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首页> 外文期刊>The Journal of Risk Model Validation >An optimized support vector machine intelligent technique using optimized feature selection methods: evidence from Chinese credit approval data
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An optimized support vector machine intelligent technique using optimized feature selection methods: evidence from Chinese credit approval data

机译:使用优化特征选择方法的优化支持向量机智能技术:来自中国信用批准数据的证据

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摘要

This paper focuses on feature selection methods for support vector machine (SVM) classifiers, checking their optimality by comparing them with some statistical and baseline methods. To achieve the above objective, we exploit twelve feature selection methods from the family of filters and embedded approaches by splitting a Chinese database. Our findings suggest that the average result from sample division cases will achieve a more robust prediction ability than that from "no sample division" cases. Moreover, ridge regression (SVM9) in training and "average results from sample division" data sets, along with DTQUEST (SVM7) in "no sample division" example sets, give outstanding performance with respect to all performance criteria. With these contributions, therefore, our paper complements previous evidence and modernizes the methods of feature selection to render SVM classifiers favorable for credit approval data modeling. This study has practical implications for financial institutions, managers, employees, investors and government officials looking to sort out forthcoming lending transactions to attain a target risk/return trade-off.
机译:本文侧重于支持向量机(SVM)分类器的特征选择方法,通过将它们与一些统计和基线方法进行比较来检查它们的最优性。为了实现上述目标,我们通过分割中文数据库来利用来自过滤器系列和嵌入式方法的十二个功能选择方法。我们的研究结果表明,样本司案件的平均结果将实现比“无样本划分”案件更强大的预测能力。此外,训练中的脊回归(SVM9)和“样本分割”数据集的“平均结果”,以及“无示例”示例集中的DTQUEST(SVM7),对所有性能标准提供出色的性能。因此,通过这些贡献,我们的论文将以前的证据补充并现代化特征选择方法,以渲染有利于信用批准数据建模的SVM分类器。本研究对金融机构,经理,雇员,投资者和政府官员寻求解决即将到达贷款交易以获得目标风险/退货权衡的实际影响。

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