Home            Contact us            FAQs
    
      Journal Home      |      Aim & Scope     |     Author(s) Information      |      Editorial Board      |      MSP Download Statistics

     Research Journal of Applied Sciences, Engineering and Technology

    Abstract
2015(Vol.10, Issue:11)
Article Information:

Generating Frequent Patterns from Large Datasets using Improved Apriori and Support Chaining Method

P. Alagesh Kannan and E. Ramaraj
Corresponding Author:  P. Alagesh Kannan 
Submitted: December ‎4, ‎2014
Accepted: April ‎1, ‎2015
Published: August 15, 2015
Abstract:
In this study, generating association rules with improved Apriori algorithm is proposed. Apriori is one of the most popular association rule mining algorithm that extracts frequent item sets from large databases. The traditional Apriori algorithm contains a major drawback. This algorithm wastes time in scanning the database to generate frequent item sets. The objective of any association rule mining algorithm is to generate association rules in a fast manner with great accuracy. In this study, a modification over the traditional Apriori algorithm is introduced. This improved Apriori algorithm searches frequent item sets from the large databases with less time. Experimental results shows that this improved Apriori algorithm reduces the scanning time as much as 67% and this algorithm is more efficient than the existing algorithm.

Key words:  Apriori, ARM, association rule mining, ELCAT, frequent pattern, large datasets, support chaining
Abstract PDF HTML
Cite this Reference:
P. Alagesh Kannan and E. Ramaraj, . Generating Frequent Patterns from Large Datasets using Improved Apriori and Support Chaining Method. Research Journal of Applied Sciences, Engineering and Technology, (11): 1281-1286.
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
Submit Manuscript
   Information
   Sales & Services
Home   |  Contact us   |  About us   |  Privacy Policy
Copyright © 2024. MAXWELL Scientific Publication Corp., All rights reserved