In many applications, the mistakes made by an automatic classifier are not equal, they have different costs. These problems may be solved using a cost-sensitive learning approach. The main idea is not to minimize the number of errors, but the total cost produced by such mistakes. This brief presents a new multiclass cost-sensitive algorithm, in which each example has attached its corresponding misclassification cost. Our proposal is theoretically well-founded and is designed to optimize cost-sensitive loss functions. This research was motivated by a real-world problem, the biomass estimation of several plankton taxonomic groups. In this particular application, our method improves the performance of traditional multiclass classification appr...
different species of plants using multiclass kernel support vector machine, an efficient machine lea...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
In many applications, the mistakes made by an automatic classifier are not equal, they have differen...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton imaging systems such as SIPPER produce a large quantity of data in the form of plankton ima...
International audienceThe size of current plankton image datasets renders manual classification virt...
Abstract. Learning algorithms from the fields of artificial neural networks and machine learning, ty...
In this paper we present a new method for solving multiclass problems with a Support Vector Machine....
There is a significant body of research in machine learning addressing techniques for performing cla...
1 Learning algorithms from the fields of artificial neural networks and machine learning, typically,...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
The size of phytoplankton not only influences its physiology, metabolic rates and marine food web, b...
Support vector machine (SVM) is a powerful tool in binary classification, known to attain excellent...
different species of plants using multiclass kernel support vector machine, an efficient machine lea...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...
In many applications, the mistakes made by an automatic classifier are not equal, they have differen...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton imaging systems such as SIPPER produce a large quantity of data in the form of plankton ima...
International audienceThe size of current plankton image datasets renders manual classification virt...
Abstract. Learning algorithms from the fields of artificial neural networks and machine learning, ty...
In this paper we present a new method for solving multiclass problems with a Support Vector Machine....
There is a significant body of research in machine learning addressing techniques for performing cla...
1 Learning algorithms from the fields of artificial neural networks and machine learning, typically,...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
The size of phytoplankton not only influences its physiology, metabolic rates and marine food web, b...
Support vector machine (SVM) is a powerful tool in binary classification, known to attain excellent...
different species of plants using multiclass kernel support vector machine, an efficient machine lea...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
It is an actual and challenging issue to learn cost-sensitive models from those datasets that are wi...