Learning using labeled and unlabelled data has received considerable amount of attention in the machine learning community due its potential in reducing the need for expensive labeled data. In this work we present a new method for combining labeled and unlabeled data based on classifier ensembles. The model we propose assumes each classifier in the ensemble observes the input using different set of features. Classifiers are initially trained using some labeled samples. The trained classifiers learn further through labeling the unknown patterns using a teaching signals that is generated using the decision of the classifier ensemble, i.e. the classifiers self-supervise each other. Experiments on a set of object images are presented. Our exper...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Abstract. While the quality of object recognition systems can strongly benefit from more data, human...
Abstract. Semi-supervised learning and ensemble learning are two im-portant learning paradigms. The ...
In many machine learning problems, unlabeled examples are abundant, while labeled examples are often...
Abstract Ensemble learning learns from the training data by generating an ensemble of multiple base ...
Abstract—Ensemble learning aims to improve generalization ability by using multiple base learners. I...
Many real-world machine learning tasks have very limited labeled data but a large amount of unlabele...
We present a new approach to ensemble classification that requires learning only a single base class...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
AbstractThere has been much interest in applying techniques that incorporate knowledge from unlabell...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
Abstract Semi-supervised learning and ensemble learning are two important machine learning paradigms...
Ensemble methods like Bagging and Boosting which combine the decisions of multiple hypotheses are so...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Abstract. While the quality of object recognition systems can strongly benefit from more data, human...
Abstract. Semi-supervised learning and ensemble learning are two im-portant learning paradigms. The ...
In many machine learning problems, unlabeled examples are abundant, while labeled examples are often...
Abstract Ensemble learning learns from the training data by generating an ensemble of multiple base ...
Abstract—Ensemble learning aims to improve generalization ability by using multiple base learners. I...
Many real-world machine learning tasks have very limited labeled data but a large amount of unlabele...
We present a new approach to ensemble classification that requires learning only a single base class...
Semi-supervised learning (SSL) methods attempt to achieve better classification of unseen data throu...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
AbstractThere has been much interest in applying techniques that incorporate knowledge from unlabell...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
Abstract Semi-supervised learning and ensemble learning are two important machine learning paradigms...
Ensemble methods like Bagging and Boosting which combine the decisions of multiple hypotheses are so...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Abstract. While the quality of object recognition systems can strongly benefit from more data, human...