We address the problem of applying machine-learning classifiers in domains where incorrect classifications have severe consequences. In these domains we propose to apply classifiers only when their performance can be defined by the domain expert prior to classification. The classifiers so obtained are called reliable classifiers. In the article we present three main contributions. First, we establish the effect on an ROC curve when ambiguous instances are left unclassified. Second, we propose the ROC isometrics approach to tune and transform a classifier in such a way that it becomes reliable. Third, we provide an empirical evaluation of the approach. From our analysis and experimental evaluation we may conclude that the ROC isometrics appr...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
AUC measure, which is used for classifier evaluation and represents one of the main tools of ROC ana...
sensitive learning. Abstract: In order to control the trade-off between sensitivity and specificity ...
We address the problem of applying machine-learning classifiers in domains where incorrect classific...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
Calibration of machine learning classifiers is necessary to obtain reliable and interpretable predic...
Machine-learning classiers are gaining interest in the domain of law enforcement. However, when clas...
Rules are commonly used for classification because they are modular, intelligible and easy to learn...
Response surface methodologies The area under ROC curve Consequently, when classification models wit...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
Most binary classifiers work by processing the input to produce a scalar response and comparing it t...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
AUC measure, which is used for classifier evaluation and represents one of the main tools of ROC ana...
sensitive learning. Abstract: In order to control the trade-off between sensitivity and specificity ...
We address the problem of applying machine-learning classifiers in domains where incorrect classific...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
Calibration of machine learning classifiers is necessary to obtain reliable and interpretable predic...
Machine-learning classiers are gaining interest in the domain of law enforcement. However, when clas...
Rules are commonly used for classification because they are modular, intelligible and easy to learn...
Response surface methodologies The area under ROC curve Consequently, when classification models wit...
When the goal is to achieve the best correct classification rate, cross entropy and mean squared err...
Most binary classifiers work by processing the input to produce a scalar response and comparing it t...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
AUC measure, which is used for classifier evaluation and represents one of the main tools of ROC ana...
sensitive learning. Abstract: In order to control the trade-off between sensitivity and specificity ...