1. Introduction
The notion of entropy for a fuzzy set was initially studied by Zadeh in 1968 [
1] in terms of a probability measure. Zadeh first introduced the concept of a fuzzy event from a fuzzy set and defined the probability of a fuzzy event as the expectation of its membership function. He then defined the entropy of a fuzzy set from probabilities as the usual definition of entropy in information theory. Subsequently, in 1972, De Luca and Termini introduced the novel concept of the non-probabilistic entropy of a fuzzy set [
2]. Their aim was to find a measure of uncertainty, fuzziness, or entropy in fuzzy sets that did not depend on probabilities. To this end, they began by studying the axiomatic properties that any measure of entropy should satisfy. Consequently, they put forth the proposition that an entropy-like measure of the degree of fuzziness of a fuzzy set, denoted by
(where
d is a function from the set of fuzzy sets to the interval
, and
f the membership degree function of a fuzzy set), should satisfy the following properties:
- 1.1
must be 0 if and only if f takes values 0 or 1.
- 1.2
must assume the maximum value if and only if f always assumes the value .
- 1.3
must be greater than or equal to where is any sharpened version of f, that is, any fuzzy set such that if , and if .
The property “sharpened version of” induces a partial order
in the set of membership functions such that
when
is a sharpened version of
. Therefore,
is monotonically non-decreasing with respect to this order. The entropy then refers to the distance measured from the fuzzy set
f to its most-sharpened version
defined as follows:
This most-sharpened version transforms the fuzzy set into a crisp set. In fact, this is the closest crisp set to
f, as illustrated in
Figure 1.
This approach was also employed in [
3], where Kaufmann defined an entropy measure as the distance between a fuzzy set and its nearest crisp set. However, other approaches to measuring the entropy of a fuzzy set have also been proposed. For instance, Yager [
4,
5] defined an entropy measure considering the distance between a fuzzy set and its complementary set. Other authors, such as Kosko [
6] and Madrid and Ojeda [
7], defined entropy measures using the notion of subsethood degree in fuzzy sets.
Later, two major contributions focused on the entropy of interval-valued fuzzy sets [
8,
9]. Both works agree on the introduction of an additional axiom that had not been considered by De Luca and Termini in their seminal work: the entropy of an interval-valued fuzzy set must be equal to the entropy of its complementary set. However, both works follow different approaches. Burillo and Bustince [
8] quantify the dissimilarity between an interval-valued fuzzy set and a type-1 fuzzy set, whereas Zeng and Li [
9] quantify the dissimilarity between an interval-valued fuzzy set and a crisp set. In other words, the former work by Burillo considers the entropy measure to be the distance from the membership degree (that is, an interval) to the closest
interval, while the latter work by Zeng considers the entropy measure to be the distance to the intervals
and
.
In this contribution, when comparing both proposals for the entropy in interval-valued fuzzy sets, we realized that these rely on different premises, that is, on a different set of axiomatic properties, which are mutually incompatible. Therefore, this implies that there exists at least two different types of entropy in these sets. Other approaches to the entropy of interval-valued fuzzy sets were proposed by Wu and Mendel [
10], Liu and Cai [
11], and Cornelis and Kerre [
12].
The entropy of type-2 fuzzy sets has also been studied, see [
13,
14,
15,
16], but none of these works consider type-2 fuzzy sets as proposed by Mizumoto and Tanaka [
17,
18], more in line with Zaded’s initial conception [
19], that is, where the membership degrees are labels of the variable truth. For instance, in [
13,
14,
15], the authors consider the membership degrees of a type-2 fuzzy set simply as fuzzy sets. This is functionally equivalent to considering the type-2 fuzzy set as a type-1 fuzzy set defined in a two-dimensional domain, the second dimension being the interval
, that is, the space of membership degrees. With this approach, they have a different conception of what is the complementary set of a type-2 fuzzy set (as argued in [
17]), and also of what is a type-2 fuzzy set with crisp membership degrees. These are central questions in the analysis of entropy; for instance, once introduced by the above-mentioned new axiom, the entropy of a fuzzy set must be equal to the entropy of its complementary set. Consequently, considering membership degrees as labels of the variable truth, or simply as type-1 fuzzy sets, will lead to a different interpretation of entropy.
