DocumentCode
2730797
Title
Mining Colossal Frequent Patterns by Core Pattern Fusion
Author
Feida Zhu ; Xifeng Yan ; Jiawei Han ; Yu, Philip S. ; Hong Cheng
Author_Institution
Illinois Univ., Urbana, IL, USA
fYear
2007
fDate
15-20 April 2007
Firstpage
706
Lastpage
715
Abstract
Extensive research for frequent-pattern mining in the past decade has brought forth a number of pattern mining algorithms that are both effective and efficient. However, the existing frequent-pattern mining algorithms encounter challenges at mining rather large patterns, called colossal frequent patterns, in the presence of an explosive number of frequent patterns. Colossal patterns are critical to many applications, especially in domains like bioinformatics. In this study, we investigate a novel mining approach called pattern-fusion to efficiently find a good approximation to the colossal patterns. With Pattern-Fusion, a colossal pattern is discovered by fusing its small core patterns in one step, whereas the incremental pattern-growth mining strategies, such as those adopted in Apriori and FP-growth, have to examine a large number of mid-sized ones. This property distinguishes pattern-fusion from all the existing frequent pattern mining approaches and draws a new mining methodology. Our empirical studies show that, in cases where current mining algorithms cannot proceed, pattern-fusion is able to mine a result set which is a close enough approximation to the complete set of the colossal patterns, under a quality evaluation model proposed in this paper.
Keywords
data mining; colossal frequent pattern mining; colossal pattern; core pattern fusion; Approximation algorithms; Association rules; Bioinformatics; Clustering algorithms; Data analysis; Data mining; Explosives; Indexing; Itemsets; Pattern recognition;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Engineering, 2007. ICDE 2007. IEEE 23rd International Conference on
Conference_Location
Istanbul
Print_ISBN
1-4244-0802-4
Type
conf
DOI
10.1109/ICDE.2007.367916
Filename
4221719
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