Abstract
AbstractAlthough there is a growing number of research articles investigating the performance in the banking industry, research on Chinese banking efficiency is rather focused on discussing rankings to the detriment of unveiling its productive structure in light of banking competition. This issue is of utmost importance considering the relevant transformations in the Chinese economy over the last decades. This is a development of a two-stage network production process (production and intermediation approaches in banking, respectively) to evaluate the efficiency level of Chinese commercial banks. In the second stage regression analysis, an integrated Multi-Layer Perceptron/Hidden Markov model is used for the first time to unveil endogeneity among banking competition, contextual variables, and efficiency levels of the production and intermediation approaches in banking. The competitive condition in the Chinese banking industry is measured by Panar–Rosse H-statistic and Lerner index under the Ordinary Least Square regression. Findings reveal that productive efficiency appears to be positively impacted by competition and market power. Second, credit risk analysis in older local banks, which focus the province level, would possibly be the fact that jeopardizes the productive efficiency levels of the entire banking industry in China. Thirdly, it is found that a perfect banking competition structure at the province level and a reduced market power of local banks are drivers of a sound banking system. Finally, our findings suggest that concentration of credit in a few banks leads to an increase in bank productivity.
Publisher
Springer Science and Business Media LLC
Subject
Management Science and Operations Research,General Decision Sciences
Reference88 articles.
1. Altunbas, Y., Carbo, S., Gardener, E. P. M., & Molynuex, P. (2007). Examining the relationships between capital, risk and efficiency in European banking. European Financial Management, 13(1), 49–70.
2. Alves, A. B., Wanke, P., Antunes, J., & Chen, Z. (2020). Endogenous network efficiency, macroeconomy, and competition: evidence from the Portuguese banking industry. The North American Journal of Economics and Finance, 52, 1–20.
3. An, Q., Chen, H., Wu, J., & Liang, L. (2015). Measuring slacks-based efficiency for commercial banks in China by using a two-stage DEA model with undesirable output. Gbn Rations Research, 235(1), 13–35.
4. Ardia, D., Boudt, K., Carl, P., Mullen, K., & Peterson, B. G. (2011). Differential evolution with DEoptim: an application to non-convex portfolio optimization. The R Journal, 3(1), 27–34.
5. Asmild, M., & Matthews, K. (2012). Multi-directional efficiency analysis patterns in Chinese banks 1997–2008. European Journal of Operational Research, 219, 434–441.
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