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首页> 外文期刊>Annals of Operations Research >A new multi-component DEA approach using common set of weights methodology and imprecise data: an application to public sector banks in India with undesirable and shared resources
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A new multi-component DEA approach using common set of weights methodology and imprecise data: an application to public sector banks in India with undesirable and shared resources

机译:一种新的多分量DEA方法,使用一组通用的权重方法和不精确的数据:具有不良和共享资源的印度公共部门银行的应用

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Owing to the importance of internal structure of decision making units (DMUs) and data uncertainties in real situations, the present paper focuses on multi-component data envelopment analysis (MC-DEA) approach with imprecise data. The undesirable outputs and shared resources are also incorporated in the production process of multi-component DMUs to validate real problems. The interval efficiencies of DMUs and their components in MC-DEA are often challenging with imprecise data. In many practical situations, different set of weights may be resulted into valid efficiency intervals for DMUs but invalid interval efficiencies for their components. Therefore, the present study proposes a new common set of weights methodology, based on interval arithmetic and unified production frontier, to determine unique weights for measuring these interval efficiencies. It is a two-level mathematical programming approach that preserves linearity of DEA and exhibits stronger discrimination power among the DMUs as compared to some existing approaches. Theoretically, the aggregate efficiency interval of each DMU lies between the components' interval efficiencies. Further, the proposed approach is also applied to banks in India for proving its acceptability in practical applications. The performance of each bank is investigated in terms of two components: general business and bancassurance business for the years 2011-2013. The present study emphasized expanding pattern of bancassurance business in current market scenario with more percentage increase as contrasted to general business.
机译:由于决策单位(DMU)的内部结构和实际情况中数据不确定性的重要性,因此本文重点研究具有不精确数据的多分量数据包络分析(MC-DEA)方法。不期望的输出和共享资源也被合并到多组件DMU的生产过程中,以验证实际问题。对于不精确的数据,DMU及其MC-DEA中组件的间隔效率通常具有挑战性。在许多实际情况下,不同的权重集可能会导致DMU的有效间隔效率,但其组件的间隔效率无效。因此,本研究提出了一种基于区间算术和统一生产边界的新的通用权重方法集,以确定用于测量这些区间效率的唯一权重。这是一种两级数学编程方法,与某些现有方法相比,它保留了DEA的线性,并在DMU之间表现出更强的区分能力。从理论上讲,每个DMU的总效率间隔位于组件的间隔效率之间。此外,该提议的方法还应用于印度的银行,以证明其在实际应用中的可接受性。每个银行的绩效均从两个方面进行调查:2011-2013年的一般业务和银行保险业务。本研究强调在当前市场情景下银保业务的扩展模式,与一般业务相比,百分比增长更多。

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