In real-world environments, it is usually difficult to specify target operating conditions precisely. This uncertainty makes building robust classification systems problematic. We show that it is possible to build a hybrid classifier that will perform at least as well as the best available classifier for any target conditions. This robust performance extends across a wide variety of comparison frameworks, including the optimization of metrics such as accuracy, expected cost, lift, precision, recall, and workforce utilization. In some cases, the performance of the hybrid can actually surpass that of the best known classifier. The hybrid is also efficient to build, to store, and to update. Finally, we provide empirical evidence that a robust ...
The use of alternative measures to evaluate classifier performance is gain-ing attention, specially ...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
In this paper, we test some of the most commonly used classifiers to identify which ones are the mos...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
This study investigates two different issues of performance measure in data classification problem. ...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
Although discriminatively trained classifiers are usually more accurate when labeled training data ...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
Abstract: The robustification of pattern recognition techniques has been the subject of intense rese...
The use of alternative measures to evaluate classifier performance is gain-ing attention, specially ...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
In this paper, we test some of the most commonly used classifiers to identify which ones are the mos...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
This study investigates two different issues of performance measure in data classification problem. ...
Contains fulltext : 77313.pdf (publisher's version ) (Open Access)We address the p...
Although discriminatively trained classifiers are usually more accurate when labeled training data ...
ROC analysis makes it possible to evaluate how well classifiers will perform given certain misclassi...
Abstract: The robustification of pattern recognition techniques has been the subject of intense rese...
The use of alternative measures to evaluate classifier performance is gain-ing attention, specially ...
Although discriminatively-trained classifiers are usually more accurate when labeled training data i...
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...