Abstract
The problem of obtaining new examples of fuzzy metrics is of interest, as this type of fuzzy measurement has been proven to be useful in engineering applications. In this context, different works have addressed the problem of deriving fuzzy metrics from classical ones. This paper is devoted to generalizing a construction of non-strong fuzzy metrics from metrics already provided in the literature, both for continuous Archimedean t-norms and for the minimum t-norm. Moreover, we explore the conditions under which one adapts this generalized method to obtain fuzzy metrics in the sense of George and Veeramani. In addition, we investigate the connection between the topology associated with the fuzzy metric constructed via these procedures and that determined by the metric. Several examples are provided to support and illustrate our findings.
Keywords:
fuzzy metric; non-strong fuzzy metric; Archimedean t-norm; additive generator; minimum t-norm; superadditive function MSC:
54C30; 54E35; 54H30
1. Introduction
Fuzzy metric spaces, as considered in this paper, are based on the concept introduced by Kramosil and Michalek in [1]. Since its introduction, this concept has undergone various modifications. For instance, George and Veeramani proposed strengthening some of the axioms for defining fuzzy metric spaces, as defined by Kramosil and Michalek, in order to obtain a Hausdorff topology induced by them. However, the same arguments via which George and Veeramani introduced the aforementioned Hausdorff topology remain valid for the notion due to Kramosil and Michalek. Furthermore, these arguments were applied even more broadly to the more general notion of fuzzy metric used throughout this paper (see Definition 2), which represents a minor refinement of the concept proposed by Kramosil and Michalek. Different authors have studied the topology induced by fuzzy metrics, specifically in the sense of George and Veeramani. However, most of the topological results obtained for fuzzy metric spaces in that sense are also recovered by the other approaches. Gregori and Romaguera [2] proved a notable result in this direction, and demonstrated that the class of metrizable topological spaces coincides with that of fuzzy metrizable ones—that is, topological spaces for which there exists a fuzzy metric space inducing the same topology. So, from a topological point of view, classical metrics and fuzzy metrics are equivalent. Nonetheless, they exhibit significant differences when pure metric issues are considered. For example, within the approach of George and Veeramani, there are fuzzy metric spaces that fail to admit a completion (see [3]). Additionally, fixed point theory in fuzzy metric spaces has shown substantial differences compared to its classical counterpart (see, for instance, [4,5]). Indeed, fixed point theory in fuzzy metric spaces remains an active field of research today (see, for instance, [6,7,8,9,10,11]).
The most substantial difference between classical metrics and fuzzy metrics lies in the fact that the latter include a parameter t in their definition. This feature has made fuzzy metrics interesting both from a theoretical point of view and in terms of their applicability. On the one hand, the parameter t has made it possible to introduce several concepts in fuzzy metric spaces that have no counterpart in the classical setting, and hence, this opens new lines of research in this field. Among these are the notions of strong fuzzy metric [12], p-convergence [13], and standard Cauchy sequence [14]. On the other hand, the t-parameter has provided fuzzy metrics with greater adaptability for addressing various real-world problems in computer science compared to classical metrics. Indeed, fuzzy metrics have been successfully applied in multiple aspects such as image processing [15,16,17,18], perceptual color difference [19], and clustering [20]. Nevertheless, in such applications, the examples of fuzzy metrics most commonly used are those introduced in the early stages of the development of fuzzy metric space theory. This issue was addressed in [21], where two novel approaches to deriving fuzzy metrics from classical metrics were proposed, allowing the creation of several new examples of fuzzy metrics. Moreover, to establish a duality relationship between classical and fuzzy metrics, ref. [22] proposed a method for deriving a non-strong fuzzy metric from a classical one. It should be noted that, prior to this, examples of non-strong fuzzy metric spaces were limited. Indeed, in [23], the open question of finding non-strong fuzzy metrics defined for t-norms other than the minimum was posed. This question was answered in [24] by providing two examples, which were ad hoc constructions developed specifically for this purpose.
