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Large-scale multiple criteria decision-making with missing values: project selection through TOPSIS-OPA

机译:大规模多个标准决策,缺失值:通过Topsis-OPA的项目选择

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Nowadays, with the development of information management infrastructures in organizations and the improvement of the data storage process, managers are looking for appropriate decision-making methods based on large volumes of data. Therefore, it is crucial to choose the right approach to make the right decisions based on the volume of available data. The present study seeks to provide a comprehensive framework for the decision-making process using big data, even when it is incomplete. The framework of multiple criteria decision making (MCDM) consists of criteria and alternatives, whereas in real-world cases, decision-makers may face several criteria and alternatives. In this study, the Principal Component Analysis (PCA) approach was selected for the criteria clustering. Later, the K-means algorithm is used to cluster the alternatives, which estimates the optimal number of clusters using the Elbow method. The Fuzzy TOPSIS (TOPSIS-F) and Ordinal Priority Approach (OPA) have been used to rank clusters. Ultimately, the best alternative in the top cluster has been identified with the aid of the OPA, which has a unique function to solve MCDM problems with incomplete data. For evaluating the performance of the proposed approach, first, a pilot testing has been executed on a real-world case, and then a practical study was conducted at a refinery equipment manufacturing company with a project-oriented organizational structure. The approach is flexible, interactive, intelligent, and integrative, and significantly reduces the time and computation costs for the decision-makers. The results confirmed the soundness of the proposed approach, which can be used by managers of different companies with confidence.
机译:如今,随着组织中的信息管理基础设施和数据存储过程的改进,管理人员正在寻找基于大量数据的适当决策方法。因此,根据可用数据的数量,选择正确的方法是至关重要的。目前的研究旨在为使用大数据提供决策过程的全面框架,即使它不完整。多标准决策(MCDM)的框架包括标准和替代方案,而在现实世界案件中,决策者可能面临若干标准和替代方案。在这项研究中,选择了主要成分分析(PCA)方法进行标准聚类。稍后,K-Means算法用于聚类替代方案,该替代方案估计使用弯头方法的最佳簇数。模糊Topsis(TopSIS-F)和序数优先方法(OPA)已被用于排列群集。最终,已经借助OPA确定了顶级群集中的最佳替代方案,该opa具有独特的功能来解决不完整数据的MCDM问题。为了评估所提出的方法的表现,首先,在真实的情况下已经在实际情况下执行了试验测试,然后在一个以项目为导向的组织结构的炼油厂设备制造公司进行了实际研究。该方法是灵活,互动,智能和综合性的,并大大降低了决策者的时间和计算成本。结果证实了所提出的方法的健全性,不同公司的管理人员可以充满信心地使用。

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