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ITI əməkdaslarının elmi isləri Elektron kitabxana Konfranslar İnformasiya Sistemi Qəzetlər UOT 004
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ITI əməkdaşlarının elmi işləri - məqalə


 Biblioqrafik təsvir
 Abdullayev , S.H. Structural and parametric synthesis of predictive rbf neural networks using artifical immune systems / S.H. Abdullayev // Azərbaycan Milli Elmlər Akademiasının Xəbərləri İnformasiya və İdarəetmə Problemləri. - 2014. - N: 6. - P. 163-168.
 Annotasiya
 The purpose of the study is in development of methodology for the structural and parametric syntheses of predictive radial basis function neural networks using the ideas from artificial immune systems. The settingsd for the RBF neural networks ere determined using appropriately constructed immune system, and combined method for forecasting time series with controlled parameters of model is proposed. It was established that increase in the population size slows down the neruel network learning process, but on the other hand it resulted in improvement of the models quality. The combined forecasting algorithm and wavelet neural network shows higher accuracy of prediction than the combined algorithm and RBF network, while the latter has a higher rate of training. It was also established that for a higher level of mutation, which implies a high variability of clones of the population, the trainig is faster, but stability of the process is lower, which dectreases the probability of finding the global optimum.
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