Competitive Learning with Feedforward Supervisory Signal for Pre-trained Multilayered Networks

12/20/2013
by   Takashi Shinozaki, et al.
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We propose a novel learning method for multilayered neural networks which uses feedforward supervisory signal and associates classification of a new input with that of pre-trained input. The proposed method effectively uses rich input information in the earlier layer for robust leaning and revising internal representation in a multilayer neural network.

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