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Hybrid temporal mining for finding out frequent itemsets in temporal databases using clustering and bit vector methods
M. Krishnamurthy, , R. Baskaran, G. Bhuvaneswari
Published in
2011
Volume: 141 CCIS
   
Pages: 245 - 255
Abstract
Hybrid Temporal Pattern Mining was designed to address the problem of discovering frequent patterns of point and interval-based events or both and it is essential in many applications, including market analysis, decision support and business management. Such methodology cannot deal with Clustering, Bit Vector and Variable Threshold. In this paper, we propose a new algorithm called RHTPM (Revised Hybrid Temporal Pattern Mining) to find the frequent temporal pattern based on Clustering, Bit Vector and Variable Threshold. The experiments demonstrate that the proposed algorithm is capable of mining frequent hybrid temporal pattern for effective decision making and has been proved to be significantly good. © 2011 Springer-Verlag.
About the journal
JournalCommunications in Computer and Information Science
ISSN18650929