Multi-label classification, where each instance is assigned to multiple categories, is a prevalent problem in data analysis. However, annotations of multi-label instances are typically more timeconsuming or expensive to obtain than annotations of single-label instances. Though active learning has been widely studied on reducing labeling effort for single-label problems, current research on multi-label active learning remains in a preliminary state. In this paper, we first propose two novel multi-label active learning strategies, a max-margin prediction uncertainty strategy and a label cardinality inconsistency strategy, and then integrate them into an adaptive framework of multi-label active learning. Our empirical results on multiple multi...
Distribution shift poses a challenge for active data collection in the real world. We address the pr...
Conventional active learning algorithms assume a single labeler that produces noiseless label at a g...
Multi-label classification has attracted much interest due to its wide applicability. Modeling label...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
© Springer International Publishing AG 2016. Multi-label learning is a challenging problem in comput...
Multi-label active learning is an important problem because of the expensive labeling cost in multi-...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Abstract — Conventional active learning dynamically con-structs the training set only along the samp...
Abstract—Conventional active learning dynamically constructs the training set only along the sample ...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
Part 6: Machine Learning-Learning (MALL)International audienceActive learning is an iterative superv...
Active learning reduces the labeling cost by selec-tively querying the most valuable information fro...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Multi-label learning studies the problem where each example is represented by a single instance whil...
Distribution shift poses a challenge for active data collection in the real world. We address the pr...
Conventional active learning algorithms assume a single labeler that produces noiseless label at a g...
Multi-label classification has attracted much interest due to its wide applicability. Modeling label...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
© Springer International Publishing AG 2016. Multi-label learning is a challenging problem in comput...
Multi-label active learning is an important problem because of the expensive labeling cost in multi-...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Abstract — Conventional active learning dynamically con-structs the training set only along the samp...
Abstract—Conventional active learning dynamically constructs the training set only along the sample ...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
Part 6: Machine Learning-Learning (MALL)International audienceActive learning is an iterative superv...
Active learning reduces the labeling cost by selec-tively querying the most valuable information fro...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Multi-label learning studies the problem where each example is represented by a single instance whil...
Distribution shift poses a challenge for active data collection in the real world. We address the pr...
Conventional active learning algorithms assume a single labeler that produces noiseless label at a g...
Multi-label classification has attracted much interest due to its wide applicability. Modeling label...