2.1. IFSs
Definition 1 [
2]
. Let be a fixed set, and then the IFS B on A can be defined as follows: , where and are the MD and NMD of to B, respectively, and . Moreover, denotes the HD of to B. Usually, we use to represent an IFN.
Definition 2 [
22,
23]
. Let and be two IFNs, then From the above operational Rules (1)–(4), we can get intuitionistic fuzzy weighted arithmetic mean (IFWAM) and the intuitionistic fuzzy weighted geometric mean (IFWGM). Let
be a group of IFNs and
be the weight of
,
. Then
For IFN
, the score function (SF) and accuracy function (AF) are defined by following form:
Further, for IFNs and , we can give the order relation between and as follows:
- (1)
If , then ;
- (2)
If , then
- (i)
, then ;
- (ii)
, then .
Let
,
and
be three IFNs; then, it is straightforward to prove that Equations (1)–(4) have following properties:
In [
9,
10], we have shown that Equations (1)–(8) possibly generate unreasonable and counterintuitive computation results due to some unfavorable properties in the practice DM environment.
- (1)
The Equation (1) is not a constant operation—that is to say, cannot always generate .
Example 1. Let , then , , we can get . On the other hand, , , , , so we get .
- (2)
Equation (2) is not a constant operation, i.e., cannot always generate .
Example 2. Let , then , , we can get . On the other hand, , , , , so we get .
- (3)
Equation (3) is not persistent under multiplication. In other words, cannot always generate .
Example 3. Let , then , , , we can get . On the other hand, , , , , so we get .
- (4)
IFWAM is not always monotone with respect to the SF and AF. In other words, cannot invariably generate .
Example 4. Let , , , , then , , , we can get . On the other hand, , , , , so we get .
- (5)
IFWGM is not always monotone with respect to the SF and AF. In other words, cannot invariably generate .
Example 5. Let , , , then , , , , so we can get . On the other hand, when , , when , and then , , so we get .
In some studies [
9,
10], we have found out that there is a very close connection between DST and IFS. With the help of this connection, we can provide transparent and fruitful semantics for IFN in terms of DST. Therefore, to reinforce the performance of operations on IFNs, we rewrite the definition and operations of IFS in the framework of DST, which break away from the above-listed limitations.
2.2. IFS in the Framework of Dempster-Shafer Theory
Let us assume to be the set of mutually exclusive and exhaustive objects, which corresponds to hypotheses or propositions. is called the frame of discernment and defined as follows: . is known as the power set of containing all the possible subsets of and defined as follows: . By definition, consists of elements representing the event “the object is in ”.
A BPA is a mapping from to [0,1] defined as follows: and satisfies and .
Note that includes and the condition is required, but the subsets of for which the mapping does not assume a 0 value are defined focal elements in classical DST. denotes the degree of evidence support for the proposition of the object belongs to . In a word, is a measure of the belief attributed exactly to , and to none of the subsets of .
Definition 3 [
35,
36]
. Given a BPA on , the belief function Bel can be defined as:where . Definition 4 [
35,
36]
. Given a BPA on , the plausibility function Pl can be defined as:where is the complementary set of . Therefore, the belief interval (BI) can be represented by interval . This may be explained as the interval enclosing the “true probability” of .
In order to measure the similarity between two sets, we present a detailed description of JD between two bodies of evidence as follows:
Definition 5 [
35,
36]
. Let be a frame of discernment including mutually exclusive and exhaustive hypothesis, and let be the space produced by all the subsets of . A BPA is a vector of with coordinates such that:
where
.
In the above definition, is not necessarily required.
Definition 6 [
36]
. Let and be two BPAs on the same frame of discernment , including mutually exclusive and exhaustive hypotheses. The JD between and can be defined as follows:where and are the BPAs according to Definition 5 and is a matrix whose elements are From Definition 6, another description of
is as follows:
where
is the scalar product defined by
with
for
.
is the square norm of
:
We know that the
,
and
of IFN
can represent a BPA of DST, respectively [
9,
10], so we can completely denote the IFS in the framework of DST based on above information of DST. In practice, when solving the DM problem with the information of IFNs, we implicitly confront three hypotheses as follows:
,
and
or
(the case of hesitation). Therefore, these three hypotheses can be expressed as True (
), False (
), and (True or False) (the case of hesitation). In such a case,
signifies the probability or evidence of
, i.e.,
. By analogy,
,
. Because of
we can draw a conclusion that
,
and
denote a correct BPA, i.e.,
Therefore, we rewrite the definition of IFS in the framework of DST.
Definition 7. Let be a fixed set; then, A IFS on in the framework of DST can be defined as follows: , where is a BI, and are the MD and NMD of to , respectively, and .
For convenience, we represent an IFN in the framework of DST by .
In order to enhance the performance of operations on IFNs, Dymova and Sevastjanov [
9,
10] redefined the operational rules on IFN in the framework of DST.
Definition 8. Let and be two IFNs in the framework of DST; then From above operational Rules (24)–(27), we can get the IFWAM
DST and IFWGM
DST operators in the framework of DST. Let
be BI and
be the weight of
,
. Then
For BI
, the SF and AF in the framework of DST are defined by following form:
Further, the order relation between and is denoted as follows:
- (1)
If , then ;
- (2)
If , then
- (i)
, then
- (ii)
, then
It is easy to discover that there is a very close connection between Rules (7) and (8) and Rules (32) and (33). However, it is not suitable that we use Rules (7) and (8) to compare BIs and use Rules (32) and (33) to compare IFNs.
Let
,
and
be three Bis. In this way, it is easy to prove that (24)–(29) have the following properties:
The above new operational rules of IFNs in the framework of DST can overcome the drawbacks and shortcomings of the OORs of IFNs.
Theorem 1. Equation (24) is a constant operation.
Proof. Let , and be the corresponding BIs of IFNs , and . Suppose and . We know that and , so . Then we can get .
Suppose , and ; then and . Therefore, we can get and . □
Theorem 2. Equation (25) is a constant operation.
Proof. Theorem 2 is similar to Theorem 1; the proof is omitted here. □
Theorem 3. Equation (26) is persistent under multiplication.
Proof. Theorem 3 is similar to Theorem 1; the proof is omitted here. □
Theorem 4. The IFWAMDST has monotonicity.
Proof. (1) Let
,
and
be the corresponding BIs of IFNs
,
and
. Suppose
and
. Suppose
,
are the weights,
. Then
Since , then and .
Suppose , and ; then, and . Therefore, and .
(2) Let
,
, and
be the corresponding BIs of IFNs
,
and
. Suppose
and
. Suppose
are the weights of
and
,
is the weight of
, and
. Then,
Since , then and .
Suppose , and ; then, and . Therefore, and . □
Theorem 5. The IFWGMDST has monotonicity.
Proof. Theorem 5 is similar to Theorem 4; the proof is omitted here. □