Default Prediction for Loan Lenders Using Machine Learning Algorithms

Awuza Abdulrashid Egwa
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Abstract

Credit loans are considered most essential aspect of most financial institutions. All loan mortgagees or lenders are demanding to identify out effective commercial and business approaches to encourage customers to apply their credit loans. There are numerous business patrons who act negatively after their requests got approval. To avert this condition, lenders have to discover some techniques to forecast customer’s behaviors. This resulted to the usage of machine learning algorithms by the financial lending institutions for accessing loan applicants. Despite advancements in automating decision-based loan systems, most existing models do not consider the “early loan repayment” attribute as a factor in resolving this prediction error. In reality, the amendment for preliminary loan reimbursement in model building is obligatory, since a larger numbers of timely loan reimbursement observed during the loan period, reduces default rate. For effective model’s comparison based on accuracy and minimum errors of prediction, six supervised machine learning algorithms i.e. Random Forest, Artificial Neural Network, Classification and Regression Tree, Support Vector Machine, Logistic Regression, and Naïve Bayes were adopted to develop a default prediction models which include the early loan repayment attribute. The models were trained and tested on a loan dataset consisting of attributes with, and without early loan repayment attribute and were evaluated using five performance metrics. The results of the performance evaluation show that models that account for early loan repayment have higher accuracy, recall, precision, Root Mean Square Error and Receiver Operative Characteristics curve values than models trained without the early loan repayment attribute. The Random forest model proofed to be the best predictive model having 93% accuracy, 11% RMSE, 90% precision, 89% recall and 81% ROC value over others models.
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使用机器学习算法的贷款机构默认预测
信用贷款被认为是大多数金融机构最重要的方面。所有贷款承按人或放款人都要求找出有效的商业和业务方法,以鼓励客户申请信贷贷款。有许多商业赞助人在他们的请求得到批准后采取了消极的行动。为了避免这种情况,贷方必须发现一些技术来预测客户的行为。这导致金融贷款机构使用机器学习算法来访问贷款申请人。尽管基于决策的自动化贷款系统取得了进步,但大多数现有模型并未将“提前还款”属性作为解决此预测错误的因素。在现实中,模型构建过程中对贷款前期偿还的修改是强制性的,因为在贷款期间观察到更多的及时偿还贷款,降低了违约率。为了在预测准确性和最小误差的基础上对有效模型进行比较,采用随机森林、人工神经网络、分类与回归树、支持向量机、逻辑回归和Naïve贝叶斯等6种监督机器学习算法,建立了包含早期贷款偿还属性的默认预测模型。这些模型在一个贷款数据集上进行了训练和测试,该数据集由具有和不具有早期贷款偿还属性的属性组成,并使用五个性能指标进行了评估。绩效评估结果表明,考虑提前还款属性的模型比不考虑提前还款属性的模型具有更高的准确率、召回率、精度、均方根误差和接收者操作特征曲线值。随机森林模型被证明是最好的预测模型,比其他模型具有93%的准确率,11%的RMSE, 90%的精度,89%的召回率和81%的ROC值。
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