JISE


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Journal of Information Science and Engineering, Vol. 31 No. 6, pp. 2009-2024


Locality Preserving Semi-Supervised Support Vector Machine


TONGGUANG NI1,2, XIAOQING GU1,2, SHITONG WANG2, PENGJIANG QIAN2,3,4 AND RAYMOND F. MUZIC, JR. 3,4 
1School of Information Science and Engineering 
Changzhou University 
Changzhou, 213164 China 
2School of Digital Media 
Jiangnan University 
Wuxi, 214122 China 
3Case Center for Imaging Research 
4Department of Radiology 
University Hospitals Case Medical Center 
Case Western Reserve University 
Cleveland, Ohio, 44106 USA


    Manifold regularization, which learns from a limited number of labeled samples and a large number of unlabeled samples, is a powerful semi-supervised classifier with a solid theoretical foundation. However, manifold regularization has the tendency to misclassify data near the boundaries of different classes during the classification process. In this paper, we propose a novel classification method called locality preserving semi-supervised support vector machine (LPSSVM) with an extended manifold regularization framework based on within-class locality preserving scatter. LPSSVM is good at exploring the underlying discriminative information as well as the local geometry of the samples as much as possible rather than merely relying on the smoothness information regarding manifold regularization. Meanwhile, benefiting from the geodesic distance metric, LPSSVM can more effectively reflect the true local geometry of data instances in the manifold space, which further strengths its accuracy in reality. The extensive comparisons with respect to LPSSVM and several state-of-the-art approaches were carried out on both artificial and real-word data sets. These experimental studies demonstrate the advantages as well as the superiority of our proposed method.


Keywords: manifold regularization, semi-supervised learning, support vector machine, within-class locality preserving scatter, classification

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