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A new extension to PROMETHEE under intuitionistic fuzzy environment for solving supplier selection problem with linguistic preferences

机译:在语言偏好解决供应商选择问题的直觉模糊环境下临时的新延伸

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This paper presents a new two-tier decision making framework with linguistic preferences for scientific decision making. The major reason for adopting linguistic preference is to ease the process of rating of alternatives by allowing decision makers (DMs) to strongly emphasize their opinion on each alternative. In the first tier, aggregation is done using a newly proposed operator called linguistic based aggregation (LBA), which aggregates linguistic terms directly without making any conversion. The main motivation for this proposal is driven by the previous studies on aggregation theory which reveals that conversion leads to loss of information and formation of virtual sets which are no longer sensible and rational for decision making process. Secondly, in the next tier, a new ranking method called IFSP (intuitionistic fuzzy set based PROMETHEE) is proposed which is an extension to PROMETHEE (preference ranking organization method for enrichment evaluation) under intuitionistic fuzzy set (IFS) context. Unlike previous ranking methods, this ranking method follows a new formulation by considering personal choice of the DMs over each alternative. The main motivation for such formulation is derived from the notion of not just obtaining a suitable alternative but also coherently satisfying the DMs' viewpoint during decision process. Finally, the practicality of the framework is tested by using supplier selection (SS) problem for an automobile factory. The strength and weakness of the proposed LBA-IFSP framework are verified by comparing with other methods under the realm of theoretical and numerical analysis. The results from the analysis infer that proposed LBA-IFSP framework is rationally coherent to DMs' viewpoint, moderately consistent with other methods and highly stable and robust against rank reversal issue. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的双层决策,具有科学决策的语言偏好。采用语言偏好的主要原因是通过允许决策者(DMS)强烈强调他们对每种替代方案的意见来缓解替代品的评级。在第一层中,使用名为语言基于语言的聚合(LBA)的新提出的运算符完成聚合,该算法直接聚合语言术语而不进行任何转换。该提案的主要动机是由之前的聚合理论研究推动,揭示了转换导致信息丢失和形成虚拟集的形成,这些套装不再是明智的和理性的决策过程。其次,在下一层中,提出了一种名为IFSP的新排名方法(基于直觉的基于模糊集的丙烯),这是在直觉模糊集(IFS)上下文下的临时临时(富集排名组织方法的偏好排名组织方法)的扩展。与以前的排名方法不同,通过考虑每个替代方案的个人选择,这种排名方法遵循新的配方。这种制剂的主要动机来自于在决策过程期间不仅仅是获得合适的替代而且同时满足DMS观点的概念。最后,通过使用汽车工厂的供应商选择(SS)问题来测试框架的实用性。通过与理论和数值分析领域下的其他方法相比,通过与其他方法进行比较来验证所提出的LBA-IFSP框架的强度和弱点。分析推断的结果,提出的LBA-IFSP框架是合理相干的DMS观点,与其他方法中等一致,对等级逆转问题进行高度稳定和稳健。 (c)2017 Elsevier B.v.保留所有权利。

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