3.9 Article

Measuring Similarity between Graphs Based on the Levenshtein Distance

Journal

APPLIED MATHEMATICS & INFORMATION SCIENCES
Volume 7, Issue -, Pages 169-175

Publisher

NATURAL SCIENCES PUBLISHING CORP-NSP
DOI: 10.12785/amis/071L24

Keywords

Graph matching; similarity; depth-first search (DFS); Levenshtein distance

Funding

  1. National Science and Technology Supporting Program of China [2012BAH06F02, 2011BAD21B02]
  2. National Natural Science Foundation of China [61272129]
  3. Ministry of Education of China [20110101110066]

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Graph data has been commonly used and widely researched both in academia and industry for many applications. And measuring similarity between graphs (i.e., graph matching) is the essential step for graph searching, pattern recognition and machine vision. At present, the most widely used approach to address the graph matching problem is graph edit distance (GED). However, the computation complexity of GED is expensive and it takes unacceptable time when the graph becomes larger. Generally, graph could be canonical labeled by some sort of strings and we use the depth-first search (DFS) code as our canonical labeling system. Based on DFS codes, combining the Levenshtein distance (i.e., string edit distance, SED), we proposed a novel method for similarity measurement of graphs. Processing and calculating the distance between two DFS codes, we turned the graph matching problem into string matching, which gains great improvement on the matching performance. The experimental results prove its usefulness.

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