Darwiche et al., 2019 - Google Patents
A local branching heuristic for solving a graph edit distance problemDarwiche et al., 2019
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- 4275638435929064220
- Author
- Darwiche M
- Conte D
- Raveaux R
- t’Kindt V
- Publication year
- Publication venue
- Computers & Operations Research
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Snippet
Abstract The Graph Edit Distance (GED) problem is a very interesting problem that relates to Graph Matching (GM) problems, wherever a graph models a problem-defined pattern. Solving the GED problem leads to compute the matching between two given graphs by …
- 239000000203 mixture 0 abstract description 36
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