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Weighted association rule mining from binary and fuzzy data

Sulaiman Khan, M.; Muyeba, Maybin; Coenen, Frans

Authors

M. Sulaiman Khan

Frans Coenen



Abstract

A novel approach is presented for mining weighted association rules (ARs) from binary and fuzzy data. We address the issue of invalidation of downward closure property (DCP) in weighted association rule mining where each item is assigned a weight according to its significance w.r.t some user defined criteria. Most works on weighted association rule mining so far struggle with invalid downward closure property and some assumptions are made to validate the property. We generalize the weighted association rule mining problem for databases with binary and quantitative attributes with weighted settings. Our methodology follows an Apriori approach [9] and avoids pre and post processing as opposed to most weighted association rule mining algorithms, thus eliminating the extra steps during rules generation. The paper concludes with experimental results and discussion on evaluating the proposed approach.

Presentation Conference Type Conference Paper (published)
Conference Name 8th Industrial Conference, ICDM 2008
Start Date Jul 16, 2008
End Date Jul 18, 2008
Publication Date 2008
Deposit Date Apr 7, 2025
Print ISSN 0302-9743
Publisher Springer Verlag
Peer Reviewed Peer Reviewed
Pages 200-212
Series Title Lecture Notes in Computer Science
Series Number 5077
Book Title Advances in Data Mining. Medical Applications, E-Commerce, Marketing, and Theoretical Aspects
ISBN 978-3-540-70717-2
DOI https://doi.org/10.1007/978-3-540-70720-2_16