Herded Gibbs Sampling

Open Access
Authors
  • Y. Chen
  • L. Bornn
  • N. de Freitas
  • M. Eskelin
Publication date 03-2016
Journal Journal of Machine Learning Research
Article number 10
Volume | Issue number 17
Number of pages 29
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
The Gibbs sampler is one of the most popular algorithms for inference in statistical models. In this paper, we introduce a herding variant of this algorithm, called herded Gibbs, that is entirely deterministic. We prove that herded Gibbs has an O(1/T) convergence rate for models with independent variables and for fully connected probabilistic graphical models. Herded Gibbs is shown to outperform Gibbs in the tasks of image denoising with MRFs and named entity recognition with CRFs. However, the convergence for herded Gibbs for sparsely connected probabilistic graphical models is still an open problem.
Document type Article
Language English
Published at http://www.jmlr.org/papers/v17/chen16a.html
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