A common-weight DEA model for multi-criteria ABC inventory classification with quantitative and qualitative criteria
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Published:2019-10-11
Issue:5
Volume:53
Page:1775-1789
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ISSN:0399-0559
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Container-title:RAIRO - Operations Research
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language:
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Short-container-title:RAIRO-Oper. Res.
Author:
An Qingxian,Wen Yao,Hu Junhua,Lei Xiyang
Abstract
ABC analysis is a famous technique for inventory classification. However, this technique on the inventory classification only considering one indicator even though other important factors may affect the classification. To address this issue, researchers have proposed multiple criteria inventory classification (MCIC) solutions based on data envelopment analysis (DEA)-like methods. However, previous models almost evaluate items by different weight sets, and the index system only contains quantitative criteria and output indicators. To avoid these shortcomings, we propose an improved common-weight DEA model for MCIC issue. This model simultaneously considers quantitative and qualitative criteria as well as establishes a comprehensive index system that includes inputs and outputs. Apart from its improved discriminating power and lack of subjectivity, this non-parametric and linear programming model provides the performance scores of all items through a single computation. A case study is performed to validate and compare the performance of this new model with that of traditional ABC analysis, DEA–CCR and DEA–CI. The results show that apart from the highly improved discriminating power and significant reduction in computational burden, the proposed model has achieved a more comprehensive ABC inventory classification than the traditional models.
Funder
National Natural Science Foundation of China
the open project of “Mobile Health” Ministry of Education-China Mobile Joint Laboratory of Central South University
the State Key Program of National Natural Science of China
Research Fund for Innovation-driven Plan of Central South University
Subject
Management Science and Operations Research,Computer Science Applications,Theoretical Computer Science
Cited by
1 articles.
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