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Article

Statistical Deferred Nörlund Summability and Korovkin-Type Approximation Theorem

by
Hari Mohan Srivastava
1,2,3,*,
Bidu Bhusan Jena
4 and
Susanta Kumar Paikray
4
1
Department of Mathematics and Statistics, University of Victoria, Victoria, BC V8W 3R4, Canada
2
Department of Medical Research, China Medical University Hospital, China Medical University, Taichung 40402, Taiwan
3
Department of Mathematics and Informatics, Azerbaijan University, 71 Jeyhun Hajibeyli Street, Baku AZ1007, Azerbaijan
4
Department of Mathematics, Veer Surendra Sai University of Technology, Burla 768018, India
*
Author to whom correspondence should be addressed.
Mathematics 2020, 8(4), 636; https://doi.org/10.3390/math8040636
Submission received: 25 March 2020 / Revised: 14 April 2020 / Accepted: 15 April 2020 / Published: 21 April 2020
(This article belongs to the Special Issue New Frontiers in Applied Mathematics and Statistics)

Abstract

:
The concept of the deferred Nörlund equi-statistical convergence was introduced and studied by Srivastava et al. [Rev. Real Acad. Cienc. Exactas Fís. Nat. Ser. A Mat. (RACSAM) 112 (2018), 1487–1501]. In the present paper, we have studied the notion of the deferred Nörlund statistical convergence and the statistical deferred Nörlund summability for sequences of real numbers defined over a Banach space. We have also established a theorem presenting a connection between these two interesting notions. Moreover, based upon our proposed methods, we have proved a new Korovkin-type approximation theorem with algebraic test functions for a sequence of real numbers on a Banach space and demonstrated that our theorem effectively extends and improves most of the earlier existing results (in classical and statistical versions). Finally, we have presented an example involving the generalized Meyer–König and Zeller operators of a real sequence demonstrating that our theorem is a stronger approach than its classical and statistical versions.

1. Introduction and Motivation

Statistical convergence plays a vital role as an extension of the classical convergence in the study of convergence analysis of sequence spaces. The credit goes to Fast [1] and Steinhaus [2] for they have independently defined this notion; however, Zygmund [3] was the first to introduce this idea in the form of “almost convergence”. This concept is also found in random graph theory (see [4,5]) in the sense that almost convergence, which is same as the statistical convergence, and it means convergence with a probability of 1, whereas in usual statistical convergence the probability is not necessarily 1. Subsequently, this theory has been brought to a high degree of development by many researchers because of its wide applications in various fields of mathematics, such as in Real analysis, Probability theory, Measure theory and Approximation theory and so on. For more details study in this direction, see [6,7,8,9,10,11,12,13,14,15,16,17,18].
Let K N (set of natural numbers) and suppose that
K n = { k : k N and k K } .
The natural (or asymptotic) density of K denoted by d ( K ) , and is given by
d ( K ) = lim n | K n | n = a ,
where a finite real number, n is a natural number and | K n | is the cardinality of K n .
A given real sequence ( x n ) is said to be statistically convergent to if, for each ϵ > 0 , the set
K ϵ = { k : k N and | x k | ϵ }
has zero natural density (see [1,2]). Thus, for each ϵ > 0 , we have
d ( K ϵ ) = lim n | K ϵ | n = lim n 1 n | { k : k n and | x k | ϵ } | = 0 .
Here, we write
stat lim n x n = .
In 2002, Móricz [19] introduced and studied some fundamental aspects of statistical Cesàro summability. Mohiuddine et al. [20] used this notion in a different way to establish some Korovkin-type approximation theorems. Subsequently, Karakaya and Chishti [21] introduced and studied the basic idea of the weighted statistical convergence and it was then modified by Mursaleen et al. [22]. Furthermore, Srivastava et al. [23,24], studied the notion of the deferred weighted as well as deferred Nörlund statistical convergence and used these notions to prove certain Korovkin-type approximation theorem with some new settings. Later on, some fundamental concept of the deferred Cesàro statistical convergence as well as the statistical deferred Cesàro summability, together with the associated approximation theorems was introduced by Jena et al. [25]. In 2019, Kandemir [26] studied the I-deferred statistical convergence in topological groups. Very recently, Paikray et al. [27] studied a new Korovkin-type theorem involving ( p , q ) -integers for statistically deferred Cesàro summability mean. On the other hand, Dutta et al. [28] studied another Korovkin type theorem over C [ 0 , ) by considering the exponential test functions 1 , e x and e 2 x on the basis of the deferred Cesàro mean. For more recent works in this direction, see [23,29,30,31,32,33,34,35,36,37,38].
Essentially motivated by the aforementioned investigations and outcomes, in the present article we introduce the notion of the deferred Nörlund statistical convergence and the statistically deferred Nörlund summability of a real sequence. We then establish an inclusion relation between these two notions. Furthermore, we prove a new Korovkin-type approximation theorem with algebraic test functions for a real sequence over a Banach space via our proposed methods and also demonstrate that our outcome is a non-trivial generalization of ordinary and statistical versions of some well-studied earlier results.

