Grey clustering and grey ranking of bank branches based on grey efficiency

IF 3.2 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Grey Systems-Theory and Application Pub Date : 2023-09-15 DOI:10.1108/gs-04-2023-0034
Tooraj Karimi, Mohamad Ahmadian
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Abstract

Purpose Competition in the banking sector is more complex than in the past, and survival has become more difficult than before. The purpose of this paper is to propose a grey methodology for evaluating, clustering and ranking the performance of bank branches with imprecise and uncertain data in order to determine the relative status of each branch. Design/methodology/approach In this study, the two-stage data envelopment analysis model with grey data is applied to assess the efficiency of bank branches in terms of operations. The result of grey two-stage data envelopment analysis model is a grey number as efficiency value of each branch. In the following, the branches are classified into three grey categories of performance by grey clustering method, and the complete grey ranking of branches are performed using “minimax regret-based approach” and “whitening value rating”. Findings The results show that after grey clustering of 22 branches based on grey efficiency value obtained from the grey two-stage DEA model, 6 branches are assigned to “excellent” class, 4 branches to “good” class and 12 branches to “poor” class. Moreover, the results of MRA and whitening value rating models are integrated, and a complete ranking of 22 branches are presented. Practical implications Grey clustering of branches based on grey efficiency value can facilitate planning and policy-making for branches so that there is no need to plan separately for each branch. The grey ranking helps the branches find their current position compared to other branches, and the results can be a dashboard to find the best practices for benchmarking. Originality/value Compared with traditional DEA methods which use deterministic data and consider decision-making units as black boxes, in this research, a grey two-stage DEA model is proposed to evaluate the efficiency of bank branches. Furthermore, grey clustering and grey ranking of efficiency values are used as a novel solution for improving the accuracy of grey two-stage DEA results.
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基于灰色效率的银行网点灰色聚类和灰色排序
银行业的竞争比过去更加复杂,生存比以前更加困难。本文的目的是提出一种灰色方法来评估、聚类和排序具有不精确和不确定数据的银行分支机构的绩效,以确定每个分支机构的相对地位。在本研究中,采用灰色数据的两阶段数据包络分析模型来评估银行分支机构的运营效率。灰色两阶段数据包络分析模型的结果是一个灰色数作为每个分支的效率值。下面,通过灰色聚类方法将分支划分为三个性能灰色类别,并采用“基于极大极小遗憾的方法”和“白化值评级”对分支进行完全灰色排序。结果表明:根据灰色两阶段DEA模型得到的灰色效率值对22个分支进行灰色聚类后,6个分支被划分为“优”类,4个分支被划分为“良”类,12个分支被划分为“差”类。综合MRA和白化值评级模型的结果,给出了22个分支的完整排名。实践启示基于灰色效率值对分支机构进行灰色聚类,可以方便分支机构的规划和决策,无需对每个分支机构分别进行规划。灰色排名可以帮助分支找到与其他分支相比的当前位置,其结果可以作为一个指示板,用于查找基准测试的最佳实践。与传统的DEA方法使用确定性数据,将决策单元作为黑盒进行评估相比,本文提出了一种灰色两阶段DEA模型来评估银行分支机构的效率。此外,采用灰色聚类和效率值的灰色排序作为提高灰色两阶段DEA结果准确性的新方法。
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来源期刊
Grey Systems-Theory and Application
Grey Systems-Theory and Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.80
自引率
13.80%
发文量
22
期刊最新文献
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