块删除支持向量回归量的反向变量选择

T. Nagatani, S. Abe
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引用次数: 16

摘要

在函数逼近中,如果数据集有很多冗余输入变量,可能会出现泛化能力下降、计算成本增加等各种问题。解决这些问题的方法之一是变量选择。在模式识别中,采用块删除方法进行反向变量选择的有效性得到了验证。本文将此方法推广到函数逼近。为了防止泛化能力的下降,我们使用验证集的近似误差作为选择标准。为了减少计算成本,在变量选择过程中,我们只通过交叉验证来优化余量参数。如果块删除失败,我们回溯并开始二进制搜索以进行有效的变量选择。通过一些数据集的计算机实验表明,该方法的性能与传统方法相当,并且可以大大降低计算成本。我们还证明了由LS-SVRs选择的一组输入变量可以用于SVRs,而不会降低SVRs的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Backward Varilable Selection of Support Vector Regressors by Block Deletion
In function approximation, if datasets have many redundant input variables, various problems such as deterioration of the generalization ability and an increase of the computational cost may occur. One of the methods to solve these problems is variable selection. In pattern recognition, the effectiveness of backward variable selection by block deletion is shown. In this paper, we extend this method to function approximation. To prevent the deterioration of the generalization ability, we use the approximation error of a validation set as the selection criterion. And to reduce computational cost, during variable selection we only optimize the margin parameter by cross-validation. If block deletion fails we backtrack and start binary search for efficient variable selection. By computer experiments using some datasets, we show that our method has performance comparable with that of the conventional method and can reduce computational cost greatly. We also show that a set of input variables selected by LS-SVRs can be used for SVRs without deteriorating the generalization ability.
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