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Bipartite Graph Matching for Computing the Edit Distance of Graphs

机译:二部图匹配,用于计算图的编辑距离

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摘要

In the field of structural pattern recognition graphs constitute a very common and powerful way of representing patterns. In contrast to string representations, graphs allow us to describe relational information in the patterns under consideration. One of the main drawbacks of graph representations is that the computation of standard graph similarity measures is exponential in the number of involved nodes. Hence, such computations are feasible for rather small graphs only. One of the most flexible error-tolerant graph similarity measures is based on graph edit distance. In this paper we propose an approach for the efficient com-puation of edit distance based on bipartite graph matching by means of Munkres' algorithm, sometimes referred to as the Hungarian algorithm. Our proposed algorithm runs in polynomial time, but provides only sub-optimal edit distance results. The reason for its suboptimality is that implied edge operations are not considered during the process of finding the optimal node assignment. In experiments on semi-artificial and real data we demonstrate the speedup of our proposed method over a traditional tree search based algorithm for graph edit distance computation. Also we show that classification accuracy remains nearly unaffected.
机译:在结构模式识别领域,图形构成了一种非常常见且功能强大的表示模式的方式。与字符串表示法相反,图形允许我们在所考虑的模式中描述关系信息。图表示的主要缺点之一是标准图相似性度量的计算在所涉及节点的数量上是指数级的。因此,这样的计算仅对于相当小的图是可行的。最灵活的容错图相似度度量之一是基于图编辑距离的。在本文中,我们提出了一种利用Munkres算法(有时称为匈牙利算法)基于二部图匹配的有效计算编辑距离的方法。我们提出的算法在多项式时间内运行,但仅提供次佳的编辑距离结果。其次优的原因是在寻找最佳节点分配的过程中未考虑隐式边缘操作。在半人工和真实数据的实验中,我们证明了所提出的方法比基于树的传统搜索算法进行图形编辑距离计算的速度更快。我们还表明分类准确性几乎不受影响。

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