Abstract—We propose a novel boosting approach to multi-class classification problems, in which multiple classes are distin-guished by a set of random projection matrices in essence. The approach uses random projections to alleviate the proliferation of binary classifiers typically required to perform multi-class classification. The result is a multi-class classifier with a single vector-valued parameter, irrespective of the number of classes involved. Two variants of this approach are proposed. The first method randomly projects the original data into new spaces, while the second method randomly projects the outputs of learned weak classifiers. These methods are not only conceptually simple but also effective and easy to implement. A series...
We present a scalable and effective classification model to train multiclass boosting for multiclass...
The problem addressed in this letter concerns the multiclassifier generation by a random subspace me...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Abstract—We propose a novel approach to multi-class boosting classification in which multiple classe...
We propose a novel boosting approach to multiclass classification problems, in which multiple classe...
Boosting methods combine a set of moderately accurate weak learners to form a highly accurate predic...
In this paper, we propose a weighted multiple classifier framework based on random projections. Simi...
Boosting approaches are based on the idea that high-quality learning algorithms can be formed by rep...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Boosting combines weak classifiers to form highly accurate predictors. Although the case of binary c...
We describe a new approach to multiple class pattern classification problems with noise and high dim...
Abstract. We present a novel column generation based boosting method for multi-class classification....
We present a scalable and effective classification model to train multiclass boosting for multiclass...
The problem addressed in this letter concerns the multiclassifier generation by a random subspace me...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Abstract—We propose a novel approach to multi-class boosting classification in which multiple classe...
We propose a novel boosting approach to multiclass classification problems, in which multiple classe...
Boosting methods combine a set of moderately accurate weak learners to form a highly accurate predic...
In this paper, we propose a weighted multiple classifier framework based on random projections. Simi...
Boosting approaches are based on the idea that high-quality learning algorithms can be formed by rep...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
Random Forests (RF) is a successful classifier exhibiting performance comparable to Adaboost, but is...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Boosting combines weak classifiers to form highly accurate predictors. Although the case of binary c...
We describe a new approach to multiple class pattern classification problems with noise and high dim...
Abstract. We present a novel column generation based boosting method for multi-class classification....
We present a scalable and effective classification model to train multiclass boosting for multiclass...
The problem addressed in this letter concerns the multiclassifier generation by a random subspace me...
The multi-class classification algorithms are widely used by many areas such as machine learning and...