There is a significant body of research in machine learning addressing techniques for performing classification problems where the sole objective is to minimize the error rate (i.e., the costs of misclassification are assumed to be symmetric). More recent research has proposed a variety of approaches to attacking classification problem domains where the costs of misclassification are not uniform. Many of these approaches make algorithm-specific modifications to algorithms that previously focused only on minimizing the error rate. Other approaches have resulted in general methods that transform an arbitrary error-rate focused classier into a cost-sensitive classier. While the research has demonstrated the success of many of these general app...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the use, for the task of classifier learning in the presence of misclassific...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
This paper experimentally compares the performance of discriminative and generative classifiers for ...
Many machine learning applications require classifiers that minimize an asymmetric cost function r...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Over the years, a plethora of cost-sensitive methods have been proposed for learning on data when di...
Many real-world data mining applications need varying cost for different types of classification err...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
The evaluation of classifier performance in a cost-sensitive setting is straightforward if the opera...
Abstract. A common assumption made in the field of Pattern Recog-nition is that the priors inherent ...
In real-world applications the number of examples in one class may overwhelm the other class, but th...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the use, for the task of classifier learning in the presence of misclassific...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
This paper experimentally compares the performance of discriminative and generative classifiers for ...
Many machine learning applications require classifiers that minimize an asymmetric cost function r...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Over the years, a plethora of cost-sensitive methods have been proposed for learning on data when di...
Many real-world data mining applications need varying cost for different types of classification err...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
The evaluation of classifier performance in a cost-sensitive setting is straightforward if the opera...
Abstract. A common assumption made in the field of Pattern Recog-nition is that the priors inherent ...
In real-world applications the number of examples in one class may overwhelm the other class, but th...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the application of the multiple classifier technique known as "stacking" [23...
This paper investigates the use, for the task of classifier learning in the presence of misclassific...