特征维基百科页面使用编辑网络主题配置文件

SMUC '11 Pub Date : 2011-10-28 DOI:10.1145/2065023.2065036
Guangyu Wu, Martin Harrigan, P. Cunningham
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引用次数: 52

摘要

好的维基百科文章是权威的来源,这要归功于许多知识渊博的贡献者的合作。这就是多眼理论。与维基百科文章相关的编辑网络可以告诉我们它的质量或权威性。在本文中,我们探讨了这个编辑网络的特征可以预测相应文章内容质量的假设。我们使用网络基序配置文件来描述编辑网络,并表明该网络基序配置文件可以预测维基百科编辑分配给文章的维基百科质量类。我们进一步表明,网络基序配置文件可以识别异常文章,特别是在“特色文章”类中,这是维基百科质量最高的类。
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Characterizing Wikipedia pages using edit network motif profiles
Good Wikipedia articles are authoritative sources due to the collaboration of a number of knowledgeable contributors. This is the many eyes idea. The edit network associated with a Wikipedia article can tell us something about its quality or authoritativeness. In this paper we explore the hypothesis that the characteristics of this edit network are predictive of the quality of the corresponding article's content. We characterize the edit network using a profile of network motifs and we show that this network motif profile is predictive of the Wikipedia quality classes assigned to articles by Wikipedia editors. We further show that the network motif profile can identify outlier articles particularly in the 'Featured Article' class, the highest Wikipedia quality class.
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