Chen Ting-Yu
Department of Industrial and Business Management, Graduate Institute of Management, Chang Gung University, No. 259, Wenhua 1st Rd., Guishan District, Taoyuan City, 33302 Taiwan.
Artif Intell Rev. 2023 Apr 29:1-71. doi: 10.1007/s10462-023-10461-z.
With a focus on T-spherical fuzzy (T-SF) sets, the aim of this paper is to create a split-new appraisal mechanism and an innovative decision analytic method for use with multiple-criteria assessment and selection in uncertain situations. The T-SF frame is the latest recent advancement in fuzzy settings and uses four facets (consisting of membership grades of positivity, neutrality, negativity, and refusal) to elucidate complex uncertainties, thereby evidently reducing information loss, in anticipation of fully manifesting indistinct and equivocal information. This paper adds to the body of knowledge regarding multiple criteria choice modeling by raising T-SF correlation-oriented measurements connected to the fixed and displaced ideal/anti-ideal benchmarks and by creating an approachable appraisal mechanism for advancing a T-SF decision analytic methodology. Consider, in particular, the performance ratings of available options in terms of judging criteria under the T-SF type of uncertainties. This research gives correlation-oriented measurements focusing on two varieties of maximum and square root functions in T-SF situations, which serve as a solid foundation for an efficacious appraisal mechanism from two views of anchored judgments corresponding to the fixed and displaced benchmarks. The T-SF Minkowski distance index is generated to integrate the outranking and outranked identifiers relying on correlation-oriented measurements for figuring out the local outranking and outranked indices. The T-SF decision analytic procedures are constructed using a new appraisal significance index that is founded on certain valuable insights of correlation-oriented maximizing and minimizing indices as well as global outranking and outranked indices. Additionally, a concrete location selection dilemma is dealt with in this research to showcase the applicability and efficiency of the suggested T-SF decision analytic methodology. Sensitivity analyses and comparative studies are carried out to investigate substantial modifications in pertinent parameters and to confirm the robustness of the predominance relationships among the available options. The suggested approaches are adaptable, flexible, and reliable, according to the application outcomes and comparison findings. This research provides four scientific contributions: (1) the utilization of T-SF correlation coefficients as the basis for prioritization analysis involving multiple criteria assessments, (2) the evolution of the T-SF Minkowski distance index to model outranking decision-making processes, (3) the creation of a reliable appraisal mechanism based on T-SF correlation-oriented measurements for intelligent decision support, and (4) the advancement of computational tools and procedures (e.g., correlation-oriented maximizing and minimizing indices, global outranking and outranked indices, and appraisal significance indices) to perform the decision analytic procedure in T-SF settings. In terms of managerial implications, the solution findings support the employment of the fixed ideal/anti-ideal benchmarking mechanism, as its measurements and indices are easy to operate and suitably sensitive. Next, in practical implementations of the T-SF decision analytic procedure, it is advised to utilize the T-SF Manhattan distance index for calculating convenience. Finally, the T-SF decision analytic techniques offer fundamental ideas and measurements appropriate for manipulating T-SF information in complex decision situations, thereby increasing the application potential in the area of decision-making with information uncertainty.
本文聚焦于T球形模糊(T-SF)集,旨在创建一种全新的评估机制和创新的决策分析方法,用于不确定情况下的多准则评估与选择。T-SF框架是模糊环境中的最新进展,它使用四个方面(由积极性、中立性、消极性和拒绝性的隶属度组成)来阐明复杂的不确定性,从而显著减少信息损失,以期充分体现模糊和模棱两可的信息。本文通过提出与固定和移动理想/反理想基准相关的T-SF关联导向度量,并创建一种便于使用的评估机制来推进T-SF决策分析方法,从而丰富了多准则选择建模的知识体系。特别要考虑在T-SF类型的不确定性下,根据评判标准对可用选项的性能评级。本研究给出了T-SF情况下基于两种最大和平方根函数的关联导向度量,这从对应于固定和移动基准的锚定判断的两个视角为有效的评估机制奠定了坚实基础。生成T-SF闵可夫斯基距离指数,以整合基于关联导向度量的优势和劣势标识符,从而确定局部优势和劣势指数。T-SF决策分析程序是使用一种新的评估重要性指数构建的,该指数基于关联导向最大化和最小化指数以及全局优势和劣势指数的某些有价值的见解。此外,本研究处理了一个具体的选址困境,以展示所提出的T-SF决策分析方法的适用性和效率。进行了敏感性分析和比较研究,以调查相关参数的重大变化,并确认可用选项之间优势关系的确稳健性。根据应用结果和比较发现,所提出的方法具有适应性、灵活性和可靠性。本研究提供了四项科学贡献:(1)利用T-SF相关系数作为多准则评估优先级分析的基础;(2)T-SF闵可夫斯基距离指数的演变,以对优势决策过程进行建模;(3)基于T-SF关联导向度量创建可靠的评估机制,以提供智能决策支持;(4)推进计算工具和程序(如关联导向最大化和最小化指数、全局优势和劣势指数以及评估重要性指数),以在T-SF环境中执行决策分析程序。在管理启示方面,解决方案结果支持采用固定理想/反理想基准机制,因为其度量和指数易于操作且具有适当的敏感性。其次,在T-SF决策分析程序的实际实施中,可以使用T-SF曼哈顿距离指数以方便计算。最后,T-SF决策分析技术提供了适用于在复杂决策情况下处理T-SF信息的基本思想和度量,从而增加了在信息不确定的决策领域的应用潜力。