DocumentCode
2677009
Title
Constraint-based rule mining in large, dense databases
Author
Bayardo, Roberto J., Jr. ; Agrawal, Rakesh ; Gunopulos, Dimitrios
Author_Institution
IBM Almaden Res. Center, San Jose, CA, USA
fYear
1999
fDate
23-26 Mar 1999
Firstpage
188
Lastpage
197
Abstract
Constraint-based rule miners find all rules in a given dataset meeting user-specified constraints such as minimum support and confidence. We describe a new algorithm that directly exploits all user-specified constraints including minimum support, minimum confidence, and a new constraint that ensures every mined rule offers a predictive advantage over any of its simplifications. Our algorithm maintains efficiency even at low supports on data that is dense (e.g. relational data). Previous approaches such as Apriori and its variants exploit only the minimum support constraint, and as a result are ineffective on dense data date to a combinatorial explosion of “frequent itemsets”
Keywords
constraint handling; data mining; very large databases; algorithm; constraint-based rule mining; dataset; large dense databases; minimum confidence; minimum support; predictive advantage; relational data; user-specified constraints; Association rules; Dairy products; Data mining; Databases; Decision trees; Electrical capacitance tomography; Explosions; Failure analysis; Itemsets; Proposals;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Engineering, 1999. Proceedings., 15th International Conference on
Conference_Location
Sydney, NSW
ISSN
1063-6382
Print_ISBN
0-7695-0071-4
Type
conf
DOI
10.1109/ICDE.1999.754924
Filename
754924
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