Title :
Hybrid neuro-neo-fuzzy system and its adaptive learning algorithm
Author :
Yevgeniy Bodyanskiy;Olena Vynokurova;Galina Setlak;Iryna Pliss
Author_Institution :
Kharkiv National University of Radio Electronics, Leniva av., 14, Kharkiv, 61166, Ukraine
Abstract :
Nowadays computational intelligence methods are widely spread in different tasks solving in Data Mining under uncertain, nonlinear, stochastic, chaotic and disturbed by different type of noises conditions. In the paper the hybrid neuro-neo-fuzzy system of computational intelligence is proposed. This system is distinguished by the computational simplicity, the learning process high speed and the improved approximation properties. The hybrid neuro-neo-fuzzy system can be used for solving of Data Stream Mining tasks, which connect with real time processing of nonstationary nonlinear stochastic and chaotic signals that are sequentially fed into system in on-line mode.
Keywords :
"Energy consumption","Neurons","Prediction algorithms","Data mining","Computational intelligence","Algorithm design and analysis","Biological neural networks"
Conference_Titel :
Scientific and Technical Conference "Computer Sciences and Information Technologies" (CSIT), 2015 Xth International
DOI :
10.1109/STC-CSIT.2015.7325445