MARCMV: Mining Multi-View Association Rules from Clustered Multi-Views

Authors

Keywords:

Multi-view, Clustering, MultiSOM, MARCMV approach, Multi-view association rule

Abstract

Data mining involves examining vast quantities of data to uncover valuable insights that can be utilized for making informed decisions and driving business objectives. The study focuses on the task of finding relationships between features belonging to two different views using multi-view model, and proposes a novel approach called MARCMV. This approach extracts multi-view association rules from different views of the same data set using multi-clustering neural model. The study finds that MARCMV outperforms conventional symbolic methods in terms of association rule quality and running time.

 

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Published

2023-06-30

How to Cite

SHEHABI, S. A., & YILDIRIM IMAMOGLU, M. (2023). MARCMV: Mining Multi-View Association Rules from Clustered Multi-Views. International Journal of Computational and Experimental Science and Engineering, 9(2), 141–149. Retrieved from https://ijcesen.com/index.php/ijcesen/article/view/201

Issue

Section

Research Article