1. Introduction, Preliminaries, and Motivation
The gradual evolution on sequence spaces results in the development of statistical convergence. It is more general than the ordinary convergence in the sense that the ordinary convergence of a sequence requires that almost all elements are to satisfy the convergence condition, that is, every element of the sequence needs to be in some neighborhood (arbitrarily small) of the limit. However, such restriction is relaxed in statistical convergence, where set having a few elements that are not in the neighborhood of the limit is discarded subject to the condition that the natural density of the set is zero, and at the same time the condition of convergence is valid for the other majority of the elements. In the year 1951, Fast [
1] and Steinhaus [
2] independently studied the term statistical convergence for single real sequences; it is a generalization of the concept of ordinary convergence. Actually, a root of the notion of statistical convergence can be detected by Zygmund (see [
3], p. 181), where he used the term “almost convergence”, which turned out to be equivalent to the concept of statistical convergence. We also find such concepts in random graph theory (see [
4,
5]) in the sense that almost convergence means convergence with probability 1, whereas in statistical convergence the probability is not necessarily 1. Mathematically, a sequence of random variables
is statistically convergent (converges in probability) to a random variable
X if
, for all
(arbitrarily small); and almost convergent to
X if
.
For different results concerning statistical versions of convergence as well as of the summability of single sequences, we refer to References [
1,
2,
6].
Let
be the set of natural numbers and let
. Also let
and suppose that
is the cardinality of
. Then, the
natural density of
is defined by
provided that the limit exists.
A sequence
is
statistically convergent to
ℓ if for every
,
has zero natural (asymptotic) density (see [
1,
2]). That is, for every
,
As an extension of statistical versions of convergence, the idea of weighted statistical convergence of single sequences was presented by Karakaya and Chishti [
7], and it has been further generalized by various authors (see [
8,
9,
10,
11,
12]). Moreover, the concept of deferred weighted statistical convergence was studied and introduced by Srivastava et al. [
13] (see also [
14,
15,
16,
17,
18,
19]).
In the year 1900, Pringsheim [
20] studied the convergence of double sequences. Recall that a double sequence
is convergent (or
P-convergent) to a number
ℓ if for given
there exists
such that
, whenever
and is written as
. Likewise,
is bounded if there exists a positive number
such that
. In contrast to the case of single sequences, here we note that a convergent double sequence is not necessarily bounded. We further recall that, a double sequence
is non-increasing in
Pringsheim’s sense if
and
.
Let
be the set of integers and let
. The
double natural density of
denoted by
is given by
provided the limit exists. A double sequence
of real numbers is statistically convergent to
ℓ in the
Pringsheim sense if, for each
where
Note that every P-convergent double sequence is -convergent to the same limit, but the converse is not necessarily true.
Example 1. Suppose we consider a double sequence as It is trivially seen that, in the ordinary sense is not P-convergent; however, 0 is its statistical limit.
Let , and let the Lebesgue measure v be defined over . Let and suppose that is the space of all measurable real-valued functions defined over equipped with the equality almost everywhere. Also, let be the space of all continuous real-valued functions and suppose that is the space of all functions that are infinitely differentiable on . We recall here that a functional is a modular on such that it satisfies the following conditions:
- (i)
if and only if , almost everywhere in ,
- (ii)
, and for any with ,
- (iii)
, for each , and
- (iv)
is continuous on .
Also, we further recall that a modular is
-Quasi convex if there exists a constant
satisfying
for every
,
such that
. Also, in particular, for
,
is simply called
convex; and
-Quasi semi-convex if there exists a constant
such that
holds for all
and
.
Also, it is trivial that every
-Quasi semi-convex modular is
-Quasi convex. The above concepts were initially studied by Bardaro et al. [
21,
22].
