Title of article
Optimized bi-dimensional data projection for clustering visualization
Author/Authors
Rodrigo T. Peres، نويسنده , , Claus Aranha، نويسنده , , Carlos E. Pedreira، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
12
From page
104
To page
115
Abstract
We propose a new method to project n-dimensional data onto two dimensions, for visualization purposes. Our goal is to produce a bi-dimensional representation that better separate existing clusters. Accordingly, to generate this projection we apply Differential Evolution as a meta-heuristic to optimize a divergence measure of the projected data. This divergence measure is based on the Cauchy–Schwartz divergence, extended for multiple classes. It accounts for the separability of the clusters in the projected space using the Renyi entropy and Information Theoretical Clustering analysis. We test the proposed method on two synthetic and five real world data sets, obtaining well separated projected clusters in two dimensions. These results were compared with results generated by PCA and a recent likelihood based visualization method.
Keywords
Visualization , PATTERN ANALYSIS , Parameter learning , Information theoretical learning , Evolutionary Computation
Journal title
Information Sciences
Serial Year
2013
Journal title
Information Sciences
Record number
1215527
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