Visualization of learning in multilayer perceptron networks using principal component analysis


Autoria(s): Gallagher, M. R.; Downs, T.
Contribuinte(s)

L. Hall

Data(s)

01/01/2003

Resumo

This paper is concerned with the use of scientific visualization methods for the analysis of feedforward neural networks (NNs). Inevitably, the kinds of data associated with the design and implementation of neural networks are of very high dimensionality, presenting a major challenge for visualization. A method is described using the well-known statistical technique of principal component analysis (PCA). This is found to be an effective and useful method of visualizing the learning trajectories of many learning algorithms such as back-propagation and can also be used to provide insight into the learning process and the nature of the error surface.

Identificador

http://espace.library.uq.edu.au/view/UQ:38901

Idioma(s)

eng

Publicador

The Institute of Electrical and Electronics Engineers

Palavras-Chave #Automation & Control Systems #Computer Science, Artificial Intelligence #Computer Science, Cybernetics #Artificial Neural Network (ann) #Error Surface #Multilayer Perceptron #Principal Component Analysis (pca) #Visualization #Neural Networks #C1 #280212 Neural Networks, Genetic Alogrithms and Fuzzy Logic #780101 Mathematical sciences
Tipo

Journal Article