We now appraise some suitable subspaces of vector space
under the modular
as follows:
and
Here,
is known as the modular space generated by
and
is known as the space of the finite elements of
. Also, it is trivial that whenever
is
-Quasi semi-convex,
coincides with
. Moreover, for a
convex modular in
, the
F-norm is given by the formula:
The notion of modular was introduced in [
23] and also widely discussed in [
22].
In the year 1910, Moore [
24] introduced the idea of the relatively uniform convergence of a sequence of functions. Later, along similar lines it was modified by Chittenden [
25] for a sequence of functions defined over a closed interval
.
We recall here the definition of uniform convergence relative to a scale function as follows.
A sequence of functions
defined over
is
relatively uniformly convergent to a limit function
f if there exists a non-zero scale function
defined over
, such that for each
there exists an integer
and for every
,
holds uniformly for all
.
Now, to see the importance of relatively uniform convergence (ordinary and statistical) over classical uniform convergence, we present the following example.
Example 2. For all , we define by It is not difficult to see that the sequence of functions is neither classically nor statistically uniformly convergent in ; however, it is convergent uniformly to relative to a scale functionon . Here, we write In the middle of the twentieth century, H. Bohman [
26] and P. P. Korovkin [
27] established some approximation results by using positive linear operators. Later, some Korovkin-type approximation results with different settings were extended to several functional spaces, such as Banach space and Musielak–Orlicz space etc. Bardaro, Musielak, and Vinti [
22] studied generalized nonlinear integral operators in connection with some approximation results over a modular space. Furthermore, Bardaro and Mantellini [
28] proved some approximation theorems defined over a modular space by positive linear operators. They also established a conventional Korovkin-type theorem in a multivariate modular function space (see [
21]). In the year 2015, Orhan and Demirci [
29] established a result on statistical approximation by double sequences of positive linear operators on modular space. Demirci and Burçak [
30] introduced the idea of
A-statistical relative modular convergence of positive linear operators. Moreover, Demirci and Orhan [
31] established some results on statistically relatively approximation on modular spaces. Recently, Srivastava et al. [
13] established some approximation results on Banach space by using deferred weighted statistical convergence. Subsequently, they also introduced deferred weighted equi-statistical convergence to prove some approximation theorems (see [
17]). Very recently, Md. Nasiruzzaman et al. [
32] proved Dunkl-type generalization of Szász-Kantorovich operators via post-quantum calculus, and consequently, Srivastava et al. [
33] established the construction of Stancu-type Bernstein operators based on Bézier bases with shape parameter
.
Motivated essentially by the above-mentioned results, in this paper we introduce the idea of relatively modular deferred-weighted statistical convergence and statistically as well as relatively modular deferred-weighted summability for double sequences of functions. We also establish an inclusion relation between them. Moreover, based upon our proposed methods, we prove a Korovkin-type approximation theorem for a double sequence of functions defined over a modular space and demonstrate that our result is a non-trivial generalization of some well-established results.
