VAC: Vertex-Centric Attributed Community Search

Qing Liu, Yifan Zhu, Minjun Zhao, Xin Huang, Jianliang Xu, Yunjun Gao
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引用次数: 42

Abstract

Attributed community search aims to find the community with strong structure and attribute cohesiveness from attributed graphs. However, existing works suffer from two major limitations: (i) it is not easy to set the conditions on query attributes; (ii) the queries support only a single type of attributes. To make up for these deficiencies, in this paper, we study a novel attributed community search called vertex-centric attributed community (VAC) search. Given an attributed graph and a query vertex set, the VAC search returns the community which is densely connected (ensured by the k-truss model) and has the best attribute score. We show that the problem is NP-hard. To answer the VAC search, we develop both exact and approximate algorithms. Specifically, we develop two exact algorithms. One searches the community in a depth-first manner and the other is in a best-first manner. We also propose a set of heuristic strategies to prune the unqualified search space by exploiting the structure and attribute properties. In addition, to further improve the search efficiency, we propose a 2-approximation algorithm. Comprehensive experimental studies on various realworld attributed graphs demonstrate the effectiveness of the proposed model and the efficiency of the developed algorithms.
以顶点为中心的属性社区搜索
属性社区搜索旨在从属性图中寻找具有较强结构和属性内聚性的社区。但是,现有的工作存在两大局限性:(1)查询属性设置条件不方便;(ii)查询只支持单一类型的属性。为了弥补这些不足,本文研究了一种新的属性社区搜索方法——以顶点为中心的属性社区搜索。给定一个属性图和一个查询顶点集,VAC搜索返回紧密连接(由k-truss模型保证)并且具有最佳属性得分的社区。我们证明了这个问题是np困难的。为了回答VAC搜索,我们开发了精确和近似算法。具体来说,我们开发了两种精确的算法。一个以深度优先的方式搜索社区,另一个以最佳优先的方式搜索社区。我们还提出了一套启发式策略,利用结构和属性属性来修剪不合格的搜索空间。此外,为了进一步提高搜索效率,我们提出了一种2逼近算法。对各种真实属性图的综合实验研究证明了所提出模型的有效性和所开发算法的效率。
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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