Over the years, a plethora of cost-sensitive methods have been proposed for learning on data when different types of misclassification errors incur different costs. Our contribution is a unifying framework that provides a comprehensive and insightful overview on cost-sensitive ensemble methods, pinpointing their differences and similarities via a fine-grained categorization. Our framework contains natural extensions and generalisations of ideas across methods, be it AdaBoost, Bagging or Random Forest, and as a result not only yields all methods known to date but also some not previously considered.publishedVersio
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
Over the years, a plethora of cost-sensitive methods have been proposed for learning on data when di...
There is a significant body of research in machine learning addressing techniques for performing cla...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
peer reviewedSeveral real-world classification problems are example-dependent cost-sensitive in natu...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Cost-sensitive l...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
Real-life datasets are often imbalanced, that is, there are significantly more training samples avai...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Traditionally, classification algorithms aim to minimize the number of errors. However, this approac...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
Over the years, a plethora of cost-sensitive methods have been proposed for learning on data when di...
There is a significant body of research in machine learning addressing techniques for performing cla...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
peer reviewedSeveral real-world classification problems are example-dependent cost-sensitive in natu...
University of Technology, Sydney. Faculty of Engineering and Information Technology.Cost-sensitive l...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
Real-life datasets are often imbalanced, that is, there are significantly more training samples avai...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Cost-Sensitive learning has become an increasingly important area that recognizes that real world cl...
Traditionally, classification algorithms aim to minimize the number of errors. However, this approac...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...