2. Relatively Modular Deferred-Weighted Mean
Let
and
be sequences of non-negative integers satisfying the conditions: (i)
and (ii)
Note that (i) and (ii) are the regularity conditions for the proposed deferred weighted mean (see Agnew [
34]). Now, for the double sequence
of functions, we define the deferred weighted summability mean
as
where
and
are the sequences of non-negative real numbers satisfying
Definition 1. A double sequence of functions belonging to is relatively modular deferred weighted -summable to a function f on if and only if there exists a non-negative scale function such that Definition 2. A double sequence of functions belonging to is relatively F-norm (locally convex) deferred weighted summable (or relatively strong deferred weighted summable) to f if and only if It can be promptly seen that, Definitions 1 and 2 are identical if and only if the modular
fairly holds the
-condition, that is, there exists a constant
such that
for every
. Precisely, relatively strong summability of the double sequence
to
f is identical to the condition
and some
. Thus, if
is relatively modular deferred weighted
-summable to
f, then by Definition 1 there exists a
such that
Clearly, under
-condition, we have
Definition 3. A double sequence of functions belonging to is relatively modular deferred-weighted statistically convergent to a function if there exists a non-zero scale function such that, for every , the following set:has zero relatively deferred-weighted density, that is, Moreover, is relatively F-norm (locally convex) deferred-weighted statistically convergent (or relatively strong deferred-weighted statistically convergent) to a function if and only ifwhere is a non-zero scale function and . Definition 4. A double sequence of functions belonging to is statistically and relatively modular deferred-weighted -summable to a function if there exists a non-zero scale function such that, for every , the following set:has zero relatively deferred-weighted density, that is, Furthermore, is statistically and relatively F-norm (locally convex) deferred-weighted -summable (or statistically and relatively strong deferred-weighted -summable) to a function if and only ifwhere is a non-zero scale function and . Remark 1. If we put , , and in Definition 3, then it reduces to relatively modular statistical convergence (see [31]). Next, for our present study on a modular space we have the assumptions as follows:
If for , then is monotone;
If with , where A is a measurable subset of , then is finite;
If is finite and for each , , there exists a and for any measurable subset such that , then is absolutely finite;
If , then is strongly finite;
If for each there exists a such that , where B is a measurable subset of with and for each with , then is absolutely continuous.
It is clearly observed from the above assumptions that if a modular is finite and monotone, then . Also, if is strongly finite and monotone, then . Furthermore, if is absolutely continuous, monotone, and absolutely finite, then , where the closure is compact over the modular space.
Now we establish the following theorem by demonstrating an inclusion relation between relatively deferred-weighted statistical convergence and statistically as well as relatively deferred-weighted summability over a modular space.
Theorem 1. Let ω be a strongly finite, monotone, and -Quasi convex modular on . If a double sequence of functions belonging to is bounded and relatively modular deferred-weighted statistically convergent to a function , then it is statistically and relatively modular deferred weighted summable to the function f, but not conversely.
Proof. Assume that
. Let us set
and
From the regularity condition of our proposed mean, we have
Thus, we obtain
where
Further,
being
-Quasi convex modular, monotone, and strongly finite on
, it follows that
where
,
and
. In the last inequality, considering
P limit as
under the regularity conditions of deferred weighted mean and by using (
2), we obtain
This implies that
is relatively modular deferred weighted
-summable to a function
f. Hence,
Next, to see that the converse part of the theorem is not necessarily true, we consider the following example.
Example 3. Suppose that and let be a continuous function with , for and . Let be a measurable real-valued function, and consider the functional on defined byφ being convex, is modular convex on , which satisfies the above assumptions. Consider as the Orlicz space produced by φ of the form: For all , we consider a double sequence of functions defined bywhere the set of all odd and even numbers are and , respectively. Clearly, is relatively modular deferred weighted summable to , with respect to a non-zero scale function such that On the other hand, it is not relatively modular deferred-weighted statistically convergent to the function , that is, □
3. A Korovkin-Type Theorem in Modular Space
In this section, we extend here the result of Demirci and Orhan [
31] by using the idea of the statistically and relatively modular deferred-weighted summability of a double sequence of positive linear operators defined over a modular space.
Let
be a finite modular and monotone over
. Suppose
E is a set such that
. We can construct such a subset
E when
is monotone and finite. We also assume
as the sequence of positive linear operators from
E in to
, and there exists a subset
containing
. Let
be an unbounded function with
, and
R is a positive constant such that
holds for each
and
We denote here the value of at a point by , or briefly by . We now prove the following theorem.
