Title :
Evolutionary training of a q-Gaussian radial basis functional-link nets for function approximation
Author :
Muangkote, Nipotepat ; Sunat, Khamron ; Chiewchanwattana, Sirapat
Author_Institution :
Dept. of Comput. Sci., Khon Kaen Univ., Khon Kaen, Thailand
Abstract :
In this paper, radial basis functional-link nets (RBFLNs) based on a q-Gaussian function is proposed. In order to enhance the generalization performance of a modified radial basis function neural network and enhance the performance of the new network, the evolutionary algorithm named real-coded chemical reaction optimization (RCCRO), is presented for training the new network. A developed RCCRO, has been shown to perform well in many optimization problems. A RCCRO is employed to select the non-extensive entropic index q and the other parameters of the network. The experimental results of the function approximation show that the proposed approach can improve the performance of RBFLNs.
Keywords :
Gaussian processes; evolutionary computation; function approximation; learning (artificial intelligence); optimisation; radial basis function networks; RBFLN; RCCRO; evolutionary algorithm; evolutionary training; function approximation; network training; nonextensive entropic index; q-Gaussian radial basis functional-link nets; radial basis function neural network; real-coded chemical reaction optimization; Chemicals; Evolutionary computation; Function approximation; Neural networks; Neurons; Optimization; Training; Evolutionary algorithm; Neural networks; Radial basis functions; Real-Coded Chemical Reaction Optimization; heuristic optimization; q-Gaussian;
Conference_Titel :
Computer Science and Software Engineering (JCSSE), 2013 10th International Joint Conference on
Conference_Location :
Maha Sarakham
Print_ISBN :
978-1-4799-0805-9
DOI :
10.1109/JCSSE.2013.6567320