View order

Type of content







...Search a Keyword

event header image

PASCAL PAC Bayesian Learning 2010 - London   

PASCAL Foundations and New Trends of PAC Bayesian Learning, London 2010

PAC-Bayes theory is a framework for deriving some of the tightest generalization bounds available. Many well established learning algorithms can be justified in the PAC-Bayes framework and even improved. PAC-Bayes bounds were originally applicable to classification, but over the last few years the theory has been extended to regression, density estimation, and problems with non iid data. The theory is well established within a small group of the statistical learning community, and has now matured to a level where it is relevant to a wider audience. The workshop will include tutorials on the foundations of the theory as well as recent findings through peer reviewed presentations.

PAC Bayes theory or applications. In particular: application to:

  • regression
  • density estimation
  • hypothesis testing
  • structured density estimation
  • non-iid data
  • sequential data

More about the workshop at PAC Bayesian Learning



Invited Talks


Write your own review or comment:

make sure you have javascript enabled or clear this field: