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基于数据包络分析和主成分分析的负数据完全排序新算法:制药公司及另一个实际案例

A novel algorithm for complete ranking of DMUs dealing with negative data using Data Envelopment Analysis and Principal Component Analysis: Pharmaceutical companies and another practical example.

机构信息

Department of Industrial Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.

Department of Mathematics, Science and Research Branch, Islamic Azad University, Tehran, Iran.

出版信息

PLoS One. 2023 Sep 1;18(9):e0290610. doi: 10.1371/journal.pone.0290610. eCollection 2023.

Abstract

When there is an extensive number of inputs and outputs compared to the number of DMUs, one of the drawbacks of Data Envelopment Analysis appears, which incorrectly classifies inefficient DMUs, as efficient ones. Accordingly, the DEA ranking power becomes further moderated. To improve the ranking power, this paper renders the details of an algorithm that presents a model combining the Principal Component Analysis and the Slacks-Based Measure (PCA-SBM) which reduces the number of the incorrectly determined efficient DMUs. Also to complete ranking of DMUs, the algorithm presents a Super-Efficiency model integrated with PCA (PCA-Super SBM) which can rank the efficient DMUs (extreme and non-extreme). Whereas the most important previous models for ranking efficient units cannot rank non-extreme ones. Additionally, in most previous studies, DEA models combined with PCA fail to handle negative data, while, the presented models can cover this data. Two case studies (pharmaceutical companies listed on the Iranian stock market and bank branches) are manipulated to demonstrate the applicability and performance of the algorithm. To show the superiority of the presented models, the SBM model without PCA and the Super SBM model without PCA have been implemented on the data of both cases. In comparing the two methods (PCA-SBM and SBM), the PCA-SBM model has higher ranking power (five efficient DMUs versus nineteen in the case of pharmaceutical companies and four efficient DMUs versus twenty-nine in the case of bank branches). Also in comparing the PCA-Super SBM and Super SBM, the PCA-Super SBM model works more powerfully in complete ranking. As the Super SBM model cannot rank non-extreme units unlike the PCA-Super SBM. Consequently, the presented algorithm works successfully in ranking the DMUs completely (inefficient, extreme, and non-extreme efficient) with low complexity.

摘要

当输入和输出的数量与决策单元的数量相比非常多时,数据包络分析(DEA)会出现一个缺点,即错误地将非有效决策单元归类为有效决策单元。因此,DEA 的排名能力进一步减弱。为了提高排名能力,本文提出了一种算法的细节,该算法提出了一种将主成分分析和基于松弛的度量(PCA-SBM)相结合的模型,该模型减少了错误确定的有效决策单元的数量。此外,为了完成决策单元的排名,该算法提出了一个与 PCA 集成的超效率模型(PCA-Super SBM),可以对有效决策单元(极端和非极端)进行排名。而之前用于排名有效单位的最重要模型无法对非极端单位进行排名。此外,在大多数先前的研究中,与 PCA 结合的 DEA 模型无法处理负数据,而提出的模型可以涵盖这些数据。通过两个案例研究(在伊朗股票市场上市的制药公司和银行分行)来演示算法的适用性和性能。为了展示所提出模型的优越性,在两个案例的数据上实现了不带 PCA 的 SBM 模型和不带 PCA 的 Super SBM 模型。在比较两种方法(PCA-SBM 和 Super SBM)时,PCA-SBM 模型具有更高的排名能力(制药公司的 5 个有效决策单元与 19 个,银行分行的 4 个有效决策单元与 29 个)。此外,在比较 PCA-Super SBM 和 Super SBM 时,PCA-Super SBM 模型在完整排名方面更有效。由于 Super SBM 模型不能对非极端单元进行排名,而 PCA-Super SBM 则可以。因此,所提出的算法在完全排名方面(低效、极端和非极端有效)成功地以低复杂度运行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5db6/10473491/6125c0fa2778/pone.0290610.g001.jpg

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