Next Article in Journal
Study of Burgers–Huxley Equation Using Neural Network Method
Next Article in Special Issue
New Equivalents of Kurepa’s Hypothesis for Left Factorial
Previous Article in Journal
Statistical Analysis of Inverse Lindley Data Using Adaptive Type-II Progressively Hybrid Censoring with Applications
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Joint Discrete Approximation of Analytic Functions by Shifts of the Riemann Zeta Function Twisted by Gram Points II

by
Antanas Laurinčikas
Institute of Mathematics, Faculty of Mathematics and Informatics, Vilnius University, Naugarduko Str. 24, LT-03225 Vilnius, Lithuania
Axioms 2023, 12(5), 426; https://doi.org/10.3390/axioms12050426
Submission received: 26 March 2023 / Revised: 24 April 2023 / Accepted: 25 April 2023 / Published: 26 April 2023

Abstract

:
In this paper, a theorem is obtained on the approximation in short intervals of a collection of analytic functions by shifts ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) of the Riemann zeta function. Here, { t k : k N } is the sequence of Gram numbers, and α 1 , , α r are different positive numbers not exceeding 1. It is proved that the above set of shifts in the interval [ N , N + M ] , here M = o ( N ) as N , has a positive lower density. For the proof, a joint limit theorem in short intervals for weakly convergent probability measures is applied.

1. Introduction

Let s = σ + i t be a complex variable, and P the set of all prime numbers. The Riemann zeta function ζ ( s ) is defined, in the half-plane σ > 1 , by
ζ ( s ) = m = 1 1 m s ,
or by the infinite Euler product
ζ ( s ) = p P 1 1 p s 1 ,
and has analytic continuation to the whole complex plane, except for a simple pole at the point s = 1 with residue 1.
The function ζ ( s ) is a significant analytic object which is used not only in many branches of mathematics, but also in solving problems in other natural sciences, see, for example, [1,2,3]. This is due to deep connections between ζ ( s ) and objects of arithmetic, analytic and probabilistic character. It is not surprising that the function ζ ( s ) has a certain link to the famous mathematician and philosopher Pythagoras, who was not only a geometer but also the founder of mathematical philosophy. He saw mathematics everywhere, and said that all things are numbers, and began to use mathematics in astronomy and even music. Since the function ζ ( s ) is the main tool for the investigation of numbers, and has unexpected results even in cosmology and music (tuning problem), the theory of ζ ( s ) supports and develops the Pythagorean philosophy. Last time, applications of ζ ( s ) crossed the threshold of numbers, and the function ζ ( s ) became universal among functions. This paper is devoted to approximation problems of analytic functions by shifts ζ ( s + i τ ) , and is a continuation of the works in [4,5]. We recall that a possibility of the approximation of a class of functions by shifts of one and the same function is called universality, and was found by S.M. Voronin in [6], see also [7,8]. The discrete variant of the Voronin theorem was proposed by A. Reich in [9]. Let D = { s C : 1 / 2 < σ < 1 } , and let K stand for the set of compact sets lying in D and having connected complements. Moreover, denote by H 0 ( K ) , K K the set of non-vanishing continuous functions on K K , which are analytic inside of K. Let # A stand for the cardinality of the set A, and let N N 0 = N { 0 } . Then, the last discrete version of the Voronin universality theorem is the following statement [9]. For all K K , f ( s ) H 0 ( K ) , and positive h and ε ,
lim inf N 1 N + 1 # 0 k N : sup s K | f ( s ) | ζ ( s + i k h ) | < ε > 0 .
In [10], we began to consider the joint approximation of analytic functions by shifts ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) , where { t k } is the sequence of Gram numbers. Let Γ ( s ) be the gamma function. Then, the function ζ ( s ) has the functional equation
π s / 2 Γ s 2 ζ ( s ) = π ( 1 s ) / 2 Γ 1 s 2 ζ ( 1 s ) , s C .
Let Θ ( t ) , t > 0 be the increment of the argument of the product π s / 2 Γ ( s / 2 ) along the segment which connect the points s 1 = 1 / 2 and s 2 = 1 / 2 + i t . Since the function Θ ( t ) increases and is unbounded from above for t t * = 6.2 , the equation
Θ ( t ) = π ( n 1 ) , n N 0 ,
has the unique solution t n for t t * . J.P. Gram was the first to consider the points t n in connection to non-trivial zeros 1 / 2 + i γ n of the function ζ ( s ) [11], therefore they are called Gram points. More information on Gram points can be found in [12,13,14]. Equation (1) is also considered with arbitrary real τ 0 in place of n. In this case, we have the Gram function t τ .
In [10], we obtained a joint universality theorem on the approximation of analytic functions by shifts ( ζ ( s + i t τ α 1 ) , , ζ ( s + i t τ α r ) ) with different fixed positive numbers α 1 , , α r . The latter theorem was extended to short intervals in [4]. The paper in [5] is devoted to the discrete version of the results of [10].
Theorem 1 
([5]). Let α 1 , , α r be fixed different positive numbers not exceeding 1, and for j = 1 , , r , K j K and f j ( s ) H 0 ( K j ) . Then, for any ε > 0 ,
lim inf N 1 N + 1 # 0 k N : sup 1 j r sup s K j | ζ ( s + i t k α j ) f j ( s ) | < ε > 0 .
Moreover, the lower limit can be replaced by the limit for all but at most countably many ε > 0 .
Keeping in mind the effectivization of Theorem 1, we prove in this paper a version of Theorem 1 in short intervals. Without a loss of generality, we may suppose that α 1 < α 2 < < α r . For brevity, we set
Ψ α ( τ ) = ( t τ α ) 1 / 3 ( log t τ α ) 26 / 15 ,
where α = α 1 . Moreover, we use the notation ( t N α ) = ( t τ α ) τ = N . The objective of the paper is to prove that the set of approximating shifts ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) in Theorem 1 has a positive lower density for every ε > 0 (and a positive density for all but at most countably many ε > 0 ) for k in the interval [ Ψ α ( N ) ( ( t N α ) ) 1 , N 1 ] .
The paper is organized in the following way: In Section 2, some mean square estimates for the function ζ ( s ) in short intervals are obtained. Section 3 is devoted to a joint discrete limit theorem in short intervals on weakly convergent probability measures in r-dimensional space of analytic functions. Finally, in Section 4, we prove the main theorem.

