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A new method based on finding the weak and strong defining supporting hyperplanes to recognize the anchor points

机译:一种基于寻找弱强定义支撑超平面识别锚点的新方法

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摘要

One of the main important issues in Data Envelopment Analysis (DEA) is to recognize the set of anchor points which is the subset of the extreme efficient points of the production possibility set (PPS). An anchor point is an extreme efficient point which is located on the intersection of the strong efficient frontier and the weak efficient frontier. In the other word, each anchor point delineate the strong efficient frontier from the weak efficient frontier. So, if a decision making unit (DMU) is an anchor point, then there is at least one supporting hyperplane whose the gradient vector has some of zero components, and so some inputoutput factor does not play any role in the performance of the unit under evaluation. The concept of anchor point was used in DEA for the generation of unobserved DMUs in order to extend the DEA efficient frontier and so, this concept plays a critical role in the DEA theory and its applications. Given the importance of the anchor pints in the DEA literature, this study focuses on finding the anchor points and presents a new method to search the anchor points of the PPS under the variable returns to scale (VRS) assumption. For this purpose, we use the definition of the anchor points and present an approach to find the anchor points of the PPS. The proposed method is based on finding the weak and strong defining supporting hyperplanes passing through the unit under evaluation. The main advantage of the proposed method is that it exactly uses the definition of the anchor points to provide the approach and it is very simple to use and the anchor points can be easily identified by solving two simple models. In addition, the proposed approach is such that in addition to determining the anchor points, it also finds two important defining supporting hyperplanes on the PPS, which can be used in many problems in DEA. The potentially of the proposed method is illustrated by some numerical examples, reported in the literature to compare the proposed method with the existing methods.
机译:数据包络分析(DEA)中的主要重要问题之一是识别锚点集,锚点集是生产可能性集(PPS)极端有效点的子集。锚点是位于强有效边界和弱有效边界交点的极端有效点。换句话说,每个锚点都划定了强有效边界和弱有效边界。因此,如果决策单元 (DMU) 是一个锚点,则至少存在一个支持超平面,其梯度向量具有一些零分量,因此某些输入输出因子在被评估单元的性能中不起任何作用。锚点的概念在DEA中被用于生成未观测到的DMU,以扩展DEA的有效边界,因此,该概念在DEA理论及其应用中起着至关重要的作用。鉴于锚点在DEA文献中的重要性,本研究重点寻找锚点,并提出了一种在可变尺度回报率(VRS)假设下搜索PPS锚点的新方法。为此,我们使用锚点的定义,并提出了一种找到 PPS 锚点的方法。所提出的方法基于找到通过被评估单元的弱定义和强定义支持超平面。所提方法的主要优点是它精确地使用锚点的定义来提供方法,并且使用起来非常简单,可以通过求解两个简单的模型轻松识别锚点。此外,所提出的方法除了确定锚点外,还在PPS上找到了两个重要的定义支持超平面,可用于DEA中的许多问题。文献中通过一些数值算例说明了所提方法的潜力,以将所提出的方法与现有方法进行比较。

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