Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more accurate than any of its component classifiers. In this paper, we use ensemble methods to identify noisy training examples. More precisely, we consider the problem of mislabeled training examples in classification tasks, and address this problem by pre-processing the training set, i.e. by identifying and removing outliers from the training set. We study a number of filter techniques that are based on well-known ensemble methods like cross-validated committees, bagging and boosting. We evaluate these techniques in an Inductive Logic Programming setting and use a first order decision tree algorithm to construct the ensembles. © Springer-Verlag Ber...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
. Bagging and boosting are methods that generate a diverse ensemble of classifiers by manipulating t...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Ensemble methods combine a set of classi ers to construct a new classi er that is (often) more ac...
This dissertation is about classification methods and class probability prediction. It can be roughl...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
International audienceReal-world datasets are often contaminated with label noise; labeling is not a...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
An ensemble method produces diverse classifiers and combines their decisions for ensemble’s decision...
In real world situations every model has some weaknesses and will make errors on training data. Give...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
Ensembles that combine the decisions of classifiers generated by using perturbed versions of the tra...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
. Bagging and boosting are methods that generate a diverse ensemble of classifiers by manipulating t...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Ensemble methods combine a set of classi ers to construct a new classi er that is (often) more ac...
This dissertation is about classification methods and class probability prediction. It can be roughl...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
International audienceReal-world datasets are often contaminated with label noise; labeling is not a...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
Class noise, as know as the mislabeled data in training set, can lead to poor accuracy in classifica...
An ensemble method produces diverse classifiers and combines their decisions for ensemble’s decision...
In real world situations every model has some weaknesses and will make errors on training data. Give...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
Ensembles that combine the decisions of classifiers generated by using perturbed versions of the tra...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
An ensemble consists of a set of individually trained classifiers (such as neural networks or decisi...
. Bagging and boosting are methods that generate a diverse ensemble of classifiers by manipulating t...