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Efficient Rational Community Detection in Attribute Bipartite Graphs

机译:属性二分图中的高效理性社区检测

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摘要

Bipartite graph is widely used to model the complex relationships among two types of entities. Community detection (CD) is a fundamental tool for graph analysis, which aims to find all or top-k densely connected subgraphs. However, the existing studies about the CD problem usually focus on structure cohesiveness, such as α,β-core, but ignore the attributes within the relationships, which can be modeled as attribute bipartite graphs. Moreover, the returned results usually suffer from rationality issues. To overcome the limitations, in this paper, we introduce a novel metric, named rational score, which takes both preference consistency and community size into consideration to evaluate the community. Based on the proposed rational score and the widely used α,β-core model, we propose and investigate the rational α,β-core detection in attribute bipartite graphs (RCD-ABG), which aims to retrieve the connected α,β-core with the largest rational score. We prove that the problem is NP-hard and the object function is nonmonotonic and non-submodular. To tackle RCD-ABG problem, a basic greedy framework is first proposed. To further improve the quality of returned results, two optimized strategies are further developed. Finally, extensive experiments are conducted on 6 real-world bipartite networks to evaluate the performance of the proposed model and techniques. As shown in experiments, the returned community is significantly better than the result returned by the traditional α,β-core model.
机译:二分图被广泛用于对两种类型的实体之间的复杂关系进行建模。社区检测(CD)是图分析的基本工具,旨在找到所有或top-k密集连接的子图。然而,现有的CD问题研究通常集中在结构内聚性上,如α,β-core,而忽略了关系中的属性,可以建模为属性二分图。此外,返回的结果通常存在合理性问题。为了克服这些局限性,本文引入了一种新的指标,称为理性得分,该指标同时考虑了偏好一致性和社区规模来评估社区。基于所提出的有理得分和广泛使用的α,β核模型,提出并研究了属性二分图中的有理α,β核检测(RCD-ABG),旨在检索具有最大有理分数的连通α,β核。我们证明了问题是NP困难的,对象函数是非单调和非亚模的。为了解决刚果民盟-ABG问题,首先提出了一个基本的贪婪框架。为了进一步提高返回结果的质量,进一步开发了两种优化策略。最后,在6个真实世界的二分网络上进行了大量的实验,以评估所提出的模型和技术的性能。实验表明,返回的社区明显优于传统α,β核模型返回的结果。

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