The aim of this paper is to generalize the construction of (non-strong) fuzzy metrics from metrics provided in [22] following the ideas underlying the methods introduced in [21]. In this direction, we include a calibration function to manage the parameter t. Furthermore, we adapt the construction in [22] to generate fuzzy metrics under the minimum t-norm. It is worth noting that we identified an error in the proof of the theorem that provides a method for constructing fuzzy metrics from classical metrics for the minimum t-norm, as established in [21]. This error is detailed and corrected in the present work. Concerning the generalizations of the construction in [22], we first establish the necessary conditions for obtaining non-strong fuzzy (pseudo-)metrics for continuous Archimedean t-norms, as well as the additional requirements needed to obtain George and Veeramani fuzzy metrics. We also prove that our new method preserves topologies; that is, the topology associated with the obtained fuzzy metric is identical to the topology induced by the classical metric used in its construction. Furthermore, we show that, when the minimum t-norm is considered, a unique fuzzy pseudo-metric can be obtained. These new findings establish a novel method for obtaining new examples of non-strong fuzzy metrics, which provide a broader set of measurement tools for addressing the aforementioned engineering problems and improving upon previous approaches. To date, examples of non-strong fuzzy metrics have not yet been applied in any practical context. Moreover, compared with the results established in [22], a calibration function is included to manage the t parameter, providing flexibility for the constructed fuzzy metrics to be adapted to different contexts.
2. Preliminaries
We first recall the concept of a continuous t-norm, which is essential for defining the fuzzy metric spaces considered in this work.
Definition 1.
A triangular norm (or t-norm) is a binary operation satisfying the following properties, for all :
- (i)
- ;
- (ii)
- ;
- (iii)
- if and , then ;
- (iv)
- .
A t-norm ∗ is said to be continuous if it is continuous as a function from to , with respect to the usual topology.
We continue by reviewing the notion of a fuzzy metric space that will be used throughout the paper. We remark that this definition is a modest modification of the reformulation given by Grabiec in [25] of the notion of a fuzzy metric initially proposed by Kramosil and Michalek in [1]. The main reasons for adopting this modification were detailed in [22].
Definition 2.
A fuzzy metric space is an ordered triple such that X is a (non-empty) set, ∗ is a continuous t-norm, and is a mapping satisfying, for all and , the following axioms:
- (KM1)
- for all if and only if
- (KM2)
- (KM3)
- (KM4)
- The mapping is left-continuous, where for each .
As mentioned above, George and Veeramani strengthened some of the preceding axioms to define another notion of fuzzy metric, referred to as a -fuzzy metric, which can be formulated as follows.
Definition 3.
Let be a fuzzy metric space. is called a -fuzzy metric space if the mapping M satisfies, for all and , the following axioms:
- (GV0)
- ;
- (GV1)
- for some implies
- (GV2)
- The mapping is continuous.
As is customary, we refer to , or simply M when no ambiguity arises, as a (-)fuzzy metric on X. Analogously to the classical case, we say that constitutes a fuzzy pseudo-metric space if it meets all the conditions stated in Definition 2 except for axiom (KM1), which is replaced by the following weaker one:
- (KM1’)
- for all .
Similarly, by substituting axiom (GV1) in the Definition 3 with (KM1’), we obtain the notion of a GV-fuzzy pseudo-metric space.
In [26], George and Veeramani demonstrated that every -fuzzy metric induces a Hausdorff topology on X that has as a base the family of open balls , where for each , and . By applying reasoning analogous to that in [26], this result extends to fuzzy metrics as defined in Definition 2. Furthermore, a topology can be constructed from a (-)fuzzy pseudo-metric by means of the same family of open balls, which, in general, is not Hausdorff, as in the classical framework.
Based on Definitions 2 and 3, it becomes evident that -fuzzy metrics represent a specific subclass of fuzzy metrics. Consequently, in this work, we will formulate all definitions and results within the broader framework of fuzzy metrics, specifying explicitly whenever a concept or property applies exclusively in the George and Veeramani setting.
A noteworthy subclass of fuzzy (pseudo-)metrics, known as strong fuzzy (pseudo-)metrics, was introduced in [12] (see also [23]). They are defined as follows:
Definition 4.
Let be a fuzzy pseudo-metric space. We will say that , or simply M, is strong if M additionally satisfies, for all and , the following axiom:
- (S)
- .
Most known fuzzy metrics in the literature are of the strong type. In fact, obtaining examples of non-strong fuzzy metrics for specific t-norms other than the minimum was proposed as an open question in [23]. This question was addressed in [24], where two examples of non-strong fuzzy metrics were provided: one using the product t-norm and another using the Lukasiewicz t-norm. Furthermore, Ref. [24] encouraged the search for additional examples involving continuous t-norms lying above the product and below the minimum. Although these investigations were conducted in the George and Veeramani framework, the problem also becomes relevant within the more general notion of fuzzy metric. In this context, a method for constructing (non-strong) fuzzy metrics from classical metrics was introduced in [22], and will be presented later. This method relies on the notion of an additive generator of a t-norm, which is recalled below. For a more comprehensive treatment of t-norms and additive generators, we refer the reader to [27].
