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ESANN
2003

Ensemble of hybrid networks with strong regularization

14 years 1 months ago
Ensemble of hybrid networks with strong regularization
Abstract. We study various ensemble methods for hybrid neural networks. The hybrid networks are composed of radial and projection units and are trained using a deterministic algorithm that completely defines the parameters of the network for a given data set. Thus, there is no random selection of the initial (and final) parameters as in other training algorithms. Network independent is achieved by using bootstrap and boosting methods as well as random input sub-space sampling. The fusion methods are evaluated on several classification benchmark data-sets. A novel MDL based fusion method appears to reduce the variance of the classification scheme and sometimes be superior in its overall performance.
Shimon Cohen, Nathan Intrator
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2003
Where ESANN
Authors Shimon Cohen, Nathan Intrator
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