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A Hybrid Bi-level Metaheuristic for Credit Scoring

机译:信用评分的杂交双级成群质艺术

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摘要

This research aims to propose a framework for evaluating credit applications by assigning a binary score to the applicant. The score is targeted to determine whether the credit application is 'good' or 'bad' in small business purpose loans. Even tiny performance improvements in small businesses may yield a positive impact on the economy as they generate more than 60% of the value. The method presented in this paper hybridizes the Genetic Algorithm (GA) and the Support Vector Machine (SVM) in a bi-level feeding mechanism for increased prediction accuracy. The first level is to determine the parameters of SVM and the second is to find a feature set that increases classification accuracy. To test the proposed approach, we have investigated three different data sets; UCI Australian data set for preliminary works, Lending Club data set for large training and testing, and UCI German and Australian datasets for benchmarking against some other notable methods that use GA. Our computational results show that our proposed method using a feedback mechanism under the hybrid bi-level GA-SVM structure outperforms other classification algorithms in the literature, namely Decision Tree, Random Forests, Logistic Regression, SVM and Artificial Neural Networks, effectively improves the classification accuracy.
机译:本研究旨在通过向申请人分配二进制分数来提出一种评估信用申请的框架。分数是针对小型商业用途贷款的信用申请是否为“良好”或“坏”。即使是小企业的微小性能改进也可能产生积极影响经济,因为它们产生超过60%的价值。本文中所示的方法杂交在双级馈电机构中的遗传算法(GA)和支撑载体机(SVM)以增加预测精度。第一级是确定SVM的参数,第二级是找到提高分类精度的功能集。要测试所提出的方法,我们已经调查了三种不同的数据集; UCI澳大利亚数据集初步作品,贷款俱乐部数据设置为大型培训和测试,以及UCI德国和澳大利亚数据集,用于与使用GA的其他一些显着的方法进行基准测试。我们的计算结果表明,我们在混合BI级GA-SVM结构下使用反馈机制的提出方法优于文献中的其他分类算法,即决策树,随机林,逻辑回归,SVM和人工神经网络,有效提高了分类准确性。

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