Research on the Efficiency of China's Listed Commercial Banks from the Perspective of Risk Management

YANG Zhen wu

Article ID: 2608
Vol 3, Issue 2, 2023
DOI: https://doi.org/10.54517/vfc.v3i2.2608
VIEWS - 27 (Abstract)

Abstract

Based on the panel data of 36 listed commercial banks in my country from 2014 to 2018, this paper takes Loan Loss Reserves (LLR) and Non-performing Loans (NPL) as undesired output, analyzes the impact of risk management factors on the efficieney of China's listed commercial banks, and provides a comprehensive A comparative study on the efficiency of four types of banks: joint-stock commercial banks, city commercial banks and rural commercial banks, and the Bootstrap method is used to analyze the factors affecting bank efficiency.


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