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CLUS-MCDA: A novel framework based on cluster analysis and multiple criteria decision theory in a supplier selection problem

机译:CLUS-MCDA:基于聚类分析和多准则决策理论的供应商选择问题新框架

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In past recent years, by increasing in the considerations on the significance of data science many studies have been developed concerning the big data structured problems. Along with the information science, in the field of decision science, multi-attribute decision-making (MADM) approaches have been considerably applied in research studies. One of the most important procedures in supply chain management is selecting the optimal supplier to maintain the long-term productivity of the supply chain. There has been a vast amount of research which utilized MADM approaches to tackle the supplier selection problems, but only a few of these research considered big data structured problems. The current study presents a comprehensive novel approach for improving Multiple Criteria Decision Analysis (MCDA) based on cluster analysis considering crisp big data structure input which is called CLUS-MCDA (Cluster analysis for improving Multiple Criteria Decision Analysis) algorithm. The proposed method is based on consolidating a data mining technique i.e.k-means clustering method and a MADM approach which is MULTIMOORA method. CLUS-MCDA method is a fast and practical approach which has been developed in this research which is implied in a supplier selection problem considering crisp big data structured input. A real-world case study in MAMUT multi-national corporation has been presented to show the validity and practicality of the CLUS-MCDA approach which calculated considering the business areas and criteria based on expert comments of mentioned organizations and previous literature on supplier selection problem.
机译:在过去的几年中,通过增加对数据科学重要性的考虑,已经针对大数据结构问题进行了许多研究。与信息科学一起,在决策科学领域,多属性决策制定(MADM)方法已在研究中大量应用。供应链管理中最重要的程序之一是选择最佳供应商,以维持供应链的长期生产力。已有大量研究利用MADM方法来解决供应商选择问题,但是只有少数研究认为大数据结构化问题。当前的研究提出了一种综合的新颖方法,该方法基于聚类分析并考虑了清晰的大数据结构输入,从而改进了多标准决策分析(MCDA),称为CLUS-MCDA(改进多标准决策分析的聚类分析)算法。提出的方法是基于将数据挖掘技术即k-means聚类方法和MADM方法(即MULTIMOORA方法)相结合的。 CLUS-MCDA方法是本研究开发的一种快速而实用的方法,它暗示了考虑到清晰的大数据结构输入的供应商选择问题。提出了一个在MAMUT跨国公司中进行的实际案例研究,以显示CLUS-MCDA方法的有效性和实用性,该方法是根据提及的组织的专家意见和先前有关供应商选择问题的文献,在考虑业务领域和标准的基础上计算得出的。

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