We study multi-label prediction for structured output sets, a problem that occurs, for example, in object detection in images, secondary structure prediction in computational biology, and graph matching with symmetries. Conventional multilabel classification techniques are typically not applicable in this situation, because they require explicit enumeration of the label set, which is infeasible in case of structured outputs. Relying on techniques originally designed for single-label structured prediction, in particular structured support vector machines, results in reduced prediction accuracy, or leads to infeasible optimization problems. In this work we derive a maximum-margin training formulation for multi-label structured prediction that...
We consider large margin estimation in a broad range of prediction models where inference involves s...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
The goal of structured prediction is to build machine learning models that predict relational inform...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output spaces, a problem that occurs, for example, in...
We frame max-margin learning of latent variable structured prediction models as a convex optimizatio...
We frame max-margin learning of latent variable structured prediction models as a convex opti-mizati...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
Canonical correlation analysis (CCA) and maximum margin output coding (MMOC) methods have shown prom...
We consider the task of structured data prediction. Over the last few years, there has been an abund...
We address the problem of generating multiple hypotheses for structured predic-tion tasks that invol...
We present a simple and scalable algorithm for maximum-margin estimation of structured output models...
Classification problems in machine learning involve assigning labels to various kinds of output type...
We consider large margin estimation in a broad range of prediction models where inference involves s...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
The goal of structured prediction is to build machine learning models that predict relational inform...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output sets, a problem that occurs, for example, in o...
We study multi-label prediction for structured output spaces, a problem that occurs, for example, in...
We frame max-margin learning of latent variable structured prediction models as a convex optimizatio...
We frame max-margin learning of latent variable structured prediction models as a convex opti-mizati...
Discriminative techniques, such as conditional random fields (CRFs) or structure aware maximum-margi...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
Canonical correlation analysis (CCA) and maximum margin output coding (MMOC) methods have shown prom...
We consider the task of structured data prediction. Over the last few years, there has been an abund...
We address the problem of generating multiple hypotheses for structured predic-tion tasks that invol...
We present a simple and scalable algorithm for maximum-margin estimation of structured output models...
Classification problems in machine learning involve assigning labels to various kinds of output type...
We consider large margin estimation in a broad range of prediction models where inference involves s...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
The goal of structured prediction is to build machine learning models that predict relational inform...