AbstractA non-zero-approaching adaptive learning rate is proposed to guarantee the global convergence of Oja's principal component analysis (PCA) learning algorithm. Most of the existing adaptive learning rates for Oja's PCA learning algorithm are required to approach zero as the learning step increases. However, this is not practical in many applications due to the computational round-off limitations and tracking requirements. The proposed adaptive learning rate overcomes this shortcoming. The learning rate converges to a positive constant, thus it increases the evolution rate as the learning step increases. This is different from learning rates which approach zero which slow the convergence considerably and increasingly with time. Rigorou...
Various techniques, used to optimize on-line principal component analysis, are investigated by metho...
We present a novel method for convex unconstrained optimization that, without any modifications, ens...
Abstract:- In this paper we propose a framework for developing globally convergent batch training al...
AbstractIn most of existing principal components analysis (PCA) learning algorithms, the learning ra...
AbstractMinor component analysis (MCA) is a statistical method of extracting the eigenvector associa...
[[abstract]]© 1995 Institute of Electrical and Electronics Engineers-Principal component analysis (P...
In this paper, we propose to adopt the diffusion approximation tools to study the dynamics of Oja's ...
AbstractA principal component analysis (PCA) neural network is developed for online extraction of th...
Abstract—The convergence of a class of Hyvärinen–Oja’s inde-pendent component analysis (ICA) learnin...
We develop gain adaptation methods that improve convergence of the kernel Hebbian algorithm (KHA) f...
This brief deals with the problem of minor component analysis (MCA). Artificial neural networks can ...
Recently, many unified learning algorithms have been developed to solve the task of principal compon...
The online backpropagation (BP) training procedure has been extensively explored in scientific resea...
Oja's principal subspace algorithm is a well-known and powerful technique for learning and trackingp...
We describe and analyze a simple algorithm for principal component analysis, VR-PCA, which uses comp...
Various techniques, used to optimize on-line principal component analysis, are investigated by metho...
We present a novel method for convex unconstrained optimization that, without any modifications, ens...
Abstract:- In this paper we propose a framework for developing globally convergent batch training al...
AbstractIn most of existing principal components analysis (PCA) learning algorithms, the learning ra...
AbstractMinor component analysis (MCA) is a statistical method of extracting the eigenvector associa...
[[abstract]]© 1995 Institute of Electrical and Electronics Engineers-Principal component analysis (P...
In this paper, we propose to adopt the diffusion approximation tools to study the dynamics of Oja's ...
AbstractA principal component analysis (PCA) neural network is developed for online extraction of th...
Abstract—The convergence of a class of Hyvärinen–Oja’s inde-pendent component analysis (ICA) learnin...
We develop gain adaptation methods that improve convergence of the kernel Hebbian algorithm (KHA) f...
This brief deals with the problem of minor component analysis (MCA). Artificial neural networks can ...
Recently, many unified learning algorithms have been developed to solve the task of principal compon...
The online backpropagation (BP) training procedure has been extensively explored in scientific resea...
Oja's principal subspace algorithm is a well-known and powerful technique for learning and trackingp...
We describe and analyze a simple algorithm for principal component analysis, VR-PCA, which uses comp...
Various techniques, used to optimize on-line principal component analysis, are investigated by metho...
We present a novel method for convex unconstrained optimization that, without any modifications, ens...
Abstract:- In this paper we propose a framework for developing globally convergent batch training al...