2. Some Estimates

It is well known that mean square estimates occupy a central place in the proofs of universality theorems on the approximation of analytic functions by zeta functions. This, in a more complicated form, also takes place in the case of short intervals. Recall that the notation x δ y , x C , y > 0 means the existence of a constant c = c ( δ ) > 0 such that | x | c y .
We start with recalling a mean square estimate for the function ζ ( s ) in short intervals.
Lemma 1. 
Suppose that σ ( 1 / 2 , 13 / 22 ] is fixed, and T 1 / 3 ( log T ) 26 / 15 H T . Then, uniformly in H,
T H T + H | ζ ( σ + i t ) | 2 d t σ H .
Proof. 
Suppose that the exponential pair ( κ , λ ) and σ are connected by the inequality 1 + λ κ 2 σ , and T ( κ + λ + 1 ) / ( κ + 1 ) ( log T ) ( 2 + κ ) / ( κ + 1 ) H T . Then, Theorem 7.1 of [15] asserts that, uniformly in H,
T H T + H | ζ ( σ + i t ) | 2 d t σ H .
Therefore, the exponential pair ( 4 / 11 , 6 / 11 ) gives the lemma. □
For the proof of a discrete limit theorem for the function ζ ( s ) twisted by Gram points in short intervals, we need the corresponding mean square estimate. Unfortunately, we do not know a discrete version of Lemma 1. Therefore, we will derive the desired estimate from a continuous one which is contained in the next lemma.
Lemma 2. 
Suppose that 0 < α 1 and σ ( 1 / 2 , 13 / 22 ] are fixed, Ψ α ( T ) ( ( t T α ) ) 1 H T , and t R . Then,
T H T + H | ζ ( σ + i t + i t τ α ) | 2 d τ σ H ( 1 + | t | ) .
Proof. 
It is known [12] that, for τ ,
t τ = 2 π τ log τ ( 1 + o ( 1 ) )
and
t τ = 2 π log τ ( 1 + o ( 1 ) ) .
Thus, since 0 < α 1 , the function ( t τ α ) is decreasing for large τ . Hence,
I = def T T + H | ζ ( σ + i t τ α + i t ) | 2 d τ = T T + H 1 ( t τ α ) | ζ ( σ + i t τ α + i t ) | 2 d ( t τ α ) = T T + H 1 ( t τ α ) d T t τ α + t | ζ ( σ + i u ) | 2 d u = 1 ( t T + H α ) T T + H d T t T + H α + t | ζ ( σ + i u ) | 2 d u = 1 ( t T + H α ) t ξ α + t t T + H α + t | ζ ( σ + i u ) | 2 d u 1 ( t 2 T α ) t T α | t | t T + H α + | t | | ζ ( σ + i u ) | 2 d u 1 ( t 2 T α ) t T α H ( t T α ) | t | t T α + H ( t T α ) + | t | | ζ ( σ + i u ) | 2 d u ,
where T ξ T + H . In view of the hypotheses for H,
H ( t T α ) + | t | H ( t T α ) Ψ α ( T ) .
Therefore, by Lemma 1, and if H ( t T α ) + | t | t T α , then, by (4),
I σ H ( t T α ) + | t | ( t 2 T α ) σ , α H + | t | ( t 2 T α ) σ , α H ( 1 + | t | ) .
It is well known that, for 1 / 2 < σ < 1 ,
T T | ζ ( σ + i t ) | 2 d t σ T .
