Towards Community Discovery in Signed Collaborative Interaction Networks

Petko Bogdanov, Nicholas D. Larusso, Ambuj K. Singh
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引用次数: 17

Abstract

—We propose a framework for discovery of collaborative community structure in Wiki-based knowledge repositories based on raw-content generation analysis. We leverage topic modelling in order to capture agreement and opposition of contributors and analyze these multi-modal relations to map communities in the contributor base. The key steps of our approach include (i) modeling of pair wise variable-strength contributor interactions that can be both positive and negative, (ii) synthesis of a global network incorporating all pair wise interactions, and (iii) detection and analysis of community structure encoded in such networks. The global community discovery algorithm we propose outperforms existing alternatives in identifying coherent clusters according to objective optimality criteria. Analysis of the discovered community structure reveals coalitions of common interest editors who back each other in promoting some topics and collectively oppose other coalitions or single authors. We couple contributor interactions with content evolution and reveal the global picture of opposing themes within the self-regulated community base for both controversial and featured articles in Wikipedia.
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面向签名协作交互网络中的社区发现
我们提出了一个基于原始内容生成分析的框架,用于在基于维基的知识库中发现协作社区结构。我们利用主题建模来捕捉贡献者的同意和反对,并分析这些多模态关系,以映射贡献者库中的社区。我们的方法的关键步骤包括(i)建模对明智的可变强度贡献者相互作用,可以是积极的和消极的,(ii)合成一个包含所有对明智的相互作用的全球网络,以及(iii)检测和分析编码在这些网络中的社区结构。我们提出的全局社区发现算法在根据客观最优性标准识别相干簇方面优于现有的替代算法。对发现的社区结构的分析揭示了共同利益编辑的联盟,他们在推动某些主题时相互支持,集体反对其他联盟或单个作者。我们将贡献者的互动与内容的演变结合起来,并揭示了维基百科中有争议和特色文章的自我监管社区基础中对立主题的全球图景。
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