DocumentCode
1451374
Title
Finding interesting associations without support pruning
Author
Cohen, Edith ; Datar, Mayur ; Fujiwara, Shinji ; Gionis, Aristides ; Indyk, Piotr ; Motwani, Rajeev ; Ullman, Jeffrey D. ; Yang, Cheng
Author_Institution
AT&T Labs.-Res., Florham Park, NJ, USA
Volume
13
Issue
1
fYear
2001
Firstpage
64
Lastpage
78
Abstract
Association-rule mining has heretofore relied on the condition of high support to do its work efficiently. In particular, the well-known a priori algorithm is only effective when the only rules of interest are relationships that occur very frequently. However, there are a number of applications, such as data mining, identification of similar Web documents, clustering, and collaborative filtering, where the rules of interest have comparatively few instances in the data. In these cases, we must look for highly correlated items, or possibly even causal relationships between infrequent items. We develop a family of algorithms for solving this problem, employing a combination of random sampling and hashing techniques. We provide analysis of the algorithms developed and conduct experiments on real and synthetic data to obtain a comparative performance analysis
Keywords
data mining; database theory; software performance evaluation; very large databases; Web documents; association rule mining; causal relationships; collaborative filtering; data mining; experiments; hashing; large databases; performance analysis; random sampling; similarity metric; Algorithm design and analysis; Association rules; Clustering algorithms; Collaborative work; Computer Society; Data mining; Information filtering; Information filters; Performance analysis; Sampling methods;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/69.908981
Filename
908981
Link To Document