In this work, we study the entropy of type-2 fuzzy sets considering sets as proposed by Mizumoto and Tanaka. To this end, we first analyze what has been done so far in the case of fuzzy sets and interval-valued fuzzy sets, then we describe the properties that it is reasonable to require of an entropy (including those related to the complementary set), and, finally, we propose three novel types of entropy measures for type-2 fuzzy sets. With each of the proposed types of entropy, we measure how much a type-2 fuzzy set is non-crisp, non-fuzzy, or non-interval-valued.
The remainder of this paper is organized as follows. In
Section 2, we analyze entropy in interval-valued fuzzy sets. In a previous contribution [
20], we already studied the works we considered most relevant and compared several entropy measures proposed for interval-valued fuzzy sets. Here, we revisit this work as it is the basis of the present study. In
Section 3, we introduce type-2 fuzzy sets and use the ideas reviewed in the previous section to propose different types of entropy measures for these sets. Finally, we present our conclusions in
Section 4.
2. Entropy in Interval-Valued Fuzzy Sets
Interval-valued fuzzy sets (IVFSs) are characterized by a membership function that assigns to each element of the universe a membership degree in the form of a closed subinterval of the unit interval
, instead of a single value in that interval, as is the case with fuzzy sets. That is,
where
.
In the following, we consider different definitions of entropy for IVFSs. However, it is important to note that some of the proposals considered were presented in the framework of intuitionistic fuzzy sets (IFSs), and not for IVFSs. Nevertheless, considering their formal equivalence [
21], we analyze all of them from the IVFS point of view. Whether defined for IVFSs or IFSs, the nomenclature can be adapted, if necessary, by applying the following correspondence between an intuitionistic fuzzy set
B and its counterpart in an IVFS, the set
A, as described in [
8]:
where the membership degree of the intuitionistic fuzzy set
B is
.
Burillo and Bustince [
8] first adapted the axiomatization of a non-probabilistic entropy, as previously defined by De Luca and Termini for fuzzy sets, to both IVFS and IFS frameworks. In their approach, entropy is a tool to measure how far an interval-valued fuzzy set is from a fuzzy set. Thus, a fuzzy set (in which the membership value of each element of the universe is an interval reduced to a point) will have an entropy measure of 0, while the set whose membership values are all the interval
will have the maximum value, that is, 1 if the function is normalized. Let
denote the set of all interval-valued fuzzy sets in a finite universe
X. Then, according to Burillo and Bustince, a function
is an entropy measure on
if it satisfies the following axioms:
- 2.1
is a fuzzy set, that is, or, equivalently, , .
- 2.2
, that is, and , .
- 2.3
, being the complementary set of A, where , , .
- 2.4
If (that is, , ), then .
Given that ⪯ is an order relation in IVFSs, Axiom 2.4 requires that any entropy measure that satisfies it must be monotonically non-decreasing with respect to that order.
An example of an entropy measure that satisfies these axiomatic properties is as follows:
In a later work, Zeng and Li [
9] modified this axiomatization in order to introduce different entropy measures in IVFSs. The proposed entropy is now a measure of how non-crisp an interval-valued fuzzy set is, that is, it measures how far the set is from being crisp. Then, according to Zeng and Li, a function
is an entropy measure on
if it satisfies the following axioms:
- 3.1
is a crisp set, that is, or , .
- 3.2
, .
- 3.3
, being the complementary set of A.
- 3.4
If (that is, if , then and ; and if , then and ), then .
Again, considering that ≼ is an order relation in IVFSs, Axiom 3.4 requires that any entropy measure satisfying it must be monotonically non-decreasing with respect to the order ≼.
Several examples of entropy measures satisfying these other axioms can be found in the literature, but, in this contribution, we consider only three of them. First, the one proposed by Zeng and Li [
9]:
Second, the entropy measure proposed by Szmidt and Kacprzyk [
22]. It should be noted that this proposal predates Zeng’s work, and although it was defined in the framework of IFSs, we have redefined it here for IVFSs.
Third, the following other entropy measure proposed by Vlachos and Sergiadis [
23]:
Before analyzing the four entropy measures presented above, we consider it interesting to compare both sets of axioms and analyze the purpose of each one. First, comparing Axiom 2.1 and Axiom 3.1, we quickly realize that any fuzzy set has an entropy of 0 for Burillo, while only a crisp set has an entropy of 0 for Zeng. This was to be expected since, as explained above, Burillo measures how far an IVFS is from a fuzzy set (that is, how non-fuzzy it is) while Zeng measures how far an IVFS is from a crisp set (that is, how non-crisp it is). Furthermore, it is noteworthy that this also induces a completely different ordering in both entropy measures, as is shown in the following.
