Abstract
The paper addresses the problem of a radial basis function network initialization with feature section. Main idea of the proposed approach is to achieve the reduction of data dimensionality through feature selection carried-out independently in each hidden unit of the RBFN. To select features we use the so called cluster-dependent feature selection technique. In this paper three different algorithms for determining unique subset of features for each hidden unit are considered. These are RELIEF, Random Forest and Random-based Ensembles. The processes of feature selection and learning are carried-out by program agents working within a specially designed framework which is also described in the paper. The approach is validated experimentally. Classification results of the RBFN with cluster-dependent feature selection are compared with results obtained using RBFNs implementations with some other types of feature selection methods, over several UCI datasets.
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Czarnowski, I., Jędrzejowicz, P. (2015). Cluster-Dependent Feature Selection for the RBF Networks. In: Núñez, M., Nguyen, N., Camacho, D., Trawiński, B. (eds) Computational Collective Intelligence. Lecture Notes in Computer Science(), vol 9330. Springer, Cham. https://doi.org/10.1007/978-3-319-24306-1_22
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DOI: https://doi.org/10.1007/978-3-319-24306-1_22
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