论文标题
严格的直觉模糊距离/相似性措施基于Jensen Shannon Divergence
Strict Intuitionistic Fuzzy Distance/Similarity Measures Based on Jensen-Shannon Divergence
论文作者
论文摘要
作为一对双重概念,归一化距离和相似性度量是在直觉模糊集框架下进行决策和模式识别的非常重要的工具。为了对决策和模式识别应用更有效,良好的归一级距离应确保其双重相似性度量满足公理定义。在本文中,我们首先构建了一些示例,以说明在[直觉模糊集的距离度量及其在模式分类问题上的应用,\ emph {ieeee trans。 Syst。,Man,Cybern。,Syst。},第〜51卷,第3980--3992、2021页,第3980--3992、2021页。 J. Intell。 Syst。},第〜24卷,第399--420页,第399-420页,不符合直觉模糊相似性度量的公理定义。我们表明(1)他们无法有效区分具有明显大小关系的一些直觉模糊值(IFV); (2)除终点外,存在无限的IFV对,其中最大距离1可以在这两个距离下实现;导致违反直觉结果。为了克服这些缺点,我们介绍了严格的直觉模糊距离度量(Sifdism)和严格的直觉模糊相似性度量(Sifsimm)的概念,并提出了基于Jensen-Shannon分歧的改进的直觉模糊距离措施。我们证明(1)这是一个sifdism; (2)其双重相似性度量是Sifsimm; (3)它的诱发熵是直觉的模糊熵。比较分析和数值示例表明,我们提出的距离度量完全优于现有距离。
Being a pair of dual concepts, the normalized distance and similarity measures are very important tools for decision-making and pattern recognition under intuitionistic fuzzy sets framework. To be more effective for decision-making and pattern recognition applications, a good normalized distance measure should ensure that its dual similarity measure satisfies the axiomatic definition. In this paper, we first construct some examples to illustrate that the dual similarity measures of two nonlinear distance measures introduced in [A distance measure for intuitionistic fuzzy sets and its application to pattern classification problems, \emph{IEEE Trans. Syst., Man, Cybern., Syst.}, vol.~51, no.~6, pp. 3980--3992, 2021] and [Intuitionistic fuzzy sets: spherical representation and distances, \emph{Int. J. Intell. Syst.}, vol.~24, no.~4, pp. 399--420, 2009] do not meet the axiomatic definition of intuitionistic fuzzy similarity measure. We show that (1) they cannot effectively distinguish some intuitionistic fuzzy values (IFVs) with obvious size relationship; (2) except for the endpoints, there exist infinitely many pairs of IFVs, where the maximum distance 1 can be achieved under these two distances; leading to counter-intuitive results. To overcome these drawbacks, we introduce the concepts of strict intuitionistic fuzzy distance measure (SIFDisM) and strict intuitionistic fuzzy similarity measure (SIFSimM), and propose an improved intuitionistic fuzzy distance measure based on Jensen-Shannon divergence. We prove that (1) it is a SIFDisM; (2) its dual similarity measure is a SIFSimM; (3) its induced entropy is an intuitionistic fuzzy entropy. Comparative analysis and numerical examples demonstrate that our proposed distance measure is completely superior to the existing ones.