Empirical evidence for ultrametric structure in multi-layer perceptron error surfaces


Autoria(s): Gallagher, Marcus; Downs, Tom; Wood, Ian
Data(s)

01/10/2002

Resumo

Combinatorial optimization problems share an interesting property with spin glass systems in that their state spaces can exhibit ultrametric structure. We use sampling methods to analyse the error surfaces of feedforward multi-layer perceptron neural networks learning encoder problems. The third order statistics of these points of attraction are examined and found to be arranged in a highly ultrametric way. This is a unique result for a finite, continuous parameter space. The implications of this result are discussed.

Identificador

http://espace.library.uq.edu.au/view/UQ:62279

Idioma(s)

eng

Publicador

Kluwer Academic Publishers

Palavras-Chave #Computer Science, Artificial Intelligence #Neurosciences #Configuration Space Analysis #Error Surface #Feedforward Neural Network #Multi-layer Perceptron #Ultrametricity #Neural-network #C1 #280212 Neural Networks, Genetic Alogrithms and Fuzzy Logic #780101 Mathematical sciences #280200 Artificial Intelligence and Signal and Image Processing
Tipo

Journal Article