Title :
Mining frequent itemsets with convertible constraints
Author :
Pei, Jian ; Han, Jiawei ; Lakshmanan, Laks V S
Author_Institution :
Simon Fraser Univ., Burnaby, BC, Canada
Abstract :
Recent work has highlighted the importance of the constraint based mining paradigm in the context of frequent itemsets, associations, correlations, sequential patterns, and many other interesting patterns in large databases. The authors study constraints which cannot be handled with existing theory and techniques. For example, avg(S) θ ν, median(S) θ ν, sum(S) θ ν (S can contain items of arbitrary values) (θ∈{⩾, ⩽}), are customarily regarded as “tough” constraints in that they cannot be pushed inside an algorithm such as a priori. We develop a notion of convertible constraints and systematically analyze, classify, and characterize this class. We also develop techniques which enable them to be readily pushed deep inside the recently developed FP-growth algorithm for frequent itemset mining. Results from our detailed experiments show the effectiveness of the techniques developed
Keywords :
constraint handling; data mining; pattern recognition; very large databases; FP-growth algorithm; arbitrary values; constraint based mining paradigm; convertible constraints; frequent itemset mining; large databases; sequential patterns; tough constraints; Arithmetic; Association rules; Constraint optimization; Constraint theory; Councils; Data mining; Databases; Itemsets; Pattern recognition;
Conference_Titel :
Data Engineering, 2001. Proceedings. 17th International Conference on
Conference_Location :
Heidelberg
Print_ISBN :
0-7695-1001-9
DOI :
10.1109/ICDE.2001.914856