3.2. Fuzzy Implications Generated by Fuzzy Connectives and Fuzzy Implications
In this section we will study the special case, where and f is a fuzzy connective, i.e. a t-norm or a t-conorm. So firstly we must prove that a t-norm and a t-conorm are suitable functions to replace f; i.e. they satisfy the properties of the function f.
Corollary 1. Let T be a t-norm, and and be two fuzzy implications. Then, the function that is defined by is a fuzzy implication.
Proof. Since
T is a t-norm, it is increasing with respect to both of its variables. This is deduced by (
3) and (
1). Furthermore, by (
4) it is
and
. So, since
, by (
3) we deduce that
. By Theorem 1 we deduce that
is a fuzzy implication. □
Corollary 2. Let S be a t-conorm and , two fuzzy implications. Then, the function that is defined by is a fuzzy implication.
Proof. Since
S is a t-conorm, it is increasing with respect to both of its variables. This is deduced by (
7) and (
5). Furthermore, by (
8) it is
and
. So, since
, by (
7) we deduce that
. By Theorem 1 we deduce that
is a fuzzy implication. □
Corollary 3. Let , be two fuzzy implications. Then the fuzzy implications and have, respectively, the following natural negations Proof. It is deduced by Proposition 1. □
Corollary 4. Let , be two fuzzy implications that satisfy (15) (respectively (18)–(20) with respect to N). Then the fuzzy implications , and satisfy (15) (respectively (18)–(20) with respect to N). Proof. It is deduced by Proposition 2. □
Proposition 3. Let , be two fuzzy implications that satisfy (17). Then the fuzzy implication satisfies (17). Proof. Let
,
be two fuzzy implications that satisfy (
17), then
Thus, for all , if then .
Vice versa; if
T is a t-norm then it satisfies the equivalence
Moreover, for properties (
15), (
17) and (
14) we prove the following propositions.
Proposition 4. Let , are two fuzzy implications.
- (i)
, satisfy (15) if the fuzzy implication satisfies (15). - (ii)
, satisfy (17) if the fuzzy implication satisfies (17).
Proof. (i) If
,
satisfy (
15), then
satisfies (
15) and the proof is deduced by Proposition 2.
Vice versa; if
satisfies (
15), then for all
it is
Thus,
satisfy (
15).
(ii) If
,
satisfy (
17), then
satisfies (
17) and the proof is deduced by Proposition 3.
Vice versa; if
satisfies (
17), then for all
it is
Thus,
satisfy (
17). □
Proposition 5. Let , be two fuzzy implications and S is a positive t-conorm. If the fuzzy implication satisfies (15), then for all it is Proof. If
satisfies (
15), then for all
it is
since
S is a positive t-conorm. □
Proposition 6. Let and be two fuzzy implications that satisfy (17) and S is a positive t-conorm. Then the fuzzy implication satisfies (17). Proof. Let
and
be two fuzzy implications that satisfy (
17); then,
Thus, for all
it is
since
S is a positive t-conorm. □
Proposition 7. Let and be two fuzzy implications and S is a positive t-conorm. If the fuzzy implication satisfies (17), then for any it is Proof. If
satisfies (
17), then for all
it is
since
S is a positive t-conorm. □
Proposition 8. Let and be two fuzzy implications that satisfy (14). Then the fuzzy implication - (i)
satisfies (14) if and - (ii)
satisfies (14) if .
Proof. (i) Let
and
be two fuzzy implications that satisfy (
14); then,
So, for all
, we have
Thus,
satisfies (
14), when
T is idempotent. Moreover the only idempotent t-norm is
(see [
1] Remark 2.1.4(ii), [
11] Proposition 1.9).
Vice versa; if
, then
(ii) Similarly, for all
, we have
Thus,
satisfies (
14), when
S is idempotent. Moreover the only idempotent t-conorm is
(see [
1] Remark 2.2.5(ii)).
Vice versa; if
, then
□
Example 3. Consider the Łukasiewicz’s implication , Gödel’s implication (See [1] Table 1.3) and the positive t-conorm (see [1] Table 2.2). It is known that and satisfy (16) (see [1] Table 1.4). On the other hand, does not satisfy (16), since We have to notice at this point that the same result for the violation of (
16) holds if we use a t-norm. This is clear in Example 1, where
.
Corollary 5.(i) If and is a fuzzy implication, then is a fuzzy implication, and moreover, (ii) If and is a fuzzy implication, then is a fuzzy implication, and moreover, Proof. It is deduced by Theorem 2 and Corollaries 1 and 2. □
Now let us explain a difference between these methods, the one with the t-norms and the other with the t-conorms. Firstly, we prove the following proposition.