Definition 5.
Let ∗ be a continuous t-norm. A function , which is continuous and strictly decreasing, is called an additive generator of ∗ if it satisfies and for all , the following holds:
where denotes the pseudo-inverse of , defined as
The following theorem characterizes continuous t-norms that admit an additive generator, known as Archimedean t-norms. These are precisely the t-norms that satisfy the property for each . It is worth mentioning that the product and Lukasiewicz t-norms are Archimedean, whereas the minimum t-norm is not.
Theorem 1.
A function is a continuous Archimedean t-norm if and only if there exists an additive generator of ∗.
At this point, we are now set to present the method outlined earlier for constructing (non-strong) fuzzy metrics provided in [22] (Theorem 3.1).
Theorem 2.
Let be a pseudo-metric space and let ∗ be a continuous t-norm with additive generator . Then, is a fuzzy pseudo-metric on X, where M is the mapping defined on as follows:
for all and for all . Furthermore, is a fuzzy metric on X if and only if d is a metric on X.
In [22], it was pointed out that the fuzzy metric M defined in the preceding theorem is, in general, not strong. Moreover, Ref. [22] (Theorem 3.7) established a condition under which this fuzzy metric fails to be strong.
3. The Results
The goal of this section is to generalize the construction of (non-strong) fuzzy metrics presented in Theorem 2, following the ideas underlying the methods introduced in [21]. Moreover, we will study the connection between the topology generated by the resulting fuzzy pseudo-metric and that determined by the classical pseudo-metric from which it originates.
In [21], two new approaches for constructing strong (GV-)fuzzy metrics from classical metrics were proposed. One method relies on the use of an additive generator when dealing with continuous Archimedean t-norms, while the other employs a real function in the case of the minimum t-norm, which is continuous but not Archimedean. Additionally, an auxiliary function is employed, which must satisfy certain conditions.
We begin by recalling the first method presented in [21] (Theorem 3.1).
Theorem 3.
Let be a pseudo-metric space, let be an increasing and left-continuous function, and let ∗ be a continuous Archimedean t-norm. If is an additive generator of ∗, then is a strong fuzzy pseudo-metric space, where the mapping is given, for each and , by
Moreover, M is a strong fuzzy metric if and only if d is a metric.
To adapt the previous result to the construction presented in Theorem 2, it will be necessary to add an additional condition on the function , namely, superadditivity. Recall that a function is said to be superadditive if it satisfies for each (see [28]). The following lemma, proved in [29], establishes an essential property of such functions for later use.
Lemma 1.
Let be an increasing superadditive function. Then, (where, as usual, denotes the one-sided limit as t approaches 0 from the right).
We are now able to state and prove below the promised adaptation of Theorem 3 to the construction provided in Theorem 2.
Theorem 4.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let ∗ be a continuous Archimedean t-norm. If is an additive generator of ∗, then is a fuzzy pseudo-metric space, where the mapping is given, for each and , by
Moreover, M is a fuzzy metric if and only if d is a metric.
Proof.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let ∗ be a continuous Archimedean t-norm. Suppose that is an additive generator of ∗. Define by , for each and . We will see that M satisfies (KM1’), (KM2), (KM3), and (KM4).
First of all, for any , we have
for all , since d is a pseudo-metric on X. Therefore, axiom (KM1’) is satisfied.
Secondly, from the definition of M and the fact that d is a pseudo-metric, it follows immediately that (KM2) holds. Moreover, using again the definition of M, and noting that is left-continuous and is continuous, we conclude that (KM4) is also satisfied.
We now focus on verifying that M satisfies axiom (KM3). To this end, consider and . We claim that Indeed, if , then
Contrarily, if , then, using the triangle inequality for the pseudo-metric d and the superadditivity of , we obtain
Moreover,
So, .
Now, we distinguish between two cases:
- Suppose that . Then, since is decreasing and , for all , we getMoreover, taking into account that for all , we conclude that and so in this case.
