International audienceThis paper introduces a general multi-class approach to weakly supervised classification. Inferring the labels and learning the parameters of the model is usually done jointly through a block-coordinate descent algorithm such as expectation-maximization (EM), which may lead to local minima. To avoid this problem, we propose a cost function based on a convex relaxation of the soft-max loss. We then propose an algorithm specifically designed to efficiently solve the corresponding semidefinite program (SDP). Empirically, our method compares favorably to standard ones on different datasets for multiple instance learning and semi-supervised learning, as well as on clustering tasks
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
International audienceWe study supervised and semi-supervised algorithms in the set-valued classific...
International audienceThe standard multi-class classification risk, based on the binary loss, is rar...
In this paper, we study the problem of learning from weakly labeled data, where labels of the traini...
In this paper, we study the problem of learning from weakly labeled data, where labels of the traini...
Weakly supervised data helps improve learning performance, which is an important machine learning da...
A promising approach to relation extrac-tion, called weak or distant supervision, exploits an existi...
International audienceA novel method for combining weak classifiers in supervised learning is descri...
Multi-label learning deals with data objects associated with multiple labels simultaneously. Previou...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
Many non-convex problems in machine learning such as embedding and clustering have been solved using...
International audienceThe development of robust classification model is among the important issues i...
Many problems in signal processing, machine learning and computer vision can be solved by learning l...
© 2015 IEEE. Weakly supervised object detection, is a challenging task, where the training procedure...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
International audienceWe study supervised and semi-supervised algorithms in the set-valued classific...
International audienceThe standard multi-class classification risk, based on the binary loss, is rar...
In this paper, we study the problem of learning from weakly labeled data, where labels of the traini...
In this paper, we study the problem of learning from weakly labeled data, where labels of the traini...
Weakly supervised data helps improve learning performance, which is an important machine learning da...
A promising approach to relation extrac-tion, called weak or distant supervision, exploits an existi...
International audienceA novel method for combining weak classifiers in supervised learning is descri...
Multi-label learning deals with data objects associated with multiple labels simultaneously. Previou...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
In pattern recognition and machine learning, a classification problem refers to finding an algorithm...
Many non-convex problems in machine learning such as embedding and clustering have been solved using...
International audienceThe development of robust classification model is among the important issues i...
Many problems in signal processing, machine learning and computer vision can be solved by learning l...
© 2015 IEEE. Weakly supervised object detection, is a challenging task, where the training procedure...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
International audienceWe study supervised and semi-supervised algorithms in the set-valued classific...
International audienceThe standard multi-class classification risk, based on the binary loss, is rar...