Data Mining Optimization Using Sample Bootstrapping and Particle Swarm Optimization in the Credit Approval Classification

Andre Alvi Agustian, Achmad Bisri
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引用次数: 2

Abstract

Credit approval is a process carried out by the bank or credit provider company. Where the process is carried out based on credit requests and credit proposals from the borrower. Credit approval is often difficult for banks or credit providers. Where the number of requests and classifications must be made on various data submitted. This study aims to enable banks or credit card issuing companies to carry out credit approval processes effectively and accurately in determining the status of the submissions that have been made. This research uses data mining techniques. This study uses a Credit Approval dataset from UCI Machine Learning, where there is a class imbalance in the dataset. 14 attributes are used as system inputs. This study uses the C4.5 and Naive Bayes algorithms where optimization is needed using Sample Bootstrapping and Particle Swarm Optimization (PSO) in the algorithm so that the results of the research produce good accuracy and are included in the good classification. After using the optimization, it produces an accuracy rate of C4.5 which is initially 85.99% and the AUC value of 0.904 becomes 94.44% with the AUC value of 0.969 and Naive Bayes which initially has an accuracy value of 83.09% with an AUC value of 0.916 to 90 , 10% with an AUC value of 0.944.
基于样本自举和粒子群优化的信贷审批分类数据挖掘优化
信贷审批是由银行或信贷提供公司执行的一个过程。该流程是根据借款人的信贷请求和信贷建议执行的。对银行或信贷提供者来说,信贷审批通常很困难。必须对所提交的各种数据提出要求和分类的次数。这项研究的目的是使银行或信用卡发卡公司能够有效和准确地执行信贷审批程序,以确定已提交的申请的状态。本研究使用数据挖掘技术。本研究使用来自UCI机器学习的信用审批数据集,其中数据集中存在类别不平衡。14个属性被用作系统输入。本研究使用了C4.5和朴素贝叶斯算法,其中算法中需要使用样本Bootstrapping和粒子群优化(Particle Swarm optimization, PSO)进行优化,使研究结果具有良好的准确性,并被纳入良好的分类。使用优化后,其准确率为C4.5,初始准确率为85.99%,AUC值为0.904,初始准确率为94.44%,AUC值为0.969;朴素贝叶斯初始准确率为83.09%,AUC值为0.916 ~ 90,10%,AUC值为0.944。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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