使用机器学习技术预测贷款批准的堆叠集成方法。

IF 1.2 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Kunchakara Raja Sekhar, Shaiku Shahida Saheb
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引用次数: 0

摘要

数字贷款和金融科技创新颠覆了现有的银行体系,改变了世界各国的金融包容性和信贷可用性。本研究考察了P2P和数字借贷平台的变化,强调了人工智能和机器学习等技术如何改变贷款审批方式。对文献的深入研究凸显了数字借贷生态系统中的机遇和问题,如算法风险评估、客户信任、金融排斥和监管漏洞。本文提出了一种强大的机器学习方法,该方法使用堆叠集成模型来准确预测贷款批准,以解决这些问题。数据使用训练测试分区、探索性分析和标签编码进行预处理,使用可公开访问的Kaggle数据集,包括申请人人口统计、财务特征和信用历史。以XGBoost作为元学习器,集成集成了Gradient Boosting Model、Efficient Gradient Boosting、AdaBoost和Extra Trees分类器作为基础学习器。该模型的准确率为98%,使用准确性、精密度、召回率、f1评分和误差指标(MAE-平均绝对误差、MSE-均方误差和RMSE-均方根误差)对模型进行评估。相关研究表明,资产、收入、CIBIL评分等因素对贷款审批有显著影响。该模型优于传统方法,在两个类之间表现出平衡和泛化。在论文的结论中强调了这些模型对自动化、数据驱动的信用决定的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stacking Ensemble Approach for Predicting Loan Approval Using Machine Learning Techniques.

Digital lending and fintech innovations have upended established banking systems, changing financial inclusion and credit availability in nations around the world. This study examines how peer-to-peer (P2P) and digital lending platforms are changing, emphasizing how technologies like artificial intelligence and machine learning are changing the way loans are approved. A thorough study of the literature highlights the opportunities and problems in the digital lending ecosystem, such as algorithmic risk assessment, customer trust, financial exclusion, and regulatory loopholes. This paper suggests a strong machine learning approach that uses a stacking ensemble model to accurately forecast loan approvals in order to address these issues. The data was pre-processed using train-test partitioning, exploratory analysis, and label encoding using a publicly accessible Kaggle dataset that included applicant demographics, financial characteristics, and credit histories. With XGBoost serving as the meta-learner, the ensemble incorporates the Gradient Boosting Model, Efficient Gradient Boosting, AdaBoost, and Extra Trees classifiers as base learners. With an accuracy of 98%, the model was assessed using measures including accuracy, precision, recall, F1-score, and error metrics (MAE- Mean Absolute Error, MSE- Mean Squared Error, and RMSE- Root Mean Square Error). According to correlation studies, factors including assets, income, and CIBIL scores have a significant impact on loan approvals. Outperforming conventional methods, the model showed balance and generalization across both classes. The usefulness of these models for automated, data-driven credit determinations is emphasized in the paper's conclusion.

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来源期刊
Jove-Journal of Visualized Experiments
Jove-Journal of Visualized Experiments MULTIDISCIPLINARY SCIENCES-
CiteScore
2.10
自引率
0.00%
发文量
992
期刊介绍: JoVE, the Journal of Visualized Experiments, is the world''s first peer reviewed scientific video journal. Established in 2006, JoVE is devoted to publishing scientific research in a visual format to help researchers overcome two of the biggest challenges facing the scientific research community today; poor reproducibility and the time and labor intensive nature of learning new experimental techniques.
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