1. Introduction
Let
denote the set of all natural numbers. A sequence of numbers is said to be statistically convergent to a certain number if the terms of that sequence which are far from the limit are indexed by a subset of
of natural density zero. The notion of statistical convergence was originally proposed by Zygmund [
1] in the first edition of his 1935 monograph published in Warsaw. A few years later, Fast [
2] introduced the notion of statistical convergence of number sequences via the density of subsets of
[
3,
4]. The literature of statistical convergence has, ever since, been developed and enriched in the recent past years with deep and beautiful results provided by many authors [
5,
6,
7,
8,
9,
10,
11,
12,
13].
The notion of partial metric space was introduced by Matthews [
14] as a generalization of a usual metric space in 1994, and he studied its more relevant properties. In particular, he investigated the concept of weightable quasi-metric spaces and provided a partial metric generalization of Banach’s contraction principle. Later, O’Neill [
15] and Heckmann [
16] provided some other generalizations of partial metric spaces. Recently, the concepts of
q-Cesàro and statistical convergence in partial metric spaces were introduced in [
17], obtaining basic and essential results. Very recently, the authors of [
18,
19] introduced and studied other several types of convergence in partial metric spaces.
The purpose of this manuscript is to advance one step further on statistical convergence theory and partial metric space theory by introducing and studying f-statistical convergence in partial metric spaces, that is, statistical convergence in partial metric spaces by means of a modulus function f.
2. Materials and Methods
This section is aimed at introducing the necessary tools upon which we will base our results. It is divided into two subsections: modulus statistical convergence and partial metric spaces.
2.1. Modulus Statistical Convergence
According to [
20], a function
is called a modulus when it satisfies the following:
The above properties force f to be everywhere continuous on . Also, for all and all , and for every and every . A modulus may be unbounded or bounded. For instance, is bounded, whereas is unbounded.
A modulus function
f is said to be compatible [
21] provided that for any
there can be found
and
such that
for all
. According to [
21],
and
are compatible. However,
and
, where
W is the
W-Lambert function restricted to
(in other words, the inverse of
), are not compatible. For the study related to a modulus function, one may refer to [
22,
23,
24,
25,
26,
27,
28,
29] and many others.
The notion of
f-density for subsets of
was originally coined in [
30]. In this sense, the
f-density of a subset
A of
is defined by
provided that the limit exists. When
f is the identity, the classical version of density [
31] of subsets of
, denoted by
, is obtained. Some basic properties of
follow:
Increasingness: whenever and exist.
.
.
for every if exists.
Subadditivity: for every if exist.
If
and
, then
(the converse does not hold [
30] (Example 2.1)).
implies for each .
If is finite and f is unbounded, then .
From the above properties, it is not hard to infer that the collection of all subsets of with f-density 0 is an ideal of . Even more, if f is unbounded, then all finite subsets of have null f-density, meaning that the union of all sets with null f-density is the whole of ; therefore, under the assumption that f be unbounded, the collection of all subsets of with f-density 0 is a bornology of .
The next lemma can be found in [
30] (Lemma 3.4) and will be exploited later on.
Lemma 1. For each infinite subset H of there is an unbounded modulus function f satisfying
In [
30], by means of the
f-density of a subset of
, the following non-matrix concept of convergence is defined: A sequence
is said to be
f-statistically convergent to
if for every
,
has null
f-density; in other words,
written as
f-st lim
n xn =
x0.
As previously mentioned, the collection of all subsets of with f-density 0 is a bornology of (for f unbounded). Therefore, f-statistical convergence is a particular case of ideal convergence.
All modulus functions considered throughout the rest of this manuscript will be assumed to be unbounded by default.
2.2. Partial Metric Spaces
This subsection is devoted to introducing some basic definitions and properties related to partial metric spaces [
14,
15].
Definition 1. A partial metric on a nonempty set X is a function such that for all :
Indistancy implies equality: ;
Non-negativity and small self-distances: ;
Symmetry: ;
Triangularity: .
