Many existing approaches employ one-vs-rest method to decompose a multi-label classification problem into a set of 2- class classification problems, one for each class. This method is valid in traditional single-label classification, it, however, incurs training inconsistency in multi-label classification, because in the latter a data point could belong to more than one class. In order to deal with this problem, in this work, we further develop classicalK-Nearest Neighbor classifier and propose a novel Class Balanced K-Nearest Neighbor approach for multi-label classification by emphasizing balanced usage of data from all the classes. In addition, we also propose a Class Balanced Linear Discriminant Analysis approach to address high-dimensio...
Multi-label classifications exist in many real world applications. This paper empirically studies th...
We describe a novel multi-label classification algorithm which works for discrete data. A matrix whi...
Multi-label classification has attracted a great deal of attention in recent years. This paper prese...
Many existing researches employ one-vs-others approach to decompose a multi-label classification pro...
In multi-label learning, each instance in the training set is associated with a set of labels, and t...
Abstract. ML-kNN is a well-known algorithm for multi-label classifica-tion. Although effective in so...
Multilabel data share important features, including label imbalance, which has a significant influen...
International audienceMulti-label classification allows instances to belong to several classes at on...
Publication in the conference proceedings of EUSIPCO, Lausanne, Switzerland, 200
Multi-label classification as a data mining task has recently attracted increasing interest from res...
The 1st International Workshop on Learning with Imbalanced Domains: Theory and Applications (LIDTA 2...
The paper describes an algorithm for multi-label classification. Since a pattern can belong to more ...
The 1st International Workshop on Learning with Imbalanced Domains: Theory and Applications (LIDTA 2...
The paper describes an algorithm for multi-label classification. Since a pattern can belong to more ...
Abstract: Multi-label learning originated from the investigation of text cat-egorization problem, wh...
Multi-label classifications exist in many real world applications. This paper empirically studies th...
We describe a novel multi-label classification algorithm which works for discrete data. A matrix whi...
Multi-label classification has attracted a great deal of attention in recent years. This paper prese...
Many existing researches employ one-vs-others approach to decompose a multi-label classification pro...
In multi-label learning, each instance in the training set is associated with a set of labels, and t...
Abstract. ML-kNN is a well-known algorithm for multi-label classifica-tion. Although effective in so...
Multilabel data share important features, including label imbalance, which has a significant influen...
International audienceMulti-label classification allows instances to belong to several classes at on...
Publication in the conference proceedings of EUSIPCO, Lausanne, Switzerland, 200
Multi-label classification as a data mining task has recently attracted increasing interest from res...
The 1st International Workshop on Learning with Imbalanced Domains: Theory and Applications (LIDTA 2...
The paper describes an algorithm for multi-label classification. Since a pattern can belong to more ...
The 1st International Workshop on Learning with Imbalanced Domains: Theory and Applications (LIDTA 2...
The paper describes an algorithm for multi-label classification. Since a pattern can belong to more ...
Abstract: Multi-label learning originated from the investigation of text cat-egorization problem, wh...
Multi-label classifications exist in many real world applications. This paper empirically studies th...
We describe a novel multi-label classification algorithm which works for discrete data. A matrix whi...
Multi-label classification has attracted a great deal of attention in recent years. This paper prese...