基于支持向量机的信用评分系统优化策略

Xinyi Li
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引用次数: 0

摘要

本文提出了一种利用 SVM 功能的新型信用评分系统优化策略。文章以个人信用评分在当今信用动态中的重要性为重点,通过文献综述探讨了 SVM 在各个领域的多功能性。理论背景强调了 SVM 的独特方法和计算效率。优化策略包括四个关键方面:偿债能力、盈利潜力、运营能力以及使用资产负债率等指标的增长能力。利用澳大利亚和德国的信用卡数据集进行的实验验证说明了不同 K 值与性能指标之间的细微关系,并展示了 SVM 在改进信用评分方面的适应性。总之,文章提出了一种新颖、全面的信用风险管理方法,将理论基础、文献发现和实证实验融为一体,以提高动态经济环境中信用评分的准确性。
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Optimization Strategy of Credit Scoring System based on Support Vector Machine
This article proposes a novel optimization strategy for credit scoring systems that exploits the capabilities of SVM. Focusing on the importance of personal credit scoring in today's credit dynamics, the article explores SVM's versatility in various domains through a literature review. The theoretical background underscores the unique approach and computational efficiency of SVM. The optimization strategy encompasses four critical aspects: debt solvency, earning potential, operational prowess, and growth capability using metrics such as asset-liability ratios. Experimental validation with credit card datasets from Australia and Germany illustrates the nuanced relationship between different K-values and performance metrics, and demonstrates the adaptability of SVM in improving credit scoring. In short, the article presents an original, comprehensive approach to credit risk management that integrates theoretical foundations, literature findings, and empirical experiments to improve the accuracy of credit scoring in the dynamic economic landscaper.
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