2. Preliminaries and Definitions

Let ( a n ) and ( b n ) be sequences of non-negative integers such that, (i) a n < b n and (ii) lim n b n = . Suppose that ( p n ) and ( q n ) are the sequences of non-negative real numbers such that
P n = m = a n + 1 b n p m and Q n = m = a n + 1 b n q m .
The convolution of ( p n ) and ( q n ) , the above-mentioned sequences is given by
R n = v = a n + 1 b n p v q b n v .
We now recall the deferred Nörlund mean D a b ( N , p , q ) as follows (see [24]):
t n = 1 R n m = a n + 1 b n p b n m q m x m .
We note that a sequence ( x n ) is summable to via the method of deferred Nörlund summability involving the sequences ( p n ) and ( q n ) (or briefly, D a b ( N , p , q ) )-summable if,
lim n t n = .
It is well known that the deferred Nörlund mean D a b ( N , p , q ) is regular under the conditions (i) and (ii) (see, for details, Agnew [39]).
We further recall the following definition.
Definition 1.
(see [24]) Let ( a n ) and ( b n ) be sequences of non-negative integers and let ( p n ) and ( q n ) be the sequences of non-negative real numbers. A real sequence { x n } n N is deferred Nörlund statistically convergent to ℓ if, for every ϵ > 0 ,
{ m : m R n and p b n m q m | x m | ϵ }
has zero deferred Nörlund density, that is,
lim n 1 R n | { m : m R n and p b n m q m | x m | ϵ } | = 0 .
In this case, we write
stat D N lim x n = .
Let us now introduce the following definition in connection with our proposed work.
Definition 2.
Let ( a n ) and ( b n ) be sequences of non-negative integers and let ( p n ) and ( q n ) be the sequences of non-negative real numbers. A real sequence { x n } n N is statistically deferred Nörlund summable to ℓ if, for every ϵ > 0 ,
{ m : m n and | t m | ϵ }
has zero deferred Nörlund density, that is,
lim n 1 n | { m : m n and | t m | ϵ } | = 0 .
In this case, we write
stat lim t n = .
Next, we wish to present a theorem in order to exhibit that every deferred Nörlund statistically convergent sequence is statistically deferred Nörlund summable. However, the converse is not generally true.
Theorem 1.
If a sequence ( x n ) is deferred Nörlund statistically converges to a number ℓ, then it is statistically deferred Nörlund summable to ℓ (the same number); but in general the converse is not true.
Proof. 
Suppose ( x n ) is deferred Nörlund statistically convergent to . By the hypothesis, we have
lim n 1 R n | { m : m R n and p b n m q m | x m | ϵ } | = 0 .
Consider two sets as follows:
K ϵ = lim m { m : m R n and p b n m q m | x m | ϵ }
and
K ϵ c = lim m { m : m R n and p b n m q m | x m | < ϵ } .
Now,
t n = 1 R n m = a n + 1 b n p b n m q m x m 1 R n m = a n + 1 b n p b n m q m x m + | | 1 R n m = a n + 1 b n p b n m q m 1 1 R n m = a n + 1 ( k K ϵ ) b n p b n m q m x m + 1 R n m = a n + 1 ( k K ϵ c ) b n p b n m q m x m + 1 R n m = a n + 1 b n p b n m q m 1 1 R n m = a n + 1 b n p b n m q m = 1 1 R n K ϵ + 1 R n K ϵ c + 0 0 a s n ( lim n b n = ) ,
which implies that t n . Hence, ( x n ) is statistically deferred Nörlund summable to . □
In view of the converse part of the theorem, we consider an example that shows that a sequence is statistically deferred Nörlund summable, even if it is not deferred Nörlund statistically convergent.
Example 1.
Suppose that
a n = 2 n 1 b n = 4 n 1 , and p n = q n = 1
and also consider a sequence ( x n ) by
x n = 0 ( n is even ) 1 ( n is odd ) .
One can easily see that, ( x n ) is neither ordinarily convergent nor convergent statistically. However, we have
1 R n m = a n + 1 b n p b n m q m x m = 1 2 n m = 2 n + 1 4 n x m = 1 2 n 2 n 2 = 1 2 .
That is, ( x n ) is deferred Nörlund summable to 1 2 and so also statistically deferred Nörlund summable to 1 2 ; however, it is not deferred Nörlund statistically convergent.

