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Forecasting creditworthiness in credit scoring using machine learning methods

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dc.contributor.author Mukhanova, Ayagoz
dc.contributor.author Baitemirov, Madiyar
dc.contributor.author Amirov, Azamat
dc.contributor.author Tassuov, Bolat
dc.contributor.author Makhatova, Valentina
dc.contributor.author Kaipova, Assemgul
dc.contributor.author Makhazhanova, Ulzhan
dc.contributor.author Ospanova, Tleugaisha
dc.date.accessioned 2026-03-11T07:59:26Z
dc.date.available 2026-03-11T07:59:26Z
dc.date.issued 2024
dc.identifier.issn 2088-8708
dc.identifier.other DOI: 10.11591/ijece.v14i5.pp5534-5542
dc.identifier.uri http://repository.enu.kz/handle/enu/30109
dc.description.abstract This article provides an overview of modern machine learning methods in the context of their active use in credit scoring, with particular attention to the following algorithms: light gradient boosting machine (LGBM) classifier, logistic regression (LR), linear discriminant analysis (LDA), decision tree (DT) classifier, gradient boosting classifier and extreme gradient boosting (XGB) classifier. Each of the methods mentioned is subject to careful analysis to evaluate their applicability and effectiveness in predicting credit risk. The article examines the advantages and limitations of each method, identifying their impact on the accuracy and reliability of borrower creditworthiness assessments. Current trends in machine learning and credit scoring are also covered, warning of challenges and discussing prospects. The analysis highlights the significant contributions of methods such as LGBM classifier, LR, LDA, DT classifier, gradient boosting classifier and XGB classifier to the development of modern credit scoring practices, highlighting their potential for improving the accuracy and reliability of borrower creditworthiness forecasts in the financial services industry. Additionally, the article discusses the importance of careful selection of machine learning models and the need to continually update methodology in light of the rapidly changing nature of the financial market. ru
dc.language.iso en ru
dc.publisher International Journal of Electrical and Computer Engineering (IJECE) ru
dc.relation.ispartofseries Vol. 14, No. 5;pp. 5534~5542
dc.subject Creditworthiness ru
dc.subject Decision tree classifier ru
dc.subject Gradient boosting classifier ru
dc.subject Linear discriminant analysis ru
dc.subject Logistic regression ru
dc.subject Machine learning ru
dc.title Forecasting creditworthiness in credit scoring using machine learning methods ru
dc.type Article ru


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