A class of self-stabilizing MCA learning algorithms


Autoria(s): Ye, M.; Fan, X. Q.; Li, X.
Contribuinte(s)

M. M. Polycarpou

Data(s)

01/01/2006

Resumo

In this letter, we propose a class of self-stabilizing learning algorithms for minor component analysis (MCA), which includes a few well-known MCA learning algorithms. Self-stabilizing means that the sign of the weight vector length change is independent of the presented input vector. For these algorithms, rigorous global convergence proof is given and the convergence rate is also discussed. By combining the positive properties of these algorithms, a new learning algorithm is proposed which can improve the performance. Simulations are employed to confirm our theoretical results.

Identificador

http://espace.library.uq.edu.au/view/UQ:81391

Idioma(s)

eng

Publicador

IEEE-Inst Electrical Electronics Engineers Inc

Palavras-Chave #Eigenvector #Feature Extraction #Global Convergence #Minor Component Analysis #Neural Networks #Computer Science, Artificial Intelligence #Computer Science, Hardware & Architecture #Computer Science, Theory & Methods #Engineering, Electrical & Electronic #Discrete-time Dynamics #Convergence Analysis #Neural-networks #C1 #280212 Neural Networks, Genetic Alogrithms and Fuzzy Logic #700103 Information processing services
Tipo

Journal Article