DocumentCode
3373142
Title
The effects of quantization on high order function neural networks
Author
Jiang, Minghu ; Gielen, Georges
Author_Institution
ESAT-MICAS, Catholic Univ. of Leuven, Heverlee, Belgium
fYear
2001
fDate
2001
Firstpage
143
Lastpage
152
Abstract
This paper paid attention to the combined effects of quantization and clipping on performance of high order function neural networks (HOFNN) for simpler and more reliable hardware implementation. We probed into how to make the effects of quantization as small as possible to ensure certain training and non-linear ability at a given standard. We established in theory and proved the relationships among bit resolution of inputs and outputs, training and quantization manners, network-order number and performance degradation in HOFNN, showing that (1) signal to noise ratio (SNR) decrease followed with the increasing number of orders in a fixed bits; (2) SNR increase followed with the increasing number of bits; (3) the amplifying factor of SNR through nonlinear neuron, which is always less than 1, is unrelated with quantization error. The experiments revealed that the number of orders in HOFNN is more sensitiv for performance in the low bits of quantization and the simulate results conform with our proposed theoretical analysis
Keywords
neural nets; quantisation (signal); amplifying factor; bit resolution; clipping; high order function neural networks; performance degradation; quantization effects; reliable hardware implementation; training; Analytical models; Degradation; Feedforward neural networks; Neural network hardware; Neural networks; Neurons; Pattern recognition; Performance analysis; Quantization; Signal to noise ratio;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks for Signal Processing XI, 2001. Proceedings of the 2001 IEEE Signal Processing Society Workshop
Conference_Location
North Falmouth, MA
ISSN
1089-3555
Print_ISBN
0-7803-7196-8
Type
conf
DOI
10.1109/NNSP.2001.943119
Filename
943119
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