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Adaptive kernel scaling support vector machine with application to a prostate cancer image study
Authors:Xin Liu  Wenqing He
Institution:aDepartment of Statistics and Management, Shanghai University of Finance and Economics, Shanghai, People''s Republic of China;bDepartment of Statistical and Actuarial Sciences, University of Western Ontario, London, ON, Canada
Abstract:The support vector machine (SVM) is a popularly used classifier in applications such as pattern recognition, texture mining and image retrieval owing to its flexibility and interpretability. However, its performance deteriorates when the response classes are imbalanced. To enhance the performance of the support vector machine classifier in the imbalanced cases we investigate a new two stage method by adaptively scaling the kernel function. Based on the information obtained from the standard SVM in the first stage, we conformally rescale the kernel function in a data adaptive fashion in the second stage so that the separation between two classes can be effectively enlarged with incorporation of observation imbalance. The proposed method takes into account the location of the support vectors in the feature space, therefore is especially appealing when the response classes are imbalanced. The resulting algorithm can efficiently improve the classification accuracy, which is confirmed by intensive numerical studies as well as a real prostate cancer imaging data application.
Keywords:Classification  data-adaptive kernel  imaging data  imbalanced data  separating hyperplane  support vector machine
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