The orders considered in IVFSs are those defined on intervals. Let and be two intervals; we consider the following partial orders defined on intervals:
Contained order . It is said that A is contained in B if and only if .
Lattice order . It is said that A is lower than or equal to B if and only if and .
Let A and B now be two IVFSs, such that and are intervals. We can define two relations (partial orders) in IVFSs from contained and lattice orders, as follows:
Embedded. It is said that A is embedded in B if and only if .
Included. It is said that A is included in B if and only if .
It should be noted that both relations correspond to different situations. Inclusion means that the information given by one interval-valued fuzzy set (included in another) is less true than that given by the other. Embedding occurs when one interval-valued fuzzy set (the embedded one) has more precise information about the actual membership function than another.
Now, let us compare two IVFSs
A and
B with a fuzzy set
C, where, for each
,
,
, and
, with
and
. Then, we have
when
,
, that is,
B is closer to
C than
A (see the top of
Figure 2). Thus, to get closer to a fuzzy set, the interval contracts. According to the given definitions, this order is an embedding of IVFSs. This makes sense because embedding occurs when an interval-valued fuzzy set has more precise information, and, in such a case, the entropy should also be lower. For a deeper analysis of embedding in IVFSs, see [
24].
On the other hand, let us now compare two IVFSs
A and
B with a crisp set
C, that is, either
or
. Now, we have
when
if
(or
if
), that is,
B is closer to 0 (or 1, respectively) than
A (see center and bottom of
Figure 2). Thus, to get closer to a crisp set, the whole interval shifts to the left (or right). This order is then based on the lattice order for intervals, but it is not an inclusion in IVFSs. That is because, when
A is closer to 0 than
B,
A should be included in
B, but when
A is closer to 1 than
B,
B should be included in
A. In both cases, the entropy of
A will be lower than that of
B, and, consequently, inclusion does not directly correlate with entropy.
Consequently, when analyzing the orders used in Axioms 2.4 and 3.4 to compare intervals, we realize that, for Burillo, two intervals are comparable only if one is inside the other (⊆), while for Zeng, two intervals are comparable only if one is shifted to the left (or right) of the other (≤). That is, assuming , we obtain the following conditions:
- 1.
If , then A and B are not comparable for ⪯.
- 2.
If , then A and B are not comparable for ≼.
Therefore, for two intervals to be comparable in both approaches simultaneously, we need or .
Let us now compare the four entropy measures presented above. The entropy measures proposed by Burillo, Zeng, Szmidt, and Vlachos, originally defined in terms of the lower and upper bound of an interval, are here rewritten, now considering the interval in terms of its centroid and half-width, denoted by
and
, respectively. Both centroid and half-width in terms of the lower and upper bounds of the interval are as follows:
The function , which applies to each the value , is referred to as the centroid function of A.
Therefore, an interval
can also be expressed in terms of centroid and half-width as
. Furthermore, considering that the maximum value for
is bounded by the distance to the closest endpoint of the interval, it is clear that
New expressions for the four entropy measures can now easily be derived. Burillo’s entropy can then be rewritten as follows:
Szmidt’s entropy as
and, finally, Vlachos’ entropy as
Comparing Different Entropy Measures
With this reinterpretation of the four entropy measures, we can now easily analyze and compare
,
,
, and
considering the following propositions already introduced in [
20].
Proposition 1. , with only when , , that is, when, for every interval, either or .
Proposition 2. , with only when , that is, when working with a type-1 fuzzy set.
Proposition 3. , with only when , that is, when, for every interval, either or .
In summary, it holds that
and
However, we cannot define an overall total order since, in some cases, we have , while in others we have (as shown in Example 1).
It should also be noted that, while considers only the width of the interval (the value 0 corresponds to intervals with , that is, type-1 fuzzy sets), and only refer to the centroid of the interval (the value 0 corresponds to intervals with , that is, crisp sets). Instead, considers both the centroid and width (the value 0 corresponds to intervals with and, consequently, , that is, again, crisp sets).
These ideas, together with the inequalities given by Equations (
12) and (
13), are illustrated in
Figure 3 and
Figure 4, and in Example 1.
