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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
| ASCII Text | x | ||
| Michihiro Kuramochi, George Karypis, "GREW-A Scalable Frequent Subgraph Discovery Algorithm," Data Mining, IEEE International Conference on, pp. 439-442, Fourth IEEE International Conference on Data Mining (ICDM'04), 2004. | |||
| BibTex | x | ||
| @article{ 10.1109/ICDM.2004.10024, author = {Michihiro Kuramochi and George Karypis}, title = {GREW-A Scalable Frequent Subgraph Discovery Algorithm}, journal ={Data Mining, IEEE International Conference on}, volume = {0}, year = {2004}, isbn = {0-7695-2142-8}, pages = {439-442}, doi = {http://doi.ieeecomputersociety.org/10.1109/ICDM.2004.10024}, publisher = {IEEE Computer Society}, address = {Los Alamitos, CA, USA}, } | |||
| RefWorks Procite/RefMan/Endnote | x | ||
| TY - CONF JO - Data Mining, IEEE International Conference on TI - GREW-A Scalable Frequent Subgraph Discovery Algorithm SN - 0-7695-2142-8 SP439 EP442 A1 - Michihiro Kuramochi, A1 - George Karypis, PY - 2004 KW - frequent pattern discovery KW - frequent subgraph KW - graph mining VL - 0 JA - Data Mining, IEEE International Conference on ER - | |||
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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