Nash bargaining game model for two parallel stages process evaluation with shared inputs

被引:1
|
作者
Seyed Gholamreza Jalali Naini
Alireza Moini
Mustafa Jahangoshai Rezaee
机构
[1] Iran University of Science and Technology,Department of Industrial Engineering
[2] Urmia University of Technology,Department of Industrial Engineering
关键词
Data envelopment analysis; Two-stage process; Game theory; Nash bargaining game; Bank branches; Power plants;
D O I
暂无
中图分类号
学科分类号
摘要
Data envelopment analysis is a non-parametric technique for evaluating peer decision making units (DMUs) with using multiple inputs to produce multiple outputs. In the real world, DMUs usually have complex structures. One of these structures is a two-stage process with intermediate measures. In this structure, there are two stages and each stage uses inputs to produce outputs, separately where the outputs of the first stage are the inputs for the second stage. Cooperative model such as centralized model and non-cooperative model are game theoretic approaches to evaluate two-stage processes. Non-cooperative model supposes that one of the stages is the leader and another stage is the follower, whereas in the centralized model, both stages are evaluated simultaneously. In this paper, we propose a game theoretic model based on the Nash bargaining game to calculate weights when parallel stages with shared inputs compete to reach a high efficiency in the competitive strategy. Two data sets including the bank branches and thermal power plants in Iran are used to show the abilities of proposed model. This model can be applied in other processes such as supply chain, manufacturing and public service units.
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页码:475 / 484
页数:9
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