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Comment on “Improvement of the distance between intuitionistic fuzzy sets and its applications”

Abstract

Here, necessary corrections on the proof the Theorem 1 of Xu (J Intell Fuzzy Syst 33(3): 1563-1575, 2017) are stated in brief. Throughout, we use the same notations and equation numbers as in Xu.

Intuitionistic fuzzy sets(IFSs) were proposed by Atanassov [1] as a generalization of the fuzzy sets. As the most interesting topics in IFSs theory, distance measures are involved in fuzzy decision making, patter recognition, fuzzy reasoning, etc, [2–6].

In 2017, a measuring distance between intuitionistic fuzzy sets, proposed by Xu [5], was successfully applied into pattern recognition problems and medical diagnosis. However, there is a small mistake about the proof of the Theorem 1 in Xu [5]. In order to show the detailed correction instructions, the definitions involved in the paper [5] are as follows.

Definition 1. A metric distance D in a non-empty set X is a real value function D : X × X → [0, + ∞), which satisfies the following conditions, ∀x, y, z  ∈  X:

(MD1) D (x, y) =0 if and only if x = y;

(MD2) D (x, y) = D (y, x);

(MD3) D (x, y) + D (y, z) ≥ D (x, z).

Definition 2. [7] Let D be a mapping: IFSs (X) × IFSs (X) → [0, 1]. For ∀A, B, C∈ IFSs(X), D (A, B) is a distance measure between IFSs A and B, if D satisfies the following properties:

(DP1) 0 ≤ D (A, B) ≤1;

(DP2) D (A, B) =0 if and only if A = B;

(DP3) D (A, B) = D (B, A);

(DP4) If A ⊆ B ⊆ C, then D (A, C) ≥ D (A, B), D (A, C) ≥D (B, C).

Definition 3. [5] Let A={〈x, μA (x) , vA (x) 〉|x ∈ X} be a IFSs in X={x}, then the assignments of the hesitancy degree πA (x) to membership degree μA (x) and non-membership degree νA (x) are defined as

(1)
AssignAπμ(x)=[πA(x)+2μA(x)]/2,AssignAπν(x)=[πA(x)+2νA(x)]/2.

We take the four parts μA (x), νA (x), AssignAπμ(x) and AssignAπν(x) into account the distances between IFSs, thereby a new distance measure, denoted as DIFSs, is defined.

Definition 4. [5] Let A = {〈x, μA (x) , vA (x) 〉|x ∈ X} , B = {〈x, μB (x) , vB (x) 〉|x ∈ X} be two IFSs in X={x}, then the distance measure between A and B is defined as

(2)
DIFSs(A,B)=12(ΔμAB)2+(ΔνAB)2+(ΔπμAB)2+(ΔπνAB)2,
where, ΔμAB =μA-μB, ΔνAB =νA-νB, ΔπμAB=AssignAπμ - AssignBπμ and ΔπνAB = AssignAπν - AssignBπν .

Theorem 1. [5] Let A={〈x, μA (x) , vA (x) 〉|x ∈ X}, B= {〈x, μB (x) , vB (x) 〉|x ∈ X} be two IFSs in X={x}, then DIFSs (A, B) is a distance measure satisfying the Definition 1 and Definition 2.

In the paper [5], the proof of the third step is as follows.

3) For ∀A, B, C ∈ IFSs (X), we have

(3)
(ΔμAC)2=(ΔμAB+ΔμBC)2(ΔμAB)2+(ΔμBC)2;(ΔνAC)2=(ΔνAB+ΔνBC)2(ΔνAB)2+(ΔνBC)2;(ΔπμAC)2=(ΔπμAB+ΔπμBC)2(ΔπμAB)2+(ΔπμBC)2;(ΔπνAC)2=(ΔπνAB+ΔπνBC)2(ΔπνAB)2+(ΔπνBC)2.

Thus, DIFSs (A, C) ≤ DIFSs (A, B) + DIFSs (B, C), which indicates that DIFSs satisfies (MD3).

However, the conclusion DIFSs (A, C) ≤ DIFSs (A, B) + DIFSs (B, C) is derived from the formula (3), which is a wrong logical reasoning. Where, it should be noted that the formula (3) is correct. In fact, from the formula (3) and the property of inequality, we can obtained

(4)
[(ΔμAC)2+(ΔνAC)2+(ΔπμAC)2+(ΔπνAC)2]{[(ΔμAB)2+(ΔνAB)2+(ΔπμAB)2+(ΔπνAB)2]+[(ΔμBC)2+(ΔνBC)2+(ΔπμBC)2+(ΔπνBC)2]}.

While, from the Definition 4, we have

4[DIFSs(A,C)]2=(ΔμAC)2+(ΔνAC)2+(ΔπμAC)2+(ΔπνAC)2,4[DIFSs(A,B)]2=(ΔμAB)2+(ΔνAB)2+(ΔπμAB)2+(ΔπνAB)2,4[DIFSs(B,C)]2=(ΔμBC)2+(ΔνBC)2+(ΔπμBC)2+(ΔπνBC)2.

Therefore,

(5)
[DIFSs(A,C)]2[DIFSs(A,B)]2+[DIFSs(B,C)]2.

However, based on the formula (5), it is not obtained

DIFSs(A,C)DIFSs(A,B)+DIFSs(B,C).
This shows that the proof of the paper [5] is incorrect.

The proper proof of the third step is as follows.

3) According to the Definition 4, the distance measure 2DIFSs (A, B) can be viewed as the Euclidean distance between two points (μA,νA,AssignAπμ,AssignAπν) and (μB,νB,AssignBπμ,AssignBπν) in a four-dimensional real number space. For ∀A, B, C ∈ IFSs (X), there are three real points.

A:(μA,νA,AssignAπμ,AssignAπν),B:(μB,νB,AssignBπμ,AssignBπν),C:(μC,νC,AssignCπμ,AssignCπν).

Since the distance measure 2DIFSs (A, B) is a metric distance, based on the third condition (MD3) of the Definition 1 (The properties of triangular inequalities for Euclidean distance), we have

2DIFSs(A,C)2DIFSs(A,B)+2DIFSs(B,C),
which yields
DIFSs(A,C)DIFSs(A,B)+DIFSs(B,C).
The result shows that DIFSs satisfies (MD3).

Acknowledgment

The author would like to thank for a grant from the Ningxia Natural Science Foundation (No.2018AAC03253), the First-Class Disciplines Foundation of Ningxia (No.NXYLXK2017B09), the key project of North Minzu University (No. ZDZX201801, ZDZX201804), the National Natural Science Foundation of China (No. 61662001,11761002).

References

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Xu C.L. , Improvement of the distance between intuitionistic fuzzy sets and its applications, J Intell Fuzzy Syst 33: ((2017) ), 1563–1575.

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Joshi R. , Kumar S. , Gupta D. and Kaur H. , A Jensen-alpha-Norm dissimilarity measure for intuitionistic fuzzy sets and its applications in multiple attribute decision making, Int J Fuzzy Syst 20: ((2018) ), 1188–1202.

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Wang D. and Xin X. , Distance measure between intuitionistic fuzzy sets, Pattern Recogn Lett 26: ((2005) ), 2063–2069.