Semi-supervised learning is proposed to exploit both labeled and unlabeled data. However, as the scale of data in real world applications increases significantly, conventional semi-supervised algorithms usually lead to massive computational cost and cannot be applied to large scale datasets. In addition, label noise is usually present in the practical applications due to human annotation, which very likely results in remarkable degeneration of performance in semi-supervised methods. To address these two challenges, in this paper, we propose an efficient RObust Semi-Supervised Ensemble Learning (ROSSEL) method, which generates pseudo-labels for unlabeled data using a set of weak annotators, and combines them to approximate the ground-truth l...
© 2016 IEEE. Often in real-world applications such as web page categorization, automatic image annot...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
State of the art approaches for Semi-Supervised Learning (SSL) usually follow a two-stage framework ...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Multi-label learning deals with data objects associated with multiple labels simultaneously. Previou...
Reducing the amount of labels required to train convolutional neural networks without performance de...
The key to semi-supervised learning (SSL) is to explore adequate information to leverage the unlabel...
Supervised machine learning is a branch of artificial intelligence concerned with learning computer ...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
The key to semi-supervised learning (SSL) is to explore adequate information to leverage the unlabel...
Over the last few years, Multi-label classification has received significant attention from research...
© 2016 IEEE. Often in real-world applications such as web page categorization, automatic image annot...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
State of the art approaches for Semi-Supervised Learning (SSL) usually follow a two-stage framework ...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
Multi-label learning deals with data objects associated with multiple labels simultaneously. Previou...
Reducing the amount of labels required to train convolutional neural networks without performance de...
The key to semi-supervised learning (SSL) is to explore adequate information to leverage the unlabel...
Supervised machine learning is a branch of artificial intelligence concerned with learning computer ...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
The key to semi-supervised learning (SSL) is to explore adequate information to leverage the unlabel...
Over the last few years, Multi-label classification has received significant attention from research...
© 2016 IEEE. Often in real-world applications such as web page categorization, automatic image annot...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
State of the art approaches for Semi-Supervised Learning (SSL) usually follow a two-stage framework ...