General gaussian priors for improved generalisation


Autoria(s): Saad, David
Data(s)

01/08/1996

Resumo

We explore the dependence of performance measures, such as the generalization error and generalization consistency, on the structure and the parameterization of the prior on `rules', instanced here by the noisy linear perceptron. Using a statistical mechanics framework, we show how one may assign values to the parameters of a model for a `rule' on the basis of data instancing the rule. Information about the data, such as input distribution, noise distribution and other `rule' characteristics may be embedded in the form of general gaussian priors for improving net performance. We examine explicitly two types of general gaussian priors which are useful in some simple cases. We calculate the optimal values for the parameters of these priors and show their effect in modifying the most probable, MAP, values for the rules.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/656/1/misc96-003.pdf

Saad, David (1996). General gaussian priors for improved generalisation. Neural Networks, 9 (6), pp. 937-945.

Relação

http://eprints.aston.ac.uk/656/

Tipo

Article

PeerReviewed