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

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

15 Videos · Mar 22, 2010

About

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

Videos

Tutorials

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01:10:27

PAC-Bayes Theory in Supervised Learning

François Laviolette

calendar icon Apr 14, 2010 4840 views

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01:03:49

PAC-Bayesian Bounds and Aggregation

Jean Yves Audibert

calendar icon Apr 14, 2010 3469 views

Invited Talks

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01:12:09

Robust PAC-Bayes Bounds

Olivier Catoni

calendar icon Apr 14, 2010 3064 views

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01:01:11

Some PAC-Bayesian Theorems

David McAllester

calendar icon Apr 14, 2010 3896 views

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51:10

Bounding the Gaussian Process Information Gain: Applications to PAC-Bayes and GP...

Matthias W. Seeger

calendar icon Apr 14, 2010 4948 views

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55:29

Incompatibilities(?) between PAC-Bayes and Exploration

John Langford

calendar icon Apr 14, 2010 3225 views

Lectures

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38:09

PAC-Bayesian Analysis in Unsupervised Learning

Yevgeny Seldin

calendar icon Apr 14, 2010 3853 views

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11:02

Expectation-prior PAC-Bayes Bounds for SVMs

Shiliang Sun

calendar icon Apr 14, 2010 2911 views

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09:22

Data-dependent Prior PAC-Bayes Bounds: Empirical Study

Emilio Parrado-Hernandez

calendar icon Apr 14, 2010 2900 views

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18:56

Efficient Mixture Modeling with RKHS Embeddings: A PAC-Bayesian Analysis

Matthew Higgs

calendar icon Apr 14, 2010 2936 views

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24:08

PAC-Bayes, Sample Compress and Kernel Methods

Pascal Germain

calendar icon Apr 14, 2010 3309 views

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31:50

PAC Bayesian Bounds for Spare Regression Estimation with Exponential Weights

Pierre Alquier

calendar icon Apr 14, 2010 3825 views

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12:58

Bayes Average Case Performance of PAC - Bayes Bounds

Manfred Opper

calendar icon Apr 14, 2010 2939 views

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19:27

Distribution-Dependent PAC-Bayes Priors

Guy Lever

calendar icon Apr 14, 2010 3617 views

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27:06

PAC-Bayes Analysis: Links to Luckiness and Applications

John Shawe-Taylor

calendar icon Apr 14, 2010 3809 views

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