Credit risk shocks and banking efficiency: a study based on a bootstrap-DEA model with nonperforming loans as bad output

2020 
This paper investigates the impact of credit risk shocks on the evolution of banking efficiency in China.,This paper introduces credit risk as a bad output into a bootstrap data envelopment analysis (bootstrap-DEA) model.,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.,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.
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