Credit risk shocks and banking efficiency : a study based on a bootstrap-DEA model with nonperforming loans as bad output
Purpose: This paper investigates the impact of credit risk shocks on the evolution of banking efficiency in China. Design/methodology/approach: This paper introduces credit risk as a bad output into a bootstrap data envelopment analysis (bootstrap-DEA) model. Findings: During a credit risk shock, the efficiency levels of both state-owned commercial banks and joint-stock commercial banks are significantly higher than those of urban/rural commercial banks, and the efficiency differences between these banks further increase during a period of economic slowdown. This paper also finds that the efficiencies of joint-stock commercial banks are the most sensitive to credit risk shocks; these banks are the first to be affected and the first to completely adjust. However, urban/rural commercial banks adjust very slowly. Originality/value: Most scholars still use the traditional DEA method to estimate China's banking efficiency. The bootstrap-DEA method is clearly able to obtain a more exact estimated efficiency score. In fact, in comparison with the bootstrap-DEA model, we found that the traditional DEA method overestimates China's banking efficiency, and this is an especially serious problem for those banks that have a high efficiency score.
Year of publication: |
2020
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Authors: | Li, Renyu ; Li, Li ; Zou, Peijiang |
Published in: |
Journal of Economic Studies. - Emerald, ISSN 0144-3585, ZDB-ID 1480042-1. - Vol. 48.2020, 1 (29.04.), p. 1-19
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Publisher: |
Emerald |
Saved in:
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