International audienceWe consider the structured-output prediction problem through probabilistic approaches and generalize the “perturb-and-MAP” framework to more challenging weighted Hamming losses, which are crucial in applications. While in principle our approach is a straightforward marginalization, it requires solving many related MAP inference problems. We show that for log-supermodular pairwise models these operations can be performed efficiently using the machinery of dynamic graph cuts. We also propose to use double stochastic gradient descent, both on the data and on the perturbations, for efficient learning. Our framework can naturally take weak supervision (e.g., partial labels) into account. We conduct a set of experiments on m...
Log-linear and maximum-margin models are two commonly-used methods in supervised machine learning, a...
Powerful statistical models that can be learned efficiently from large amounts of data are currently...
We consider MAP estimators for structured prediction with exponential family models. In particular, ...
Probabilistic graphical models encode hidden dependencies between random variables for data modellin...
We show that the usual score function for conditional Markov networks can be written as the expectat...
We present a semiparametric generative model for supervised learning with structured outputs. The ma...
International audienceWe show that the usual score function for conditional Markov networks can be w...
Many structured prediction tasks involve complex models where inference is computationally intracta...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
One approach to modeling structured discrete data is to describe the probability of states via an en...
In this work we develop efficient methods for learning random MAP predictors for structured label pr...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
Structured output prediction is a machine learning tasks in which an input object is not just assign...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
Log-linear and maximum-margin models are two commonly-used methods in supervised machine learning, a...
Powerful statistical models that can be learned efficiently from large amounts of data are currently...
We consider MAP estimators for structured prediction with exponential family models. In particular, ...
Probabilistic graphical models encode hidden dependencies between random variables for data modellin...
We show that the usual score function for conditional Markov networks can be written as the expectat...
We present a semiparametric generative model for supervised learning with structured outputs. The ma...
International audienceWe show that the usual score function for conditional Markov networks can be w...
Many structured prediction tasks involve complex models where inference is computationally intracta...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
One approach to modeling structured discrete data is to describe the probability of states via an en...
In this work we develop efficient methods for learning random MAP predictors for structured label pr...
Abstract. We consider the problem of training discriminative struc-tured output predictors, such as ...
Structured output prediction is a machine learning tasks in which an input object is not just assign...
We consider the problem of learning the parameters of a structured output prediction model, that is,...
Log-linear and maximum-margin models are two commonly-used methods in supervised machine learning, a...
Powerful statistical models that can be learned efficiently from large amounts of data are currently...
We consider MAP estimators for structured prediction with exponential family models. In particular, ...