Wikipedia and Westminster: Quality and Dynamics of Wikipedia Pages about UK Politicians

Pushkal Agarwal, Miriam Redi, Nishanth R. Sastry, E. Wood, Andrew Blick
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引用次数: 8

Abstract

Wikipedia is a major source of information providing a large variety of content online, trusted by readers from around the world. Readers go to Wikipedia to get reliable information about different subjects, one of the most popular being living people, and especially politicians. While a lot is known about the general usage and information consumption on Wikipedia, less is known about the life-cycle and quality of Wikipedia articles in the context of politics. The aim of this study is to quantify and qualify content production and consumption for articles about politicians, with a specific focus on UK Members of Parliament (MPs). First, we analyze spatio-temporal patterns of readers' and editors' engagement with MPs' Wikipedia pages, finding huge peaks of attention during election times, related to signs of engagement on other social media (e.g. Twitter). Second, we quantify editors' polarisation and find that most editors specialize in a specific party and choose specific news outlets as references. Finally we observe that the average citation quality is pretty high, with statements on 'Early life and career' missing citations most often (18%).
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维基百科和威斯敏斯特:关于英国政治家的维基百科页面的质量和动态
维基百科是提供大量在线内容的主要信息来源,受到世界各地读者的信任。读者去维基百科获取不同主题的可靠信息,其中最受欢迎的是在世的人,尤其是政治家。虽然人们对维基百科的一般用法和信息消费了解很多,但对政治背景下维基百科文章的生命周期和质量知之甚少。本研究的目的是量化和鉴定关于政治家的文章的内容生产和消费,特别关注英国国会议员(MPs)。首先,我们分析了读者和编辑与国会议员维基百科页面互动的时空模式,发现在选举期间出现了巨大的关注高峰,这与其他社交媒体(如Twitter)的互动迹象有关。其次,我们量化了编辑的两极分化,发现大多数编辑专注于特定的政党,并选择特定的新闻媒体作为参考。最后,我们观察到平均引用质量相当高,关于“早期生活和职业”的陈述最常丢失引用(18%)。
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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