An improved non-parallel Universum support vector machine and its safe sample screening rule
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摘要
A novel non-parallel hyperplane Universum support vector machine (U-NHSVM) is proposed in this paper. Universum data with ensconced prior knowledge are exploited by a non-parallel hyperplane support vector machine. In contrast to other algorithms, the proposed U-NHSVM shows flexibility by exploiting the prior knowledge ensconced in Universum and provides consistency by constructing two non-parallel hyperplanes simultaneously. With Universum, U-NHSVM is clearly effective but also time consuming. Therefore, a safe sample screening rule (SSSR) for U-NHSVM is also proposed based on its sparsity, termed SSSR-U-NHSVM. Because only the non-SVs are excluded from both labelled and Universum samples, the efficiency of SSSR-U-NHSVM is extremely improved while the accuracy is completely conserved. Numerical experiments on seventeen benchmark datasets and a Chinese wine dataset are carried out to demonstrate the validity of the proposed U-NHSVM and SSSR-U-NHSVM.
论文关键词:Support vector machine,Universum,Safe screening,Non-parallel hyperplanes,Variational inequality
论文评审过程:Received 22 October 2018, Revised 25 January 2019, Accepted 28 January 2019, Available online 2 February 2019, Version of Record 1 March 2019.
论文官网地址:https://doi.org/10.1016/j.knosys.2019.01.031