- Contrarily, suppose that . Then, we have that . Taking into account that is decreasing, by applying formula (2), we get
Thus, in both cases, axiom (KM3) is satisfied.
What remains is to demonstrate that M constitutes a fuzzy metric precisely when d is a metric.
To prove the direct implication, assume that M is a fuzzy metric and let such that . Then, for all , we have , which leads us to conclude that because M is a fuzzy metric. Thus, d is a metric.
In the opposite direction, suppose that d is a metric and take such that for all . Then, for all and, since is strictly decreasing and satisfies , we conclude that for all . Therefore, for all and, by Lemma 1, taking the limit as t tends to 0, we get . Thus, since d is a metric, we conclude . Hence, M is a fuzzy metric. □
Above, it was stated that the superadditivity of is required to prove the preceding theorem. The following example justifies the necessity of this requirement.
Example 1.
Consider the (pseudo-)metric space , where denotes the usual metric on , i.e., for each . Define by for all , which is increasing and (left-)continuous, but is not superadditive. Indeed, . Consider the product t-norm, which is continuous and Archimedean, and let be the additive generator of given by for all . Then, all the requirements imposed in Theorem 4 are satisfied except for the superadditive of φ.
Now, for all and so, applying expression (5), we get
Taking , , , and , we have and . Therefore,
and so M is not a fuzzy (pseudo-)metric on .
It should be noted that the construction of fuzzy (pseudo-)metrics provided in Theorem 4 generalizes that presented in Theorem 2. Indeed, by taking in Theorem 4, we recover the construction given in that theorem. To demonstrate that Theorem 4 truly generalizes Theorem 2, it is enough to consider the function given by , which is increasing, continuous, and superadditive. Moreover, increasing convex functions, i.e., those increasing functions satisfying for each the property for all , are superadditve as long as . Therefore, a large class of functions, extensively studied in the literature, can be used in the construction provided in Theorem 4, only considering those that are increasing and left-continuous. For instance, given by , for each , with and , satisfies the requirements imposed in Theorem 4. To illustrate our new technique, we provide the next two corollaries, which generalize [22] (Corollaries 3.2 and 3.3). First, recall that the product t-norm and the Lukasievicz t-norm are continuous and Archimedean, and they have as an additive generator and , for each , respectively.
Corollary 1.
Let be a pseudo-metric space and let , with and . Then, is a fuzzy pseudo-metric on X, where M is the fuzzy set defined on as follows:
for all and for all . Furthermore, is a fuzzy metric on X if and only if d is a metric on X.
Corollary 2.
Let be a pseudo-metric space and let , with and . Then, is a fuzzy pseudo-metric on X, where M is the fuzzy set defined on as follows:
for all and for all . Moreover, M is a fuzzy metric if and only if d is a metric.
Observe in the preceding corollaries that the parameters k and n are arbitrary. This fact provides flexibility in the applicability of the proposed fuzzy metrics to real-world problems, as they can be adjusted to achieve greater accuracy in the models.
At this point, we ask whether imposing any additional condition on allows us to obtain strong fuzzy (pseudo-)metrics via Theorem 4, regardless of the pseudo-metric space under consideration. As the next example shows, the answer to this question is negative.
Example 2.
Consider again the (pseudo-)metric space . Let be an increasing, left continuous and superadditive function. Let ∗ be a continuous Archimedean t-norm and let be an additive generator of ∗. Fix and consider , , and . Then, . Therefore, and so M is not strong.
Based on the preceding example, regardless of whether the function considered is increasing, left continuous, or superadditive, and whether the continuous Archimedean t-norm is used, we can find a pseudo-metric space in which the construction provided by Theorem 4 fails to be strong, regardless of the additive generator of ∗ considered.
We now focus on adapting the second method presented in [21] (Theorem 4.1) to the construction of Theorem 2. It should be noted that this result contains an error in the proof, where it was claimed that (KM4) is satisfied by M. Specifically, it was asserted that the left continuity of g and , together with the condition for all , implies that the mapping is a left-continuous function. This assertion is incorrect, as demonstrated by the following example. The example is a slight modification of item (ii) in [21] (Example 9), where a computational error occurred.
Example 3.
Let be a metric space and let given by for all . It is clear that φ satisfies all conditions required in [21] (Theorem 4.1). Consider the function defined as follows:
Obviously, g is decreasing and . Moreover, g is left-continuous.
