| |||||||||||||||
OPT 2010 : Optimization for Machine Learning, 3rd Int. (NIPS) Workshop. | |||||||||||||||
Link: http://opt.kyb.tuebingen.mpg.de | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
We invite high quality submissions for presentation (talks or poster presentations), or open problems during the workshop. We are especially interested in participants who can contribute theory / algorithms, applications, or implementations with a machine learning focus in the following areas:
* Stochastic, Parallel and Online Optimization: o Large-scale learning, massive data sets o Distributed algorithms o Optimization on massively parallel architectures o Optimization using GPUs, Streaming algorithms o Decomposition for large-scale, message-passing and online learning o Stochastic approximation o Randomized algorithms * Algorithms and Techniques (application oriented): o Global and Lipschitz optimization o Algorithms for non-smooth optimization o Linear and higher-order relaxations o Polyhedral combinatorics applications to ML problems * Non-Convex Optimization: o Non-convex quadratic programming, including binary QPs o Convex Concave Decompositions, D.C. Programming, EM o Training of deep architectures and large hidden variable models o Approximation Algorithms * Optimization with Sparsity constraints: o Combinatorial methods for L0 norm minimization o L1, Lasso, Group Lasso, sparse PCA, sparse Gaussians o Rank minimization methods o Feature and subspace selection * Combinatorial Optimization: o Optimization in Graphical Models o Structure learning o MAP estimation in continuous and discrete random fields o Clustering and graph-partitioning o Semi-supervised and multiple-instance learning Submission Instructions * The submissions should be ideally 4 pages long. Hard-limit: 6 pages. * Open Problems may be of any length within the hard-limits * The review process will be double-blind * Please use the NIPS 2010 format for your submissions * Submit at: http://www.easychair.org/conferences/?conf=opt2010 |
|