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Modeling a shared hierarchical structure in data envelopment analysis: An application to bank branches

机译:在数据包络分析中建模共享层次结构:银行分支机构的应用

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摘要

The paper addresses the question of ensuring comparability in data envelopment analysis (DEA) in situations when units are organized in an ordered hierarchy with functions shared at different levels. In such a case, although units may have identical input-output sets that they put to use in similar production, they are not an ideally homogeneous group and their comparability in a benchmarking context is limited. The paper proposes to control explicitly the degree of comparability by a fairly flexible comparability constraint in order to obtain more informative technical efficiency scores and economically feasible targets. Furthermore, the paper develops a methodology to identify closest targets under the comparability constraint that are more attainable for inefficient units than traditional targets. These ideas are demonstrated in a case study located in the area of bank branch performance assessment from which the motivation of the paper sprouted. The case study shows for three hierarchical branch categories of a Slovak commercial bank that the comparability constraint renders closest targets more apposite, but they depend on how slacks are handled, i.e. whether they are summarized by a normalized sum or by means of a slacks-based measure. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文解决了在有序层级组织的情况下确保数据包络分析(DEA)的可比性问题的问题,其中包含在不同级别共享的函数。在这种情况下,虽然单位可以具有它们在类似的生产中使用的相同的输入输出集,但它们不是理想的均相组,并且它们在基准上下文中的可比性是有限的。本文提出通过相当灵活的可比性约束明确控制可比性程度,以便获得更具信息量的技术效率评分和经济可行的目标。此外,本文开发了一种方法,以确定比传统目标更效率的可比性约束下最近的目标。这些想法在位于银行分支业绩评估领域的案例研究中,从中发芽的动机。案例研究表明,对于斯洛伐克商业银行的三个层次分支类别,可比性约束使得最接近的目标更加吸引力,但它们依赖于如何处理Slacks,即它们是否被规范化的总和或通过基于狭缝总结措施。 (c)2020 elestvier有限公司保留所有权利。

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