A GA-based feature selection approach with an application to handwritten character recognition
Pattern Recognition Letters
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We propose a feature selection--based approach for improving classification performance of a two stage classification system in contexts where a high number of features is involved. A problem with a set of $N$ classes is subdivided into a set of $N$ two class problems. In each problem, a GA--based feature selection algorithm is used for finding the best subset of features. These subsets are then used for training $N$ classifiers. In the classification phase, unknown samples are given in input to each of the trained classifiers by using the corresponding subspace. In case of conflicting responses, the sample is sent to a suitably trained supplementary classifier. The proposed approach has been tested on a real world dataset containing hyper--spectral image data. The results favourably compare with those obtained by other methods on the same data.