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Dynamic Miss COunting Algorithms: Finding Implication and Similarity Rules With COnfidence Pruning

Fujiwara, S. and Motwani, R. and Ullman, J. (1999) Dynamic Miss COunting Algorithms: Finding Implication and Similarity Rules With COnfidence Pruning. In: 15th International Conference on Data Engineering (ICDE 1999), March 23-26, 1999, Sydney, Austrialia.

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Abstract

Dynamic Miss-Counting algorithms are proposed, which nd all implication and similarity rules with condence pruning but without support pruning. To handle data sets with a large number of columns, we propose dynamic pruning techniques that can be applied during data scanning. DMC counts the numbers of rows in which each pair of columns disagree instead of counting the number of hits. DMC deletes a candidate as soon as the number of misses exceeds the maximum number of misses allowed for that pair . We also propose several optimization techniques that reduce the required memory size signicantly. We evaluated our algorithms by using 4 data sets, i.e., Web access logs, Web page-link graph, News documents, and a Dictionary. These data sets have between 74,000 and 700,000 items. Experiments show that DMC can nd high-condence rules for such a large data sets efciently

Item Type:Conference or Workshop Item (Paper)
Uncontrolled Keywords:Data mining, association rule
Subjects:Computer Science > Data Mining
Projects:Information Integration
Related URLs:Project Homepagehttp://infolab.stanford.edu/serf/
ID Code:363
Deposited By:Import Account
Deposited On:25 Feb 2000 16:00
Last Modified:28 Dec 2008 09:02

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