Theorem 2. Let and be the sequences of non-negative integers and let ω be an -Quasi semi-convex modular, absolutely continuous, strongly finite, and monotone on . Assume that is a double sequence of positive linear operators from E in to that satisfy the assumption (3) for every and suppose that is an unbounded function such that . Assume further thatwhere Then, for every and with ,where . Proof. In order to justify our claim, we assume that
. Since
g is continuous on
, for given
, there exists a number
such that for every
with
and
, we have
Also, for all
with
, we have
where
From Equations (
7) and (
8), we obtain
Now
being linear and monotone, by applying the operator
to this inequality (
9), we fairly have
Note that
is fixed, and so also
is a constant number. This implies that
Now, using (
11) and (
12), we have
Since the choice of
is arbitrarily small, we can easily write
Now multiplying
to both sides of (
14), we have, for any
where
and
are constants for
.
Next, applying the modular
to the above inequality, also
being
-Quasi semi-convex, strongly finite, monotone, and
, we have
Now, replacing
by
and then by
in (
16), for a given
there exists
, such that
. Then, by setting
and for
,
we obtain
Now, by the assumption under (
4) as well as by Definition 4, the right-hand side of (
17) tends to zero as
. Clearly, we get
which justifies our claim (
6). Hence, the implication (
6) is fairly obvious for each
.
Now let
such that
for every
. Also,
is absolutely continuous, monotone, strongly and absolutely finite on
. Thus, it is trivial that the space
is modularly dense in
. That is, there exists a sequence
provided that
and
This implies that for each
there exist two positive integers
and
such that
Further, since the operators
are positive and linear, we have that
holds true for each
and
. Applying the monotonicity of modular
and further multiplying
to both sides of the above inequality, we have
Thus, for
, we can write
Then, it follows from (
18) and (
19) that
Now, taking statistical limit superior as
on both sides of (
20) and also using (
3), we deduce that
Next, by (
4), for some
, we obtain
Clearly from (
21) and (
22), we get
Since
is arbitrarily small, the right-hand side of the above inequality tends to zero. Hence,
which completes the proof. □
Next, one can get the following theorem as an immediate consequence of Theorem 2 in which the modular satisfies the -condition.
Theorem 3. Let , , , σ and ω be the same as in Theorem 2. If the modular ω satisfies the -condition, then the following assertions are identical:
- (a)
;
- (b)
such that any function provided that for each .
Next, by using the definitions of relatively modular deferred-weighted statistical convergence given in Definition 3 and statistically as well as relatively modular deferred-weighted summability given in Definition 4, we present the following corollaries in view of Theorem 2.
Let
and
, then Equation (
3) reduces to
for each
and
, where
R is a constant.
Moreover, if we replace
limit by
limit, then Equation (
3) reduces to
Corollary 1. Let ω be an -Quasi semi-convex modular, strongly finite, monotone, and absolutely continuous on . Also, let be a double sequence of positive linear operators from E in to satisfying the assumption (23) for every and be an unbounded function such that . Suppose thatwhere Then, for every and with ,where Corollary 2. Let ω be an -Quasi semi-convex modular, absolutely continuous, monotone, and strongly finite on . Also, let be a double sequence of positive linear operators from E in to satisfying the assumption (24) for every and be an unbounded function such that . Suppose thatwhere Then, for every and with ,where σ is given by (25). Note that for
,
, and
, Equation (
3) reduces to
for each
and
, where
R is a positive constant.
Also, if we replace statistically convergent limit by the statistically summability limit, then Equation (
3) reduces to
Now, we present the following corollaries in view of Theorem 2 as the generalization of the earlier results of Demirci and Orhan [
31].
Corollary 3. Let ω be an -Quasi semi-convex modular, absolutely continuous, monotone, and strongly finite on . Also, let be a double sequence of positive linear operators from E in to satisfying the assumption (26) for every and be an unbounded function such that . Suppose thatwhere Then, for every and with ,where σ is given by (25). Corollary 4. Let ω be an -Quasi semi-convex modular, monotone, absolutely continuous, and strongly finite on . Also, let be a double sequence of positive linear operators from E in to satisfying the assumption (27) for every and be an unbounded function such that . Suppose thatwhere Then, for every and with ,where σ is given by (25).