3. A New Korovkin-Type Approximation Theorem

In this section, we extend the result of Srivastava et al. [24] by using the notion of statistically deferred Nörlund summability of a real sequence over a Banach space.
Let C ( X ) , be the space of all continuous functions (real valued) defined on a compact subset X ( X R ) under the norm . . Of course, C ( X ) is a Banach space. For f C ( X ) , the norm f of f is given by,
f = sup x X { | f ( x ) | } .
We say that the operator L is a sequence of positive linear operator provided that
L ( f ; x ) 0 whenever f 0 .
Now we prove the following approximation theorem by using the statistical deferred Nörlund summability mean.
Theorem 2.
Let
L m : C ( X ) C ( X )
be a sequence of positive linear operators. Then, f C ( X ) ,
stat D N lim m L m ( f ; x ) f ( x ) C ( X ) = 0
if and only if
stat D N lim m L m ( 1 ; x ) 1 C ( X ) = 0 ,
stat D N lim m L m ( x ; x ) x C ( X ) = 0
and
stat D N lim m L m ( x 2 ; x ) x 2 C ( X ) = 0 .
Proof. 
Since each of the following functions
f 0 ( x ) = 1 , f 1 ( x ) = x and f 2 ( x ) = x 2
belonging to C ( X ) and are continuous, the implication given by (2) implies (3) to (5) is obvious. Now in view of completing the proof of Theorem 2, we assume first that the conditions (3) to (5) hold true. If f C ( X ) , then there exists a constant M > 0 such that
| f ( x ) | M ( x X ) .
We thus find that
| f ( s ) f ( x ) | 2 M ( s , x X ) .
Clearly, for given ϵ > 0 , there exists δ > 0 for which
| f ( s ) f ( x ) | < ϵ
whenever
| s x | < δ , for all s , x X .
Let us choose
φ 1 = φ 1 ( s , x ) = ( s x ) 2 .
If | s x | δ , we then obtain
| f ( s ) f ( x ) | < 2 M δ 2 φ 1 ( s , x ) .
From the inequalities (7) and (8), we get
| f ( s ) f ( x ) | < ϵ + 2 M δ 2 φ 1 ( s , x ) ,
which implies that
ϵ 2 M δ 2 φ 1 ( s , x ) f ( s ) f ( x ) ϵ + 2 M δ 2 φ 1 ( s , x ) .
Now, L m ( 1 ; x ) being monotone and linear, so under the operator L m ( 1 ; x ) , we have
L m ( 1 ; x ) ϵ 2 M δ 2 φ 1 ( s , x ) L m ( 1 ; x ) ( f ( s ) f ( x ) ) L m ( 1 ; x ) ϵ + 2 M δ 2 φ 1 ( s , x ) .
Furthermore, f ( x ) is a constant number in view that x is fixed. Consequently, we have
ϵ L m ( 1 ; x ) 2 M δ 2 L m ( φ 1 ; x ) L m ( f ; x ) f ( x ) L m ( 1 ; x ) ϵ L m ( 1 ; x ) + 2 M δ 2 L m ( φ 1 ; x ) .
Furthermore, we know that
L m ( f ; x ) f ( x ) = [ L m ( f ; x ) f ( x ) L m ( 1 ; x ) ] + f ( x ) [ L m ( 1 ; x ) 1 ] .
Using (10) and (11), we have
L m ( f ; x ) f ( x ) < ϵ L m ( 1 ; x ) + 2 M δ 2 L m ( φ 1 ; x ) + f ( x ) [ L m ( 1 ; x ) 1 ] .
We now estimate L m ( φ 1 ; x ) as follows:
L m ( φ 1 ; x ) = L m ( ( s x ) 2 ; x ) = L m ( s 2 2 x s + x 2 ; x ) = L m ( s 2 ; x ) 2 x L m ( s ; x ) + x 2 L m ( 1 ; x ) = [ L m ( s 2 ; x ) x 2 ] 2 x [ L m ( s ; x ) x ] + x 2 [ L m ( 1 ; x ) 1 ] .
Using (12), we obtain
L m ( f ; x ) f ( x ) < ϵ L m ( 1 ; x ) + 2 M δ 2 { [ L m ( s 2 ; x ) x 2 ] 2 x [ L m ( s ; x ) e x ] + x 2 [ L m ( 1 ; x ) 1 ] } + f ( x ) [ L m ( 1 ; x ) 1 ] . = ϵ [ L m ( 1 ; x ) 1 ] + ϵ + 2 M δ 2 { [ L m ( s 2 ; x ) x 2 ] 2 x [ L m ( s ; x ) x ] + x 2 [ L m ( 1 ; x ) 1 ] } + f ( x ) [ L m ( 1 ; x ) 1 ] .
Since ϵ > 0 is arbitrary, thus we have
| L m ( f ; x ) f ( x ) | ϵ + ϵ + 2 M δ 2 + M | L m ( 1 ; x ) 1 | + 4 M δ 2 | L m ( s ; x ) x | + 2 M δ 2 | L m ( s 2 ; x ) x 2 | K ( | L m ( 1 ; x ) 1 | + | L m ( s ; x ) x | + | L m ( s 2 ; x ) x 2 | ) ,
