新冠肺炎相关假新闻的阿拉伯语料库

Djamila Mohdeb, Meriem Laifa, Miloud Naidja
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引用次数: 6

摘要

2020年,我们目睹了一场影响世界各地许多人生活的全民健康危机。随着新冠肺炎疫情的爆发,网络和社交媒体上出现了前所未有的错误信息,导致公众困惑和不恰当的反应。本文对疫情期间假新闻在阿拉伯语内容中的传播进行了研究。我们收集了一个数据集,目的是检测与冠状病毒主题相关的假新闻。该数据集包括从可靠来源提取的阿拉伯假新闻和真实新闻。据我们所知,这是第一个关于2019冠状病毒病阿拉伯错误信息的假新闻数据集。收集的数据进行了探索,然后利用分类基线方法进行假新闻检测任务。结果表明,基线模型具有相当高的性能,支持向量机分类器具有相对优势。
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An Arabic Corpus for Covid-19 related Fake News
In 2020, we have witnessed a universal health crisis that affected the lives of many people around the world. Covid-19 outbreak has been accompanied with an unprecedented wave of misinformation shared on the web and social media leading to confusion and inappropriate public reactions. In this paper, we investigate the fake news spread in Arabic content during the pandemic crisis. We have collected a dataset for the aim of detecting fake news that are related to the coronavirus subject. The dataset includes Arabic fake and true news extracted from reliable sources. To the best of our knowledge, it is the first fake news dataset on Covid-19 Arabic misinformation. The collected data have been explored then exploited for fake news detection task using the classification baseline methods. Results indicated comparable high performance of baseline models with a relative superiority of SVM classifier.
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