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Graph Isomorphism and Identification Matrices: Sequential Algorithms

机译:图同构和识别矩阵:顺序算法

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A number of properties on identification matrices are presented here. For example, we prove that adjacency matrices are identification matrices for all bipartite graphs. We also study thc application of the theory of identification matrices to solving the graph isomorphism problem, a famous open problem. We show that, given two graphs represented by two identification matrices with respect to a certain relation, isomorphism can be decided efficiently if at least one matrix satisfies the consecutive l's property or a relaxed property thereof Graphs which have identification matrices satisfying the consecutive 1's property include, among others, proper interval graphs and doubly convex bipartite graphs. This work leads to the first efficient isomorphism testing algorithms for certain classes of graphs and more efficient algorithms for some other classes of graphs. The algorithms for some classes of graphs including convex bipartite graphs run in linear time and are optimal.
机译:此处介绍了识别矩阵的许多属性。例如,我们证明了邻接矩阵是所有二部图的识别矩阵。我们还研究了识别矩阵理论在解决图同构问题(一个著名的开放问题)中的应用。我们表明,给定由两个标识矩阵表示的两个图关于某个关系的关系,如果至少一个矩阵满足连续l的特性或其松弛特性,则可以有效地确定同构,其中具有满足连续1的特性的标识矩阵的图包括以及适当的区间图和双凸二分图。这项工作导致了针对某些类别的图的第一个有效的同构测试算法,以及针对某些其他类别的图的更有效的算法。某些类的算法(包括凸二部图)的算法在线性时间内运行,并且是最优的。

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