where
K = max ϵ + 2 M δ 2 + M , 4 M δ 2 , 2 M δ 2 .
Now, replacing L m ( f ; x ) by
1 R n m = a n + 1 b n p b n m q m T m ( f ; x ) = T m ( f ; x )
and noticing that, for a given r > 0 , there exists ϵ > 0 ( ϵ < r ) , we get
Ω m ( x ; r ) = m : m n and T m ( f ; x ) f ( x ) r .
Furthermore, for i = 0 , 1 , 2 , we have
Ω i , m ( x ; r ) = m : m n and T m ( f ; x ) f i ( x ) r ϵ 3 K ,
so that,
Ω m ( x ; r ) i = 0 2 Ω i , m ( x ; r ) .
Clearly, we obtain
Ω m ( x ; r ) C ( X ) i = 0 2 Ω i , m ( x ; r ) C ( X ) .
Now using the assumption as above for the implications (3) to (5) and in view of Definition 2, the right-hand side of (14) tends to zero as n leading to
lim n Ω m ( x ; r ) C ( X ) R n = 0 ( δ , r > 0 ) .
Consequently, the implication (2) holds. This completes the proof of Theorem 2. □
Next, by using Definition 1, we present the following corollary as a consequence of Theorem 2.
Corollary 1.
Let L m : C ( X ) C ( X ) be a sequence of positive linear operators, and suppose that f C ( X ) . Then
stat D N lim m L m ( f ; x ) f ( x ) C ( X ) = 0
if and only if
stat D N lim m L m ( 1 ; x ) 1 C ( X ) = 0 ,
stat D N lim m L m ( x ; x ) x C ( X ) = 0
and
stat D N lim m L m ( x 2 ; x ) x 2 C ( X ) = 0 .
We now present the following example for the sequence of positive linear operators that does not satisfy the associated conditions of the Korovkin approximation theorems proved previously in [24,33], but it satisfies the conditions of our Theorem 2. Consequently, our Theorem 2 is stronger than the earlier findings of both Srivastava et al. [24] and Paikray et al. [33].
We now recall the operator
x ( 1 + x D ) D = d d x ,
which was applied by Al-Salam [40] and, in the recent past, by Viskov and Srivastava [41] (see also [42,43], and the monograph by Srivastava and Manocha [44] for various general families of operators and polynomials of this kind). Here, in our Example 2 below, we use this operator in conjunction with the Meyer–König and Zeller operators.
Example 2.
Let X = [ 0 , 1 ] and we consider the Meyer–König and Zeller operators M n ( f ; x ) on C [ 0 , 1 ] given by (see [45]),
M n ( f ; x ) = k = 0 f k k + n + 1 n + k k x k . ( 1 + x ) n + 1 .
Furthermore, let L m : C [ 0 , 1 ] C [ 0 , 1 ] be a sequence of operators defined as follows:
L m ( f ; x ) = [ 1 + x m ] x ( 1 + x D ) M m ( f ) ( f C ( [ 0 , 1 ] ) ,
where ( x m ) is a real sequence defined in Example 1. Now,
L m ( 1 ; x ) = [ 1 + x m ] x ( 1 + x D ) 1 = [ 1 + x m ] x ,
L m ( s ; x ) = [ 1 + x m ] x ( 1 + x D ) x = [ 1 + x m ] x ( 1 + x ) ,
and
L m ( s 2 ; x ) = [ 1 + x n ] x ( 1 + x D ) x 2 n + 2 n + 1 + x n + 1 = [ 1 + f n ( x ) ] x 2 n + 2 n + 1 x + 2 1 n + 1 + 2 x n + 2 n + 1 ,
so that we have
stat D N lim m L m ( 1 ; x ) 1 C ( X ) = 0 , stat D N lim m L m ( x ; x ) x C ( X ) = 0
and
stat D N lim m L m ( x 2 ; x ) x 2 C ( X ) = 0 ,
that is, the sequence L m ( f ; x ) satisfies the conditions (3) to (5). Therefore, by Theorem 2, we have
stat D N lim m L m ( f ; x ) f C ( X ) = 0 .
Here, ( x n ) is statistically deferred Nörlund summable, even if, it is neither Nörlund statistically convergent nor deferred Nörlund statistically convergent, so we certainly conclude that earlier works in [24,33] are not valid under the operators defined in (15), where as our Theorem 2 still serves for the operators defined by (15).

