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FINANCIAL ECONOMICS

Failure prediction of Indian Banks using SMOTE, Lasso regression, bagging and boosting

, ORCID Icon & | (Reviewing editor)
Article: 1729569 | Received 27 May 2019, Accepted 10 Feb 2020, Published online: 18 Feb 2020

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