We present an algorithm for multiclass Semi-Supervised learning which is learning from a limited amount of labeled data and plenty of unlabeled data. Existing semi-supervised algorithms use approaches such as one-versus-all to convert the multiclass problem to several binary classification problems which is not optimal. We propose a multiclass semi-supervised boosting algorithm that solves multiclass classification problems directly. The algorithm is based on a novel multiclass loss function consisting of the margin cost on labeled data and two regularization terms on labeled and unlabeled data. Experimental results on a number of UCI datasets show that the proposed algorithm performs better than the state-of-the-art boosting algorithms for...
This paper presents a strategy to improve the AdaBoost algorithm with a quadratic combination of bas...
Abstract—In this work, we propose a new optimization frame-work for multiclass boosting learning. In...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Boosting has been a very successful technique for solving the two-class classification problem. In g...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
We present a scalable and effective classification model to train multiclass boosting for multiclass...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
We propose a novel multiclass classification algorithm Gentle Adaptive Multiclass Boosting Learning ...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
Boosting methods combine a set of moderately accurate weak learners to form a highly accurate predic...
This paper presents a strategy to improve the AdaBoost algorithm with a quadratic combination of bas...
Abstract—In this work, we propose a new optimization frame-work for multiclass boosting learning. In...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
Boosting has been a very successful technique for solving the two-class classification problem. In g...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
We present a scalable and effective classification model to train multiclass boosting for multiclass...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
While semi-supervised learning (SSL) algorithms provide an efficient way to make use of both labelle...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
We propose a novel multiclass classification algorithm Gentle Adaptive Multiclass Boosting Learning ...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
We present a unifying framework for studying the solution of multiclass categorization prob-lems by ...
Boosting methods combine a set of moderately accurate weak learners to form a highly accurate predic...
This paper presents a strategy to improve the AdaBoost algorithm with a quadratic combination of bas...
Abstract—In this work, we propose a new optimization frame-work for multiclass boosting learning. In...
In recent years, the performance of semi-supervised learning has been theoretically investigated. Ho...