The pair is called a partial metric space.
Every metric space is obviously a partial metric space, but the converse is not true. The following examples of non-metric partial metric spaces can be found in [
14,
17,
32].
Example 1. is a non-metric partial metric space, where and for all .
Example 2. is a non-metric partial metric space, where and for all .
Example 3. is a non-metric partial metric space, where X is the collection of all finite sequences and all infinite sequences of a given set S and for k the largest positive integer (possibly ∞) such that for each being with and .
Example 4. is a non-metric partial metric space, where X stands for the set of all intervals for any real numbers and .
Not necessarily, an element in a partial metric space has a zero distance from itself. However, if we take
for every
, then
is precisely a metric space. On the other hand, every partial metric space induces a metric space. Indeed, if
is a partial metric space, then
is a metric space, where
It is well known that each partial metric
p on
X generates a
topology
on
X for which the family of open
p-balls
where
, is a base of the topology.
Remark 1. Let be a partial metric space. Let be a sequence in X and let . Then:
- i.
is bounded by definition whenever there exists such that for all .
- ii.
is -convergent to if and only if .
- iii.
is a Cauchy sequence by definition whenever exists.
A partial metric space
is said to be a complete partial metric space if every Cauchy sequence
in
X -converges to a certain
such that
. According to [
14], a sequence is Cauchy in the partial-metric sense precisely when it is Cauchy, in the metric sense of the word, with respect to
. As a consequence, a partial metric
p is complete precisely when
is complete in the metric sense of the word.
In [
33], (Corollary 3.8), completeness of uniform spaces with a countable base of entourages (like, for instance, pseudometric spaces) was characterized through the
f-statistical convergence of the
f-statistically Cauchy sequences.
Throughout the rest of the manuscript, whenever we talk about convergence in a partial metric space, we mean -convergence.
3. Results
In [
17], the definition of statistical convergence in a partial metric space
X was given as follows: A sequence
is called statistically convergent to
if for every
,
and it is denoted as
.
Our first step is to introduce the definition of f-statistical convergence in partial metric spaces.
Definition 2. Let X be a partial metric space, , and f an unbounded modulus function. We say that the sequence is f-statistically convergent to if for every ,and we denote it by . Let us display a representative example of an f-statistically convergent sequence in a non-metric partial metric space.
Example 5. Consider the compatible unbounded modulus [21]. Notice that satisfies that . Indeed, for all . ThenConsider the non-metric partial metric space endowed with the partial metric for all . Consider the sequence defined byNotice that is f-statistically convergent to 1
in X. Indeed,Therefore, for every , , so The following remark establishes the relation between convergence and f-statistical convergence in partial metric spaces.
Remark 2. Let X be a partial metric space and let be convergent to some . Take . There exists such that for all , . Therefore, for all . Since for all f unbounded, the f-density of any finite set is zero, this means that is f-statistically convergent to . Therefore, we obtain thatConversely, suppose that is not convergent to . In this case, there exists for which the set is infinite. In view of Lemma 1, there exists an unbounded modulus function f such that . In other words, is not f-statistically convergent to . As a consequence, we have that The following remark establishes the relation between statistical convergence and f-statistical convergence in partial metric spaces.
Remark 3. Let X be a partial metric space and let be f-statistically convergent to some . For every and , there exists such thatfor , henceBy relying on the increasingness of f, we obtain thatfor . This means that . Therefore, we have thatConversely, assume that f is a compatible modulus function and that is statistically convergent to . Take an arbitrary . Note that f is compatible; thus, we can find and such that for all . Fix another arbitrary . Since , there exists such that if , then . From the increasingness of f, we havefor . As a consequence, . Therefore, we have that The following definition serves to introduce the notion of proper f-statistical convergence in partial metric spaces. This notion is specific for non-metric partial metric spaces.
Definition 3. Let be a sequence in a partial metric space X, f an unbounded modulus function, and . If in , then we say that the sequence is properly f-statistically convergent to and it is denoted by .
