Self-Organizing Multilayered Neural Networks of Optimal Complexity

04/13/2005
by   V. Schetinin, et al.
0

The principles of self-organizing the neural networks of optimal complexity is considered under the unrepresentative learning set. The method of self-organizing the multi-layered neural networks is offered and used to train the logical neural networks which were applied to the medical diagnostics.

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