The use of monolithic neural networks (such as a multilayer perceptron) has some drawbacks: e.g. slow learning, weight coupling, the black box effect. These can be alleviated by the use of a modular neural network. The creation of a MNN has three steps: task decomposition, module creation and decision integration. In this paper we propose the use of an entropic clustering algorithm as a way of performing task decomposition. We present experiments on several real world classification problems that show the performance of this approach.
Citation:
Jorge M. Santos, Luis A. Alexandre, Joaquim Marques de Sa, "Modular Neural Network Task Decomposition Via Entropic Clustering," isda, vol. 1, pp.62-67, Sixth International Conference on Intelligent Systems Design and Applications (ISDA'06) Volume 1, 2006