Operating efficiency assessment of commercial banks with Cooperative-Stackelberg hybrid two-stage DEA
RAIRO. Operations Research, Tome 55 (2021) no. 5, pp. 3197-3215

The two-stage Data Envelopment Analysis (DEA) is widely applied to assess the efficiency of commercial banks in recent years. Even though this approach well simulates the sequence of banks production process, the independent operations within sub-stages are generally ignored, and the cooperative or non-cooperative relations between sub-stages are usually investigated separately.Please check whether short title on odd pages have been set correctly. Commercial banking production system, however, has complex internal structure within which parallel and series structure can co-exist, and cooperative relations may concurrently occur with non-cooperative ones. In this paper, we develop a hybrid two-stage DEA to consider simultaneously the series-parallel internal structure and the cooperative-Stackelberg relations between sub-stages. The data of 19 Chinese listed commercial banks are used to show the abilities of the proposed models. This approach represents a powerful and flexible efficiency measurement implement that can be applied when the system in question has a complex internal structure in terms of both sub-systems features and sub-systems relations.

DOI : 10.1051/ro/2021152
Classification : 90B30, 91-10
Keywords: Commercial bank, two-stage sSystem, efficiency evaluation, data envelopment analysis
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Ma, Jianfeng; Zhao, Tianmingdi. Operating efficiency assessment of commercial banks with Cooperative-Stackelberg hybrid two-stage DEA. RAIRO. Operations Research, Tome 55 (2021) no. 5, pp. 3197-3215. doi: 10.1051/ro/2021152

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