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Feature selection for multiclass support vector machines

机译:多类支持向量机的特征选择

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摘要

In this paper, we present and evaluate a novel method for feature selection for Multiclass Support Vector Machines (MSVM). It consists in determining the relevant features using an upper bound of generalization error proper to the multiclass case called the multiclass radius margin bound. A score derived from this bound will rank the variables in order of relevance, then, forward method will be used to select the optimal subset. The experiments are firstly conducted on simulated data to test the ability of the score to give the correct order of relevance of variables and the ability of the proposed method to find the subset giving a better error rate than the case where all features are used. Afterward, four real datasets publicly available will be used and the results will be compared with those of other methods of variable selection by MSVM.
机译:在本文中,我们提出并评估了一种用于多类支持向量机(MSVM)的特征选择的新方法。它包括使用适合于多类情况的泛化误差上限(称为多类半径边距界限)来确定相关特征。从该边界得出的分数将按照相关性对变量进行排序,然后,将使用正向方法来选择最佳子集。首先在模拟数据上进行实验,以测试得分给出变量相关性的正确顺序的能力,以及所提出的方法找到比使用所有特征的情况下错误率更高的子集的能力。之后,将使用四个公开可用的真实数据集,并将结果与​​MSVM的其他变量选择方法进行比较。

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