Discovering Efficient Association Rule Mining via Correlation Analysis

Authors

  • C. Anuradha Assistant Professor, Department of Computer Science and Applications, Sreemath Sivagnana Balaya Swamigal Tamil, Arts & Science College, Mailam, Tamil Nadu, India
  • R. Anandavally Assistant Professor, Department of Computer Science and Applications, Sreemath Sivagnana Balaya Swamigal Tamil, Arts & Science College, Mailam, Tamil Nadu, India

DOI:

https://doi.org/10.51983/ajcst-2018.7.1.1831

Keywords:

Correlation, Cosine, null-invariant, support-confidence framework

Abstract

A Discovery of Association rule mining is an essential task in Data Mining. Traditional approaches employ a support confidence framework for finding association rule. This leads to the exploration of a number of uninteresting rules, such rules are not interesting to the users. To tackle this weakness, this paper examines the correlation measures to augment with support and confidence framework, which resulting in the mining of correlation rules. We then added an additional interesting measure based on statistical significance and correlation analysis. This paper reveals an overview of interesting measures and gives an insight into the discovery of more meaningful rules from large applications than traditional approach. Also it covers a theoretical issues associated with correlations that have yet to be explored.

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Published

14-02-2018

How to Cite

Anuradha, C., & Anandavally, R. (2018). Discovering Efficient Association Rule Mining via Correlation Analysis. Asian Journal of Computer Science and Technology, 7(1), 46–49. https://doi.org/10.51983/ajcst-2018.7.1.1831