Recognizing Hand-Written Digits Using Hierarchical Products of Experts

Abstract

The product of experts learning procedure [1] can discover a set of stochastic binary features that constitute a non-linear generative model of handwritten images of digits. The quality of generative models learned in this way can be assessed by learning a separate model for each class of digit and then comparing the unnormalized probabilities of test images under the 10 different class-specific models. To improve discriminative performance, it is helpful to learn a hierarchy of separate models for each digit class. Each model in the hierarchy has one layer of hidden units and the nth level model is trained on data that consists of the activities of the hidden units in the already trained (n - l)th level model. After train(cid:173) ing, each level produces a separate, unnormalized log probabilty score. With a three-level hierarchy for each of the 10 digit classes, a test image produces 30 scores which can be used as inputs to a supervised, logis(cid:173) tic classification network that is trained on separate data. On the MNIST database, our system is comparable with current state-of-the-art discrimi(cid:173) native methods, demonstrating that the product of experts learning proce(cid:173) dure can produce effective generative models of high-dimensional data.

Cite

Text

Mayraz and Hinton. "Recognizing Hand-Written Digits Using Hierarchical Products of Experts." Neural Information Processing Systems, 2000.

Markdown

[Mayraz and Hinton. "Recognizing Hand-Written Digits Using Hierarchical Products of Experts." Neural Information Processing Systems, 2000.](https://mlanthology.org/neurips/2000/mayraz2000neurips-recognizing/)

BibTeX

@inproceedings{mayraz2000neurips-recognizing,
  title     = {{Recognizing Hand-Written Digits Using Hierarchical Products of Experts}},
  author    = {Mayraz, Guy and Hinton, Geoffrey E.},
  booktitle = {Neural Information Processing Systems},
  year      = {2000},
  pages     = {953-959},
  url       = {https://mlanthology.org/neurips/2000/mayraz2000neurips-recognizing/}
}