Title of article :
Robust Multiclass Classification for Learning from Imbalanced Biomedical Data
Author/Authors :
Phoungphol, Piyaphol Georgia State University - Department of Computer Science, USA , Zhang, Yanqing Georgia State University - Department of Computer Science, USA , Zhao , Yichuan Georgia State University - Department of Mathematics and Statistics, USA
From page :
619
To page :
628
Abstract :
Imbalanced data is a common and serious problem in many biomedical classification tasks. It causes a bias on the training of classifiers and results in lower accuracy of minority classes prediction. This problem has attracted a lot of research interests in the past decade. Unfortunately, most research efforts only concentrate on 2-class problems. In this paper, we study a new method of formulating a multiclass Support Vector Machine (SVM) problem for imbalanced biomedical data to improve the classification performance. The proposed method applies cost-sensitive approach and ramp loss function to the Crammer and Singer multiclass SVM formulation. Experimental results on multiple biomedical datasets show that the proposed solution can effectively cure the problem when the datasets are noisy and highly imbalanced.
Keywords :
multiclass classification , imbalanced data , ramp , loss , Support Vector Machine (SVM) , biomedical data
Journal title :
Tsinghua Science and Technology
Journal title :
Tsinghua Science and Technology
Record number :
2535510
Link To Document :
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