© Springer International Publishing AG 2016. Multi-label learning is a challenging problem in computer vision field. In this paper, we propose a novel active learning approach to reduce the annotation costs greatly for multi-label classification. State-of-the-art active learning methods either annotate all the relevant samples without diagnosing discriminative information in the labels or annotate only limited discriminative samples manually, that has weak immunity for the outlier labels. To overcome these problems, we propose a multi-label active learning method based on Maximum Correntropy Criterion (MCC) by merging uncertainty and representativeness. We use the the labels of labeled data and the prediction labels of unknown data to enhan...
We study the problem of active learning for multilabel clas-sification. We focus on the real-world s...
Active learning reduces the labeling cost by selec-tively querying the most valuable information fro...
Multi-label classification is crucial to several practical applications including document categoriz...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
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 ...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Recently active learning has attracted a lot of attention in computer vision field, as it is time an...
Multi-label active learning is an important problem because of the expensive labeling cost in multi-...
Active learning (AL) aims to find a better trade-off between labeling costs and model performance by...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Copyright 2018 Society of Photo‑Optical Instrumentation Engineers (SPIE). One print or electronic co...
We study the problem of active learning for multilabel clas-sification. We focus on the real-world s...
Active learning reduces the labeling cost by selec-tively querying the most valuable information fro...
Multi-label classification is crucial to several practical applications including document categoriz...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
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 ...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Recently active learning has attracted a lot of attention in computer vision field, as it is time an...
Multi-label active learning is an important problem because of the expensive labeling cost in multi-...
Active learning (AL) aims to find a better trade-off between labeling costs and model performance by...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Copyright 2018 Society of Photo‑Optical Instrumentation Engineers (SPIE). One print or electronic co...
We study the problem of active learning for multilabel clas-sification. We focus on the real-world s...
Active learning reduces the labeling cost by selec-tively querying the most valuable information fro...
Multi-label classification is crucial to several practical applications including document categoriz...