IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Efficient Implementations for UWEP Incremental Frequent Itemset Mining Algorithm

Efficient Implementations for UWEP Incremental Frequent Itemset Mining Algorithm
View Sample PDF
Author(s): Mehmet Bicer (Graduate Center, City University of New York, USA), Daniel Indictor (Columbia University, USA), Ryan Yang (Massachusetts Institute of Technology, USA)and Xiaowen Zhang (College of Staten Island, City University of New York, USA)
Copyright: 2021
Volume: 11
Issue: 1
Pages: 20
Source title: International Journal of Applied Logistics (IJAL)
Editor(s)-in-Chief: Lincoln C. Wood (University of Otago, New Zealand & Curtin University, Australia)
DOI: 10.4018/IJAL.2021010102

Purchase

View Efficient Implementations for UWEP Incremental Frequent Itemset Mining Algorithm on the publisher's website for pricing and purchasing information.

Abstract

Association rule mining is a common technique used in discovering interesting frequent patterns in data acquired in various application domains. The search space combinatorically explodes as the size of the data increases. Furthermore, the introduction of new data can invalidate old frequent patterns and introduce new ones. Hence, while finding the association rules efficiently is an important problem, maintaining and updating them is also crucial. Several algorithms have been introduced to find the association rules efficiently. One of them is Apriori. There are also algorithms written to update or maintain the existing association rules. Update with early pruning (UWEP) is one such algorithm. In this paper, the authors propose that in certain conditions it is preferable to use an incremental algorithm as opposed to the classic Apriori algorithm. They also propose new implementation techniques and improvements to the original UWEP paper in an algorithm we call UWEP2. These include the use of memorization and lazy evaluation to reduce scans of the dataset.

Related Content

George Maramba, Hanlie Smuts, Marie Hattingh, Funmi Adebesin, Harry Moongela, Tendani Mawela, Rexwhite Enakrire. © 2024. 24 pages.
Wenfeng Niu, Miaomiao Fan. © 2024. 17 pages.
Airong Zhang. © 2024. 20 pages.
Chunrong Ni, Katarzyna Dohn. © 2024. 14 pages.
Ying Wang. © 2024. 18 pages.
Yao Wang, Zhijie Kang. © 2024. 16 pages.
Linran Sun, Nojun Kwak. © 2024. 19 pages.
Body Bottom