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Further pruning for efficient association rule discovery

conference contribution
posted on 2001-01-01, 00:00 authored by S Zhang, G Webb
The Apriori algorithm’s frequent itemset approach has become the standard approach to discovering association rules. However, the computation requirements of the frequent itemset approach are infeasible for dense data and the approach is unable to discover infrequent associations. OPUS AR is an efficient algorithm for association rule discovery that does not utilize frequent itemsets and hence avoids these problems. It can reduce search time by using additional constraints on the search space as well as constraints on itemset frequency. However, the effectiveness of the pruning rules used during search will determine the efficiency of its search. This paper presents and analyses pruning rules for use with OPUS AR. We demonstrate that application of OPUS AR is feasible for a number of datasets for which application of the frequent itemset approach is infeasible and that the new pruning rules can reduce compute time by more than 40%.

History

Pagination

605 - 618

Location

Adelaide, S.Aust.

Start date

2001-12-10

End date

2001-12-14

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2001, Springer

Editor/Contributor(s)

D Corbett, M Brooks, M Stumpter

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