Event: EU Supported » PASCAL - Pattern Analysis, Statistical Modelling and Computational Learning » Workshop on Subspace, Latent Structure and Feature Selection Techniques: Statistical and Optimisation Perspectives, Bohinj 2005 Workshop on Subspace, Latent Structure and Feature Selection Techniques: Statistical and Optimisation Perspectives, Bohinj 2005

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Subspace, Latent Structure and Feature Selection Techniques 2005 - Bohinj   

Workshop on Subspace, Latent Structure and Feature Selection Techniques: Statistical and Optimisation Perspectives, Bohinj 2005

The workshop examines and invites discussion on a range of methods that have been developed for dimension reduction and feature selection. This is a core topic which has been addressed theoretically in many guises from the perspectives of boosting, eigenanalysis, optimisation, latent structure analysis, bayesian methods and traditional statistical approaches to name a few. As an applied technique many algorithms exist for feature selection and all real-world applications of machine learning include some aspect of this in their implementation.

In line with the Thematic Programme 'Linking Learning and Statistics with Optimisation' the workshop focuses on the integration between for example the statistical (frequentist and Bayesian) aspects as well as optimisation issues raised by subspace identification. We feel the workshop provides a real opportunity for interaction between different areas of research and its focus on a strongly applicable family of methods will promote active discussion between different areas of the research community.

Topics considered and contributions are sought in the following areas:

  • Dimension reduction techniques, subspace methods
  • Random projection methods
  • Boosting
  • Statistical analysis methods
  • Bayesian approaches to feature selection
  • Latent structure analysis/Probabilistic LSA
  • Optimisation methods
  • Novel applications of feature selection algorithms
  • Open problems in the domain

More information can be found here.

Lectures

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Comment1 HEK, May 9, 2007 at 3:25 p.m.:

It will help to have additional information associated with each event and lecture description especially the date and location

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