Analysis on the Hesitation and its Application to Decision Making

Youpeng Yang, Sanghyuk Lee, Kyeong Soo Kim, H. Zhang, Xiaowei Huang, W. Pedrycz
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Abstract

A novel score function based on the Poincaré metric is proposed and applied to a decision-making problem. Decision-making on Fuzzy Sets (FSs) has been considered due to the flexibility of the data, and it is applied to the decision-making. However, decisions with FSs are sometimes nondecisive even for different membership degrees. Hence, Intuitionistic Fuzzy Sets (IFSs) data is applied to design a score function for the decision-making with the Poincaré metric. This function is supported by the profound information of IFSs; IFSs include hesitation degree together with membership and non-membership degree. Hence, IFS membership and non-membership degree are expressed as two-dimensional vectors satisfying the Poincaré metric for simplification. At the same time, the proposed approach addresses the hesitation information in the IFS data. Next, a score function is proposed, constructed and provided. The proposed score function has a strict monotonic property and addresses the preference without resorting to the accuracy function. The strict monotonic property guarantees the preference of all attributes. Additionally, the existing problem of score function design in IFSs is addressed: they return zero scores even with different meanings for the same membership and non-membership degree. The advantages of the proposed score function over existing ones are demonstrated through illustrative examples. From the calculation results, the proposed decision score function discriminates between all candidates. Hence, the proposed research provides a solid foundation for the hesitation analysis on the decision-making problem.
犹豫分析及其在决策中的应用
提出了一种基于 Poincaré 度量的新评分函数,并将其应用于决策问题。由于数据的灵活性,模糊集(FSs)决策已被考虑并应用于决策。然而,即使是不同的成员度,模糊集的决策有时也是非决定性的。因此,直觉模糊集(IFSs)数据被应用于设计一种用 Poincaré 度量进行决策的评分函数。该函数由直觉模糊集的深层信息支持;直觉模糊集包括犹豫度以及成员度和非成员度。因此,为简化起见,IFS 的成员度和非成员度被表示为满足 Poincaré 公制的二维向量。同时,所提出的方法还解决了 IFS 数据中的犹豫信息。接下来,我们提出、构建并提供了一个评分函数。所提出的得分函数具有严格的单调性,无需借助准确度函数即可解决偏好问题。严格的单调性保证了所有属性的偏好。此外,还解决了 IFS 中评分函数设计的现有问题:即使相同的成员和非成员程度具有不同的含义,它们也会返回零分。通过举例说明,证明了所提出的评分函数相对于现有函数的优势。从计算结果来看,建议的决策得分函数可以区分所有候选者。因此,本文提出的研究为决策问题的犹豫分析提供了坚实的基础。
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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