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Review of Domestic Application Research of Big Data Mining Technology-SVM in Credit Risk Evaluation

机译:信用风险评估中大数据矿业技术矿业矿业技术应用研究述评

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As a classification model in large data mining technology, support vector machine (SVM) has been developing and improving continuously, it has been applied to the field of credit risk more and more widely. The effective evaluation of credit risk by support vector machine is beneficial to the development of banks and enterprises. This paper mainly combs the domestic literature from three aspects: data preprocessing, application and improvement, and integrated combination discrimination of support vector machine in credit risk assessment. Finally, a brief review based on the domestic literature is made. Through the collation of journals reviewed, we can better understand the specific application status of support vector machine in the field of credit risk and lay the foundation for the follow-up research work.
机译:作为大型数据挖掘技术的分类模型,支持向量机(SVM)一直在持续开发和改进,它已越来越广泛地应用于信贷风险领域。支持向量机的信用风险有效评估有利于银行和企业的发展。本文主要从三个方面梳理国内文学:数据预处理,应用和改进,以及信用风险评估中支持向量机的综合组合鉴别。最后,制定了基于国内文学的简要审查。通过回顾期刊的整理,我们可以更好地了解支持向量机的特定应用状态在信用风险领域,并为后续研究工作奠定基础。

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