Modelling conditional probabilities with network committees: how overfitting can be useful

Husmeier, D. and Althoefer, K. (1998) Modelling conditional probabilities with network committees: how overfitting can be useful. Neural Network World, 8(4), pp. 417-439.

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Abstract

Training neural networks for predicting conditional probability densities can be accelerated considerably by adopting the random vector functional link net (RVFL) approach. In this way, a whole ensemble of models can be trained at the same computational costs as otherwise required for training only one conventional network. The inherent stochasticity of the RVFL method increases the diversity in this ensemble, which leads to a signi cant reduction of the generalisation error. The application of this scheme to a synthetic multimodal stochastic time series and a real-world benchmark problem was found to achieve a performance better than or comparable to the best results otherwise obtained so far. Moreover, the simulations support a recent theoretical study and show that when making predictions with network committees, it can be advantageous to employ underregularised models that overfit the training data

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Husmeier, Professor Dirk
Authors: Husmeier, D., and Althoefer, K.
College/School:College of Science and Engineering > School of Mathematics and Statistics > Statistics
Journal Name:Neural Network World
ISSN:1210-0552

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