Finding Subgraphs with Maximum Total Density and Limited Overlap

Oana Balalau, F. Bonchi, T-H. Hubert Chan, Francesco Gullo, Mauro Sozio
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引用次数: 77

Abstract

Finding dense subgraphs in large graphs is a key primitive in a variety of real-world application domains, encompassing social network analytics, event detection, biology, and finance. In most such applications, one typically aims at finding several (possibly overlapping) dense subgraphs which might correspond to communities in social networks or interesting events. While a large amount of work is devoted to finding a single densest subgraph, perhaps surprisingly, the problem of finding several dense subgraphs with limited overlap has not been studied in a principled way, to the best of our knowledge. In this work we define and study a natural generalization of the densest subgraph problem, where the main goal is to find at most $k$ subgraphs with maximum total aggregate density, while satisfying an upper bound on the pairwise Jaccard coefficient between the sets of nodes of the subgraphs. After showing that such a problem is NP-Hard, we devise an efficient algorithm that comes with provable guarantees in some cases of interest, as well as, an efficient practical heuristic. Our extensive evaluation on large real-world graphs confirms the efficiency and effectiveness of our algorithms.
寻找具有最大总密度和有限重叠的子图
在大图中寻找密集子图是各种现实世界应用领域的关键要素,包括社会网络分析、事件检测、生物学和金融。在大多数这样的应用程序中,一个典型的目标是找到几个(可能重叠的)密集子图,这些子图可能对应于社交网络中的社区或有趣的事件。虽然大量的工作致力于寻找单个最密集的子图,但也许令人惊讶的是,据我们所知,寻找具有有限重叠的几个密集子图的问题并没有以原则性的方式进行研究。在这项工作中,我们定义并研究了最密集子图问题的自然推广,其主要目标是找到最多$k$具有最大总聚集密度的子图,同时满足子图节点集之间成对Jaccard系数的上界。在展示了这样的问题是NP-Hard之后,我们设计了一个有效的算法,该算法在某些感兴趣的情况下具有可证明的保证,以及一个有效的实用启发式。我们对大型真实世界图形的广泛评估证实了我们算法的效率和有效性。
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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