DocumentCode
2694179
Title
Parallel implementation of a recursive least squares neural network training method on the Intel iPSC/2
Author
Steck, James Edward ; McMillin, Bruce M. ; Krishnamurthy, K. ; Ashouri, M. Reza ; Leininger, Gary G.
fYear
1990
fDate
17-21 June 1990
Firstpage
631
Abstract
An algorithm based on the Marquardt-Levenberg least-square optimization method has been shown by S. Kollias and D. Anastassiou (IEEE Trans. on Circuits Syst. vol.36, no.8, p.1092-101, Aug. 1989) to be a much more efficient training method than gradient descent, when applied to some small feedforward neural networks. Yet, for many applications, the increase in computational complexity of the method outweighs any gain in learning rate obtained over current training methods. However, the least-squares method can be more efficiently implemented on parallel architectures than standard methods. This is demonstrated by comparing computation times and learning rates for the least-squares method implemented on 1, 2, 4, 8, and 16 processors on an Intel iPSC/2 multicomputer. Two applications which demonstrate the faster real-time learning rate of the last-squares method over than of gradient descent are given
Keywords
convergence; learning systems; least squares approximations; neural nets; optimisation; parallel processing; Intel iPSC/2; Marquardt-Levenberg least-square optimization method; computation times; learning rates; parallel architectures; recursive least squares neural network training; supervised learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks, 1990., 1990 IJCNN International Joint Conference on
Conference_Location
San Diego, CA, USA
Type
conf
DOI
10.1109/IJCNN.1990.137641
Filename
5726601
Link To Document