Clustering rules: a comparison of partitioning and hierarchical clustering algorithms

Clustering rules: a comparison of partitioning and hierarchical clustering algorithms

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Article ID: iaor20081500
Country: United Kingdom
Volume: 5
Issue: 4
Start Page Number: 475
End Page Number: 504
Publication Date: Dec 2006
Journal: Journal of Mathematical Modelling and Algorithms
Authors: , , ,
Keywords: artificial intelligence, programming: multiple criteria, heuristics
Abstract:

Previous research has resulted in a number of different algorithms for rule discovery. Two approaches discussed here, the ‘all-rules’ algorithm and multi-objective metaheuristics, both result in the production of a large number of partial classification rules, or ‘nuggets’, for describing different subsets of the records in the class of interest. This paper describes the application of a number of different clustering algorithms to these rules, in order to identify similar rules and to better understand the data.

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