Discovering Non-Redundant Association Rules using MinMax Approximation Rules

Journal Title: Indian Journal of Computer Science and Engineering - Year 2012, Vol 3, Issue 6

Abstract

Frequent pattern mining is an important area of data mining used to generate the Association Rules. The extracted Frequent Patterns quality is a big concern, as it generates huge sets of rules and many of them are redundant. Mining Non-Redundant Frequent patterns is a big concern in the area of Association rule mining. In this paper we proposed a method to eliminate the redundant Frequent patterns using MinMax rule approach, to generate the quality Association Rules.

Authors and Affiliations

R. Vijaya Prakash , Dr. A. Govardhan , Prof. SSVN. Sarma

Keywords

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  • EP ID EP114581
  • DOI -
  • Views 156
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How To Cite

R. Vijaya Prakash, Dr. A. Govardhan, Prof. SSVN. Sarma (2012). Discovering Non-Redundant Association Rules using MinMax Approximation Rules. Indian Journal of Computer Science and Engineering, 3(6), 796-802. https://europub.co.uk./articles/-A-114581