Let , with , and . Note that if and only if and, if and only if . So, for each , with , and , we obtain the next expression for the mapping M:
Note that, for each , with , the assignment , given by , is not left-continuous at . Thus, M does not satisfy axiom (KM4).
So, below, we provide a correction of [21] (Theorem 4.1). Moreover, we have relaxed the condition imposed in such a theorem to obtain a fuzzy metric.
Theorem 5.
Let be a pseudo-metric space, let be an increasing, left-continuous and superadditive function, and let be a decreasing and right-continuous function, such that . Then, is a fuzzy pseudo-metric space, where the mapping is given, for each and , by
If, in addition, , then M is a fuzzy metric if and only if d is a metric.
Proof.
Let be a pseudo-metric space, let be an increasing, left-continuous and superadditive function, and let be a decreasing and right-continuous function, such that . Define, , for each and .
We only prove that M satisfies (KM4) to show that is a fuzzy pseudo-metric space, since all the remaining conclusions follow from the arguments used in the proof of Theorem 4.1 in [21].
Obviously, if , the assignment is (left-)continuous since for all . So, fix , with , and consider the function . Let . We will see that, for each , we can find such that, for all we have .
Fix . On the one hand, g is right-continuous and decreasing, so there exists such that, for every , we have , where . On the other hand, for , we can find such that , for every , due to increasing and being left-continuous. Then, for each every . Again, since is left-continuous and increasing, we have that, for , there exists such that , for every .
Let . By the exposed above, we have and , for each . Therefore, for each , we get
Taking into account the preceding inequality and due to increasing, we conclude
Thus, for each , where . Therefore, the above arguments ensure that
Hence, the function is left-continuous at , and since is arbitrary, we conclude that is left-continuous.
It remains to demonstrate that, if , then M is a fuzzy metric if and only if d is a metric. So, suppose that .
For the direct implication, suppose that M is a fuzzy metric and let such that . Then, by our assumption on g, we have
Then, since M is a fuzzy metric on X.
By our assumption on g, we get for every or, equivalently, for every . Taking the limit as t tends to 0, we conclude by Lemma 1 that . Hence, due to d being a metric on X. □
We now present the announced adaptation. As before, additional conditions are required, this time on the function g.
Theorem 6.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let be a decreasing and right-continuous function such that and satisfying, for each , the property for all . Then, is a fuzzy pseudo-metric space, where the mapping is given, for each and , by
Moreover, if, in addition, , then M is a fuzzy metric if and only if d is a metric.
Proof.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let be a decreasing and right-continuous function, such that and satisfying, for each , the property for all . Define by , for each and .
It is easy to show that M satisfies conditions (KM1’) and (KM2) using arguments similar to those employed in the proof of Theorem 4. Moreover, the same reasoning used in the proof of Theorem 5 remains valid to show that M satisfies (KM4). So, we will only see that M satisfies (KM3).
Let and . If , then using the assumption , we get
Now assume that , i.e., . Since d is a pseudo-metric and is superadditive, it follows that either or . Indeed, if and , then , which contradicts the superadditivity of . We distinguish two cases:
- Suppose that ; then, and soOn the other hand, our assumption implies and, since d is a pseudo-metric and is superadditive, we obtainSet and . Then, the previous inequality ensures . So, if , since g is decreasing, we get . Contrarily, if , the (additional) condition imposed on g guarantees again that . Therefore,and hence M satisfies (KM3) in this case.
- The remaining case follows by similar arguments.
To show that M is a fuzzy metric if and only if d is a metric, one can use the same arguments used for this purpose in Theorem 4, but employing that for the direct implication, and the condition for the converse. □
A natural question that arises from the preceding theorem is whether the additional condition on g is in fact necessary. The next example shows that this requirement cannot be omitted.
Example 4.
Consider again the (pseudo-)metric space and let given by , for all , which is increasing, (left-)continuous, and superadditive. Define given by , for all and . Obviously, g is decreasing, (right-)continuous and . Nonetheless, g does not satisfy the condition: for each , g satisfies the property for all . Indeed, given for , we have that
Observe that M constructed following expression (11), for d and φ under consideration, is not a fuzzy metric on for the minimum t-norm. Indeed, , and setting , , , and we get
After showing that the aforementioned condition is necessary to obtain the conclusion of Theorem 6, we now prove the following result, which characterizes the functions that satisfy it.
Proposition 1.
Let be a function, such that . Then, g is decreasing and satisfies, for each , the property for all if and only if g is constant on .
