Efficient revised simplex method for SVM training.

IEEE transactions on neural networks Pub Date : 2011-10-01 Epub Date: 2011-09-06 DOI:10.1109/TNN.2011.2165081
Christopher Sentelle, Georgios C Anagnostopoulos, Michael Georgiopoulos
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引用次数: 25

Abstract

Existing active set methods reported in the literature for support vector machine (SVM) training must contend with singularities when solving for the search direction. When a singularity is encountered, an infinite descent direction can be carefully chosen that avoids cycling and allows the algorithm to converge. However, the algorithm implementation is likely to be more complex and less computationally efficient than would otherwise be required for an algorithm that does not have to contend with the singularities. We show that the revised simplex method introduced by Rusin provides a guarantee of nonsingularity when solving for the search direction. This method provides for a simpler and more computationally efficient implementation, as it avoids the need to test for rank degeneracies and also the need to modify factorizations or solution methods based upon those rank degeneracies. In our approach, we take advantage of the guarantee of nonsingularity by implementing an efficient method for solving the search direction and show that our algorithm is competitive with SVM-QP and also that it is a particularly effective when the fraction of nonbound support vectors is large. In addition, we show competitive performance of the proposed algorithm against two popular SVM training algorithms, SVMLight and LIBSVM.

基于修正单纯形的SVM训练方法。
现有文献报道的支持向量机(SVM)训练的活动集方法在求解搜索方向时必须解决奇异性问题。当遇到奇点时,可以仔细选择一个无限下降方向,避免循环并允许算法收敛。然而,与不需要处理奇异点的算法相比,算法实现可能更复杂,计算效率更低。结果表明,Rusin提出的修正单纯形法在求解搜索方向时保证了算法的非奇异性。这种方法提供了一种更简单、计算效率更高的实现,因为它避免了测试秩退化的需要,也避免了修改基于这些秩退化的分解或解决方法的需要。在我们的方法中,我们通过实现一种有效的求解搜索方向的方法来利用非奇异性的保证,并表明我们的算法与SVM-QP相竞争,并且当无界支持向量的比例很大时,它特别有效。此外,我们还展示了该算法与两种流行的SVM训练算法(SVMLight和LIBSVM)的竞争性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
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