DocumentCode :
1672032
Title :
CMAC neural network with improved generalization property for system modeling
Author :
Horváth, Gábor ; Szabó, Tamás
Author_Institution :
Dept. of Meas. & Inf. Syst., Budapest Univ. of Technol. & Econ., Hungary
Volume :
2
fYear :
2002
fDate :
6/24/1905 12:00:00 AM
Firstpage :
1603
Abstract :
This paper deals with some important questions of the CMAC neural networks. CMAC - which belongs to the family of feed-forward networks and is considered as an alternative to MLPs - has some attractive features. The most important ones are its extremely fast learning capability and the special architecture that lets effective digital hardware implementation possible. Although the CMAC architecture was proposed in the middle of the seventies quite a lot open questions have been left even for today. Among them the most important ones are its modeling and generalization capabilities. While some essential questions of its modeling capability were addressed in the literature no detailed analysis of its generalization properties can be found. Neural networks with good generalization capability play important role in system modeling. This paper shows that CMAC may have significant generalization error, even in one-dimensional case, where the network can learn exactly any training data set. The paper shows that this generalization error is caused mainly by the architecture and the training rule of the network. It presents a mathematical analysis of the generalization error, derives a general expression of this error and proposes a modified training algorithm that helps to reduce this error significantly.
Keywords :
cerebellar model arithmetic computers; feedforward neural nets; generalisation (artificial intelligence); learning (artificial intelligence); modelling; CMAC neural network; digital hardware architecture; feedforward network; generalization error; input-output system modeling; learning algorithm; training algorithm; Feedforward systems; Genetic expression; Hardware; Information systems; Mathematical analysis; Modeling; Neural networks; Neurofeedback; Nonlinear dynamical systems; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Instrumentation and Measurement Technology Conference, 2002. IMTC/2002. Proceedings of the 19th IEEE
ISSN :
1091-5281
Print_ISBN :
0-7803-7218-2
Type :
conf
DOI :
10.1109/IMTC.2002.1007199
Filename :
1007199
Link To Document :
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