If H ( t T α ) + | t | > t T α , then t T α + H ( t T α ) + | t | < 2 ( H ( t T α ) + | t | ) , and t T α H ( t T α ) | t | > 2 ( H ( t T α ) + | t | ) . Thus, by (6), if H ( t T α ) + | t | > t T α , then
I 1 ( t 2 T α ) 2 ( H ( t T α ) + | t | ) 2 ( H ( t T α ) + | t | ) | ζ ( σ + i u ) | 2 d u σ H ( t T α ) + | t | ( t 2 T α ) σ , α H ( 1 + | t | ) .
This and (5) prove the lemma. □
The next lemma (Gallagher lemma) together with Lemma 2 will imply the bound for the discrete mean square.
Lemma 3 
([16]). Suppose that T 1 , T 2 η > 0 , A is a finite non-empty set in the interval [ T 1 + η / 2 , T 1 + T 2 η / 2 ] , and
Z η ( x ) = t A | t x | < η 1 .
Let a complex valued function F ( t ) be continuous on [ T 1 , T 1 + T 2 ] and have a continuous derivative on ( T 1 , T 1 + T 2 ) . Then,
t A Z η 1 ( t ) | F ( t ) | 2 1 η T 1 T 1 + T 2 | F ( t ) | 2 d t + T 1 T 1 + T 2 | F ( t ) | 2 d t T 1 T 1 + T 2 | F ( t ) | 2 d t 1 / 2 .
Unfortunately, an application of Lemma 3 requires the restriction α 1 .
Lemma 4. 
Suppose that 0 < α 1 and σ ( 1 / 2 , 13 / 22 ] are fixed, Ψ α ( N ) ( ( t N α ) ) 1 M N 1 , and t R . Then,
k = N N + M | ζ ( σ + i t k α + i t ) | 2 σ , α M ( 1 + | t | ) .
Proof. 
We take in Lemma 3 η = 1 , T 1 = N 1 , T 2 = M + 2 and A = { N , N + 1 , , N + M } . Obviously, Z η ( x ) = 1 . Therefore, an application of Lemma 3 with the function F ( τ ) = ζ ( σ + i t τ α + i t ) yields
k = N N + M | ζ ( σ + i t k α + i t ) | 2 N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ + N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ 1 / 2 .
By Lemma 2, we have
N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ σ , α M ( 1 + | t | ) .
The Cauchy integral formula gives
ζ ( s + i t τ α + i t ) = 1 2 π i L ζ ( s + i t τ α + i t ) ( z σ ) 2 d z ,
where L is a circle | z σ | = r lying in the strip 1 / 2 < σ 13 / 22 . Therefore,
| ζ ( σ + i t τ α + i t ) | 2 L | d z | | z σ | 4 L | ζ ( σ + i t τ α + i t ) | 2 | d z | .
Hence,
N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ σ , L L | d z | N 1 N + M + 1 | ζ ( Re z + i t τ α + i t + i Im z ) | 2 d τ .
Thus, in view of (8),
N 1 N + M + 1 | ζ ( σ + i t τ α + i t ) | 2 d τ L , σ , α M ( 1 + | t | ) .
The latter estimate, and (7) and (8) prove the lemma. □
Now we are ready to approximate ζ ( s + i t k α ) by an absolutely convergent Dirichlet series. Let κ > 1 / 2 be a fixed number, and
v n ( m ; κ ) = exp m n κ , m , n N .
Then the series
ζ n ( s ) = m = 1 v n ( m ; κ ) m s
