A locality correlation preserving support vector machine |
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Authors: | Huaxiang Zhang Linlin Cao Shuang Gao |
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Affiliation: | 1. Department of Computer Science, Shandong Normal University, Jinan 250014, Shandong, China;2. Shandong Provincial Key Laboratory for Novel Distributed Computer Software Technology, China |
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Abstract: | This paper proposes a locality correlation preserving based support vector machine (LCPSVM) by combining the idea of margin maximization between classes and local correlation preservation of class data. It is a Support Vector Machine (SVM) like algorithm, which explicitly considers the locality correlation within each class in the margin and the penalty term of the optimization function. Canonical correlation analysis (CCA) is used to reveal the hidden correlations between two datasets, and a variant of correlation analysis model which implements locality preserving has been proposed by integrating local information into the objective function of CCA. Inspired by the idea used in canonical correlation analysis, we propose a locality correlation preserving within-class scatter matrix to replace the within-class scatter matrix in minimum class variance support machine (MCVSVM). This substitution has the property of keeping the locality correlation of data, and inherits the properties of SVM and other similar modified class of support vector machines. LCPSVM is discussed under linearly separable, small sample size and nonlinearly separable conditions, and experimental results on benchmark datasets demonstrate its effectiveness. |
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Keywords: | Support vector machine Kernel methods Locality correlation preservation Fuzzy membership |
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