DocumentCode :
768096
Title :
Dynamic learning rate optimization of the backpropagation algorithm
Author :
Yu, Xiao-Hu ; Chen, Guo-An ; Cheng, Shi-xin
Author_Institution :
Dept. of Radio Eng., Southeast Univ., Nanjing, China
Volume :
6
Issue :
3
fYear :
1995
fDate :
5/1/1995 12:00:00 AM
Firstpage :
669
Lastpage :
677
Abstract :
It has been observed by many authors that the backpropagation (BP) error surfaces usually consist of a large amount of flat regions as well as extremely steep regions. As such, the BP algorithm with a fixed learning rate will have low efficiency. This paper considers dynamic learning rate optimization of the BP algorithm using derivative information. An efficient method of deriving the first and second derivatives of the objective function with respect to the learning rate is explored, which does not involve explicit calculation of second-order derivatives in weight space, but rather uses the information gathered from the forward and backward propagation, Several learning rate optimization approaches are subsequently established based on linear expansion of the actual outputs and line searches with acceptable descent value and Newton-like methods, respectively. Simultaneous determination of the optimal learning rate and momentum is also introduced by showing the equivalence between the momentum version BP and the conjugate gradient method. Since these approaches are constructed by simple manipulations of the obtained derivatives, the computational and storage burden scale with the network size exactly like the standard BP algorithm, and the convergence of the BP algorithm is accelerated with in a remarkable reduction (typically by factor 10 to 50, depending upon network architectures and applications) in the running time for the overall learning process. Numerous computer simulation results are provided to support the present approaches
Keywords :
Newton method; backpropagation; conjugate gradient methods; convergence; neural nets; optimisation; Newton-like method; backpropagation algorithm; backpropagation error surfaces; backward propagation; conjugate gradient method; convergence; derivative information; descent value method; dynamic learning rate optimization; flat regions; forward propagation; line searches; linear expansion; momentum; steep regions; Acceleration; Application software; Backpropagation algorithms; Computer architecture; Computer networks; Computer simulation; Convergence; Gradient methods; Iterative algorithms; Optimization methods;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.377972
Filename :
377972
Link To Document :
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