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Fast algorithms for mining association rules (1994)

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by Rakesh Agrawal , Ramakrishnan Srikant
Venue:Proc. of 20th Intl. Conf. on VLDB
Citations:2159 - 11 self
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Metadata Version 1

DatumValueSource
TITLE Fast algorithms for mining association rules INFERENCE
AUTHOR NAME Rakesh Agrawal SVM HeaderParse 0.2
AUTHOR AFFIL IBM Almaden Research Center; 650 Harry Road SVM HeaderParse 0.2
AUTHOR ADDR San Jose, CA 95120 SVM HeaderParse 0.2
AUTHOR NAME Ramakrishnan Srikant SVM HeaderParse 0.2
AUTHOR AFFIL IBM Almaden Research Center; 650 Harry Road SVM HeaderParse 0.2
AUTHOR ADDR San Jose, CA 95120 SVM HeaderParse 0.2
ABSTRACT We consider the problem of discovering association rules between items in a large database of sales transactions. We present two new algorithms for solving this problem that are fundamentally di erent from the known algorithms. Experiments with synthetic as well as real-life data show that these algorithms outperform the known algorithms by factors ranging from three for small problems to more than an order of magnitude for large problems. We also show how the best features of the two proposed algorithms can be combined into a hybrid algorithm, called AprioriHybrid. Scale-up experiments show that AprioriHybrid scales linearly with the number of transactions. AprioriHybrid also has excellent scale-up properties with respect to the transaction size and the number of items in the database. 1 SVM HeaderParse 0.2
YEAR 1994 INFERENCE
VENUE Proc. of 20th Intl. Conf. on VLDB INFERENCE
VENUE TYPE CONFERENCE INFERENCE
PAGES 487--499 INFERENCE
CITATIONS 24 found ParsCit 1.0
The National Science Foundation
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