DocumentCode
3418009
Title
Hardware-friendly learning algorithms for neural networks: an overview
Author
Moerland, P.D. ; Fiesler, E.
Author_Institution
IDIAP, Martigny, Switzerland
fYear
1996
fDate
12-14 Feb 1996
Firstpage
117
Lastpage
124
Abstract
The hardware implementation of artificial neural networks and their learning algorithms is a fascinating area of research with far-reaching applications. However, the mapping from an ideal mathematical model to compact and reliable hardware is far from evident. This paper presents an overview of various methods that simplify the hardware implementation of neural network models. Adaptations that are proper to specific learning rules or network architectures are discussed. These range from the use of perturbation in multilayer feedforward networks and local learning algorithms to quantization effects in self-organizing feature maps. Moreover, in more general terms, the problems of inaccuracy, limited precision, and robustness are treated
Keywords
learning (artificial intelligence); neural nets; reviews; artificial neural networks; hardware implementation; hardware-friendly learning algorithms; inaccuracy; limited precision; local learning algorithms; multilayer feedforward networks; neural network models; perturbation; quantization effects; robustness; self-organizing feature maps; Artificial neural networks; Backpropagation algorithms; Circuits; Electronic mail; Mathematical model; Multi-layer neural network; Neural network hardware; Neural networks; Nonhomogeneous media; Signal processing algorithms;
fLanguage
English
Publisher
ieee
Conference_Titel
Microelectronics for Neural Networks, 1996., Proceedings of Fifth International Conference on
Conference_Location
Lausanne
ISSN
1086-1947
Print_ISBN
0-8186-7373-7
Type
conf
DOI
10.1109/MNNFS.1996.493781
Filename
493781
Link To Document