网络平台虚假新闻的自动检测:一项调查

Yasmine Lahlou, Sanaa El Fkihi, R. Faizi
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引用次数: 8

摘要

近年来,为了吸引读者,影响舆论,增加网络点击收入,网络上产生了大量假新闻。这种虚假信息的产生已经成为一个世界性的现象,它的影响是臭名昭著的,因为它导致对事实的混淆和导致错误的决策。然而,评估和检测新闻的真实性可能是一项复杂而繁琐的任务。这只是因为迄今为止,大多数关于检测此类新闻的研究,特别是实时新闻的研究,都没有真正的性能。因此,我们在这项工作中的目标是回顾解决这个问题的主要工作。本研究的结果显示,主要有两种方法被提出,即语言和网络。在本文中,我们将尝试引用一套自动检测网络和社交网络上的虚假新闻的方法。
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Automatic detection of fake news on online platforms: A survey
In recent years, a lot of fake news are generated on the web in order to attract readership, influence opinions, and increase internet click revenue. The generation of this false information has become a worldwide phenomenon and its effects are notorious as it leads to confusion over facts and causes wrong decision-making.However, evaluating and detecting the veracity of news can be a complex and cumbersome task. This is simply because most of the studies carried out so far on the detection of such news, especially in real time, are not really performant.. Our objective in this work is, therefore, to review the major works that have addressed this problem. Results of this study have revealed that two major approaches have been put forward, namely linguistic and network. In this article, we will try to quote a set of automatic detection of false news on the web and social networks.
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