When the goal is to achieve the best correct classification rate, cross entropy and mean squared error are typical cost functions used to optimize classifier performance. However, for many real-world classification problems, the ROC curve is a more meaningful performance measure. We demonstrate that minimizing cross entropy or mean squared error does not necessarily maximize the area under the ROC curve (AUC). We then consider alternative objective functions for training a classifier to maximize the AUC directly. We propose an objective function that is an approximation to the Wilcoxon-Mann-Whitney statistic, which is equivalent to the AUC. The proposed objective function is differentiable, so gradient-based methods can be used to train the...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
Receiver operating characteristic (ROC) curves are widely used for evaluating classifier performance...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
While most proposed methods of solving classification problems focus on minimization of the classifi...
Abstract. In this paper we show an efficient method for inducing classifiers that directly optimize ...
Receiver Operating Characteristic (ROC) curves are a standard way to display the performance of a ...
In this paper we show an efficient method for inducing classifiers that directly optimize the area u...
The Area Under the ROC Curve (AUC) is an important model metric for evaluating binary classifiers, a...
To evaluate the performance of text classifiers, we usually look at measures related to precision an...
The majority of the available classification systems focus on the minimization of the classification...
<p>The Receiver-operating characteristic (ROC) curve is shown for SVM-LIN, SVM-RBF, and SVM-seq (RBF...
Proceedings of: GECCO 2013: 15th International Conference on Genetic and Evolutionary Computation Co...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
Receiver operating characteristic (ROC) curves are widely used for evaluating classifier performance...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
The performance of a classifier can be improved by abstaining on uncertain instance classifications....
While most proposed methods of solving classification problems focus on minimization of the classifi...
Abstract. In this paper we show an efficient method for inducing classifiers that directly optimize ...
Receiver Operating Characteristic (ROC) curves are a standard way to display the performance of a ...
In this paper we show an efficient method for inducing classifiers that directly optimize the area u...
The Area Under the ROC Curve (AUC) is an important model metric for evaluating binary classifiers, a...
To evaluate the performance of text classifiers, we usually look at measures related to precision an...
The majority of the available classification systems focus on the minimization of the classification...
<p>The Receiver-operating characteristic (ROC) curve is shown for SVM-LIN, SVM-RBF, and SVM-seq (RBF...
Proceedings of: GECCO 2013: 15th International Conference on Genetic and Evolutionary Computation Co...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
Receiver operating characteristic (ROC) curves are widely used for evaluating classifier performance...