Logo Goletty

Mining Frequent Subgraph by Incidence Matrix Normalization
Journal Title Journal of Computers
Journal Abbreviation jcp
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
PDF (466 kb)
   
Title Mining Frequent Subgraph by Incidence Matrix Normalization
Authors Chen, Ling; Wu, Jia
Abstract Existing frequent subgraph mining algorithms can operate efficiently on graphs that are sparse, have vertices with low and bounded degrees, and contain welllabeled vertices and edges. However, there are a number of applications that lead to graphs that do not share these characteristics, for which these algorithms highly become inefficient. In this paper we propose a fast algorithm for mining frequent subgraphs in large database of labeled graphs. The algorithm uses incidence matrix to represent the labeled graphs and to detect their isomorphism. Starting from the frequent edges from the graph database, the algorithm searches the frequent subgraphs by adding frequent edges progressively. By normalizing the incidence matrix of the graph, the algorithm can effectively reduce the computational cost on verifying the isomorphism of the subgraphs. Experimental results show that the algorithm has higher speed and efficiency than that of other similar ones.
Publisher ACADEMY PUBLISHER
Date 2008-10-01
Source Journal of Computers Vol 3, No 10 (2008): Special Issue: Selected Best Papers of WKDD 2008 - Track on Intelligent Comput
Rights Copyright © ACADEMY PUBLISHER - All Rights Reserved.To request permission, please check out URL: http://www.academypublisher.com/copyrightpermission.html.

 

See other article in the same Issue


Goletty © 2024