Fourth IEEE International Conference on Data Mining (ICDM'04)
GREW-A Scalable Frequent Subgraph Discovery Algorithm
Brighton, United Kingdom
November 01-November 04
ISBN: 0-7695-2142-8
Existing algorithms that mine graph datasets to discover patterns corresponding to frequently occurring subgraphs can operate efficiently on graphs that are sparse, contain a large number of relatively small connected components, have vertices with low and bounded degrees, and contain well-labeled vertices and edges. However, for graphs that do not share these characteristics, these algorithms become highly unscalable. In this paper we present a heuristic algorithm called GREW to overcome the limitations of existing complete or heuristic frequent subgraph discovery algorithms. GREW is designed to operate on a large graph and to find patterns corresponding to connected subgraphs that have a large number of vertex-disjoint embeddings. Our experimental evaluation shows that GREW is efficient, can scale to very large graphs, and find non-trivial patterns.
Index Terms:
frequent pattern discovery, frequent subgraph, graph mining
Citation:
Michihiro Kuramochi, George Karypis, "GREW-A Scalable Frequent Subgraph Discovery Algorithm," icdm, pp.439-442, Fourth IEEE International Conference on Data Mining (ICDM'04), 2004