Proposition 9. For all it is Proof. For all
it is
and by (
3) and (
4) we deduce that
and similarly by (
7), (
8), and (
5) we deduce that
Thus, for all
it is
□
Proposition 9 testifies to the importance of the method presented, since if we have two fuzzy implications
and we want to generate a not greater fuzzy implication of them, a solution is the fuzzy implication
. On the other hand, if we want a not weaker fuzzy implication, then the solution is
. Moreover, since
(see [
1] Remarks 2.1.4(ix) and 2.2.5(viii)), where
is the drastic product t-norm (see [
1] Table 2.1) and
the drastic sum t-conorm (see [
1] Table 2.2), we deduce that
3.3. Fuzzy Connectives’ Classes of Fuzzy Implications
In this section in an attempt to simplify a previous theoretical approach; we show the special case, where . Then the corresponding fuzzy implication is denoted by instead of . Moreover, if f is a fuzzy connective, i.e., a t-norm or a t-conorm, then the corresponding fuzzy implication is denoted by and respectively .
It is obvious that all the previous Theorems, Propositions, Corollaries, and results hold case-by-case for these implications, since they are special cases of the previous we have mentioned. We just mentioned these cases due to their simplicity, since we used only one and not two fuzzy implications. The previous results of those cases, when we used a fuzzy connective, were transformed to the following corollaries, which are presented without proofs due to their simplicity.
Corollary 6. Let be a fuzzy implication that satisfies (15) (respectively (18)–(20) with respect to N). Then, the fuzzy implications and satisfy (15) (respectively (18)–(20) with respect to N). Corollary 7. Let be a fuzzy implication.
- (i)
satisfies (15) if the fuzzy implication satisfies (15). - (ii)
violates (15) if the fuzzy implication violates (15). - (iii)
satisfies (17) if the fuzzy implication satisfies (17). - (iv)
violates (17) if the fuzzy implication violates (17).
Corollary 8. Letbe a fuzzy implication and S be a positive t-conorm.
- (i)
satisfies (15) if the fuzzy implication satisfies (15). - (ii)
violates (15) if the fuzzy implication violates (15). - (iii)
satisfies (17) if the fuzzy implication satisfies (17). - (iv)
violates (17) if the fuzzy implication violates (17).
Corollary 9. Let be a fuzzy implication that satisfies (14). Then the fuzzy implication - (i)
satisfies (14) if . - (ii)
violates (14) if . - (iii)
satisfies (14) if . - (iv)
violates (14) if .
Furthermore, two subclasses of every fuzzy implication were created. The first one is the T subclass of a fuzzy implication . If we consider as the set of t-norms, then the T subclass of is defined as . We must notice that contains fuzzy implications that are not greater than . Moreover, since , , and is the greatest fuzzy implication that is contained in . On the other hand it is obvious that the weakest fuzzy implication that is contained in is .
The second one is the S subclass of a fuzzy implication . If we consider as the set of t-conorms, then the S subclass of is defined as . We must notice that contains fuzzy implications that are not weaker than . Moreover, since , and is the weakest fuzzy implication that is contained in . On the other hand, it is obvious that the greatest fuzzy implication that is contained in is .
By the previous results it is obvious that . Furthermore these two subclasses construct the fuzzy connectives’ class of a fuzzy implication , which is defined by , where is the set of fuzzy connectives.
Our interest is focused on
T and
S subclass of a fuzzy implication. Firstly we must notice that if we use two valued fuzzy implications, such as
,
,
,
,
,
,
,
,
(see [
1] Table 1.3, Proposition 1.1.7 and [
13]), then
. This means that these fuzzy implications are invariant via this method and there is nothing to study and mention about these cases.
Moreover, according to Corollary 9, (
14) is invariant only if we use an idempotent t-norm or t-conorm. On the other hand, as we mentioned before for any fuzzy implication
it is
. So another characteristic of these three sets is that if
satisfies (
14), then
,
and
, when they are not empty, they are sets that contain only fuzzy implications that violate (
14).
At this point let us give an example which explains the aforementioned theoretical approach.
Example 4. Consider the Łukasiewicz’s implication that satisfies (14), (16), (15), and (17) (see [1] Table 1.4). If we are looking for a weaker fuzzy implication that satisfies (15), (17) and violates (14), this could be , where (see [1] Table 2.1). So, it is Moreover, violates (16) since If we consider (see [1] Table 2.1), then the weakest fuzzy implication we can generate with this method is where is the Rescher’s fuzzy implication (see [1] Table 1.3). Also, satisfies (15), (17) and does not satisfy (14) and (16) (see [1] Table 1.4). On the other hand, if we are looking for a greater fuzzy implication that satisfies (15) and does not satisfy (14), this could be , where the Lukasiewicz’s t-conorm (see [1] Table 2.2). So, it is Moreover, violates (17) and (16), since If we consider (see [1] Table 2.1), then the greatest fuzzy implication we can generate with this method is where is the greatest fuzzy implication (see [1] Proposition 1.1.7 and [13]). obviously satisfies (15) and does not satisfy (14). Moreover, it does not satisfy (17) since , and it is easy to prove that satisfies (16). Because of the previous example, we have to notice that since we do not use positive t-conorms, (
17) must be checked by the result every time and we cannot predict it a priori. Nevertheless, this check is an easy process.