نتایج جستجو برای: auc

تعداد نتایج: 18876  

Journal: :Biometrics 2003
Lori E Dodd Margaret S Pepe

Accurate diagnosis of disease is a critical part of health care. New diagnostic and screening tests must be evaluated based on their abilities to discriminate diseased from nondiseased states. The partial area under the receiver operating characteristic (ROC) curve is a measure of diagnostic test accuracy. We present an interpretation of the partial area under the curve (AUC), which gives rise ...

2016
Yiming Ying Longyin Wen Siwei Lyu

Area under ROC (AUC) is a metric which is widely used for measuring the classification performance for imbalanced data. It is of theoretical and practical interest to develop online learning algorithms that maximizes AUC for large-scale data. A specific challenge in developing online AUC maximization algorithm is that the learning objective function is usually defined over a pair of training ex...

Journal: :IJPRAI 2010
Yunyun Wang Songcan Chen Hui Xue

AUC-SVM directly maximizes the area under the ROC curve (AUC) through minimizing its hinge loss relaxation, and the decision function is determined by those support vector sample pairs playing the same roles as the support vector samples in SVM. Such a learning paradigm generally emphasizes more on the local discriminative information just associated with these support vectors whereas hardly ta...

2011
Peilin Zhao Steven C. H. Hoi Rong Jin Tianbao Yang

Most studies of online learning measure the performance of a learner by classification accuracy, which is inappropriate for applications where the data are unevenly distributed among different classes. We address this limitation by developing online learning algorithm for maximizing Area Under the ROC curve (AUC), a metric that is widely used for measuring the classification performance for imb...

Journal: :IEEE Transactions on Neural Networks and Learning Systems 2020

Journal: :Artif. Intell. 2013
Wei Gao Rong Jin Shenghuo Zhu Zhi-Hua Zhou

AUC is an important performance measure and many algorithms have been devoted to AUC optimization, mostly by minimizing a surrogate convex loss on a training data set. In this work, we focus on one-pass AUC optimization that requires going through the training data only once without storing the entire training dataset, where conventional online learning algorithms cannot be applied directly bec...

Journal: :Communications for Statistical Applications and Methods 2009

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