增量/递减支持向量机用于函数逼近

H. Gâlmeanu, Răzvan Andonie
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引用次数: 8

摘要

训练支持向量回归(SVR)恢复到将向量迁入和迁出支持集的过程,同时修改相关的阈值。本文给出了一个完整的概述,所有的边界条件隐含的矢量迁移通过过程。该过程类似于训练支持向量机,尽管在解中增加/减少向量的过程与相关阈值的增加/减少并不一致。分析显示了用于训练SVR的增量和递减过程的细节。具有重复贡献的向量也被考虑。在正则化参数C减小的情况下,向量在集合间的迁移得到了特别的关注。最终,实验数据显示了在大范围内修改该参数的可能性,将其从完全训练(过拟合)改变为校准值,以调整回归的近似性能。
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Incremental / decremental SVM for function approximation
Training a support vector regression (SVR) resumes to the process of migrating the vectors in and out of the support set along with modifying the associated thresholds. This paper gives a complete overview of all the boundary conditions implied by vector migration through the process. The process is similar to that of training a SVM, though the process of incrementing / decrementing of vectors into / out of the solution does not coincide with the increase / decrease of the associated threshold. The analysis shows the details of incremental and decremental procedures used to train the SVR. Vectors with duplicate contribution are also considered. The migration of vectors among sets on decreasing the regularization parameter C is particularly given attention. Eventually, experimental data show the possibility of modifying this parameter on a large scale, varying it from complete training (overfitting) to a calibrated value, to tune up the approximation performance of the regression.
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