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首页> 外文期刊>PeerJ Computer Science >Supervised ensemble learning methods towards automatically filtering Urdu fake news within social media
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Supervised ensemble learning methods towards automatically filtering Urdu fake news within social media

机译:监督集合学习方法,可以在社交媒体中自动过滤乌尔都语假新闻

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The popularity of the internet, smartphones, and social networks has contributed to the proliferation of misleading information like fake news and fake reviews on news blogs, online newspapers, and e-commerce applications. Fake news has a worldwide impact and potential to change political scenarios, deceive people into increasing product sales, defaming politicians or celebrities, and misguiding visitors to stop visiting a place or country. Therefore, it is vital to find automatic methods to detect fake news online. In several past studies, the focus was the English language, but the resource-poor languages have been completely ignored because of the scarcity of labeled corpus. In this study, we investigate this issue in the Urdu language. Our contribution is threefold. First, we design an annotated corpus of Urdu news articles for the fake news detection tasks. Second, we explore three individual machine learning models to detect fake news. Third, we use five ensemble learning methods to ensemble the base-predictors’ predictions to improve the fake news detection system’s overall performance. Our experiment results on two Urdu news corpora show the superiority of ensemble models over individual machine learning models. Three performance metrics balanced accuracy, the area under the curve, and mean absolute error used to find that Ensemble Selection and Vote models outperform the other machine learning and ensemble learning models.
机译:互联网,智能手机和社交网络的普及是对误导信息的扩散,如假新闻和虚假评论,在新闻博客,在线报纸和电子商务应用程序上。假新闻具有全球影响和改变政治情景的潜力,欺骗人们越来越多的产品销售,诽谤政治家或名人,以及误导访客停止访问一个地方或国家。因此,找到在线检测假新闻的自动方法至关重要。在过去的几个研究中,重点是英语,但由于标记的语料库的稀缺性,资源差的语言已经完全忽略。在这项研究中,我们调查乌尔都语语言中的这个问题。我们的贡献是三倍。首先,我们为假新闻检测任务设计乌尔都语新闻文章的注释语料库。其次,我们探索三种单独的机器学习模型来检测假新闻。第三,我们使用五个集合学习方法来集成基本预测的预测,以改善假新闻检测系统的整体性能。我们的实验结果在两个乌尔都语新闻Corpora上显示了各种机器学习模型的集合模型的优越性。三种性能度量均衡精度,曲线下的区域,以及用于找到集合选择和投票模型的平均值误差优于另一个机器学习和集合学习模型。

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