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New algorithms for fast discovery of association rules

Published: 14 August 1997 Publication History

Abstract

Discovery of association rules is an important problem in database mining. In this paper we present new algorithms for fast association mining, which scan the database only once, addressing the open question whether all the rules can be efficiently extracted in a single database pass. The algorithms use novel itemset clustering techniques to approximate the set of potentially maximal frequent itemsets. The algorithms then make use of efficient lattice traversal techniques to generate the frequent itemsets contained in each cluster. We propose two clustering schemes based on equivalence classes and maximal hypergraph cliques, and study two traversal techniques based on bottom-up and hybrid search. We also use a vertical database layout to cluster related transactions together. Experimental results show improvements of over an order of magnitude compared to previous algorithms.

References

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Agrawal, R. & Shafer J. 1996. Parallel mining of association rules. In IEEE Knowledge & Data Engg., 8(6):962-969.
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Agrawal, R.; Mannila, H.; Srikant, R.; Toivonen, H.; & Verkamo, A. 1996. Fast discovery of association rules. In Advances in KDD. MIT Press.
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Holsheimer, M.; Kersten, M.; Mannila, H.; & Toivonen, H. 1995. A perspective on databases and data mining. In 1st KDD Conf.
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Park, J.; Chen, M.; & Yu, P. 1995. An effective hash based algorithm for mining association rules. In SIGMOD Conf.
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Savasere, A.; Omiecinski, E.; and Navathe, S. 1995. An efficient algorithm for mining association rules in large databases. In 21st VLDB Conf
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Toivonen, H. 1996. Sampling large databases for association rules. In 22nd VLDB Conf
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Zaki, M.; Ogihara, M.; Parthasarathy, S.; & Li, W. 1996. Parallel data mining for association rules on shared-memory multi-processors. In Supercomputing.
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Zaki, M.; Parthasarathy, S.; Li, W.; & Ogihara, M. 1997a. Evaluation of sampling for data mining of association rules. In 7th Wkshp. Resrch. Iss. Data Engg.
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Zaki, M.; Parthasarathy, S.; Ogihara, M.; & Li, W. 1997b. New algorithms for fast discovery of association rules. TR 651, OS Dept, Univ. of Rochester.
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Zaki, M.; Parthasarathy, S.; & Li, W. 1997c. A localized algorithm for parallel association mining. In 9th ACM Symp. Parallel Algorithms & Architectures.

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    Published In

    cover image Guide Proceedings
    KDD'97: Proceedings of the Third International Conference on Knowledge Discovery and Data Mining
    August 1997
    308 pages

    Sponsors

    • AAAI: American Association for Artificial Intelligence

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    AAAI Press

    Publication History

    Published: 14 August 1997

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    • (2019)A Survey of Parallel Sequential Pattern MiningACM Transactions on Knowledge Discovery from Data10.1145/331410713:3(1-34)Online publication date: 7-Jun-2019
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