Enumerating Graph Partitions Without Too Small Connected Components Using Zero-suppressed Binary and Ternary Decision Diagrams

Yu Nakahata, J. Kawahara, S. Kasahara
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引用次数: 1

Abstract

Partitioning a graph into balanced components is important for several applications. For multi-objective problems, it is useful not only to find one solution but also to enumerate all the solutions with good values of objectives. However, there are a vast number of graph partitions in a graph, and thus it is difficult to enumerate desired graph partitions efficiently. In this paper, an algorithm to enumerate all the graph partitions such that all the weights of the connected components are at least a specified value is proposed. To deal with a large search space, we use zero-suppressed binary decision diagrams (ZDDs) to represent sets of graph partitions and we design a new algorithm based on frontier-based search, which is a framework to directly construct a ZDD. Our algorithm utilizes not only ZDDs but also ternary decision diagrams (TDDs) and realizes an operation which seems difficult to be designed only by ZDDs. Experimental results show that the proposed algorithm runs up to tens of times faster than an existing state-of-the-art algorithm.
用零抑制二值和三值决策图枚举没有太小连通分量的图分区
将图划分为平衡的组件对于许多应用程序都很重要。对于多目标问题,不仅要找到一个解,而且要列举出所有具有良好目标值的解。然而,由于图中存在大量的图分区,因此很难有效地枚举所需的图分区。本文提出了一种枚举所有图分区的算法,使得所有连通分量的权重至少为一个指定值。为了处理较大的搜索空间,我们使用零抑制二进制决策图(zero- suppression binary decision diagram, ZDD)来表示图分区集,并设计了一种基于边界搜索的新算法,该算法是直接构造ZDD的框架。该算法不仅利用了三元决策图(tdd),而且还利用了三元决策图(tdd),实现了仅用三元决策图难以设计的操作。实验结果表明,该算法的运行速度比现有最先进的算法快几十倍。
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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