is absolutely convergent for σ > σ 0 with arbitrary finite σ 0 .
Lemma 5. 
Suppose that K D is a compact set, and Ψ α ( N ) ( ( t N α ) ) 1 M N 1 . Then,
lim n lim sup N 1 M + 1 k = N N + M sup s K | ζ ( s + i t k α ) ζ n ( s + i t k α ) | = 0 .
Proof. 
The Mellin formula
1 2 π i b i b + i Γ ( s ) a s d s = e a , a , b > 0 ,
implies the integral representation, see, for example, [17],
ζ n ( s ) = 1 2 π i κ i κ + i ζ ( s + z ) l n ( z , κ ) d z ,
where l n ( z ; κ ) = 1 / κ Γ ( z / κ ) n z . There exists 0 < δ 1 / 11 such that 1 / 2 + 2 δ σ 1 δ for s = σ + i t K . The integrand in (9) has simple poles at z = 0 and z = 1 s . Therefore, taking κ = 1 / 2 + δ and κ 1 = 1 / 2 + δ σ < 0 , we find by the residue theorem
ζ n ( s ) ζ ( s ) = 1 2 π i κ 1 i κ 1 + i ζ ( s + z ) l n ( z ; κ ) d z + l n ( 1 s ; κ ) .
Thus, for all s K ,
ζ n ( s + i t k α ) ζ ( s + i t k α ) = 1 2 π i ζ 1 2 + δ + i t + i t k α + i τ l n 1 2 + δ σ + i τ ; κ d τ + l n ( 1 s i t k α ; κ ) ζ 1 2 + δ + i t k α + i τ sup s K l n 1 2 + δ s + i τ ; κ d τ + sup s K l n ( 1 s i t k α ; κ )
in virtue of a shift t + τ τ . Hence,
1 M + 1 k = N N + M sup s K ζ n ( s + i t k α ) ζ ( s + i t k α ) 1 M + 1 k = N N + M ζ 1 2 + δ + i t k α + i τ sup s K l n 1 2 + δ s + i τ ; κ d τ + 1 M + 1 k = N N + M sup s K l n ( 1 s i t k α ; κ ) = def S 1 + S 2 .
In view of Lemma 4,
1 M + 1 k = N N + M ζ 1 2 + δ + i t k α + i τ 1 M + 1 k = N N + M ζ 1 2 + δ + i t k α + i τ 2 1 / 2 δ , α ( 1 + | τ | ) 1 / 2 .
It is well known that, for large | t | , the estimate
Γ ( σ + i t ) exp { c | t | }
with c > 0 , uniformly in σ in any interval [ σ 1 , σ 2 ] , σ 1 < σ 2 , is valid. Therefore, for all s K ,
l n 1 2 + δ s + i τ κ n 1 / 2 + δ σ exp c κ | τ t | κ , K n δ exp { c 1 | τ | }
with c 1 > 0 . Thus, by (11),
S 1 δ , α , κ , K n δ ( 1 + | τ | ) 1 / 2 exp { c 1 | τ | } d τ δ , α , κ , K n δ .
To estimate S 2 , we observe that (12), for all s K , implies the bound
l n ( 1 s i t k α ) κ n 1 σ exp c κ | t k α + t | κ , K n 1 / 2 2 δ exp { c 2 t k α }
with c 2 > 0 . Hence, in view of (2),
S 2 κ , K n 1 / 2 2 δ 1 M + 1 k = N N + M exp { c 2 t k α } κ , K n 1 / 2 2 δ k = N N + M exp c 3 k log k α θ , K n 1 / 2 2 ε exp c 4 N log N α
with positive c 3 and c 4 . This, (13) and (10) show that
1 M + 1 k = N N + M sup s K | ζ ( s + i t k α ) ζ n ( s + i t k α ) | δ , α , κ , K n δ + n 1 / 2 2 δ exp c 4 N log N α .
Now, taking N , and then n , we obtain the equality of the lemma. □

