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Autori principali: Chowdhury, Arman Sakif, Shahariar, G. M., Aziz, Ahammed Tarik, Alam, Syed Mohibul, Sheikh, Md. Azad, Belal, Tanveer Ahmed
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2307.06979
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author Chowdhury, Arman Sakif
Shahariar, G. M.
Aziz, Ahammed Tarik
Alam, Syed Mohibul
Sheikh, Md. Azad
Belal, Tanveer Ahmed
author_facet Chowdhury, Arman Sakif
Shahariar, G. M.
Aziz, Ahammed Tarik
Alam, Syed Mohibul
Sheikh, Md. Azad
Belal, Tanveer Ahmed
contents With the rise of social media and online news sources, fake news has become a significant issue globally. However, the detection of fake news in low resource languages like Bengali has received limited attention in research. In this paper, we propose a methodology consisting of four distinct approaches to classify fake news articles in Bengali using summarization and augmentation techniques with five pre-trained language models. Our approach includes translating English news articles and using augmentation techniques to curb the deficit of fake news articles. Our research also focused on summarizing the news to tackle the token length limitation of BERT based models. Through extensive experimentation and rigorous evaluation, we show the effectiveness of summarization and augmentation in the case of Bengali fake news detection. We evaluated our models using three separate test datasets. The BanglaBERT Base model, when combined with augmentation techniques, achieved an impressive accuracy of 96% on the first test dataset. On the second test dataset, the BanglaBERT model, trained with summarized augmented news articles achieved 97% accuracy. Lastly, the mBERT Base model achieved an accuracy of 86% on the third test dataset which was reserved for generalization performance evaluation. The datasets and implementations are available at https://github.com/arman-sakif/Bengali-Fake-News-Detection
format Preprint
id arxiv_https___arxiv_org_abs_2307_06979
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Tackling Fake News in Bengali: Unraveling the Impact of Summarization vs. Augmentation on Pre-trained Language Models
Chowdhury, Arman Sakif
Shahariar, G. M.
Aziz, Ahammed Tarik
Alam, Syed Mohibul
Sheikh, Md. Azad
Belal, Tanveer Ahmed
Computation and Language
With the rise of social media and online news sources, fake news has become a significant issue globally. However, the detection of fake news in low resource languages like Bengali has received limited attention in research. In this paper, we propose a methodology consisting of four distinct approaches to classify fake news articles in Bengali using summarization and augmentation techniques with five pre-trained language models. Our approach includes translating English news articles and using augmentation techniques to curb the deficit of fake news articles. Our research also focused on summarizing the news to tackle the token length limitation of BERT based models. Through extensive experimentation and rigorous evaluation, we show the effectiveness of summarization and augmentation in the case of Bengali fake news detection. We evaluated our models using three separate test datasets. The BanglaBERT Base model, when combined with augmentation techniques, achieved an impressive accuracy of 96% on the first test dataset. On the second test dataset, the BanglaBERT model, trained with summarized augmented news articles achieved 97% accuracy. Lastly, the mBERT Base model achieved an accuracy of 86% on the third test dataset which was reserved for generalization performance evaluation. The datasets and implementations are available at https://github.com/arman-sakif/Bengali-Fake-News-Detection
title Tackling Fake News in Bengali: Unraveling the Impact of Summarization vs. Augmentation on Pre-trained Language Models
topic Computation and Language
url https://arxiv.org/abs/2307.06979