|
| This Article | ||
| ||
| Share | ||
| Bibliographic References | ||
| Add to: | ||
| | ||
| Search | ||
| ||
2007 Seventh IEEE International Conference on Data Mining
Efficient Discovery of Frequent Approximate Sequential Patterns
Omaha, Nebraska, USA
October 28-October 31
ISBN: 0-7695-3018-4
| ASCII Text | x | ||
| Feida Zhu, Xifeng Yan, Jiawei Han, Philip S. Yu, "Efficient Discovery of Frequent Approximate Sequential Patterns," Data Mining, IEEE International Conference on, pp. 751-756, 2007 Seventh IEEE International Conference on Data Mining, 2007. | |||
| BibTex | x | ||
| @article{ 10.1109/ICDM.2007.75, author = {Feida Zhu and Xifeng Yan and Jiawei Han and Philip S. Yu}, title = {Efficient Discovery of Frequent Approximate Sequential Patterns}, journal ={Data Mining, IEEE International Conference on}, volume = {0}, year = {2007}, issn = {1550-4786}, pages = {751-756}, doi = {http://doi.ieeecomputersociety.org/10.1109/ICDM.2007.75}, publisher = {IEEE Computer Society}, address = {Los Alamitos, CA, USA}, } | |||
| RefWorks Procite/RefMan/Endnote | x | ||
| TY - CONF JO - Data Mining, IEEE International Conference on TI - Efficient Discovery of Frequent Approximate Sequential Patterns SN - 1550-4786 SP751 EP756 A1 - Feida Zhu, A1 - Xifeng Yan, A1 - Jiawei Han, A1 - Philip S. Yu, PY - 2007 VL - 0 JA - Data Mining, IEEE International Conference on ER - | |||
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICDM.2007.75
We propose an efficient algorithm for mining frequent approximate sequential patterns under the Hamming distance model. Our algorithm gains its efficiency by adopting a "break-down-and-build-up" methodology. The "breakdown" is based on the observation that all occurrences of a frequent pattern can be classified into groups, which we call strands. We developed efficient algorithms to quickly mine out all strands by iterative growth. In the "build-up" stage, these strands are grouped up to form the support sets from which all approximate patterns would be identified. A salient feature of our algorithm is its ability to grow the frequent patterns by iteratively assembling building blocks of significant sizes in a local search fashion. By avoiding incremental growth and global search, we achieve greater efficiency without losing the completeness of the mining result. Our experimental studies demonstrate that our algorithm is efficient in mining globally repeating approximate sequential patterns that would have been missed by existing methods.
Citation:
Feida Zhu, Xifeng Yan, Jiawei Han, Philip S. Yu, "Efficient Discovery of Frequent Approximate Sequential Patterns," icdm, pp.751-756, 2007 Seventh IEEE International Conference on Data Mining, 2007
Usage of this product signifies your acceptance of the Terms of Use.
