4.8 Article

Learning with Hierarchical-Deep Models

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2012.269

关键词

Deep networks; deep Boltzmann machines; hierarchical Bayesian models; one-shot learning

资金

  1. NSERC
  2. ONR (MURI) [1015GNA126]
  3. ONR [N00014-07-1-0937]
  4. ARO [W911NF-08-1-0242]
  5. Qualcomm

向作者/读者索取更多资源

We introduce HD (or Hierarchical-Deep) models, a new compositional learning architecture that integrates deep learning models with structured hierarchical Bayesian (HB) models. Specifically, we show how we can learn a hierarchical Dirichlet process (HDP) prior over the activities of the top-level features in a deep Boltzmann machine (DBM). This compound HDP-DBM model learns to learn novel concepts from very few training example by learning low-level generic features, high-level features that capture correlations among low-level features, and a category hierarchy for sharing priors over the high-level features that are typical of different kinds of concepts. We present efficient learning and inference algorithms for the HDP-DBM model and show that it is able to learn new concepts from very few examples on CIFAR-100 object recognition, handwritten character recognition, and human motion capture datasets.

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