Abstract

Much attention has been paid to construct an applicable knowledge measure or uncertainty measure for Atanassov’s intuitionistic fuzzy set (AIFS). However, many of these measures were developed from intuitionistic fuzzy entropy, which cannot really reflect the knowledge amount associated with an AIFS well. Some knowledge measures were constructed based on the distinction between an AIFS and its complementary set, which may lead to information loss in decision making. In this paper, knowledge amount of an AIFS is quantified by calculating the distance from an AIFS to the AIFS with maximum uncertainty. Axiomatic properties for the definition of knowledge measure are extended to a more general level. Then the new knowledge measure is developed based on an intuitionistic fuzzy distance measure. The properties of the proposed distance-based knowledge measure are investigated based on mathematical analysis and numerical examples. The proposed knowledge measure is finally applied to solve the multi-attribute group decision-making (MAGDM) problem with intuitionistic fuzzy information. The new MAGDM method is used to evaluate the threat level of malicious code. Experimental results in malicious code threat evaluation demonstrate the effectiveness and validity of proposed method.

Highlights

  • Atanassov [1,2] developed the concept of intuitionistic fuzzy set on the basis ofZadeh’s fuzzy set [3]

  • We propose a knowledge measure based on our proposed intuitionistic fuzzy distance measure for the purpose of measuring the knowledge amount of Atanassov’s intuitionistic fuzzy set (AIFS) more accurately

  • We only present a knowledge measure based on our proposed distance measure in this paper

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Summary

Introduction

Atanassov [1,2] developed the concept of intuitionistic fuzzy set on the basis of. Zadeh’s fuzzy set [3]. With the purpose of making an evident distinction between types of intuitionistic fuzzy information, Szmidt et al [27] took both intuitionistic fuzzy entropy and hesitation into consideration to develop a knowledge measure for AIFS, in which the intuitionistic fuzzy entropy was defined by quantifying the ration between the nearer distance and farer distance. This knowledge measure has been used to estimate the weight of each attribute to solve multi-attribute decision making (MADM) problems [29].

Preliminaries
New Intuitionistic Fuzzy Distance Measure
Interval-Comparison-Based Distance Measure for AIFSs
Comparative Analysis
Knowledge Measure of AIFSs Based on DI
Construction of Knowledge Measure
Numerical Examples
New Method for Solving MAGDM Problems
Application on Evaluation of Malicious Code Threat
Conclusions
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