Multi-variable estimation-based safe screening rule for small sphere and large margin support vector machine

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Small Sphere and Large Margin (SSLM) SVM is one of the most competitive methods for Novelty Detection. However, the existing solvers for SSLM cannot deal with large data due to the expensive time cost. Although recently emerged safe screening methods can effectively enhance the computational speed, it is not available for SSLM because SSLM has multiple variables which cannot be represented explicitly by the linear combination of training samples. In this work, we construct a new safe screening rule for SSLM (MVE-SSR-SSLM) by integrating the ν-property, KKT conditions and variational inequalities. It is the first safe screening rule for a family of hypersphere support vector machine with multiple variables. The inactive samples are removed before actually solving the problem to accelerate the solving procedure without any loss of safety. Numerical experiments on fifteen benchmark datasets and Chinese wine dataset are conducted to show the validity and stability of the proposed MVE-SSR-SSLM.

论文关键词:Safe sample screening,Small sphere and large margin,Imbalanced data classification,Novelty detection,Support vector machine

论文评审过程:Received 22 July 2019, Revised 9 November 2019, Accepted 11 November 2019, Available online 13 November 2019, Version of Record 8 February 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2019.105223