Title :
Parallel nonlinear optimization techniques for training neural networks
Author :
Phua, Paul K H ; Ming, Daohua
Author_Institution :
Dept. of Comput. Sci., Nat. Univ. of Singapore, Singapore
Abstract :
In this paper, we propose the use of parallel quasi-Newton (QN) optimization techniques to improve the rate of convergence of the training process for neural networks. The parallel algorithms are developed by using the self-scaling quasi-Newton (SSQN) methods. At the beginning of each iteration, a set of parallel search directions is generated. Each of these directions is selectively chosen from a representative class of QN methods. Inexact line searches are then carried out to estimate the minimum point along each search direction. The proposed parallel algorithms are tested over a set of nine benchmark problems. Computational results show that the proposed algorithms outperform other existing methods, which are evaluated over the same set of test problems.
Keywords :
Newton method; backpropagation; convergence of numerical methods; feedforward neural nets; nonlinear systems; optimisation; parallel algorithms; backpropagation; convergence rate; neural networks training process; parallel nonlinear optimization technique; quasiNewton optimization technique; self-scaling quasiNewton methods; training algorithm; Backpropagation algorithms; Benchmark testing; Character generation; Convergence; Feedforward neural networks; Least squares methods; Neural networks; Neurons; Optimization methods; Parallel algorithms;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2003.820670