基于机器学习的自动贷款审批系统研究

Vandana Sharma, Rewa Sharma
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引用次数: 0

摘要

银行业是经济不可分割的一部分,因为它有助于资本形成。银行最关键的问题之一是贷款申请所涉及的风险。利用机器学习实现贷款审批流程的自动化是一项重大进步。对于这个课题,所有的分类算法在之前的研究中都经过了测试和评估;然而,对于特定类型的数据集,哪种方法是最好的仍然不清楚。要确定哪种模式最有效仍然很困难。由于每个模型都依赖于特定的数据集或分类方法,因此创建适合任何数据集或属性集合的通用模型至关重要。本研究的目的是对以往的研究进行详细的分析,并提出一个使用四种分类算法进行自动贷款预测的预测模型。通过探索性数据分析,获得各种特征之间的相关性,从而深入了解银行数据集。
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A Systematic Survey of Automatic Loan Approval System Based on Machine Learning
The banking sector is an integral part of an economy as it helps in capital formation. One of the most critical issues of banks is the risk involved in loan applications. Employing machine learning to automate the loan approval process is a significant advancement. For this topic, all classification algorithms have been tested and assessed in previous researches; however, it is still unclear which methodology is best for a particular type of dataset. It is still difficult to identify which model is the most effective. Since each model is dependent on a certain dataset or classification approach, it is critical to create a versatile model appropriate for any dataset or attribute collection. The aim of the study is to provide detailed analysis of previous studies and to propose a predictive model for automatic loan prediction using four classification algorithms. Exploratory data analysis is performed to obtain correlation between various features and to get insights of banking datasets.
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