4. Concluding Remarks and Observations

In the last section of our investigation, we present various further remarks and observations correlating the different outcomes which we have proved here.
Remark 1.
Let ( x m ) m N be a real sequence given in Example 1. Then, since
stat D N lim m x m = 1 2 on [ 0 , 1 ] ,
we have
stat D N lim m L m ( f i ; x ) f i ( x ) C ( X ) = 0 ( i = 0 , 1 , 2 ) .
Thus, by Theorem 2, we can write
stat D N lim m L m ( f ; x ) f ( x ) C ( X ) = 0 ,
where
f 0 ( x ) = 1 , f 1 ( x ) = x and f 2 ( x ) = x 2 .
As we know ( x m ) is neither statistically convergent nor converges uniformly in the usual sense, thus the statistical and classical approximation of Korovkin-type theorems do not behave properly under the operators defined in (15). Hence, this application clearly indicates that our Theorem 2 is a non-trivial extension of the usual and statistical approximation of Korovkin-type theorems (see [1,46]).
Remark 2.
Let ( x m ) m N be a real sequence as given in Example 1. Then, since
stat D N lim m x m = 1 2 on [ 0 , 1 ] ,
so (16) holds. Now, by applying (16) and Theorem 2, the condition (17) holds. Moreover, since the sequence ( x m ) is not deferred Nörlund statistically convergent, the finding of Srivastava et al. [24] does not serve for our operator defined in (15). Thus, our Theorem 2 is certainly a non-trivial generalization of the findings of Srivastava et al. [24] (see also [33,38]). Based upon the above outcomes, we conclude here that our chosen method has credibly worked under the operators defined in (15), and hence, it is stronger than the classical and statistical versions of the approximation of Korovkin-type theorems (see [24,33,38]) which were established earlier.

Author Contributions

Writing-review and editing, H.M.S.; Investigation, B.B.J.; Supervision, S.K.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding and the APC is Zero.