The next step is to relate proper f-statistical convergence with f-statistical convergence in partial metric spaces.
Theorem 1. Let X be a partial metric space, , f an unbounded modulus function, and . Then Proof. First off, notice that, in accordance with [
33] (Theorem 3.6), for any sequence
and any
in any metric space
Y,
if and only if there exists
such that
and
.
- ⇒
Suppose first that
is properly
f-statistically convergent to
. Since
is a metric space, according to [
33] (Theorem 3.6), we can take
such that
and
. Fix an arbitrary
. There exists
such that if
and
, then
. Then
and
for all
with
, meaning that
and
in view again of [
33] (Theorem 3.6).
- ⇐
Conversely, suppose next that
. By relying again on [
33] (Theorem 3.6), we may assume the existence of
such that
and
. Take an arbitrary
and
such that if
and
, then
and
. Then for each
with
, we have that
As a consequence, by again applying [
33] (Theorem 3.6),
, that is,
.
□
In [
17] (Definition 4.1), the definition of strong
q-Cesàro summability in a partial metric space
X was given as follows: A sequence
is called strong
q-Cesàro summable to
if
and it is denoted as
.
The following definition introduces the notion of f-strong q-Cesàro summability in partial metric spaces.
Definition 4. Let X be a partial metric space, , f an unbounded modulus function, and q a positive real number. We say that the sequence is f-strongly q-Cesàro summable to provided thatand it is denoted as . Next, we discuss the corresponding notion of proper f-strong q-Cesàro summability in partial metric spaces.
Definition 5. Let X be a partial metric space, , f an unbounded modulus function, and q a positive real number. We say that the sequence is properly f-strongly q-Cesàro summable to provided thatand we write . The following theorem serves to characterize proper f-strong q-Cesàro summability via f-strong q-Cesàro summability in partial metric spaces.
Theorem 2. Let X be a partial metric space, , f an unbounded modulus function, q a positive real number, and . Then Proof. The following inequalities hold for all
:
and
As a consequence,
and
for each
. □
The next theorem relates f-strong q-Cesàro summability with strong q-Cesàro summability in partial metric spaces.
Theorem 3. Let X be a partial metric space, , f an unbounded modulus function, and q a positive real number. If is f-strongly q-Cesàro summable to some , then it is strongly q-Cesàro summable to and f-statistically convergent to .
Proof. Since
is
f-strongly
q-Cesàro summable to
, there exists
for every
, satisfying that
for every
. From the properties of the modulus function
f,
for every
. From the increasingness of
f, we obtain the following inequality:
for every
, which gives that
is strongly
q-Cesàro summable to
. Next, let us prove that
is
f-statistically convergent to
. Let
(of the form
for
sufficiently large) and denote
for every
. The following inequality holds for every
:
If both sides of the above inequality are divided by
and by taking the limit as
, we obtain that the sequence
is
f-statistically convergent to
. □
With some additional conditions, the converse of the above theorem is also satisfied.
Theorem 4. Let X be a partial metric space, , f a compatible modulus function, and q a positive real number. Let . If is strongly q-Cesàro summable to or f-statistically convergent to and bounded, then it is f-strongly q-Cesàro summable to .
Proof. Let us assume first that
is strongly
q-Cesàro summable to
. Fix an arbitrary
. Since
f is a compatible modulus function, there exist
and
such that
for all
. On the other hand,
is strongly
q-Cesàro summable to
, meaning that there exists
such that
for every
. By the increasingness of
f, we have
for every
. By dividing both sides of the above inequality by
, we obtain
for every
. This shows that
f-strongly
q-Cesàro is summable to
. Next, let us assume that
is
f-statistically convergent to
and bounded. Fix again an arbitrary
. Since
is bounded, there exists
sufficiently large for which
for each
. Also, by hypothesis,
f is a compatible modulus function, so, again, there are
and
such that
for all
. Denote
for every
and let
. The properties satisfied by
f allow the following inequalities:
for every
. Since
is
f-statistically convergent to
,
Therefore, by taking the limit as
in the above inequality and from the arbitrariness of
, we obtain that
which implies that
is
f-strongly
q-Cesàro summable to
. □
4. Discussion
Recently, in [
33],
f-statistical convergence was transported to the scope of uniform spaces. It is well known that pseudometric spaces are uniform spaces. However, partial metric spaces need not necessarily be uniform spaces.