Proof.
For the direct implication, let be a decreasing function which, for each , satisfies the property for all . We will see that, for each , with , we have that . So, let , with . Assume without loss of generality that . Since g is decreasing, we conclude that .
We will now prove by induction on n that, for each , is satisfied for all . The base case is given by our hypothesis on g, since it satisfies the property , for all . Suppose the statement is true for some arbitrary n, i.e., for all , and we will prove it for . Let . We distinguish two cases:
- If , by the hypothesis induction we obtain that .
- Contrarily, if , then, by our assumption on g, applied to , we get for all . Moreover, by the induction hypothesis, we have and, combining it with the preceding inequality, we obtain .
Therefore, by induction on n, we have that, for each , is satisfied for all .
Now, since , there exists such that . Then, and so . Hence, , since the above also proved the inequality .
Taking into account that , with , were arbitrary elements, we conclude that g is constant on .
For the converse, assume g is constant on . Since , it is obvious that g is decreasing since it is assumed to be constant on . Additionally, this assumption provides that, for each , we have that for each , and so, we obtain the converse implication. □
Remark 1.
After proving the preceding result, and taking into account Example 4, we conclude that, in order to adapt the method presented in [21] (Theorem 4.1) to the construction in Theorem 2, we can only use right-continuous and decreasing functions that are constant on such that and for each . Therefore, g must be a constant function , with for all . So, the adaptation of the method presented in [21] (Theorem 4.1) to the construction in Theorem 2 only provides the trivial fuzzy pseudo-metric given by for all and , which lacks interest.
We continue now by discussing the possibility of obtaining a version of Theorem 4 within the context of George and Veeramani. Note that Theorem 3.2 in [21] established a construction of -fuzzy (pseudo-)metrics using the same ideas as in expression (3) by imposing additional conditions. We claim that, in general, the construction provided by Theorem 4 can be formulated to yield fuzzy metrics in the sense of George and Veeramani, but only -fuzzy pseudo-metrics. This claim will be justified later on. Before doing so, we state the version of Theorem 3. It should be noted that [21] (Theorem 3.2) requires an additional condition on the t-norm. Specifically, the t-norm must be strict, i.e., those t-norms ∗ that are continuous and satisfy for each . The next result on strict t-norms was essential to prove the aforementioned theorem.
Proposition 2
(See [27]). Let ∗ be a continuous Archimedean t-norm and let be a continuous additive generator of ∗. Then, ∗ is strict if and only if .
Now, we are able to establish the version of Theorem 3.
Theorem 7.
Let be a pseudo-metric space, let be an increasing, superadditive and continuous function, and let ∗ be a strict Archimedean t-norm. If is an additive generator of ∗, then is a -fuzzy pseudo-metric space, where the mapping is defined as in (5).
Proof.
Let be a pseudo-metric space, let be an increasing, superadditive and continuous function, and let ∗ be a strict Archimedean t-norm. Suppose that is an additive generator of ∗. Define M as in (5). By Theorem 4, we have that is a fuzzy pseudo-metric space. Therefore, M satisfies axioms (KM1’), (KM2), and (KM3). It remains to show that M also satisfies axioms (GV0) and (GV2).
On the one hand, let and . Then, taking into account that ∗ is Archimedean and strict, we have that , for each . Therefore, since , we get
and so (GV0) is satisfied.
On the other hand, (GV2) follows from the continuity of and .
Hence, is a -fuzzy pseudo-metric space. □
In contrast to Theorem 4, the preceding result does not, in general, yield a -fuzzy metric when a metric is considered. It suffices to take a metric space in which there exist with . Then, choose a function such that we can find satisfying . Then, and so , which means that (GV1) does not hold.
To conclude this section, we will establish the relationship between the topology induced by the fuzzy pseudo-metric constructed in Theorem 4 and that induced by the classical pseudo-metric from which it is derived. It should be noted that [29] established such a relationship when considering constructions of [21] (Theorems 3.1 and 4.1). On the one hand, it was proved in [29] that both topologies coincide for the construction of [21] (Theorem 3.1) whereas they can be different when the method of [21] (Theorem 4.1) is under consideration. Additionally, two additional conditions on g were imposed in order to preserve the topology in the construction of [21] (Theorem 4.1). Taking into account that, in this paper, we have corrected a mistake in [21] (Theorem 4.1), we provide below a new version of [29] (Theorem 5), in which continuity on g at 0 is deleted in the statement. Note that left-continuity on g must be changed by right-continuity to prove [21] (Theorem 4.1), as shown above. Then, the right-continuity on g implies continuity at 0.
