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Learning a smooth kernel regularizer for convolutional neural networks

By Reuben Feinman and Brenden Lake
Modern deep neural networks require a tremendous amount of data to train, often needing hundreds or thousands of labeled examples to learn an effective representation. For these networks to work with less data, more structure must be built into their architectures or learned from previous experience. The learned weights of... Show more
March 5, 2019
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Learning a smooth kernel regularizer for convolutional neural networks
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