A common weights model for investigating efficiency-based leadership in the russian banking industry
RAIRO. Operations Research, Tome 55 (2021) no. 1, pp. 213-229

In this race for productivity, the most successful leaders in the banking industry are those with high-efficiency and a competitive edge. Data envelopment analysis is one of the most widely used methods for measuring efficiency in organizations. In this study, we use the ideal point concept and propose a common weights model with fuzzy data and non-discretionary inputs. The proposed model considers environmental criteria with uncertain data to produce a full ranking of homogenous decision-making units. We use the proposed model to investigate the efficiency-based leaders in the Russian banking industry. The results show that the unidimensional and unilateral assessment of leading organizations solely according to corporate size is insufficient to characterize industry leaders effectively. In response, we recommend a multilevel, multicomponent, and multidisciplinary evaluation framework for a more reliable and realistic investigation of leadership at the network level of analysis.

DOI : 10.1051/ro/2020143
Classification : 90-10, 90C11, 90C08, 90C30
Keywords: Data envelopment analysis, common weights, leadership, ideal point, fuzzy data, non-discretionary inputs, efficiency
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Kazemi, Sajad; Tavana, Madjid; Toloo, Mehdi; Zenkevich, Nikolay A. A common weights model for investigating efficiency-based leadership in the russian banking industry. RAIRO. Operations Research, Tome 55 (2021) no. 1, pp. 213-229. doi: 10.1051/ro/2020143

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