We propose a semi-supervised framework incorporating feature mapping with multiclass classification. By learning multiple classification tasks simultaneously, this framework can learn the latent feature space effectively for both labeled and unlabeled data. The knowledge in the transformed space can be transferred not only between the labeled and unlabeled data, but also across multiple classes, so as to improve the classification performance given a small amount of labeled data. We show that this problem is equivalent to a sequential convex optimization problem by applying constraint concave-convex procedure (CCCP). Efficient algorithm with theoretical guarantee is proposed and computational issue is investigated. Extensive experiments hav...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
We consider the problem of deep semi-supervised classification, where label information is obtained ...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
We suggest a method for multi-class learning with many classes by simultaneously learning shared cha...
Abstract The problem of multi-label classification has attracted great interests in the last decade....
The constraint classification framework captures many flavors of multiclass classification including...
This paper suggests a method for multiclass learning with many classes by simultaneously learning sh...
Automated feature discovery is a fundamental problem in machine learning. Although classical feature...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
We address the problem of partially-labeled multiclass classification, where instead of a single lab...
We consider the general problem of learn-ing from both pairwise constraints and un-labeled data. The...
International audienceThis paper introduces a general multi-class approach to weakly supervised clas...
We present an algorithm for multiclass Semi-Supervised learning which is learning from a limited amo...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
We consider the problem of deep semi-supervised classification, where label information is obtained ...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
We suggest a method for multi-class learning with many classes by simultaneously learning shared cha...
Abstract The problem of multi-label classification has attracted great interests in the last decade....
The constraint classification framework captures many flavors of multiclass classification including...
This paper suggests a method for multiclass learning with many classes by simultaneously learning sh...
Automated feature discovery is a fundamental problem in machine learning. Although classical feature...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
We address the problem of partially-labeled multiclass classification, where instead of a single lab...
We consider the general problem of learn-ing from both pairwise constraints and un-labeled data. The...
International audienceThis paper introduces a general multi-class approach to weakly supervised clas...
We present an algorithm for multiclass Semi-Supervised learning which is learning from a limited amo...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
We consider the problem of deep semi-supervised classification, where label information is obtained ...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...