Multi-label learning deals with data objects associated with multiple labels simultaneously. Previous studies typically assume that for each instance, the full set of relevant labels associated with each training instance is given. In many applicationssuch as image annotation, however, it’s usually difficult to get the full label set for each instance and only a partial or even empty set of relevant labels is available. We call this kind of problem as "semi-supervised weak-label learning" problem. In this work we propose the SSWL (Semi-Supervised Weak-Label) method to address this problem. Both instance similarity and label similarity are considered for the complement of missing labels. Ensemble of multiple models are utilized to improve th...
Machine learning has achieved great advances in various tasks, especially in supervised learning tas...
The problem of multi-label classification has attracted great interests in the last decade. Multi-la...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
© 2015 IEEE. It is often expensive and time consuming to collect labeled training samples in many re...
Semi-supervised learning is proposed to exploit both labeled and unlabeled data. However, as the sca...
Multi-Instance Multi-Label learning (MIML) deals with data objects that are represented by a bag of ...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
Graduation date: 2013Many methods have been explored in the literature of multi-label learning, rang...
We address the problem of semi-supervised learning in an adversarial setting. Instead of assuming th...
Abstract The problem of multi-label classification has attracted great interests in the last decade....
Machine learning has achieved great advances in various tasks, especially in supervised learning tas...
The problem of multi-label classification has attracted great interests in the last decade. Multi-la...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
Multi-label learning deals with data associated with multiple labels simultaneously. Previous work o...
© 2015 IEEE. It is often expensive and time consuming to collect labeled training samples in many re...
Semi-supervised learning is proposed to exploit both labeled and unlabeled data. However, as the sca...
Multi-Instance Multi-Label learning (MIML) deals with data objects that are represented by a bag of ...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
Graduation date: 2013Many methods have been explored in the literature of multi-label learning, rang...
We address the problem of semi-supervised learning in an adversarial setting. Instead of assuming th...
Abstract The problem of multi-label classification has attracted great interests in the last decade....
Machine learning has achieved great advances in various tasks, especially in supervised learning tas...
The problem of multi-label classification has attracted great interests in the last decade. Multi-la...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...