Journal ArticleOpen Access
Combining weighted SMOTE with ensemble learning for the class-imbalanced prediction of small business credit risk
Authors
Author Affiliations
Hajee Mohammad Danesh Science and Technology University, Teesside University, Dalian University of Technology, University of Pardubice
Published InComplex & Intelligent Systems
Year2022
Citations90
Abstract
Abstract In small business credit risk assessment, the default and nondefault classes are highly imbalanced. To overcome this problem, this study proposes an extended ensemble approach rooted in the weighted synthetic minority oversampling technique (WSMOTE), which is called WSMOTE-ensemble. The proposed ensemble classifier hybridizes WSMOTE and Bagging with sampling composite mixtures to guarantee the robustness and variability of the generated synthetic instances and, thus, minimize the small business class-skewed constraints linked to default and nondefault instances. The original small business dataset used in this study was taken from 3111 records from a Chinese commercial bank. By implementing a thorough experimental study of extensively skewed data-modeling scenarios, a multilevel experimental setting was established for a rare event domain. Based on the…
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