articleJun 14, 2009Closed access

Convolutional deep belief networks for scalable unsupervised learning of hierarchical representations

Stanford University

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Abstract

There has been much interest in unsupervised learning of hierarchical generative models such as deep belief networks. Scaling such models to full-sized, high-dimensional images remains a difficult problem. To address this problem, we present the convolutional deep belief network, a hierarchical generative model which scales to realistic image sizes. This model is translation-invariant and supports efficient bottom-up and top-down probabilistic inference. Key to our approach is probabilistic max-pooling, a novel technique which shrinks the representations of higher layers in a probabilistically sound way. Our experiments show that the algorithm learns useful high-level visual features, such as object parts,…

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2,445
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Authors

4

Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Pooling
  • Inference
  • Deep belief network
  • Generative model
  • Deep learning
  • Probabilistic logic
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