Acknowledgments

The authors would like to express their heartfelt thanks to the editors and anonymous referees for their most valuable comments and constructive suggestions which leads to the significant improvement of the earlier version of the manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Fast, H. Sur la convergence statistique. Colloq. Math. 1951, 2, 241–244. [Google Scholar] [CrossRef]
  2. Steinhaus, H. Sur la convergence ordinaire et la convergence asymptotique. Colloq. Math. 1951, 2, 73–74. [Google Scholar]
  3. Zygmund, A. Trigonometric Series, 3rd ed.; Cambridge University Press: Cambridge, UK, 2002. [Google Scholar]
  4. Srivastava, H.M.; Jena, B.B.; Paikray, S.K.; Misra, U.K. Statistically and relatively modular deferred-weighted summability and Korovkin-type approximation theorems. Symmetry 2019, 11, 448. [Google Scholar] [CrossRef] [Green Version]
  5. Shang, Y. Estrada index of random bipartite graphs. Symmetry 2015, 7, 2195–2205. [Google Scholar] [CrossRef] [Green Version]
  6. Braha, N.L.; Loku, V.; Srivastava, H.M. Λ2-Weighted statistical convergence and Korovkin and Voronovskaya type theorems. Appl. Math. Comput. 2015, 266, 675–686. [Google Scholar] [CrossRef]
  7. Braha, N.L.; Srivastava, H.M.; Mohiuddine, S.A. A Korovkin-type approximation theorem for periodic functions via the statistical summability of the generalized de la Vallée Poussin mean. Appl. Math. Comput. 2014, 228, 162–169. [Google Scholar]
  8. Kadak, U.; Braha, N.L.; Srivastava, H.M. Statistical weighted B-summability and its applications to approximation theorems. Appl. Math. Comput. 2017, 302, 80–96. [Google Scholar]
  9. Jena, B.B.; Paikray, S.K. Product of statistical probability convergence and its applications to Korovkin-type theorem. Miskolc Math. Notes 2019, 20, 969–984. [Google Scholar]
  10. Jena, B.B.; Paikray, S.K.; Dutta, H. On various new concepts of statistical convergence for sequences of random variables via deferred Cesàro mean. J. Math. Anal. Appl. 2020, 487, 123950. [Google Scholar] [CrossRef]
  11. Jena, B.B.; Paikray, S.K.; Misra, U.K. Approximation of periodic functions via statistical B-summability and its applications to approximation theorems. Indian J. Ind. Appl. Math. 2019, 10, 71–86. [Google Scholar] [CrossRef]
  12. Jena, B.B.; Paikray, S.K.; Misra, U.K. Inclusion theorems on general convergence and statistical convergence of (L,1,1)-summability using generalized Tauberian conditions. Tamsui Oxf. J. Inf. Math. Sci. 2017, 31, 101–115. [Google Scholar]
  13. Jena, B.B.; Paikray, S.K.; Mohiuddine, S.A.; Mishra, V.N. Relatively equi-statistical convergence via deferred Nörlund mean based on difference operator of fractional-order and related approximation theorems. AIMS Math. 2020, 5, 650–672. [Google Scholar] [CrossRef]
  14. Küçükaslan, M.; Yılmaztürk, M. On deferred statistical convergence of sequences. Kyungpook Math. J. 2016, 56, 357–366. [Google Scholar] [CrossRef] [Green Version]
  15. Mishra, L.N.; Patro, M.; Paikray, S.K.; Jena, B.B. A certain class of statistical deferred weighted A-summability based on (p,q)-integers and associated approximation theorems. Appl. Appl. Math. 2019, 14, 716–740. [Google Scholar]
  16. Srivastava, H.M.; Et, M. Lacunary statistical convergence and strongly lacunary summable functions of order α. Filomat 2017, 31, 1573–1582. [Google Scholar] [CrossRef]
  17. Srivastava, H.M.; Jena, B.B.; Paikray, S.K. Deferred Cesàro statistical probability convergence and its applications to approximation theorems. J. Nonlinear Convex Anal. 2019, 20, 1777–1792. [Google Scholar]
