Introduction to Computational Intelligence
Neural Networks •Neural network concepts, paradigms, and implementations. •Neural Network Theory and Paradigms: terminology, biological bases, survey of architectures and topologies, review of learning paradigms and recall procedures. •Neural Network Implementations: back-propagation, self-organizing feature maps, and learning vector
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