In this paper, we propose a new maximum margin-based, active learning algorithm for identifying incorrectly labeled training data. The algorithm combines a round-robin approach for investigating each class with a simple, yet effective ranking metric called maximum negative margin (MNM). Samples are given to an expert for re-evaluation to determine if they are indeed mislabeled. We also propose using five active learning metrics, including uncertainty sampling with margin sampling (USMS) and minimum margin, for the noisy label task which have previously been used in the standard active learning setting for identifying new samples to label. USMS is very competitive with maximum negative margin. In addition, we consider other information theor...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
We study active learning where the labeler can not only return incorrect labels but also abstain fro...
For multi-class classification under class-conditional label noise, we prove that the accuracy metri...
© 2013 IEEE. How can we find a general way to choose the most suitable samples for training a classi...
© 2012 IEEE. Traditional classification systems rely heavily on sufficient training data with accura...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Active learning aims to train a classifier as fast as possible with as few labels as possible. The c...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
This paper presents a new approach to identifying and eliminating mislabeled training instances for ...
The manual labeling of natural images is and has always been painstaking and slow process, especiall...
The abundance of real-world data and limited labeling budget calls for active learning, which is an ...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Multi-label classification has gained a lot of attraction in the field of computer vision over the p...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
We study active learning where the labeler can not only return incorrect labels but also abstain fro...
For multi-class classification under class-conditional label noise, we prove that the accuracy metri...
© 2013 IEEE. How can we find a general way to choose the most suitable samples for training a classi...
© 2012 IEEE. Traditional classification systems rely heavily on sufficient training data with accura...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
Active learning aims to train a classifier as fast as possible with as few labels as possible. The c...
Abstract—In multi-label learning, it is rather expensive to label instances since they are simultane...
This paper presents a new approach to identifying and eliminating mislabeled training instances for ...
The manual labeling of natural images is and has always been painstaking and slow process, especiall...
The abundance of real-world data and limited labeling budget calls for active learning, which is an ...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...