We present a novel hierarchical approach to multi-class classification which is generic in that it can be applied to different classification models (e.g., support vector machines, perceptrons), and makes no explicit assumptions about the probabilistic structure of the problem as it is usually done in multi-class classification. By adding a cascade of additional classifiers, each of which receives the previous classifier's output in addition to regular input data, the approach harnesses unused information that manifests itself in the form of, e.g., correlations between predicted classes. Using multilayer perceptrons as a classification model, we demonstrate the validity of this approach by testing it on a complex ten-class 3D gesture recogn...
Several real problems involve the classification of data into categories or classes. Given a data se...
Real-world problems often have multiple classes: text, speech, image, biological sequences. Algorith...
In this paper we present methods of enhancing existing discriminative classifiers for multi-labeled ...
International audienceWe present a novel hierarchical approach to multi-class classification which i...
We present a novel method to perform multi-class pattern classification with neural networks and tes...
Abstract—We present a new method of multiclass classification based on the combination of one-vs-all...
The problem of pattern classification is considered for the case of multicategory classification whe...
This paper presents a new combination scheme for reducing the number of focal elements to manipulate...
Machine learning techniques have been very efficient in many applications, in particular, when learn...
Abstract. Data models that are induced in classifier construction often consists of multiple parts, ...
International audienceWe present a novel method to perform multi-class pattern classification with n...
Treball realitzat a TELECOM ParisTech i EADS FranceMulti-class classification is the core issue of m...
. The solution of binary classification problems using support vector machines (SVMs) is well develo...
Abstract A unified view on multi-class support vector machines (SVMs) is presented, covering most pr...
Traditional artificial neural architectures possess limited ability to address the scale problem exh...
Several real problems involve the classification of data into categories or classes. Given a data se...
Real-world problems often have multiple classes: text, speech, image, biological sequences. Algorith...
In this paper we present methods of enhancing existing discriminative classifiers for multi-labeled ...
International audienceWe present a novel hierarchical approach to multi-class classification which i...
We present a novel method to perform multi-class pattern classification with neural networks and tes...
Abstract—We present a new method of multiclass classification based on the combination of one-vs-all...
The problem of pattern classification is considered for the case of multicategory classification whe...
This paper presents a new combination scheme for reducing the number of focal elements to manipulate...
Machine learning techniques have been very efficient in many applications, in particular, when learn...
Abstract. Data models that are induced in classifier construction often consists of multiple parts, ...
International audienceWe present a novel method to perform multi-class pattern classification with n...
Treball realitzat a TELECOM ParisTech i EADS FranceMulti-class classification is the core issue of m...
. The solution of binary classification problems using support vector machines (SVMs) is well develo...
Abstract A unified view on multi-class support vector machines (SVMs) is presented, covering most pr...
Traditional artificial neural architectures possess limited ability to address the scale problem exh...
Several real problems involve the classification of data into categories or classes. Given a data se...
Real-world problems often have multiple classes: text, speech, image, biological sequences. Algorith...
In this paper we present methods of enhancing existing discriminative classifiers for multi-labeled ...