First,
Figure 3 shows two IVFSs (
A and
B) that have the same centroid function, that is, both produce the same closest type-1 fuzzy set (red dashed set in
A). In fact, this type-1 fuzzy set is
B. As a result
,
. However, at the same time,
A being the IVFS with maximum fuzziness for this centroid function, and
B being the IVFS with minimum fuzziness for this centroid function, we have that
and
Figure 4 illustrates how
, and, consequently, how
Finally, Example 1 considers different situations showcasing the previous ideas.
Example 1. Let A, B, and C be interval-valued fuzzy sets defined as follows:
For the set A, the entropy measures are Furthermore, finally, for the set C, they are As expected, according to Equations (12) and (13), we see in these examples that the inequalities and , respectively, hold, while it is shown that there is no ordering between and . 3. Entropy in Type-2 Fuzzy Sets
Type-2 fuzzy sets were introduced by Zadeh in 1975 [
19] as an extension of fuzzy sets (type-1 fuzzy sets). A type-2 fuzzy set (T2FS), according to the definition given by Mizumoto and Tanaka [
17,
18], is a set
A in which the membership degree of any element is a fuzzy set on
(see
Figure 5). Therefore, it is determined by a membership function
that is,
is a fuzzy set in the interval
and, also, the membership degree of an element
to the set
A. Equivalently, for any
,
(which we denote for convenience by
, as in
Figure 5 or simply
) is a function from
to
. In the following, we denote by
the set of all type-2 fuzzy sets in a finite universe
X. It should be noted that, although throughout this paper we only consider entropy measures defined in a finite universe, the set of properties and entropy measures proposed here can be easily adapted to any universe.
It should be noted that it is possible to perceive the membership degrees of a T2FS as labels of the variable truth. In practical situations, these labels are usually normal (that is,
) and convex (that is, for any
, it holds that
). In this work, we will only consider this type of label, and we will denote the set of all such labels by
The idea shown in
Section 2, behind the definition of different entropy measures in interval-valued fuzzy sets, suggests the possibility of doing a similar approach in the case of type-2 fuzzy sets. Therefore, based on this idea, we first study how to introduce two different types of entropy measures by making a comparison between type-2 fuzzy sets and crisp or fuzzy sets. In other words, we want to study whether it is possible to find a measure of how non-crisp (or non-fuzzy) a type-2 fuzzy set is. Furthermore, in the case of type-2 fuzzy sets, we can also propose a third type of measure of how much a set is non-interval-valued.
3.1. Type-C Entropy in Type-2 Fuzzy Sets
In a first approach, we define the entropy of a T2FS as a measure of how much it is non-crisp, and we will refer to this entropy as Type-C, where C stands for crisp. Then, we begin by studying the entropy values at its endpoints (Axioms 3.1 and 3.2 proposed by Zeng, see
Section 2). On the one hand, we assume that the entropy of a crisp set must be 0. Let us note that the membership degrees of a crisp T2FS could only be the singleton labels
or
:
and ;
and .
Thus, the entropy must be 0 when
or
,
(as shown in
Figure 6).
On the other hand, the entropy must take a maximum value when the set is as non-crisp as possible. That is, its labels should be as far away from the two singletons and as possible. Let be a singleton , that is, and , . The one furthest from the singletons and is the singleton . Thus, the entropy must be at least maximal when all the membership degrees are the singleton .
Furthermore, we have to modify the order ≼ proposed by Zeng in Axiom 3.4 (see
Section 2). This order, proposed for IVFSs, has to be adapted for the T2FS case. We then introduce the order ⊑, defined on the membership degrees of T2FS and characterized in the set
of functions from
to
, normal and convex (see [
25,
26]). To this end, we first introduce some auxiliary functions as in [
25,
26], give their properties and illustrate their meaning.
Definition 1 ([
26]).
Let ; we define as follows: It should be noted that
and
are monotonically increasing and decreasing, respectively, but it also holds that
,
,
, and
, for all
, where ≤ is the usual order in the set of functions (that is,
if and only if
). An example of both
and
is shown in
Figure 7.
The following characterization of the partial order ⊑ on
was given in [
25] (see
Figure 8).
Theorem 1 ([
25]).
Let . Then, if and only if and . Let us suppose now that the membership degree
in a T2FS is a characteristic function of an interval, that is,
such that
when
, and
otherwise. Then, it is verified that (see
Figure 9).
