可能会在我们提出的方法中找到解决方案。
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Icon Arts and Humanities-History and Philosophy of Science
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