The Cascade Neo-Fuzzy Architecture and its Online Learning Algorithm


Autoria(s): Bodyanskiy, Yevgeniy; Viktorov, Yevgen
Data(s)

18/04/2010

18/04/2010

2009

Resumo

In the paper learning algorithm for adjusting weight coefficients of the Cascade Neo-Fuzzy Neural Network (CNFNN) in sequential mode is introduced. Concerned architecture has the similar structure with the Cascade-Correlation Learning Architecture proposed by S.E. Fahlman and C. Lebiere, but differs from it in type of artificial neurons. CNFNN consists of neo-fuzzy neurons, which can be adjusted using high-speed linear learning procedures. Proposed CNFNN is characterized by high learning rate, low size of learning sample and its operations can be described by fuzzy linguistic “if-then” rules providing “transparency” of received results, as compared with conventional neural networks. Using of online learning algorithm allows to process input data sequentially in real time mode.

Identificador

1313-0455

http://hdl.handle.net/10525/1218

Idioma(s)

en

Publicador

Institute of Information Theories and Applications FOI ITHEA

Palavras-Chave #Artificial Neural Networks #Constructive Approach #Fuzzy Inference #Hybrid Systems #Neo-Fuzzy Neuron #Real-Time Processing #Online Learning
Tipo

Article