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Fake News Detection in Microblogging Through Quantifier-Guided Aggregation

机译:通过量化引导聚集的微博的假新闻检测

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Nowadays, big volumes of User-Generated Content (UGC) spread across various kinds of social media. In microblogging, UCG can be generated in the form of 'newsworthy' posts, i.e., related to information that has a public utility for the people. In this context, being the UGC diffused without almost any traditional form of trusted external control, the possibility of incurring in possible fake news is far from remote. For this reason, several approaches for fake news detection in microblogging have been proposed up to now, mostly based on machine learning techniques. In this paper, an ongoing work based on the use of the Multi-Criteria Decision Making (MCDM) paradigm to detect fake news is proposed. The aim is to reduce data dependency in building the model, and to have flexible control over the choices behind the fake news detection process.
机译:如今,大量的用户生成的内容(UGC)分布在各种社交媒体上。在微博中,可以以“新闻购物”帖子的形式生成UCG,即与拥有人民的公共公用事业的信息相关。在这种情况下,作为UGC扩散而没有几乎任何传统的可信外部控制形式,可能会在可能的假新闻中产生的可能性远离遥控器。出于这个原因,已经提出了Microblogging中的若干假新闻检测方法,主要是基于机器学习技术。在本文中,提出了一种基于使用多标准决策(MCDM)范例来检测假新闻的持续的工作。目的是减少建立模型的数据依赖性,并灵活地控制假新闻检测过程背后的选择。

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