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Optimization Approaches for Parameters of SVM

机译:支持向量机参数优化方法

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摘要

The method of SVM parameter optimization is discussed. The difference of parameter selection has an important influence on the classification accuracy of the sample. In practical systems it is difficult to obtain thousands of samples. In most cases, it can only rely on hundreds of samples to analysis and forecast. And studies have confirmed that because of the unique kernel function and classification of SVM, SVM has a greater advantage in solving small sample, nonlinear and high-dimensional pattern. So, this paper uses SVM to solve small sample classification problem. Moreover, when the parameters of SVM are optimized, higher classification accuracy can be obtained. The grid search and GA are applied to two data sets with different feature numbers, and the prediction effect is analyzed. The results show that the fewer the number of features, the better the effect of the grid search method, the more the number of features, the more obvious the advantage of GA. So GA optimizes SVM is better when higher accuracy and shorter time is required.
机译:讨论了支持向量机参数优化的方法。参数选择的差异对样品的分类精度有重要影响。在实际系统中,很难获得数千个样本。在大多数情况下,它只能依靠数百个样本进行分析和预测。研究已经证实,由于支持向量机的独特内核功能和分类,支持向量机在解决小样本,非线性和高维模式方面具有更大的优势。因此,本文采用支持向量机来解决小样本分类问题。此外,当对SVM的参数进行优化时,可以获得更高的分类精度。将网格搜索和遗传算法应用于具有不同特征编号的两个数据集,并分析了预测效果。结果表明,特征数量越少,网格搜索方法的效果越好,特征数量越多,遗传算法的优势越明显。因此,当需要更高的精度和更短的时间时,GA优化SVM会更好。

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