An Efficient Deep Learning Technique for Bangla Fake News Detection

M. Rahman, Faisal Bin Ashraf, Md Rayhan Kabir
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Abstract

People connect with a plethora of information from many online portals due to the availability and ease of access to the internet and electronic communication devices. However, news portals sometimes abuse press freedom by manipulating facts. Most of the time, people are unable to discriminate between true and false news. It is difficult to avoid the detrimental impact of Bangla fake news from spreading quickly through online channels and influencing people’s judgment. In this work, we investigated many real and false news pieces in Bangla to discover a common pattern for determining if an article is disseminating incorrect information or not. We developed a deep learning model that was trained and validated on our selected dataset. For learning, the dataset contains 48,678 legitimate news and 1,299 fraudulent news. To deal with the imbalanced data, we used random undersampling and then ensemble to achieve the combined output. In terms of Bangla text processing, our proposed model achieved an accuracy of 98.29% and a recall of 99%.
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一种高效的孟加拉语假新闻检测深度学习技术
由于互联网和电子通信设备的可用性和易用性,人们可以从许多在线门户网站获取大量信息。但是,新闻门户网站有时会歪曲事实,滥用言论自由。大多数时候,人们无法区分真实和虚假的新闻。孟加拉假新闻通过网络渠道迅速传播,影响人们的判断,这是难以避免的有害影响。在这项工作中,我们调查了孟加拉国的许多真实和虚假新闻,以发现确定文章是否传播不正确信息的共同模式。我们开发了一个深度学习模型,并在我们选择的数据集上进行了训练和验证。在学习方面,数据集包含48,678条合法新闻和1,299条虚假新闻。为了处理不平衡数据,我们采用随机欠采样和集成的方法来实现组合输出。在孟加拉语文本处理方面,我们提出的模型达到了98.29%的准确率和99%的召回率。
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