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Computational performance optimization of support vector machine based on support vectors

机译:基于支持向量的支持向量机计算性能优化

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摘要

The computational performance of support vector machine (SVM) mainly depends on the size and dimension of training sample set. Because of the importance of support vectors in the determination of SVM classification hyperplane, a kind of method for computational performance optimization of SVM based on support vectors is proposed. On one hand, at the same time of the selection of super-parameters of SVM, according to Karush-Kuhn-Tucker condition and on the precondition of no loss of potential support vectors, we eliminate non-support vectors from training sample set to reduce sample size and thereby to reduce the computation complexity of SVM. On the other hand, we propose a simple intrinsic dimension estimation method for SVM training sample set by analyzing the correlation between number of support vectors and intrinsic dimension. Comparative experimental results indicate the proposed method can effectively improve computational performance. (C) 2016 Elsevier B.V. All rights reserved.
机译:支持向量机(SVM)的计算性能主要取决于训练样本集的大小和尺寸。由于支持向量在支持向量机分类超平面确定中的重要性,提出了一种基于支持向量的支持向量机计算性能优化方法。一方面,在选择支持向量机超参数的同时,根据Karush-Kuhn-Tucker条件,在不损失潜在支持向量的前提下,我们从训练样本集中消除了非支持向量,以减少样本大小,从而降低SVM的计算复杂度。另一方面,通过分析支持向量数目与内在维数之间的相关性,提出了一种简单的内在维数估计方法。对比实验结果表明,该方法可以有效地提高计算性能。 (C)2016 Elsevier B.V.保留所有权利。

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