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Integrated data envelopment analysis and multicriteria decision-making ranking approach based on peer-evaluations and subjective preferences: case study in banking sector

机译:数据包络分析和集成多准则决策排序方法根据权威的评价和主观的偏好:案例研究在银行业

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Purpose This paper is focused on developing an integrated algorithmic approach named as data envelopment analysis and multicriteria decision-making (DEA-MCDM) for ranking decision-making units (DMUs) based on cross-efficiency technique and subjective preference(s) of the decision maker. Design/methodology/approach Self-evaluation in data envelopment analysis (DEA) lacks in discrimination power among DMUs. To fix this, a cross-efficiency technique has been introduced that ranks DMUs based on peer-evaluation. Different cross-efficiency formulations such as aggressive and benevolent and neutral are available in the literature. The existing ranking approaches fail to incorporate subjective preference of "one" or "some" or "all" or "most" of the cross-efficiency evaluation formulations. Therefore, the integrated framework in this paper, based on DEA and multicriteria decision-making (MCDM), aims to present a ranking approach to incorporate different cross-efficiency formulations as well as subjective preference(s) of decision maker. Findings The proposed approach has an advantage that each of the aggressive, benevolent and neutral cross-efficiency formulations contribute to select the best alternative among the DMUs in a MCDM problem. Ordered weighted averaging (OWA) aggregation is applied to aggregate final cross-efficiencies and to achieve complete ranking of the DMUs. This new approach is further illustrated and compared with existing MCDM approaches like simple additive weighting (SAW) and Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) to prove its validity in real situations. Research limitations/implications The choice of cross-efficiency formulation(s) as per subjective preference of the decision maker and different orness levels lead to different aggregated scores and thus ranking of the DMUs accordingly. The proposed ranking approach is highly useful in real applications like R and D projects, flexible manufacturing systems, electricity distribution sector, banking industry, labor assignment and the economic environmental performances for ranking and benchmarking. Practical implications To prove the practical applicability and robustness of the proposed integrated DEA-MCDM approach, it is applied to top twelve Indian banks in terms of three inputs and two outputs for the period 2018-2019. The findings of the study (1) ensure the impact of non-performing assets (NPAs) on the ranking of the selected banks and (2) are enormously valuable for the bank experts and policy makers to consider the impact of peer-evaluation and subjective preference(s) in formulating appropriate policies to improve performance and ranks of underperformed banks in competitive scenario. Originality/value To the best of the authors' knowledge, this is the first study that has integrated both DEA and MCDM via OWA aggregation to present a ranking approach that can incorporate different cross-efficiency formulations and subjective preference(s) of the decision maker for ranking DMUs.
机译:本文目的是专注于开发一个集成算法命名为数据包络分析和多准则决策(DEA-MCDM)排名(研究基于决策单位cross-efficiency技术和主观偏好的决策者。设计/方法/方法自我评价数据包络分析(DEA)缺乏研究中歧视的能力。cross-efficiency技术引入了排名基于同行评估的研究。不同cross-efficiency配方等积极的和仁慈的和中性的在文献中可用。方法不能将主观的偏好的“一”或“一些”或“所有”或“最”cross-efficiency评价公式。因此,集成的框架论文基于DEA和多准则决策(指标),旨在提供一个排名方法将不同cross-efficiency配方以及决策者的主观偏好(s)。结果该方法具有优势每一个积极的、仁慈的和中性cross-efficiency配方贡献选择最好的选择研究中一个指标的问题。聚合应用于聚合决赛交叉效率,实现完成研究的排名。与现有指标的说明和比较方法像简单的加性加权(看到)以及技术的偏好顺序(TOPSIS)证明相似的理想解决方案在真实情况下其有效性。限制/意义的选择根据主观cross-efficiency配方(s)决策者的偏好和不同orness水平导致不同的聚合的分数因此排名的相应研究。提出了排名方法是非常有用的真正的应用程序像R和D项目,灵活制造系统、电力分布部门、银行业、劳动分配经济环境的表现排名和基准测试。实用性和证明提出了集成DEA-MCDM的鲁棒性方法,它应用于前十二个印度银行的三个输入和两个输出2018 - 2019年期间。研究(1)确保不良的影响资产(npa)排名的选择银行和(2)有巨大的价值银行专家和政策制定者考虑同行评估和主观的影响首选项(s)在制定适当的政策提高性能和队伍表现不佳的银行竞争场景。创意/价值最好的作者的所知,这是第一个研究集成和DEA指标通过OWA聚合目前排名的方法,可以结合不同cross-efficiency配方和主观偏好(年代)决策者研究排名。

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