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Swindle: Predicting the Probability of Loan Defaults using CatBoost Algorithm

机译:诈骗:使用Catboost算法预测贷款默认概率

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Predicting the probability of loan defaults is essential for financial institutes and banks, as a major part of their income is dependent on the interest & EMIs generated on the repayment of the loans issued by them to their customers. Most of the loans issued have a high interest rate associated with them due to lack of securities and uncertainty possessed by the customers. Hence, having a model that could predict loan defaulters would be very beneficial for the financial institutes and banks for notifying them to approve a customer’s loan or not. Such a model will evaluate their customer’s data based on certain parameters and generate an accurate result based on that evaluation. Swindle implements CatBoost algorithm is used for predicting loan defaults along with a document verification module using Tesseract and Camelot and also a personalized loan module, thereby mitigating the risk of the financial institutes in issuing loans to defaulters and unauthorized customers.
机译:预测贷款违约可能性对于金融机构和银行至关重要,因为其收入的主要部分依赖于对其客户发出的贷款偿还所产生的利益和EMI。 由于客户缺乏证券和不确定性,发出的大多数贷款都有高利率与他们相关。 因此,拥有可能预测贷款违约者的模型对于金融机构和银行来说是非常有益的,以便通知他们批准客户的贷款。 这种模型将根据某些参数评估其客户数据,并根据该评估生成准确的结果。 Swindle实现Catboost算法用于预测贷款默认值以及使用TESSERACT和Camelot的文档验证模块以及个性化贷款模块,从而减轻金融机构在向违规者和未授权客户贷款中发出金融机构的风险。

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