Title of article :
Vertical Mining of Frequent Patterns from Uncertain Data
Author/Authors :
Laila A. Abd-Elmegid، نويسنده , , Mohamed E. El-Sharkawi، نويسنده , , Laila M. El-Fangary & Yehia K. Helmy، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
9
From page :
171
To page :
179
Abstract :
Efficient algorithms have been developed for mining frequent patterns in traditional data where the content of each transaction is definitely known. There are many applications that deal with real data sets where the contents of the transactions are uncertain. Limited research work has been dedicated for mining frequent patterns from uncertain data. This is done by extending the state of art horizontal algorithms proposed for mining precise data to be suitable with the uncertainty environment. Vertical mining is a promising approach that is experimentally proved to be more efficient than the horizontal mining. In this paper we extend the state-of-art vertical mining algorithm Eclat for mining frequent patterns from uncertain data producing the proposed UEclat algorithm. In addition, we compared the proposed UEclat algorithm with the UF-growth algorithm. Our experimental results show that the proposed algorithm outperforms the UF-growth algorithm by at least one order of magnitude.
Keywords :
uncertain data , Frequent patterns , Vertical mining , Tidset , Diffset , Association rules , Data mining
Journal title :
Computer and Information Science
Serial Year :
2010
Journal title :
Computer and Information Science
Record number :
678468
Link To Document :
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