We present a very general algorithm for structured prediction learning that is able to efficiently handle discrete MRFs/CRFs (including both pairwise and higher-order models) so long as they can admit a decomposition into tractable subproblems. At its core, it relies on a dual decomposition principle that has been recently employed in the task of MRF optimization. By properly combining such an approach with a max-margin learning method, the proposed framework manages to reduce the training of a complex high-order MRF to the parallel training of a series of simple slave MRFs that are much easier to handle. This leads to a very efficient and general learning scheme that relies on solid mathematical principles. We thoroughly analyze its theore...
International audienceThis paper introduces a new rigorous theoretical framework to address discrete...
International audienceIn this work we propose a structured prediction technique that combines the vi...
We propose a working set based approximate subgra-dient descent algorithm to minimize the margin-sen...
We present a very general algorithm for structured prediction learning that is able to efficiently h...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
Conditional random field (CRFs) is a popu-lar and effective approach to structured pre-diction. When...
In this thesis we propose a structured prediction technique that combines the virtues of Gaussian Co...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
* equal contribution Many problems in real-world applications in-volve predicting several random var...
We propose a working set based approximate subgradient descent algorithm to minimize the margin-sens...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
International audienceThis paper introduces a new rigorous theoretical framework to address discrete...
International audienceIn this work we propose a structured prediction technique that combines the vi...
We propose a working set based approximate subgra-dient descent algorithm to minimize the margin-sen...
We present a very general algorithm for structured prediction learning that is able to efficiently h...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
Conditional random field (CRFs) is a popu-lar and effective approach to structured pre-diction. When...
In this thesis we propose a structured prediction technique that combines the virtues of Gaussian Co...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
* equal contribution Many problems in real-world applications in-volve predicting several random var...
We propose a working set based approximate subgradient descent algorithm to minimize the margin-sens...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
International audienceThis paper introduces a new rigorous theoretical framework to address discrete...
International audienceIn this work we propose a structured prediction technique that combines the vi...
We propose a working set based approximate subgra-dient descent algorithm to minimize the margin-sen...