We then propose the following extension of the membership degree in IVFSs (that is, endpoints in an interval) to a membership degree in T2FSs. In other words, while in IVFSs we use the interval endpoints
to identify the membership degree, we propose to modify these endpoints to identify the membership degree in T2FSs as follows (see
Figure 10):
Similarly, the interval
is now as follows:
Furthermore, the inequality
in IVFSs becomes, in
,
Thus, the relationship
;
is now rewritten as
. Finally, we can define the following order relation on T2FSs with membership degrees in
, that is, an extension of the order ≼ defined in
Section 2.
Definition 2. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . Then, if and only if the following conditions are met:
when
when
when
It should be noted that, if
and
, then
since
Similarly, if
and
, then
Furthermore, it is easy to prove that the relation is antisymmetric and transitive.
Examples of both the partial order ⊑ in
and the order relation
in T2FSs with membership degrees in
are illustrated in
Figure 8 and
Figure 11, respectively.
Next, based on what has been exposed above, we propose the following axiomatization.
Definition 3. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . We say that a function is a Type-C entropy measure on if it satisfies the following axioms:
- C.1
or , .
- C.2
, .
- C.3
, being the complementary set of A, where , .
- C.4
If , then .
It is at this point where considering membership degrees as labels of the variable truth, or simply as fuzzy sets, makes the difference. This question is considered in the following remarks.
Remark 1. Axiom C.1 considers that a type-2 fuzzy set with crisp membership degrees is one that has or , . This is consistent with the use of labels of the variable truth. On the other hand, when simply using fuzzy sets as membership degrees, a type-2 fuzzy set with crisp membership degrees is the one having or , . This is functionally equivalent to considering the type-2 fuzzy set as a type-1 fuzzy set defined in a two-dimensional domain (the second dimension being the interval ). Obviously, both interpretations differ.
Remark 2. Going now to Axiom C.3, considering membership degrees as labels of the variable truth will lead to a definition of the complementary set of a type-2 fuzzy set as , . On the other hand, considering membership degrees simply as fuzzy sets will lead to a complementary set (implicitly) defined as , . The point is that this is not the complementary, this is the negation of A (see [17]). Furthermore, that is the reason why some authors replace the axiom stating that “the entropy of a set and its complementary set should be equal”, with a new one stating that “the entropy of a set and its negated set should be equal”. However, this is not consistent with the definition of entropy for fuzzy sets and interval-valued fuzzy sets. Some examples of entropy measures that satisfy Definition 3 are given below.
Proposition 4. Let be any type-2 fuzzy set on X, with a finite universe , and membership degrees being normal and convex functions for each . The following functions are Type-C entropy measures on :where The proof of this proposition is given in the
Appendix A.
It should be noted that we use the superscripts
Z,
S, and
V for the three proposed Type-C entropy measures, because they are based on the original measures proposed for IVFSs by Zeng, Szmidt, and Vlachos, respectively. In fact, these entropy measures for T2FSs are extensions of the entropy measures
,
, and
given for IVFSs. We recall the extension of interval endpoints in IVFSs to T2FSs:
With this transformation, we obtain the following extensions:
and
Remark 3. It should be noted that when (that is, is a singleton and, thus, its integral is 0), and when or (that is, , or ).
Let us now compare these three entropy measures. First, without loss of generality, we suppose that
It should be noted that, by symmetry, the result does not change if we assume the opposite, that is,
. It should also be noted that
, that is,
Then, it holds that
and, also,
Since
, it follows that
Therefore,
that is,
.
On the other hand, let us rewrite
as follows:
where the last equality holds, since
.
It is straightforward to verify that
Indeed, this implies that
which is satisfied since by the assumptions
and
. Therefore, the inequality
also holds.
In summary, it holds that
It should be noted that this result is similar to the case of interval-valued fuzzy sets, in which
,
and
,
satisfy the same relation (see
Section 2).
Example 2. Let and , such that These membership degrees thus defined are illustrated in Figure 12. Then,and, thus, , , and . In the example, it holds that , as expected since it was proved above for any type-2 fuzzy set; see Equation (26). 3.2. Type-F Entropy in Type-2 Fuzzy Sets
Following a different approach, we now redefine the entropy of a T2FS as a measure of how much the set is non-fuzzy, and we will refer to this entropy as Type-F, where F stands for fuzzy. Again, as in
Section 3.1, we begin by studying the entropy at its endpoints. On the one hand, the entropy of a set must be 0 if it is indeed a fuzzy set, that is, the label associated with any element of the universe is a singleton. Then,
, we have that
with
(as shown in
Figure 13), that is,
On the other hand, the entropy must take a maximum value when the membership degree of any element is as far from being a singleton as possible, that is, when the label
is such that
It should be noted that labels span a surface of area of 1, while singletons have an area of 0. Therefore, it seems intuitively reasonable that the larger the area of the membership degrees in a T2FS, the larger its entropy should be. Taking this into account, and given that, if one curve is below another, it implies that its area is smaller, we consider the following order relation on T2FSs with membership degrees in .
