Disinformation on the Web: Impact, Characteristics, and Detection of Wikipedia Hoaxes

Srijan Kumar, Robert West, J. Leskovec
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引用次数: 287

Abstract

Wikipedia is a major source of information for many people. However, false information on Wikipedia raises concerns about its credibility. One way in which false information may be presented on Wikipedia is in the form of hoax articles, i.e., articles containing fabricated facts about nonexistent entities or events. In this paper we study false information on Wikipedia by focusing on the hoax articles that have been created throughout its history. We make several contributions. First, we assess the real-world impact of hoax articles by measuring how long they survive before being debunked, how many pageviews they receive, and how heavily they are referred to by documents on the Web. We find that, while most hoaxes are detected quickly and have little impact on Wikipedia, a small number of hoaxes survive long and are well cited across the Web. Second, we characterize the nature of successful hoaxes by comparing them to legitimate articles and to failed hoaxes that were discovered shortly after being created. We find characteristic differences in terms of article structure and content, embeddedness into the rest of Wikipedia, and features of the editor who created the hoax. Third, we successfully apply our findings to address a series of classification tasks, most notably to determine whether a given article is a hoax. And finally, we describe and evaluate a task involving humans distinguishing hoaxes from non-hoaxes. We find that humans are not particularly good at the task and that our automated classifier outperforms them by a big margin.
网络上的虚假信息:维基百科骗局的影响、特征和检测
维基百科是许多人获取信息的主要来源。然而,维基百科上的虚假信息引发了人们对其可信度的担忧。在维基百科上出现虚假信息的一种方式是以恶作剧文章的形式出现的,也就是说,这些文章包含了关于不存在的实体或事件的虚构事实。在本文中,我们通过关注维基百科历史上创建的恶作剧文章来研究维基百科上的虚假信息。我们做了几项贡献。首先,我们通过衡量虚假文章在被揭穿前的存活时间、获得的浏览量以及在网络上被文档引用的次数来评估它们对现实世界的影响。我们发现,虽然大多数骗局被迅速发现,对维基百科的影响很小,但少数骗局存活了很长时间,并在整个网络上被广泛引用。其次,我们通过将成功的骗局与合法文章和在创建后不久发现的失败骗局进行比较,来描述成功骗局的性质。我们在文章结构和内容、嵌入到维基百科的其他部分以及制造骗局的编辑的特征方面发现了特征差异。第三,我们成功地将我们的发现应用于解决一系列分类任务,最显著的是确定给定文章是否为骗局。最后,我们描述和评估一个涉及人类区分恶作剧和非恶作剧的任务。我们发现人类并不是特别擅长这项任务,我们的自动分类器在很大程度上超过了他们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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