  18. Srivastava, H.M.; Jena, B.B.; Paikray, S.K. A certain class of statistical probability convergence and its applications to approximation theorems. Appl. Anal. Discrete Math. 2020, in press. [Google Scholar]
  19. Móricz, F. Tauberian conditions under which statistical convergence follows from statistical summability (C,1). J. Math. Anal. Appl. 2002, 275, 277–287. [Google Scholar] [CrossRef] [Green Version]
  20. Mohiuddine, S.A.; Alotaibi, A.; Mursaleen, M. Statistical summability (C,1) and a Korovkin-type approximation theorem. J. Inequal. Appl. 2012, 2012, 1–8. [Google Scholar] [CrossRef] [Green Version]
  21. Karakaya, V.; Chishti, T.A. Weighted statistical convergence. Iran. J. Sci. Technol. Trans. A Sci. 2009, 33, 219–223. [Google Scholar]
  22. Mursaleen, M.; Karakaya, V.; Ertürk, M.; Gürsoy, F. Weighted statistical convergence and its application to Korovkin-type approximation theorem. Appl. Math. Comput. 2012, 218, 9132–9137. [Google Scholar] [CrossRef]
  23. Srivastava, H.M.; Jena, B.B.; Paikray, S.K.; Misra, U.K. A certain class of weighted statistical convergence and associated Korovkin type approximation theorems for trigonometric functions. Math. Methods Appl. Sci. 2018, 41, 671–683. [Google Scholar] [CrossRef]
  24. Srivastava, H.M.; Jena, B.B.; Paikray, S.K.; Misra, U.K. Generalized equi-statistical convergence of the deferred Nörlund summability and its applications to associated approximation theorems. Rev. Real Acad. Cienc. ExactasFís. Natur. Ser. A Mat. 2018, 112, 1487–1501. [Google Scholar] [CrossRef]
  25. Jena, B.B.; Paikray, S.K.; Misra, U.K. Statistical deferred Cesàro summability and its applications to approximation theorems. Filomat 2018, 32, 2307–2319. [Google Scholar] [CrossRef] [Green Version]
  26. Kandemir, H.Ş. On I-deferred statistical convergence in topological groups. Maltepe J. Math. 2019, 1, 48–55. [Google Scholar]
  27. Paikray, S.K.; Jena, B.B.; Misra, U.K. Statistical deferred Cesàro summability mean based on (p,q)-integers with application to approximation theorems. In Advances in Summability and Approximation Theory; Mohiuddine, S.A., Acar, T., Eds.; Springer: Singapore, 2019; pp. 203–222. [Google Scholar]
  28. Dutta, H.; Paikray, S.K.; Jena, B.B. On statistical deferred Cesàro summability. In Current Trends in Mathematical Analysis and Its Interdisciplinary Applications; Dutta, H., Ljubiša Kočinac, D.R., Srivastava, H.M., Eds.; Springer Nature, Switzerland AG: Cham, Switzerland, 2019; pp. 885–909. [Google Scholar]
  29. Srivastava, H.M.; Jena, B.B.; Paikray, S.K.; Misra, U.K. Deferred weighted A-statistical convergence based upon the (p,q)-Lagrange polynomials and its applications to approximation theorems. J. Appl. Anal. 2018, 24, 1–16. [Google Scholar] [CrossRef]
  30. Das, A.A.; Jena, B.B.; Paikray, S.K.; Jati, R.K. Statistical deferred weighted summability and associated Korovokin-type approximation theorem. Nonlinear Sci. Lett. A 2018, 9, 238–245. [Google Scholar]
  31. Das, A.A.; Paikray, S.K.; Pradhan, T.; Dutta, H. Statistical (C,1)(E,μ)-summablity and associated fuzzy approximation theorems with statistical fuzzy rates. Soft Comput. 2019, 1–10. [Google Scholar] [CrossRef]
  32. Das, A.A.; Paikray, S.K.; Pradhan, T. Approximation of signals in the weighted Zygmund class via Euler-Hausdorff product summability mean of Fourier series. J. Indian Math. Soc. 2019, 86, 296–314. [Google Scholar]
  33. Paikray, S.K.; Dutta, H. On statistical deferred weighted B-convergence. In Applied Mathematical Analysis: Theory, Methods, and Applications; Dutta, H., Peters, J.F., Eds.; Springer Nature Switzerland AG: Cham, Switzerland, 2019; pp. 655–678.B-convergence. In Applied Mathematical Analysis: Theory, Methods, and Applications; Dutta, H., Peters, J.F., Eds.; Springer Nature Switzerland AG: Cham, Switzerland, 2019; pp. 655–678. [Google Scholar]
