The generalization error, or probability of misclassification, of ensemble classifiers has been shown to be bounded above by a function of the mean correlation between the constituent (i.e., base) classifiers and their average strength. This bound suggests that increasing the strength and/or decreasing the correlation of an ensemble's base classifiers may yield improved performance under the assumption of equal error costs. However, this and other existing bounds do not directly address application spaces in which error costs are inherently unequal. For applications involving binary classification, Receiver Operating Characteristic (ROC) curves, performance curves that explicitly trade off false alarms and missed detections, are often utili...
International audienceIn this paper we propose a general framework to study the generalization prope...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
Abstract The generalization error, or probability of misclassification, of ensemble classifiers has ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
New bounds on classification error rates for the error-correcting output code (ECOC) approach in mac...
In this paper, we focus the attention on one of the oldest problems in pattern recognition and machi...
We investigate the effects, in terms of a bias-variance decomposition of error, of applying class-se...
This dissertation is about classification methods and class probability prediction. It can be roughl...
In this paper we propose a general framework to study the generalization properties of binary classi...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
We present an empirical study of the gener-alization error bounds on the empirical risk of classifie...
Ensembles that combine the decisions of classifiers generated by using perturbed versions of the tra...
International audienceIn this paper we propose a general framework to study the generalization prope...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
Abstract The generalization error, or probability of misclassification, of ensemble classifiers has ...
Popular ensemble classifier induction algorithms, such as bagging and boosting, construct the ensemb...
New bounds on classification error rates for the error-correcting output code (ECOC) approach in mac...
In this paper, we focus the attention on one of the oldest problems in pattern recognition and machi...
We investigate the effects, in terms of a bias-variance decomposition of error, of applying class-se...
This dissertation is about classification methods and class probability prediction. It can be roughl...
In this paper we propose a general framework to study the generalization properties of binary classi...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
We present an empirical study of the gener-alization error bounds on the empirical risk of classifie...
Ensembles that combine the decisions of classifiers generated by using perturbed versions of the tra...
International audienceIn this paper we propose a general framework to study the generalization prope...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...