Abstract:
This paper deals with the problem of dimensioning a feedforward neural network to learn an unknown function from input/output pairs. The ultimate goal is to tune the comp...Show MoreMetadata
Abstract:
This paper deals with the problem of dimensioning a feedforward neural network to learn an unknown function from input/output pairs. The ultimate goal is to tune the complexity of the neural model with the information present in the training set and to estimate its performance without needing new data for cross-validation. For generality, it is not assumed that the unknown function belongs to the family of neural models. A generalization of the final prediction error to biased models is provided, which can be applied to learn unknown functions both in noise free and noise affected applications. This is based on a new definition of the effective number of parameters used by the neural model to fit the data. New criteria for model selection are introduced and compared with the generalized prediction error and the network information criteria.
Published in: IEEE Transactions on Circuits and Systems I: Fundamental Theory and Applications ( Volume: 46, Issue: 8, August 1999)
DOI: 10.1109/81.780377