Rules are commonly used for classification because they are modular, intelligible and easy to learn. Existing work in classification rule learning assumes the goal is to produce categorical classifications to maximize classification accuracy. Recent work in machine learning has pointed out the limitations of classification accuracy; when class distributions are skewed, or error costs are unequal, an accuracy maximizing rule set can perform poorly. A more flexible use of a rule set is to produce instance scores indicating the likelihood that an instance belongs to a given class. With such an ability, we can apply rulesets effectively when distributions are skewed or error costs are unequal. This paper empirically investigates differen...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
International audienceThis paper addresses the problem of learning a multiclass classification syste...
We introduce a rule selection algorithm called ROCCER, which operates by selecting classification ...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
Rule-based classifiers are supervised learning techniques that are extensively used in various domai...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
International audienceROC curves are one of the most widely used displays to evaluate performance of...
This paper provides an analysis of the behavior of separate-and-conquer or covering rule learning al...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
AUC measure, which is used for classifier evaluation and represents one of the main tools of ROC ana...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
International audienceThis paper addresses the problem of learning a multiclass classification syste...
We introduce a rule selection algorithm called ROCCER, which operates by selecting classification ...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
Rule-based classifiers are supervised learning techniques that are extensively used in various domai...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
International audienceROC curves are one of the most widely used displays to evaluate performance of...
This paper provides an analysis of the behavior of separate-and-conquer or covering rule learning al...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
AUC measure, which is used for classifier evaluation and represents one of the main tools of ROC ana...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
International audienceThis paper addresses the problem of learning a multiclass classification syste...