Sample Selection Via Clustering to Construct Support Vector-Like Classifiers
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2009-07-29T15:18:19Z
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This paper explores the possibility of constructing RBF classifiers which, somewhat like support vector machines, use a reduced number of samples as centroids, by means of
selecting samples in a direct way. Because sample selection is viewed as a hard computational problem, this selection is done
after a previous vector quantization: this way obtaining also other similar machines using centroids selected from those that
are learned in a supervised manner. Several forms of designing these machines are considered, in particular with respect to
sample selection; as well as some different criteria to train them. Simulation results for well-known classification problems show
very good performance of the corresponding designs, improving that of support vector machines and reducing substantially their
number of units. This shows that our interest in selecting samples (or centroids) in an efficient manner is justified. Many new
research avenues appear from these experiments and discussions, as suggested in our conclusions.
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