大图中最小Steiner最大连通子图的查询

Jiafeng Hu, Xiaowei Wu, Reynold Cheng, Siqiang Luo, Yixiang Fang
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引用次数: 44

摘要

给定一个图G和一组查询节点Q,我们研究了Steiner最大连通子图(SMCS)。SMCS,或G的诱导子图,其中包含具有最大连通性的Q,可用于客户预测、产品推广和团队组装。尽管它很重要,但SMCS问题直到最近才得到研究。现有的解决方案评估最大的SMCS,其节点数量是q的所有SMCS中最大的,但是最大的SMCS可能包含很多节点,很难解释。在本文中,我们研究了最小的SMCS,即包含q的最大连通性的G的最小子图。最小的SMCS所包含的节点比最大的SMCS所包含的节点少得多,因此更容易理解。然而,最小的SMCS的评估成本可能很高。因此,我们提出了有效的扩展-精炼算法,以及具有精度保证的近似版本。在六个大型真实图形数据集上的大量实验验证了我们方法的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Querying Minimal Steiner Maximum-Connected Subgraphs in Large Graphs
Given a graph G and a set Q of query nodes, we examine the Steiner Maximum-Connected Subgraph (SMCS). The SMCS, or G's induced subgraph that contains Q with the largest connectivity, can be useful for customer prediction, product promotion, and team assembling. Despite its importance, the SMCS problem has only been recently studied. Existing solutions evaluate the maximum SMCS, whose number of nodes is the largest among all the SMCSs of Q. However, the maximum SMCS, which may contain a lot of nodes, can be difficult to interpret. In this paper, we investigate the minimal SMCS, which is the minimal subgraph of G with the maximum connectivity containing Q. The minimal SMCS contains much fewer nodes than its maximum counterpart, and is thus easier to be understood. However, the minimal SMCS can be costly to evaluate. We thus propose efficient Expand-Refine algorithms, as well as their approximate versions with accuracy guarantees. Extensive experiments on six large real graph datasets validate the effectiveness and efficiency of our approaches.
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