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IJSI
2008

Attribute Selection for Numerical Databases that Contain Correlations

14 years 14 days ago
Attribute Selection for Numerical Databases that Contain Correlations
There are many correlated attributes in a database. Conventional attribute selection methods are not able to handle such correlations and tend to eliminate important rules that exist in correlated attributes. In this paper, we propose an attribute selection method that preserves important rules on correlated attributes. We first compute a ranking of attributes by using conventional attribute selection methods. In addition, we compute two-dimensional rules for each pair of attributes and evaluate their importance for predicting a target attribute. Then, we evaluate the shapes of important two-dimensional rules to pick up hidden important attributes that are under-estimated by conventional attribute selection methods. After the shape evaluation, we re-calculate the ranking so that we can preserve the important correlations. Intensive experiments show that the proposed method can select important correlated attributes that are eliminated by conventional methods. Key words: Feature Selecti...
Taufik Djatna, Yasuhiko Morimoto
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2008
Where IJSI
Authors Taufik Djatna, Yasuhiko Morimoto
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