Modified classic apriori algorithm for association rule mining

In today’s real world environment, information is the most critical element in all aspects of the life. It can be used to perform analysis and it helps to make decision making. But due to large collection of information the analysis and extraction of such useful information is tedious process which...

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Bibliographic Details
Published inInternational journal of engineering & technology (Dubai) Vol. 7; no. 2.21; p. 414
Main Authors Anitha, G, A. Karthika, R, Bindu, G, V. Sriramakrishnan, G
Format Journal Article
LanguageEnglish
Published 20.04.2018
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Summary:In today’s real world environment, information is the most critical element in all aspects of the life. It can be used to perform analysis and it helps to make decision making. But due to large collection of information the analysis and extraction of such useful information is tedious process which will create a major problem. In data mining, Association rules states about associations among the entities of known and unknown group and extracting hidden patterns in the data. Apriori algorithm is used for association rule mining. In this paper, due to limitations in rule condition, the algorithm was extended as new modified classic apriori algorithm which fulfills user stated minimum support and confidence constraints.  
ISSN:2227-524X
2227-524X
DOI:10.14419/ijet.v7i2.21.12455