A Hybridization of Modified Rough Bipolar Soft Sets and TOPSIS for MCGDM

Rizwana Gul, M. Shabir, Saba Ayub
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Abstract

Uncertain data is a challenge to decision-making (DM) problems. Multi-criteria group decision-making (MCGDM) problems are among these problems that have received much attention. MCGDM is difficult because the existing alternatives frequently conflict with each other. In this article, we suggest a novel hybrid model for an MCGDM approach based on modified rough bipolar soft sets (MRBSs) using a well-known method of technique for order of preference by similarity to ideal solution (TOPSIS), which combines MRBSs theory and TOPSIS for the prioritization of alternatives in an uncertain environment. In this technique, we first introduce an aggregated parameter matrix with the help of modified bipolar soft lower and upper matrices to identify the positive and negative ideal solutions. After that, we define the separation measurements of these two solutions and compute relative closeness to choose the best alternative. Next, an application of the proposed technique in the MCGDM problem is introduced. Afterward, an algorithm for this application is developed, which is illustrated by a case study. The application demonstrates the usefulness and efficiency of the proposal. Compared to some existing studies, we additionally present several merits of our proposed technique. Eventually, the paper handles whether additional studies on these topics are needed.
MCGDM的改进粗糙双极软集与TOPSIS的杂交
数据的不确定性对决策问题提出了挑战。多准则群体决策(MCGDM)问题就是其中一个备受关注的问题。MCGDM是困难的,因为现有的替代方案经常相互冲突。在本文中,我们提出了一种基于改进的粗糙双极软集(MRBSs)的MCGDM方法的新型混合模型,该模型使用了一种著名的理想解相似性偏好排序技术(TOPSIS),该方法将MRBSs理论和TOPSIS结合起来,用于不确定环境中替代方案的优先级排序。在该技术中,我们首先引入一个聚合参数矩阵,借助改进的双极性软上下矩阵来识别正、负理想解。然后,我们定义了这两个解决方案的分离度量,并计算相对接近度以选择最佳方案。其次,介绍了该技术在MCGDM问题中的应用。然后,开发了该应用程序的算法,并通过案例研究进行了说明。应用验证了该方法的有效性和实用性。与一些现有的研究相比,我们还提出了我们所提出的技术的几个优点。最后,本文讨论了是否需要对这些主题进行额外的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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