Several realistic approaches to improve the generalization of feedforward neural networks

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Southeast Univ, Nanjing, China [1 ]
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Tien Tzu Hsueh Pao | / 4卷 / [d]116-119期
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Classification (of information) - Feature extraction;
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摘要
Based on a criterion for effective generalization of neural networks, several practical methods to improve the generalization performance of feedforward neural networks are proposed, including enhancing the feature extractor and classifier, and modifying the activation function of neuron. The simulation results on handwritten character recognition confirm that models have good generalization abilities.
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