Title:
Optimal balancing & efficient feature ranking approach to minimize credit risk

dc.contributor.authorManish Kumar Pandey
dc.contributor.authorMamta Mittal
dc.contributor.authorKarthikeyan Subbiah
dc.date.accessioned2026-02-07T10:37:33Z
dc.date.issued2021
dc.description.abstractThe banking industries are struggling with massive growth in the Non-Performing Assets (NPAs) that is raising the concerns of the financial institutions across the world. For gaining sustainable competitive advantages: detection, prediction, and prevention of credit Risks are becoming the foremost priorities for the banks. This data is vast, highly unstructured and imbalanced; thus, optimal balancing and efficient feature ranking are required, to predict the Credit Risk customers using Machine Learning techniques. Further, feature ranking algorithms are applied to identify the most vital characteristics of triggering the Credit Risk. The experiments have been conducted on credit Risk data set from a German bank, downloaded from the standard data repository of the UCI. Random Forest at optimal balancing ratio of 1:1.1335 has been found to be the best performing with a sensitivity of 81.6%, specificity value of 85.3%, the accuracy of 83.4%, MCC of 0.669 and AUC of 0.914. © 2021
dc.identifier.doi10.1016/j.jjimei.2021.100037
dc.identifier.issn26670968
dc.identifier.urihttps://doi.org/10.1016/j.jjimei.2021.100037
dc.identifier.urihttps://dl.bhu.ac.in/bhuir/handle/123456789/37005
dc.publisherElsevier Ltd
dc.subjectCredit risk analytics
dc.subjectFeature ranking
dc.subjectNPA's
dc.subjectOptimal balancing ratio
dc.subjectRandom forest
dc.subjectRisk prediction and prevention
dc.subjectSMAC
dc.subjectSMOTE
dc.titleOptimal balancing & efficient feature ranking approach to minimize credit risk
dc.typePublication
dspace.entity.typeArticle

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