Analysis of algorithms for radial basis function neural network

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Abstract

This paper describes the analysis of algorithms for the hidden layer construction of network and for learning of the Radial Basis Function neural Network (RBFN). We compared results obtained by using of learning algorithms LMS (Least Mean Square) and Gradient Algorithms (GA) and results are obtained by using of algorithms APC-III and K-means for hidden layer contruction of neural network. The principles and algorithms given below have been used in an application for object classification that was developed at Brno University of Technology. This solution is suitable for the research of personal wireless communications and similar systems. © 2007 International Federation for Information Processing.

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Stastny, J., & Skorpil, V. (2007). Analysis of algorithms for radial basis function neural network. In IFIP International Federation for Information Processing (Vol. 245, pp. 54–62). https://doi.org/10.1007/978-0-387-74159-8_5

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