JMLR 2011 - Journal of Machine Learning Research Special Topic on Kernel and Metric Learning
Topics/Call fo Papers
Journal of Machine Learning Research
Special Topic on Kernel and Metric Learning
Multiple Kernel Learning (MKL) has received significant interest in
the machine learning community. It is reaching a point where efficient
systems can be applied out of the box to various application domains,
and several methods have been proposed to go beyond canonical convex
combinations. Concurrently, research in the area of metric learning
has also progressed significantly, and researchers are applying them
to various problems in supervised and unsupervised learning. A common
theme is that one can use data to infer similarities between objects
while simultaneously solving the machine learning task.
jmlr
A special topic of the Journal of Machine Learning Research will be
devoted to kernel and metric learning with a special emphasis on new
directions and connections between the various related areas; like
learning the kernel, learning metrics, and learning the covariance
function of a Gaussian process. We invite researchers to submit novel
and interesting contributions to this special issue. Further
information can be found at http://doc.ml.tu-berlin.de/jmlr_mkl .
Important dates
Submission: 1 March 2011
Decision: 1 May 2011
Final versions: 1 July 2011
Topics of Interest
Topics of interest include:
* New approaches to MKL, in particular, kernel parameterizations
different than convex combinations and new objective functions
* New connections between kernel, metric and covariance learning,
e.g., from the perspectives of Gaussian processes, learning with
similarity functions, etc.
* Sparse vs. non-sparse regularization in similarity learning
* Efficient algorithms for metric learning
* Use of MKL in unsupervised, semi-supervised, multi-task, and
transfer learning
* MKL with structured input/output
* Innovative applications
Submission procedure
Authors are kindly invited to follow the standard JMLR format and
submission procedure JMLR submission format, the number of pages is
limited to 30. Please include a note stating that your submission is for
the special topic on Multiple Kernel Learning.
Editors
Soeren Sonnenburg, Berlin Institute of Technology, Berlin, Germany
Francis Bach, INRIA and Ecole Normale Superieure, Paris, France
Cheng Soon Ong, ETH, Zurich, Switzerland
--
Soeren Sonnenburg - ML Group, TU-Berlin Tel: +49 (0)30 314 78630
Franklinstr. 28/29, 10587 Berlin, Germany Fax: +49 (0)30 314 78622
Special Topic on Kernel and Metric Learning
Multiple Kernel Learning (MKL) has received significant interest in
the machine learning community. It is reaching a point where efficient
systems can be applied out of the box to various application domains,
and several methods have been proposed to go beyond canonical convex
combinations. Concurrently, research in the area of metric learning
has also progressed significantly, and researchers are applying them
to various problems in supervised and unsupervised learning. A common
theme is that one can use data to infer similarities between objects
while simultaneously solving the machine learning task.
jmlr
A special topic of the Journal of Machine Learning Research will be
devoted to kernel and metric learning with a special emphasis on new
directions and connections between the various related areas; like
learning the kernel, learning metrics, and learning the covariance
function of a Gaussian process. We invite researchers to submit novel
and interesting contributions to this special issue. Further
information can be found at http://doc.ml.tu-berlin.de/jmlr_mkl .
Important dates
Submission: 1 March 2011
Decision: 1 May 2011
Final versions: 1 July 2011
Topics of Interest
Topics of interest include:
* New approaches to MKL, in particular, kernel parameterizations
different than convex combinations and new objective functions
* New connections between kernel, metric and covariance learning,
e.g., from the perspectives of Gaussian processes, learning with
similarity functions, etc.
* Sparse vs. non-sparse regularization in similarity learning
* Efficient algorithms for metric learning
* Use of MKL in unsupervised, semi-supervised, multi-task, and
transfer learning
* MKL with structured input/output
* Innovative applications
Submission procedure
Authors are kindly invited to follow the standard JMLR format and
submission procedure JMLR submission format, the number of pages is
limited to 30. Please include a note stating that your submission is for
the special topic on Multiple Kernel Learning.
Editors
Soeren Sonnenburg, Berlin Institute of Technology, Berlin, Germany
Francis Bach, INRIA and Ecole Normale Superieure, Paris, France
Cheng Soon Ong, ETH, Zurich, Switzerland
--
Soeren Sonnenburg - ML Group, TU-Berlin Tel: +49 (0)30 314 78630
Franklinstr. 28/29, 10587 Berlin, Germany Fax: +49 (0)30 314 78622
Other CFPs
- Seventh European Conference on Modelling Foundations and Applications
- GreenCom 2011 : The 2011 IEEE/ACM International Conference on Green Computing and Communications
- 10th International Conference on Business Process Management
- ISWC 2011 : The 15th IEEE International Symposium on Wearable Computers
- Irony Conference 2011 : Jesters and Gestures: Irony at a Crossroads
Last modified: 2010-10-21 09:36:19