Enumerating All Subgraphs Under Given Constraints Using Zero-Suppressed Sentential Decision Diagrams

Yu Nakahata, Masaaki Nishino, J. Kawahara, S. Minato
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Abstract

Subgraph enumeration is a fundamental task in computer science. Since the number of subgraphs can be large, some enumeration algorithms exploit compressed representations for efficiency. One such representation is the Zero-suppressed Binary Decision Diagram (ZDD). ZDDs can represent the set of subgraphs compactly and support several poly-time queries, such as counting and random sampling. Researchers have proposed efficient algorithms to construct ZDDs representing the set of subgraphs under several constraints, which yield fruitful results in many applications. Recently, Zero-suppressed Sentential Decision Diagrams (ZSDDs) have been proposed as variants of ZDDs. ZSDDs can be smaller than ZDDs when representing the same set of subgraphs. However, efficient algorithms to construct ZSDDs are known only for specific types of subgraphs: matchings and paths. We propose a novel framework to construct ZSDDs representing sets of subgraphs under given constraints. Using our framework, we can construct ZSDDs representing several sets of subgraphs such as matchings, paths, cycles, and spanning trees. We show the bound of sizes of constructed ZSDDs by the branch-width of the input graph, which is smaller than that of ZDDs by the pathwidth. Experiments show that our methods can construct ZSDDs faster than ZDDs and that the constructed ZSDDs are smaller than ZDDs when representing the same set of subgraphs. 2012 ACM Subject Classification Mathematics of computing → Graph algorithms
用零抑制句子决策图枚举给定约束下的所有子图
子图枚举是计算机科学中的一项基本任务。由于子图的数量可能很大,一些枚举算法利用压缩表示来提高效率。其中一种表示是零抑制二进制决策图(ZDD)。zdd可以紧凑地表示子图集,并支持多个多时间查询,如计数和随机抽样。研究人员提出了一种高效的算法来构造表示多种约束条件下的子图集的zdd,并在许多应用中取得了丰硕的成果。近年来,零抑制句子决策图(ZSDDs)作为句子决策图的变体被提出。当表示相同的子图集时,zsdd可以小于zdd。然而,构建ZSDDs的有效算法只针对特定类型的子图:匹配和路径。我们提出了一种新的框架来构造在给定约束下表示子图集的ZSDDs。使用我们的框架,我们可以构造表示几组子图的zsdd,如匹配、路径、循环和生成树。我们用输入图的分支宽度来表示构造的zdd的大小边界,它比用路径宽度表示的zdd的大小边界要小。实验表明,我们的方法可以比zdd更快地构造ZSDDs,并且在表示相同的子图集时,构造的ZSDDs比zdd小。2012 ACM学科分类:计算数学→图算法
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