Cargando…

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

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 po...

Descripción completa

Detalles Bibliográficos
Autores principales: Yazdi, Hoda Dalili, Movahedi Sobhani, Farzad, Lotfi, Farhad Hosseinzadeh, Kazemipoor, Hamed
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10473491/
https://www.ncbi.nlm.nih.gov/pubmed/37656711
http://dx.doi.org/10.1371/journal.pone.0290610
_version_ 1785100285183524864
author Yazdi, Hoda Dalili
Movahedi Sobhani, Farzad
Lotfi, Farhad Hosseinzadeh
Kazemipoor, Hamed
author_facet Yazdi, Hoda Dalili
Movahedi Sobhani, Farzad
Lotfi, Farhad Hosseinzadeh
Kazemipoor, Hamed
author_sort Yazdi, Hoda Dalili
collection PubMed
description 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.
format Online
Article
Text
id pubmed-10473491
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-104734912023-09-02 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 Yazdi, Hoda Dalili Movahedi Sobhani, Farzad Lotfi, Farhad Hosseinzadeh Kazemipoor, Hamed PLoS One Research Article 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. Public Library of Science 2023-09-01 /pmc/articles/PMC10473491/ /pubmed/37656711 http://dx.doi.org/10.1371/journal.pone.0290610 Text en © 2023 Yazdi et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Yazdi, Hoda Dalili
Movahedi Sobhani, Farzad
Lotfi, Farhad Hosseinzadeh
Kazemipoor, Hamed
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
title 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
title_full 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
title_fullStr 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
title_full_unstemmed 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
title_short 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
title_sort 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
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10473491/
https://www.ncbi.nlm.nih.gov/pubmed/37656711
http://dx.doi.org/10.1371/journal.pone.0290610
work_keys_str_mv AT yazdihodadalili anovelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT movahedisobhanifarzad anovelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT lotfifarhadhosseinzadeh anovelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT kazemipoorhamed anovelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT yazdihodadalili novelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT movahedisobhanifarzad novelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT lotfifarhadhosseinzadeh novelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample
AT kazemipoorhamed novelalgorithmforcompleterankingofdmusdealingwithnegativedatausingdataenvelopmentanalysisandprincipalcomponentanalysispharmaceuticalcompaniesandanotherpracticalexample