Title :
Global convergence of training methods for neural networks based on the state-estimation filters
Author :
Tsumura, Tomoaki ; Tatsumi, Keiji ; Tanino, Tetsuzo
Author_Institution :
Tokyo Res. Lab., IBM, Tokyo, Japan
Abstract :
Although the EKF (Extended Kalman Filter) has been widely used as a training method for neural networks (NN), it is known to have a poor robustness to disturbances. Recently, an EHF(Extended H/sub /spl infin// Filter)-based training method was proposed, which is improved in the robustness to the nature of noises. However, its convergence property is not yet known. In this paper, we show that EHF-based method can be regarded as a minimization method of the least square problem and that it has the deterministic global convergence property. Moreover, we propose a new simplified method for EKF or EHF-based methods for NN and verify the efficiency of the proposed method.
Keywords :
Kalman filters; computational complexity; convergence; filtering theory; iterative methods; learning (artificial intelligence); least mean squares methods; minimisation; multilayer perceptrons; state estimation; EKF; computational complexity; extended H/sub /spl infin// filter; extended Kalman filter; filter based training method; global convergence property; iterative methods; least square problem; minimization; neural networks; state estimation filters;
Conference_Titel :
SICE 2003 Annual Conference
Conference_Location :
Fukui, Japan
Print_ISBN :
0-7803-8352-4