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首页> 外文期刊>Journal of Computing and Information Science in Engineering >Supply Chain Performance Evaluation With Rough Two-Stage Data Envelopment Analysis Model: Noncooperative Stackelberg Game Approach
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Supply Chain Performance Evaluation With Rough Two-Stage Data Envelopment Analysis Model: Noncooperative Stackelberg Game Approach

机译:具有粗糙的两阶段数据包络分析模型的供应链绩效评估:非合作Stackelberg博弈方法

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摘要

Rapidly changing environment has affected organizations ability to maintain viability. As a result, various criteria and uncertain situations in a complex environment encounter problems when using the traditional performance evaluation with precise and deterministic data. The purpose of this paper is to propose an applicable model for evaluating the performance of the overall supply chain (SC) network and its members. Performance evaluation methods, which do not include uncertainty, obtain inferior results. To overcome this, rough set theory (RST) was used to deal with such uncertain data and extend rough noncooperative Stackelberg data envelopment analysis (DEA) game to construct a model to evaluate the performance of supply chain under uncertainty. This applies the concept of Stackelberg game/leader-follower in order to develop models for measuring performance. The ranking method of noncooperative two-stage rough DEA model is discussed. While developing the model, which is suitable to evaluate the performance of the supply chain network and its members when it operates in uncertain situations and involves a high degree of vagueness. The application of this paper provides a valuable procedure for performance evaluation in other industries. The proposed model provides useful insights for managers on the measurement of supply chain efficiency in uncertain environment. This paper creates a new perspective into the use of performance evaluation model in order to support managerial decision-making in the dynamic environment and uncertain situations.
机译:快速变化的环境影响了组织维持生存能力的能力。结果,当使用具有精确和确定性数据的传统性能评估时,在复杂环境中的各种标准和不确定情况会遇到问题。本文的目的是提出一个适用的模型,以评估整个供应链(SC)网络及其成员的绩效。不包括不确定性的绩效评估方法会获得较差的结果。为了克服这个问题,使用粗糙集理论(RST)来处理此类不确定性数据,并扩展了粗糙的非合作Stackelberg数据包络分析(DEA)博弈,以构建一个模型来评估不确定性下的供应链绩效。这应用了Stackelberg游戏/领导者跟进者的概念,以便开发用于衡量绩效的模型。讨论了非合作两阶段粗糙DEA模型的排序方法。在开发模型时,该模型适用于评估供应链网络及其成员在不确定情况下运行且涉及高度模糊性时的性能。本文的应用为其他行业的绩效评估提供了有价值的程序。所提出的模型为管理者提供了有关不确定环境中供应链效率度量的有用见解。本文为绩效评估模型的使用开辟了新的视角,以支持在动态环境和不确定情况下的管理决策。

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