Forecasting nonperforming loans using machine learning

被引:8
作者
Abdullah, Mohammad [1 ]
Chowdhury, Mohammad Ashraful Ferdous [2 ]
Uddin, Ajim [3 ]
Moudud-Ul-Huq, Syed [4 ]
机构
[1] Univ Sultan Zainal Abidin, Fac Business & Management, Kuala Terengganu, Malaysia
[2] King Fahd Univ Petr & Minerals KFUPM, Interdisciplinary Res Ctr IRC Finance & Digital Ec, KFUPM Business Sch, Dhahran, Saudi Arabia
[3] New Jersey Inst Technol, Martin Tuchman Sch Management, Newark, NJ USA
[4] Mawlana Bhashani Sci & Technol Univ, Dept Business Adm, Tangail, Bangladesh
关键词
bagged CART; banking; forecasting; machine learning; nonperforming loans (NPLs); NON-PERFORMING LOANS; VARIABLE SELECTION; LIQUIDITY RISK; MODEL; DETERMINANTS; GREECE; REGULARIZATION; ALGORITHMS; EFFICIENCY; IMPACT;
D O I
10.1002/for.2977
中图分类号
F [经济];
学科分类号
02 ;
摘要
Nonperforming loans play a critical role in financial institutions' overall performance and can be controlled by forecasting the probable nonperforming loans. This paper employs a series of machine learning techniques to forecast bank nonperforming loans on emerging countries' financial institutions. Using quarterly cross-sectional data of 322 banks from 15 emerging countries, this study finds that advanced machine learning-based models outperform simple linear techniques in forecasting bank nonperforming loans. Among all 14 linear and nonlinear models, the random forest model outperforms other models. It achieves a 76.10% accuracy in forecasting nonperforming loans. The result is robust in different performance metrics. The variable importance analysis reveals that bank diversification is the most critical determinant for future nonperforming loans of a bank. Additionally, this study revealed that macroeconomic factors are less prominent in predicting nonperforming loans compared with bank-specific factors.
引用
收藏
页码:1664 / 1689
页数:26
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