17th International Conference on Pattern Recognition (ICPR'04) - Volume 3 A Probabilistic Approach to Learning Costs for Graph Edit Distance Cambridge UK August 23-August 26 ISBN: 0-7695-2128-2
Graph edit distance provides an error-tolerant way to measure distances between attributed graphs. The effectiveness of edit distance based graph classification algorithms relies on the adequate definition of edit operation costs. We propose a cost inference method that is based on a distribution estimation of edit operations. For this purpose we employ an Expectation Maximization algorithm to learn mixture densities from a labeled sample of graphs and derive edit costs that are subsequently applied in the context of a graph edit distance computation framework. We evaluate the performance of the proposed distance model in comparison to another recently introduced learning model for edit costs.
Citation:
Michel Neuhaus, Horst Bunke, "A Probabilistic Approach to Learning Costs for Graph Edit Distance," icpr, vol. 3, pp.389-393, 17th International Conference on Pattern Recognition (ICPR'04) - Volume 3, 2004 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||