Title of article :
Optimizing area under the ROC curve using semi-supervised learning
Author/Authors :
Wang، نويسنده , , Shijun and Li، نويسنده , , Diana and Petrick، نويسنده , , Nicholas and Sahiner، نويسنده , , Berkman and Linguraru، نويسنده , , Marius George and Summers، نويسنده , , Ronald M.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2015
Pages :
12
From page :
276
To page :
287
Abstract :
Receiver operating characteristic (ROC) analysis is a standard methodology to evaluate the performance of a binary classification system. The area under the ROC curve (AUC) is a performance metric that summarizes how well a classifier separates two classes. Traditional AUC optimization techniques are supervised learning methods that utilize only labeled data (i.e., the true class is known for all data) to train the classifiers. In this work, inspired by semi-supervised and transductive learning, we propose two new AUC optimization algorithms hereby referred to as semi-supervised learning receiver operating characteristic (SSLROC) algorithms, which utilize unlabeled test samples in classifier training to maximize AUC. Unlabeled samples are incorporated into the AUC optimization process, and their ranking relationships to labeled positive and negative training samples are considered as optimization constraints. The introduced test samples will cause the learned decision boundary in a multi-dimensional feature space to adapt not only to the distribution of labeled training data, but also to the distribution of unlabeled test data. We formulate the semi-supervised AUC optimization problem as a semi-definite programming problem based on the margin maximization theory. The proposed methods SSLROC1 (1-norm) and SSLROC2 (2-norm) were evaluated using 34 (determined by power analysis) randomly selected datasets from the University of California, Irvine machine learning repository. Wilcoxon signed rank tests showed that the proposed methods achieved significant improvement compared with state-of-the-art methods. The proposed methods were also applied to a CT colonography dataset for colonic polyp classification and showed promising results.11 code of the proposed methods will be released on http://clinicalcenter.nih.gov/drd/summers.html once the paper is published.
Keywords :
Receiver operating characteristic , AUC , SSLROC , semi-supervised learning , Transfer learning , semidefinite programming , RankBoost , SVMROC
Journal title :
PATTERN RECOGNITION
Serial Year :
2015
Journal title :
PATTERN RECOGNITION
Record number :
1879873
Link To Document :
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