  34. Zraiqat, A.; Paikray, S.K.; Dutta, H. A certain class of deferred weighted statistical B-summability involving (p,q)-integers and analogous approximation theorems. Filomat 2019, 33, 1425–1444. [Google Scholar] [CrossRef] [Green Version]
  35. Patro, M.; Paikray, S.K.; Jena, B.B.; Dutta, H. Statistical deferred Riesz summability mean and associated approximation theorems for trigonometric functions. In Mathematical Modeling, Applied Analysis and Computation; Singh, J., Kumar, D., Dutta, H., Baleanu, D., Purohit, S.D., Eds.; Springer Nature, Singapore Private Limited: Singapore, 2019; pp. 53–67. [Google Scholar]
  36. Pradhan, T.; Jena, B.B.; Paikray, S.K.; Dutta, H.; Misra, U.K. On approximation of the rate of convergence of Fourier series in the generalized Hölder metric by deferred Nörlund mean. Afr. Mat. 2019, 30, 1119–1131. [Google Scholar] [CrossRef]
  37. Pradhan, T.; Paikray, S.K.; Das, A.A.; Dutta, H. On approximation of signals in the generalized Zygmund class via (E,1)(N,pn) summability means of conjugate Fourier series. Proyecciones J. Math. 2019, 38, 1015–1033. [Google Scholar] [CrossRef]
  38. Pradhan, T.; Paikray, S.K.; Jena, B.B.; Dutta, H. Statistical deferred weighted B-summability and its applications to associated approximation theorems. J. Inequal. Appl. 2018, 2018, 1–21. [Google Scholar] [CrossRef] [PubMed]
  39. Agnew, R.P. On deferred Cesàro means. Ann. Math. 1932, 33, 413–421. [Google Scholar] [CrossRef]
  40. Al-Salam, W.A. Operational representations for the Laguerre and other polynomials. Duke Math. J. 1964, 31, 127–142. [Google Scholar] [CrossRef]
  41. Viskov, O.V.; Srivastava, H.M. New approaches to certain identities involving differential operators. J. Math. Anal. Appl. 1994, 186, 1–10. [Google Scholar] [CrossRef] [Green Version]
  42. Liu, S.-J.; Lin, S.-D.; Lu, H.-C.; Srivastava, H.M. Linearization of the products of the generalized Lauricella polynomials and the multivariable Laguerre polynomials via their integral representations. Stud. Sci. Math. Hung. 2013, 50, 373–391. [Google Scholar]
  43. Srivastava, H.M. A note on certain operational representations for the Laguerre polynomials. J. Math. Anal. Appl. 1989, 138, 209–213. [Google Scholar] [CrossRef] [Green Version]
  44. Srivastava, H.M.; Manocha, H.L. A Treatise on Generating Functions; Halsted Press: New York, NY, USA; Ellis Horwood Limited: Chichester, UK; John Wiley and Sons: Brisbane, Australia; Toronto, ON, Canada, 1984. [Google Scholar]
  45. Altın, A.; Doǧru, O.; Taşdelen, F. The generalization of Meyer-König and Zeller operators by generating functions. J. Math. Anal. Appl. 2005, 312, 181–194. [Google Scholar] [CrossRef]
  46. Korovkin, P.P. Convergence of linear positive operators in the spaces of continuous functions. Dokl. Akad. Nauk. SSSR 1953, 90, 961–964. (In Russian) [Google Scholar]

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Srivastava, H.M.; Jena, B.B.; Paikray, S.K. Statistical Deferred Nörlund Summability and Korovkin-Type Approximation Theorem. Mathematics 2020, 8, 636. https://doi.org/10.3390/math8040636

AMA Style

Srivastava HM, Jena BB, Paikray SK. Statistical Deferred Nörlund Summability and Korovkin-Type Approximation Theorem. Mathematics. 2020; 8(4):636. https://doi.org/10.3390/math8040636

Chicago/Turabian Style

Srivastava, Hari Mohan, Bidu Bhusan Jena, and Susanta Kumar Paikray. 2020. "Statistical Deferred Nörlund Summability and Korovkin-Type Approximation Theorem" Mathematics 8, no. 4: 636. https://doi.org/10.3390/math8040636

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