CompDP: A Framework for Simultaneous Subgraph Counting Under Connectivity Constraints

Kengo Nakamura, Masaaki Nishino, Norihito Yasuda, S. Minato
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Abstract

The subgraph counting problem computes the number of subgraphs of a given graph that satisfy some constraints. Among various constraints imposed on a graph, those regarding the connectivity of vertices, such as “these two vertices must be connected,” have great importance since they are indispensable for determining various graph substructures, e.g., paths, Steiner trees, and rooted spanning forests. In this view, the subgraph counting problem under connectivity constraints is also important because counting such substructures often corresponds to measuring the importance of a vertex in network infrastructures. However, we must solve the subgraph counting problems multiple times to compute such an importance measure for every vertex. Conventionally, they are solved separately by constructing decision diagrams such as BDD and ZDD for each problem. However, even solving a single subgraph counting is a computationally hard task, preventing us from solving it multiple times in a reasonable time. In this paper, we propose a dynamic programming framework that simultaneously counts subgraphs for every vertex by focusing on similar connectivity constraints. Experimental results show that the proposed method solved multiple subgraph counting problems about 10–20 times faster than the existing approach for many problem settings.
CompDP:一种连通性约束下的同时子图计数框架
子图计数问题计算给定图中满足某些约束的子图的个数。在对图施加的各种约束中,关于顶点的连通性的约束,例如“这两个顶点必须连接”,非常重要,因为它们对于确定各种图的子结构(例如路径、斯坦纳树和有根的生成森林)是必不可少的。在这种观点下,连通性约束下的子图计数问题也很重要,因为计算这样的子结构通常对应于测量网络基础设施中顶点的重要性。然而,我们必须多次解决子图计数问题来计算每个顶点的重要性度量。通常,通过为每个问题构建决策图(如BDD和ZDD)来分别解决它们。然而,即使解决单个子图计数也是一项计算困难的任务,这使我们无法在合理的时间内多次解决它。在本文中,我们提出了一个动态规划框架,通过关注相似的连通性约束,同时对每个顶点的子图进行计数。实验结果表明,对于许多问题设置,该方法解决多子图计数问题的速度比现有方法快10-20倍。
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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