Definition 4. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . Then, if , , where ≤ is the usual order in the set of functions (that is, if and only if , ).
This order is similar to the one considered by Burillo in [
8] (only adapted to T2FSs). Therefore, the axiomatization we propose in the following could also be considered as an extension of the one proposed in [
8].
Definition 5. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . We say that a function is a Type-F entropy measure on if it satisfies the following axioms:
- F.1
for some , .
- F.2
, .
- F.3
.
- F.4
If , then .
An example for this entropy measure is as follows.
Proposition 5. Let be any type-2 fuzzy set on X, with a finite universe , and membership degrees being normal and convex functions for each . The following function is a Type-F entropy measure on : We omit the proof of this proposition since it is almost straightforward and analogous to the proof of Proposition 4 (see
Appendix A).
Let us remember how we modified the endpoints of an interval to extend it to the type-2 case in
Section 3.1, Equation (
22):
It is then obvious that this entropy measure is an adapted version of
proposed by Burillo for IVFSs, Equation (
1), since it also considers the width of the interval. It should be noted that
also satisfies
Example 3. Using, again, the set of Example 2, we obtainand, thus, 3.3. Type-IV Entropy in Type-2 Fuzzy Sets
Finally, we define the entropy of a T2FS as a measure of how much it is a non-interval-valued fuzzy set, and we refer to this entropy as Type-IV, where IV stands for interval-valued. Again, we start by studying the entropy at its endpoints. On the one hand, it seems reasonable that the entropy must be 0 if all of the membership degrees are closed subintervals of
. However, to properly define this measure, it is necessary to consider for each membership value (that is, the linguistic label) which is the closest interval-valued fuzzy set. To do this, we set the values that are below
to be 0, and the other values that are greater than or equal to
to be 1 (see
Figure 14).
Accordingly, the distance between a membership degree (or label) and its nearest IVFS must be maximum when almost all values are
(that is, up to a maximum of three values different from
are allowed, since the labels are convex and normal functions). Some of these maximum entropy sets are shown in
Figure 15. Let
F be the set of labels with almost all values equal to
. Specifically, labels in
F may have only a maximum of three values that are not equal to
; then,
Furthermore, let
be the set of labels with 0 distance to its nearest interval-valued fuzzy set (see
Figure 16):
where
Next, we define the following order relation on T2FSs with membership degrees in
(see
Figure 17).
Definition 6. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . Then, if it is verified that , the following conditions are met:
If , then ;
If , then ;
If , then .
Based on these considerations, we propose the following axiomatic properties for this entropy measure.
Definition 7. Let A and B be type-2 fuzzy sets with membership degrees and , respectively, which are normal and convex functions for each . We say that a function is a Type-IV entropy measure on if it satisfies the following axioms:
- I.1
, .
- I.2
, .
- I.3
.
- I.4
If , then .
An example of this entropy measure is as follows (see
Figure 18).
Proposition 6. Let be any type-2 fuzzy set on X, with finite universe , and membership degrees being normal and convex functions for each . The following function is a Type-IV entropy measure on : Again, we omit the proof of this proposition, and, instead, we refer to the analogous proof of Proposition 4.
It should be noted that
in
coincides with the expression in Example III. 1 proposed by De Miguel in [
14] to obtain the entropy of a membership degree. However, it is a mere coincidence since their meanings are completely different. In [
14], the entropy of a T2FS is defined as for a fuzzy set, that is, for each element
x of the universe, the authors calculate the entropy of the membership degree of
x, that is, the entropy of
. Thus, they assign to each element
x a measure of how much the function
is not a crisp set. On the other hand, in the entropy that we consider here, we propose only one entropy value for the T2FS, and, with this aim, we assign to each element
x a measure of how much its label
is not an IVFS. It should be noted, for instance, that, while we interpret the image on the right side of
Figure 14 as an IVFS, De Miguel would interpret it as a crisp set, and we find the same interpretation in [
13,
15].