Uniformities provide the right structure to define notions such as uniform continuity, uniform convergence, Cauchy sequences or nets, and completeness. For instance, a function between uniform spaces is said to be uniformly continuous provided that for every entourage V of Y there exists an entourage U of X such that , where . A sequence in a uniform space X is said to be a Cauchy sequence provided that for every entourage U in X there exists in such a way that for all with . A net of functions from a given set I, endowed with a bornology , to a uniform space X converges to some if and only if for every and every entourage V of X there exists such that for all and all with (this is precisely the topology of uniform convergence on elements of ).
As mentioned before, every pseudometric space
X is a uniform space, where a base of entourages is given by
for each
. Next, suppose that
X is a partial metric space. If we define
for every
, then there is no guarantee that the diagonal
of
X will be contained in
because it might occur that
. A way to overcome this issue is by setting
but this is precisely the metric uniformity derived from the metric space
. Observe that the metric topology of
is not necessarily the same as the partial metric topology of
X.
The next proposition is another way to see that non-metric partial metric spaces are not necessarily uniform spaces.
Proposition 1. Let X be a partial metric space. If there exist such that and , then X is not Hausdorff; hence, it is not regular. As a consequence, X is not a uniform space.
Proof. For every
,
, meaning that
. Therefore, no disjoint open sets contain
x and
y separately. Notice that
and regular imply Hausdorff, therefore
X cannot be regular (recall that it was mentioned in
Section 2 that partial metric topologies are
). Finally, it is well known that every uniform space is regular; hence,
X cannot be a uniform space. □
Notice that, under the settings of the previous proposition, it must necessarily occur that . The settings of the above proposition are satisfied by most of the non-metric partial metric spaces, in particular, by the partial metric given by in .
As a consequence, non-metric partial metric spaces are not necessarily uniform spaces; hence, the results provided in [
33] on
f-statistical convergence do not necessarily apply to partial metric spaces.
5. Conclusions
The field of summability and convergence is constantly being enriched with extensions of statistical convergence by moduli to very different ambiences. This manuscript takes one leap further in this trend by transporting statistical convergence by moduli to general partial metric spaces. As we discussed in the previous section, non-metric partial metric spaces need not necessarily be uniform spaces, which shows the relevance and importance of developing statistical convergence by moduli in partial metric spaces.
Author Contributions
Conceptualization, F.J.G.-P. and R.K.; methodology, F.J.G.-P. and R.K.; formal analysis, F.J.G.-P. and R.K.; investigation, F.J.G.-P. and R.K.; writing—original draft preparation, F.J.G.-P. and R.K.; writing—review and editing, F.J.G.-P. and R.K.; visualization, F.J.G.-P. and R.K.; supervision, F.J.G.-P. and R.K.; project administration, F.J.G.-P. and R.K.; funding acquisition, F.J.G.-P. and R.K. All authors have read and agreed to the published version of the manuscript.
Funding
This research was funded by Consejería de Universidad, Investigación e Innovación de la Junta de Andalucía: ProyExcel00780 (Operator Theory: An interdisciplinary approach) and ProyExcel01036 (Multifísica y optimización multiobjetivo de estimulación magnética transcraneal).
Institutional Review Board Statement
Not applicable.
Informed Consent Statement
Not applicable.
Data Availability Statement
The original contributions presented in the study are included in the article, further inquiries can be directed to the corresponding author.
Conflicts of Interest
The authors declare no conflicts of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.
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