Prediction of Credit Card Approval

H. Peela, Tanuj Gupta, Nishit Rathod, Tushar Bose, Neha Sharma
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引用次数: 1

Abstract

Credit risk as the board in banks basically centers around deciding the probability of a customer's default or credit decay and how expensive it will end up being assuming it happens. It is important to consider major factors and predict beforehand the probability of consumers defaulting given their conditions. Which is where a machine learning model comes in handy and allows the banks and major financial institutions to predict whether the customer, they are giving the loan to, will default or not. This project builds a machine learning model with the best accuracy possible using python. First we load and view the dataset. The dataset has a combination of both mathematical and non-mathematical elements, that it contains values from various reaches, in addition to that it contains a few missing passages. We preprocess the dataset to guarantee the AI model we pick can make great expectations. After the information is looking great, some exploratory information examination is done to assemble our instincts. Finally, we will build a machine learning model that can predict if an individual's application for a credit card will be accepted. Using various tools and techniques we then try to improve the accuracy of the model. This project uses Jupyter notebook for python programming to build the machine learning model. Using Data Analysis and Machine Learning, we attempted to determine the most essential parameters for obtaining credit card acceptance in this project. The machine learning model we built gave an 86 % accuracy for predicting whether the credit card will be approved or not, considering the various factors mentioned in the application of the credit card holder. Even though we achieved an accuracy of 86%, we conducted a grid search to see if we could increase the performance even further. However, using both the machine learning models: random forest and logistic regression, the best we could get from this data was 86 percent.
信用卡审批预测
信贷风险作为银行的董事会,基本上围绕着决定客户违约或信用衰退的可能性,以及如果发生这种情况,最终会付出多大的代价。重要的是要考虑主要因素,并事先预测消费者违约的可能性。这就是机器学习模型派上用场的地方,它允许银行和主要金融机构预测他们贷款的客户是否会违约。该项目使用python构建了一个具有最佳精度的机器学习模型。首先,我们加载并查看数据集。数据集是数学和非数学元素的组合,它包含来自不同范围的值,此外它还包含一些缺失的段落。我们对数据集进行预处理,以保证我们选择的人工智能模型可以做出很大的预期。在信息看起来很棒之后,进行一些探索性的信息检查以汇集我们的直觉。最后,我们将建立一个机器学习模型,该模型可以预测个人的信用卡申请是否会被接受。然后,我们使用各种工具和技术来提高模型的准确性。本项目使用Jupyter notebook进行python编程,构建机器学习模型。利用数据分析和机器学习,我们试图确定在这个项目中获得信用卡接受的最基本参数。考虑到信用卡持有人申请中提到的各种因素,我们建立的机器学习模型在预测信用卡是否会被批准方面给出了86%的准确率。尽管我们达到了86%的准确率,但我们进行了网格搜索,看看是否可以进一步提高性能。然而,使用机器学习模型:随机森林和逻辑回归,我们可以从这个数据中得到的最好结果是86%。
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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