arXiv:cond-mat/9706015AbstractReferencesReviewsResources
Functional Optimisation of Online Algorithms in Multilayer Neural Networks
Renato Vicente, Nestor Caticha
Published 1997-06-02Version 1
We study the online dynamics of learning in fully connected soft committee machines in the student-teacher scenario. The locally optimal modulation function, which determines the learning algorithm, is obtained from a variational argument in such a manner as to maximise the average generalisation error decay per example. Simulations results for the resulting algorithm are presented for a few cases. The symmetric phase plateaux are found to be vastly reduced in comparison to those found when online backpropagation algorithms are used. A discussion of the implementation of these ideas as practical algorithms is given.
Journal: J. Phys A: Math. Gen. 30 (1997) L599-L605
Categories: cond-mat.dis-nn
Keywords: multilayer neural networks, functional optimisation, online algorithms, average generalisation error decay, locally optimal modulation function
Tags: journal article
Related articles: Most relevant | Search more
arXiv:cond-mat/9906201 (Published 1999-06-14)
Correlations between hidden units in multilayer neural networks and replica symmetry breaking
arXiv:cond-mat/9901179 (Published 1999-01-19)
Weight decay induced phase transitions in multilayer neural networks
arXiv:cond-mat/9907340 (Published 1999-07-22)
Noisy regression and classification with continuous multilayer networks