A Function Principle Approach to Jaccard Ranking Fuzzy Numbers

N. Ramli, D. Mohamad
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引用次数: 6

Abstract

Ranking of fuzzy numbers plays an important role in practical use and has become a prerequisite procedure for decision-making problem in fuzzy environment. Various techniques of ranking fuzzy numbers have been developed and one of them is based on the similarity measure technique. Jaccard index similarity measure has been introduced in ranking the fuzzy numbers where the fuzzy maximum and fuzzy minimum are obtained by using the extension principle. However, this approach is only applicable to normal fuzzy numbers and therefore, fails to rank the non-normal fuzzy numbers. Besides that the extension principle does not preserve the type of membership function of the fuzzy numbers and also involves laborious mathematical operations. In this paper, a simple vertex fuzzy arithmetic operation namely function principle is applied in the Jaccard ranking index. This method is capable to rank both normal and non-normal fuzzy numbers in a simpler manner. It has also improved the ranking results by the original Jaccard ranking method and some of the existing ranking methods.
Jaccard模糊数排序的函数原理方法
模糊数排序在实际应用中起着重要作用,已成为模糊环境下决策问题的先决程序。各种模糊数排序技术已经发展起来,其中一种基于相似性度量技术。引入Jaccard指数相似度测度对模糊数进行排序,利用可拓原理得到模糊最大值和模糊最小值。但该方法仅适用于正态模糊数,无法对非正态模糊数进行排序。此外,可拓原理不能保留模糊数的隶属函数类型,且涉及繁琐的数学运算。本文将一种简单的顶点模糊运算即函数原理应用于Jaccard排序指标。该方法能够以更简单的方式对正态和非正态模糊数进行排序。并对原有的Jaccard排序方法和现有的一些排序方法的排序结果进行了改进。
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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