Learning with non-modular losses is an important problem when sets of predictions are made simultaneously. The main tools for constructing convex surrogate loss functions for set prediction are margin rescaling and slack rescaling. In this work, we show that these strategies lead to tight convex surrogates iff the underlying loss function is increasing in the number of incorrect predictions. However, gradient or cutting-plane computation for these functions is NP-hard for non-supermodular loss functions. We propose instead a novel surrogate loss function for submodular losses, the Lovász hinge, which leads to O(p log p) complexity with O(p) oracle accesses to the loss function to compute a gradient or cutting-plane. We prove that the Lovász...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
International audienceIn this work, a novel generic convex surrogate for general non-modular loss fu...
International audienceIn this work, a novel generic convex surrogate for general non-modular loss fu...
International audienceEmpirical risk minimization frequently employs convex surrogates to underlying...
International audienceEmpirical risk minimization frequently employs convex surrogates to underlying...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
Learning with non-modular losses is an important problem when sets of predictions are made simultane...
International audienceLearning with non-modular losses is an important problem when sets of predicti...
International audienceIn this work, a novel generic convex surrogate for general non-modular loss fu...
International audienceIn this work, a novel generic convex surrogate for general non-modular loss fu...
International audienceEmpirical risk minimization frequently employs convex surrogates to underlying...
International audienceEmpirical risk minimization frequently employs convex surrogates to underlying...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...
This thesis addresses the problem of learning with non-modular losses. In a prediction problem where...