Theorem 8.
Let be a pseudo-metric space, let be an increasing left-continuous superadditive function, and let be a decreasing right-continuous function such that . If there exists such that , then the topology induced by d on X coincides with the topology induced by M on X, where M is defined as in expression (4).
The next result describes how the topology induced by the fuzzy pseudo-metric in Theorem 4 relates to that of the classical pseudo-metric from which it is constructed.
Theorem 9.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let ∗ be a continuous Archimedean t-norm. If is an additive generator of ∗, then the topology induced by d on X coincides with the topology induced by M on X, where M is defined as in expression (5).
Proof.
Let be a pseudo-metric space, let be an increasing, superadditive and left-continuous function, and let ∗ be a continuous Archimedean t-norm. Suppose that is an additive generator of ∗. Then, by Theorem 4, we have that is a fuzzy pseudo-metric space. We will see that .
Firstly, we show that . With this aim, let . Then, for each , there exists and such that . Fix . We claim that there exists such that . Indeed, let and consider . Then, and we get
Thus, and so .
Secondly, we show that . We proceed similarly by considering . Let ; then, there exists such that . By continuity of , we can find such that . Moreover, by Lemma 1, we can find such that . We claim that . Indeed, let ; then,
Observe that, in such a case, since, in the contrary case, . Therefore,
and so
Thus, . Hence, and so . □
4. Conclusions and Future Work
In this work, we have generalized the construction of (non-strong) fuzzy pseudo-metrics from classical pseudo-metrics introduced in [22] (Theorem 3.1) (see Theorem 2), based on the methods developed in [21] (Theorems 3.1 and 4.1). Our approach incorporates a real-valued function to handle the parameter t, and we have tried to extend Theorem 2 to obtain fuzzy metrics for the minimum t-norm.
On the one hand, we have established in Theorem 4 the necessary conditions for constructing (non-strong) fuzzy (pseudo-)metrics for continuous Archimedean t-norms via their additive generators. We have also proved in Theorem 9 that the proposed construction preserves the topology of the original metric space, and we have identified in Theorem 7 the additional requirements needed to obtain -fuzzy metrics. On the other hand, we have shown (see Remark 1) that, for the minimum t-norm, the method yields a unique fuzzy pseudo-metric which is the trivial one.
A further contribution of this paper is the identification of an error in the proof of [21] (Theorem 4.1), related to the construction of fuzzy metrics from classical metrics under the minimum t-norm. This issue has been fully detailed here and corrected in Theorem 5.
Future work may focus on two directions. On the one hand, a theoretical study can be conducted to extend the present work by generalizing the way in which the distance and the t parameter are combined before applying the additive generator. On the other hand, several new fuzzy metrics obtained through the constructions presented in this paper could be employed in image processing, perceptual color difference, or clustering, in order to compare their performance with previously reported approaches in the literature that make use of fuzzy metrics.
Author Contributions
Conceptualization, O.G. and J.-J.M.; Methodology, O.G., J.-J.M., and S.T.; Validation, O.G. and J.-J.M.; Formal Analysis, J.-J.M.; Investigation, J.-J.M. and S.T.; Resources, S.T.; Writing—Original Draft, J.-J.M. and S.T.; Writing—Review and Editing, O.G. and J.-J.M.; Visualization, S.T.; Supervision, O.G. and J.-J.M.; Project Administration, J.-J.M.; Funding Acquisition, J.-J.M. All authors have read and agreed to the published version of the manuscript.
Funding
Financiado con Ayuda a Primeros Proyectos de Investigación (PAID-06-24), Vicerrectorado de Investigación de la Universitat Politècnica de València (UPV). This research is part of projects PID2022-139248NB-I00 and PID2022-140189OB-C21 funded by MICIU/AEI/10.13039/501100011033 and ERDF/EU, and CIAICO/2022/051 funded by Generalitat Valenciana.
Data Availability Statement
The original contributions presented in this study are included in the article. Further inquiries can be directed to the corresponding author.
Acknowledgments
Dedicated to the memory of Alexander Šostak, whose inspiration continues to guide us.
Conflicts of Interest
The authors declare no conflicts of interest.
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