Binary classification problems are ubiquitous in health and social sciences. In many cases, one wishes to balance two competing optimality considerations for a binary classifier. For instance, in resource-limited settings, an human immunodeficiency virus prevention program based on offering pre-exposure prophylaxis (PrEP) to select high-risk individuals must balance the sensitivity of the binary classifier in detecting future seroconverters (and hence offering them PrEP regimens) with the total number of PrEP regimens that is financially and logistically feasible for the program. In this article, we consider a general class of constrained binary classification problems wherein the objective function and the constraint are both monotonic wit...
Most existing binary classification methods target on the optimization of the overall classification...
The statistical minimum risk pattern recognition problem,\ud when the classification costs are rando...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Binary classifications problems are ubiquitous in health and social science applications. In many ca...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
Ensemble classification algorithms are often designed for data with certain properties, such as imba...
This paper presents an ensemble neural network and interval neutrosophic sets approach to the proble...
International audienceIn this paper, the problem of binary classification is studied with one or two...
Classification and supervised learning problems in general aim to choose a function that best descri...
Abstract. Learning from data with severe class imbalance is difficult. Established solutions include...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
Copyright © 2014 Hina Anwar et al. This is an open access article distributed under the Creative Com...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
Most existing binary classification methods target on the optimization of the overall classification...
The statistical minimum risk pattern recognition problem,\ud when the classification costs are rando...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Binary classifications problems are ubiquitous in health and social science applications. In many ca...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
Ensemble classification algorithms are often designed for data with certain properties, such as imba...
This paper presents an ensemble neural network and interval neutrosophic sets approach to the proble...
International audienceIn this paper, the problem of binary classification is studied with one or two...
Classification and supervised learning problems in general aim to choose a function that best descri...
Abstract. Learning from data with severe class imbalance is difficult. Established solutions include...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
Copyright © 2014 Hina Anwar et al. This is an open access article distributed under the Creative Com...
The generalization error, or probability of misclassification, of ensemble classifiers has been show...
Most existing binary classification methods target on the optimization of the overall classification...
The statistical minimum risk pattern recognition problem,\ud when the classification costs are rando...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...