Abstract. The possibility of selecting a subset of classes instead of one unique class for assignation is of great interest in many decision making systems. Selecting a subset of classes instead of singleton allows to reduce the error rate and to propose a reduced set to another classifier or an expert. This second step provides additional information, and therefore increases the quality of the result. In this paper, a unified view of the problem of class-selection with probabilistic classifiers is presented. The proposed framework, based on the evaluation of the probabilistic equivalence, allows to retrieve class-selective frame-works that have been proposed in the literature. We also describe an approach in which the decision rules are co...
In this paper, a new probabilistic model using measures of classifier competence and diversity is pr...
It is often difficult for data miners to know which classifier will perform most effectively in any ...
Rule learning is known for its descriptive and therefore comprehensible classification models which ...
In this paper, a unified view of the problem of class-selection with Bayesian classifiers is present...
This paper presents two methods for calculating competence of a classifier in the feature space. The...
This article addresses the problem of sorting alternatives evaluated by multiple criteria among pref...
In the paper measures of classifier competence and diversity using a probabilistic model are propose...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
In many current problems, the actual class of the instances, the ground truth, is unavail- able. In...
Classifiers based on probability density estimates can be used to find posterior probabilities for t...
Pairwise coupling is a popular multi-class classification method that combines all comparisons for e...
Data miners have access to a significant number of classifiers and use them on a variety of differen...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
At present, the usual operation mechanism of multiple classifier systems is the combination of class...
In this paper, a new probabilistic model using measures of classifier competence and diversity is pr...
It is often difficult for data miners to know which classifier will perform most effectively in any ...
Rule learning is known for its descriptive and therefore comprehensible classification models which ...
In this paper, a unified view of the problem of class-selection with Bayesian classifiers is present...
This paper presents two methods for calculating competence of a classifier in the feature space. The...
This article addresses the problem of sorting alternatives evaluated by multiple criteria among pref...
In the paper measures of classifier competence and diversity using a probabilistic model are propose...
In fields such as medicine and drug discovery, the ultimate goal of a classification is not to guess...
In many current problems, the actual class of the instances, the ground truth, is unavail- able. In...
Classifiers based on probability density estimates can be used to find posterior probabilities for t...
Pairwise coupling is a popular multi-class classification method that combines all comparisons for e...
Data miners have access to a significant number of classifiers and use them on a variety of differen...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
At present, the usual operation mechanism of multiple classifier systems is the combination of class...
In this paper, a new probabilistic model using measures of classifier competence and diversity is pr...
It is often difficult for data miners to know which classifier will perform most effectively in any ...
Rule learning is known for its descriptive and therefore comprehensible classification models which ...