Classifiers sometimes return a set of values of the class variable since there is not enough information to point to a single class value. These classifiers are known as imprecise classifiers. Decision Trees for Imprecise Classification were proposed and adapted to consider the error costs when classifying new instances. In this work, we present a new cost-sensitive Decision Tree for Imprecise Classification that considers the error costs by weighting instances, also considering such costs in the tree building process. Our proposed method uses the Nonparametric Predictive Inference Model, a nonparametric model that does not assume previous knowledge about the data, unlike previous imprecise probabilities models. We show that our pro...
The decision tree is a well-known methodology for classification and regression. In this dissertatio...
Make a decision has often many results and repercussions. These results do not have the same importa...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
Abstract — Decision trees are few of the most extensively researched domains in Knowledge Discovery....
. This paper explores two boosting techniques for cost-sensitive tree classifications in the situati...
peer reviewedSeveral real-world classification problems are example-dependent cost-sensitive in natu...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Decision trees are well-known and established models for classification and regression. In this pape...
Decision trees are well-known and established models for classification and regression. In this pape...
Typical approaches to classification treat class labels as disjoint. For each training example, it i...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
Abstract. We describe an experimental study of pruning methods for decision tree classiers when the ...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
The decision tree is a well-known methodology for classification and regression. In this dissertatio...
Make a decision has often many results and repercussions. These results do not have the same importa...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
Abstract — Decision trees are few of the most extensively researched domains in Knowledge Discovery....
. This paper explores two boosting techniques for cost-sensitive tree classifications in the situati...
peer reviewedSeveral real-world classification problems are example-dependent cost-sensitive in natu...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Decision trees are well-known and established models for classification and regression. In this pape...
Decision trees are well-known and established models for classification and regression. In this pape...
Typical approaches to classification treat class labels as disjoint. For each training example, it i...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
Abstract. We describe an experimental study of pruning methods for decision tree classiers when the ...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
The decision tree is a well-known methodology for classification and regression. In this dissertatio...
Make a decision has often many results and repercussions. These results do not have the same importa...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...