Efficient online learning of a non-negative sparse autoencoder

نویسندگان

  • Andre Lemme
  • René Felix Reinhart
  • Jochen J. Steil
چکیده

We introduce an efficient online learning mechanism for nonnegative sparse coding in autoencoder neural networks. In this paper we compare the novel method to the batch algorithm non-negative matrix factorization with and without sparseness constraint. We show that the efficient autoencoder yields to better sparseness and lower reconstruction errors than the batch algorithms on the MNIST benchmark dataset.

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تاریخ انتشار 2010