The genetic algorithm was used to optimize the full structure radial basis probabilistic neural networks(RBPNN), including selecting the hidden centers vectors of the first hidden layer and determining the matching controlling parameters of kernel function of RBPNN. The proposed genetic encoding method not only completely embodies the space distribution characterizes of pattern samples, but also simultaneously achieves the optimum number of the selected hidden centers vectors and the matching controlling parameters of the kernel function. The novelly constructed fitting function can efficiently control the error accuracy of the RBPNN output. The experimental results show that the algorithm effectivelfies simpliy the structure of PBPNN.
参考文献
相似文献
引证文献
引用本文
赵温波 黄德双.全结构遗传优化径向基概率神经网络[J].红外与毫米波学报,2004,23(2):113~118]. ZHAO Wen Bo, HUANG De Shuang . RADIAL BASIS PROBABILISTIC NEURAL NETWORKS OF GENETIC OPTIMIZATION OF FULL STRUCTURE[J]. J. Infrared Millim. Waves,2004,23(2):113~118.]