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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
Michihiro Kuramochi, University of Minnesota
George Karypis, University of Minnesota
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
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