Title :
Multi-level Association Rule Mining Based on Clustering Partition
Author :
Huang Qinglan ; Duan Longzhen
Author_Institution :
Nanchang Univ., Nanchang, China
Abstract :
According to the question of the traditional multi-level association rules mining in large data mining in low efficiency and accuracy, based on clustering classification multi-level association rule mining is proposed. The method is combined with the concept of hierarchical concept, the data of the generalization sets processing, and uses SOFM neural network generalization into the database after the transaction, by way of introducing an internal threshold so no need to set the minimum support threshold, to generate the local frequent item sets as global candidates item sets to generate global frequent item sets, thereby enhancing the efficiency of multi-level association rules and accuracy. And by simulating the case shows that the method can not only efficient mining single-layer and cross-layer association rules, but also the association rules is new, easy to understand and meaningful.
Keywords :
data mining; pattern classification; pattern clustering; self-organising feature maps; SOFM neural network generalization; clustering partition; cross-layer association rules; efficient mining single-layer; generalization sets; global candidates; internal threshold; large data mining; local frequent item sets; multilevel association rule mining; Algorithm design and analysis; Association rules; Clustering algorithms; Itemsets; Neurons; Clustering divided; Multi-level association rules; feature map network (SOFM);
Conference_Titel :
Intelligent System Design and Engineering Applications (ISDEA), 2013 Third International Conference on
Conference_Location :
Hong Kong
Print_ISBN :
978-1-4673-4893-5
DOI :
10.1109/ISDEA.2012.234