date change, Montreal workshop on Advances in Machine Learning

Yoshua Bengio bengioy at IRO.UMontreal.CA
Tue Feb 11 14:17:04 EST 2003


----- Forwarded message from Balazs Kegl <kegl at IRO.UMontreal.CA> -----

Due to a date conflict with a major conference, we have had to
reschedule the Workshop on Advances in Machine Learning from June 2-6
to June 9-13. We apologize for the inconvenience it may cause. The paper
submission deadline remains March 31.

--------------------------------------------------------------------------

                         Call for papers
             Workshop on Advances in Machine Learning

                Montreal, Canada, June 9-13, 2003
         URL: www.iro.umontreal.ca/~lisa/workshop2003.html

Organizers:

  Yoshua Bengio, Balazs Kegl (University of Montreal)
  Doina Precup (McGill University)


Scope:

Probabilities are at the core of recent advances in the theory and
practice of machine learning algorithms. The workshop will focus on
three broad areas where these advances are crucial: statistical
learning theory, learning algorithms, and reinforcement learning. The
workshop will therefore bring together experts from each of these
three important domains. Among the sub-topics that will be covered, we
note: variational methods, graphical models, the curse of
dimensionality, empirical methods to take advantage of theories of
generalization error, and some of the applications of these new
methods.

On the theoretical side, in recent years a lot of effort has been
devoted to explain the generalization abilities of popular learning
algorithms such as voting classifiers and kernel methods. Some of
these results have given rise to general principles that can guide
practical classifier design. Some (non-exclusive) sub-topics in this
aspect of the workshop include Rademacher and Gaussian complexities,
algorithmic stability and generalization, localized complexities and
results on the generalization ability of voting classifiers and
kernel-based methods.

On the algorithmic side, one of the emphasis of recent years has been
on probabilistic models that attempt to capture the complex structure
in the data, often by discovering the main lower-dimensional features
that explain the data. This raises interesting and difficult questions
on how to train such models, but such algorithms may have wide ranging
applications in domains in which the data has interesting structure
that may be explained at multiple levels, such as in vision and
language.

In reinforcement learning (RL), recent research has brought
significant advances in some of the traditional problems, such as
understanding the interplay between RL algorithms and function
approximation, and extending RL beyond MDPs. At the same time, new
areas of research, such as computational game theory, have developed
at the interface between RL and probabilistic learning methods. In
this workshop, we invite presentations on all RL topics, ranging from
theoretical development to practical applications.

Invited speakers:

Rich Sutton, U. Massachusetts, MA, USA
Andy Barto, U. Massachusetts, MA, USA (to confirm)
Satinder Singh, U. Michigan, Ann Arbour, MI, USA
Sridhar Mahadevan, U. Massachusetts
Peter Bartlett, U. California Berkeley, CA, USA
Vladimir Koltchinskii, U. New Mexico, NM, USA
Yann Le Cun, NEC Research, NJ, USA
Paolo Frasconi, U. Firenze, Italy
Dale Schuurmans, Waterloo U., Ontario, Canada
Nando de Freitas, U. British Columbia, BC, Canada
Sam Roweis, U. Toronto, Ontario, Canada
Geoff Hinton, U. Toronto, Ontario, Canada

Important dates:

March 31, Paper submission deadline
April 15, Notification of paper acceptance/rejection.

Submission:

Papers should be submitted electronically to kegl at iro.umontreal.ca.
Papers can be submitted either as a postscript or a pdf (acrobat) file.
No proceedings are currently planned.

Registration:

The registration fees are minimal: regular registration fees are
100$CAN. Reduced rate for students from a Canadian academic
institution: 50$CAN.

Venue:

The workshop will take place at the Centre de Recherches
Mathematiques, on the campus of Universite de Montreal, in lively and
beautiful Montreal, Canada. The conference will be held in the
Pavillon Andre Aisenstadt, 2920 chemin de la Tour.


----- End forwarded message -----

Yoshua Bengio
Full Professor / Professeur titulaire
Canada Research Chair in Statistical Learning Algorithms /
titulaire de la chaire de recherche du Canada en algorithmes d'apprentissage statistique
Département d'Informatique et Recherche Opérationnelle
Université de Montréal,
adresse postale: C.P. 6128 Succ. Centre-Ville, Montréal, Québec, Canada H3C 3J7
adresse civique: 2920 Chemin de la Tour, Montréal, Québec, Canada H3T 1J8, #2194
Tel: 514-343-6804. Fax: 514-343-5834. Bureau 3339.
http://www.iro.umontreal.ca/~bengioy
http://www.iro.umontreal.ca/~lisa




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