International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064


Downloads: 120

Research Proposals or Synopsis | Computer Science & Engineering | India | Volume 3 Issue 8, August 2014


Study of Optimization in Fragmented Item-sets for Business Intelligence

Rajesh V. Argiddi [2] | Bhagyashri U. Kale


Abstract: Association Rule is one of the techniques in the process data mining problems and it might be the most researched one. Some of them has developed fragment rule mining which is based on associations among large data set. Discovering item sets is the key point in fragment rule mining. Major challenge in developing fragment rule mining algorithms is the extremely large number of rules generated which makes the algorithms inefficient and makes it difficult for the end users to cope up with the generated rules. In this research, we concentrate on optimization of fragmented items sets generated from fragment rule mining. We proposed an innovative approach to find optimized association rules within inter-transaction of fragment mining. Design of this method represented in this paper which gives idea of fragmented item sets generated from fragment rule mining on which optimization is performed. This deals mainly with reducing the time and space complexity required for processing the data using fragment mining & generate strong rules using genetic algorithm. . This also reduces the width of sliding window for large data as compared to FITI because of fragmented attributes. Genetic algorithm heuristic is mainly used to generate useful solutions to optimization and search problems. In previous research many have proposed genetic approach for mining interesting association rules from large dataset. In this paper we propose knowledge based method which provides the major advancement, integrating a genetic algorithm in fragment rule mining to obtain effective rules that potentially be used for business intelligent applications.


Keywords: Association Rule, Business Intelligence, Fragment Mining, Genetic Algorithm


Edition: Volume 3 Issue 8, August 2014,


Pages: 169 - 173


How to Download this Article?

You Need to Register Your Email Address Before You Can Download the Article PDF


How to Cite this Article?

Rajesh V. Argiddi, Bhagyashri U. Kale, "Study of Optimization in Fragmented Item-sets for Business Intelligence", International Journal of Science and Research (IJSR), Volume 3 Issue 8, August 2014, pp. 169-173, https://www.ijsr.net/get_abstract.php?paper_id=2015215

Similar Articles with Keyword 'Association Rule'

Downloads: 98

Survey Paper, Computer Science & Engineering, India, Volume 4 Issue 11, November 2015

Pages: 2507 - 2509

A Survey on Extended MI technique for Edit Recommendation using Hybrid History Mining and Relevance Feedback

Shradha P. Patil | B. Padmavathi [3]

Share this Article

Downloads: 104

Research Paper, Computer Science & Engineering, India, Volume 5 Issue 4, April 2016

Pages: 2334 - 2339

A Novel Way for Mining Frequent and Interesting Patterns using Genetic Algorithm

Reshu Tyagi | Muskaan Batra

Share this Article
Top