Ali Sumbal, Ali Asad, Azim Ahmad Bin, Aloqaily Ahmad, Mlaiki Nabil
Department of Mathematics and Statistics, Hazara University, Mansehra, 21300, Khyber Pakhtunkhwa, Pakistan.
Department of Mathematics and Sciences, Prince Sultan University, Riyadh, 11587, Saudi Arabia.
Heliyon. 2024 Jul 26;10(15):e35059. doi: 10.1016/j.heliyon.2024.e35059. eCollection 2024 Aug 15.
Neutrosophic sets provide greater versatility in dealing with a variety of uncertainties, including independent, partially independent, and entirely dependent scenarios, which q-ROF soft sets cannot handle. Indeterminacy, on the other hand, is ignored completely or partially by q-ROF soft sets. To address this issue, this study offers a unique novel concept as known as q-RONSS, which combines neutrosophic set with q-ROF soft set. This technique addresses vagueness using a set of truth, indeterminacy, and false membership degrees associated with the parametrization tool, with the condition that the sum of the qth power of the truth, indeterminacy, and false membership degrees be less than or equal to one. In addition, this study outlines operational laws for the suggested structure. The main purpose this article is to define some averaging and geometric operators based on the q-rung orthopair neutrosophic soft set. Furthermore, this article provides a step-by-step method and a mathematical model for the suggested techniques. To solve a MADM issue, this research article proposes a numerical example of people selection for a specific position in a real estate business based on a variety of criteria. Finally, to demonstrate the proposed model's superiority and authenticity, this article performs several analyses, including sensitivity analysis, to address the reliability and influence of various parameter "q" values on the alternatives and the ultimate ranking outcomes using the averaging and geometric operators. A comparison of the proposed operators to current operators demonstrates the validity of the proposed structure. Furthermore, a comparison of the proposed structure to current theories demonstrates its superiority by overcoming their limits and offering a more flexible and adaptable framework. Finally, this study reviews the findings and consequences of our research.
中性集在处理各种不确定性时具有更大的通用性,包括独立、部分独立和完全依赖的情况,而q-ROF软集无法处理这些情况。另一方面,q-ROF软集完全或部分忽略了不确定性。为了解决这个问题,本研究提出了一个独特的新概念,即q-RONSS,它将中性集与q-ROF软集相结合。该技术使用与参数化工具相关联的一组真度、不确定度和假隶属度来处理模糊性,条件是真度、不确定度和假隶属度的q次幂之和小于或等于1。此外,本研究还概述了所建议结构的运算定律。本文的主要目的是基于q-阶正交对中性软集定义一些平均算子和几何算子。此外,本文还为所建议的技术提供了一种逐步方法和一个数学模型。为了解决多属性决策问题,本文提出了一个基于各种标准的房地产企业特定职位人员选拔的数值示例。最后,为了证明所提出模型的优越性和真实性,本文进行了包括敏感性分析在内的多项分析,以解决各种参数“q”值对备选方案和最终排名结果的可靠性和影响,使用平均算子和几何算子。将所提出的算子与当前算子进行比较,证明了所提出结构的有效性。此外,将所提出的结构与当前理论进行比较,通过克服其局限性并提供更灵活和适应性更强的框架,证明了其优越性。最后,本研究回顾了我们研究的结果和影响。