Example 4. Using, once again, the set of Example 2, we have 3.4. Comparing the Different Measures
In the following two tables, we show eight very simple type-2 fuzzy sets corresponding to labels that are somehow close to the label “true” (named
A to
H,
Table 1) and three type-2 fuzzy sets corresponding to labels that are close to the label “unknown” (named
I to
K,
Table 2). For each one, we compute the five entropy measures presented in
Section 3. In all cases, the universe
X consists of a single element, that is
, and the respective membership degrees represent different labels of the variable truth. The labels in
Table 1 range from “absolutely true” (
A, the singleton
) to “true”, considering values close to the singleton
(
B and
C), around the singleton
(
D to
G), and, finally, the label “true” (
H). In
Table 2, we get different potential expressions of the concept “unknown”.
In the tables, we can see how the entropy measures of Type C produce higher values as we move further away from “absolutely true” and get closer to “unknown” (exactly the same would happen if considering labels around “false” or closer to “unknown”). There, the maximum value for the Type-C entropy measures is obtained (
Table 2). We can interpret this situation as considering an entropy that measures the uncertainty of the given information. We can assume that “absolutely true” and “absolutely false” represent the maximum certainty (value 0), while “unknown” represents the maximum uncertainty (value 1).
At the same time, it is easy to see that the entropy measures of Type F and Type I do not behave in a similar way. The entropy measure can be 0 even for the complete uncertainty represented by the label “true with degree
”. These measures somehow analyze the dispersion of the set that represents the label. This property is usually referred to as imprecision, see [
27], representing the area below the membership function. In that sense, a quite precise expression of complete uncertainty, like “true with degree
”, will obtain an entropy measure of 0. Any singleton (no matter whether it represents true, false, or unknown) is considered precise and is assigned the value 0.
Therefore, we have two families of entropy measures that can be described as evaluating uncertainty (Type-C) and imprecision (Type-F and Type-I). Is there any difference inside each of the two families?
Entropy measures of Type C characterize uncertainty, but in the case of
, imprecision is also taken into account. The higher the imprecision, the higher the value of
, but always ranging between the value of
(obtained for minimum imprecision) and
(obtained for maximum imprecision). In fact, all singletons in
Table 1 (a singleton has an imprecision of 0, as said before) produce
(see
A,
D, and
I in
Table 1 and
Table 2). On the other hand, for maximum imprecision (any set
A such that
,
or
), we get
(see
A,
B,
C and
H in
Table 1).
Now considering entropy measures of Type F and I, while both of them consider imprecision, Type F measures imprecision as defined in the literature (area below the membership function), but Type I measures imprecision considering the area comprised between the membership function and either 0 or 1 (the closer value; see the shaded area in
Figure 18).
4. Conclusions
The present paper extended to type-2 fuzzy sets (T2FSs) some entropy measures previously defined in the frameworks of fuzzy, intuitionistic, and interval-valued fuzzy sets (IVFSs). The analysis of those previous ideas offered insights for different approaches to study the entropy in T2FSs. Here, we considered three of those potential approaches, materialized in the novel proposal of three types of entropy measures. The main difference between these approaches relies on the reference set, that is, the set with minimum entropy (the set for which the entropy measure should take value 0). Three references were considered: crisp sets, fuzzy sets, and IVFSs. Thus, the first approach to entropy measures how much a T2FS is not a crisp set (how far from the closest crisp set it is). The second approach measures how far a T2FS is from being a fuzzy set. Finally, the third approach measures how far the T2FS is from being an IVFS (how far is the closest IVFS). These three approaches are described as entropy measures of Type-C, Type-F, and Type-IV, referring to crisp, fuzzy, and interval-valued fuzzy sets, respectively.
Moreover, all three proposals interpret T2FSs according to the structure proposed by Mizumoto and Tanaka [
17], more in line with Zadeh’s original conception of a T2FS. In that sense, the membership degrees of the T2FS are considered as labels of the variable truth and not simply as two-dimensional type-1 fuzzy sets. Based on the proposed axiomatizations, several examples of entropy measures on T2FSs have been defined, extending to T2FSs the most commonly used entropy measures in fuzzy sets, and IVFSs.
Finally, for better understanding, we have illustrated each idea or key concept with drawings and examples throughout the paper, including an overall comparison through a final example.