3. Weak Convergence

Let X be a certain topological space with the Borel σ -field B ( X ) , and P and P n , n N , probability measures on ( X , B ( X ) ) . By the definition, P n converges weakly to P as n , ( P n n W P ) if
lim n X g d P n = X g d P
for every real bounded continuous function g on X . In this section, we will obtain the weak convergence for some measures in the space of analytic functions. Denote by H ( D ) the space of analytic on D functions endowed with the topology of uniform convergence on compacta, and set
H r ( D ) = H ( D ) × × H ( D ) r .
For A B ( H r ( D ) ) , define
P N , M , α ̲ ( A ) = 1 M + 1 # N k N + M : ζ ̲ ( s + i t ̲ k α ̲ ) A ,
where α ̲ = ( α 1 , , α r ) , t ̲ k α ̲ = ( t k α 1 , , t k α r ) , and
ζ ̲ ( s + i t ̲ k α ̲ ) = ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) .
We consider the weak convergence of P N , M , α ̲ as N , where M = o ( N ) .
For the definition of the limit measure, we need some notation. Define the Cartesian product
Ω = p P { s C : | s | = 1 } .
The infinite-dimensional torus Ω equipped with the product topology and operation of pointwise multiplication becomes a compact topological Abelian group; therefore,
Ω r = Ω 1 × × Ω r
where Ω j = Ω for j = 1 , , r , again is a compact topological group. Hence, the probability Haar measure μ H on the space ( Ω r , B ( Ω r ) ) exits, and we arrive to the probability space ( Ω r , B ( Ω r ) , μ H ) . For j = 1 , , r , let ω j = { ω j ( p ) : p P } Ω j and ω = ( ω 1 , , ω r ) be the element of Ω r . Now, on the above probability space, define the H r ( D ) -valued random element
ζ ̲ ( s , ω ) = p P 1 ω 1 ( p ) p s 1 , , p P 1 ω r ( p ) p s 1 .
The latter infinite products, for almost all ω j , converge uniformly on compact sets of the strip D [17]. Let
P ζ ̲ ( A ) = μ H ω Ω r : ζ ̲ ( s , ω ) A , A B ( Ω r ) ,
i.e., P ζ ̲ is the distribution of ζ ̲ ( s , ω ) . Now we state a limit theorem for P N , M , α ̲ .
Theorem 2. 
Suppose that 0 < α 1 < < α r 1 , and Ψ α ( N ) ( ( t N α ) ) 1 M N 1 . Then, P N , M , α ̲ N W P ζ ̲ .
Before the proof of Theorem 2, we prove several separate lemmas. First of them is devoted to the space Ω r . For A B ( Ω r ) , set
Q N , M , α ̲ ( A ) = 1 M + 1 # N k N + M : p i t k α 1 : p P , , p i t k α r : p P A .
Lemma 6. 
Suppose that 0 < α 1 < < α r 1 , and Ψ α ( N ) ( ( t N α ) ) 1 M N 1 . Then Q N , M , α ̲ N W μ H .
Proof. 
On groups, it is convenient to apply the Fourier transform method. Let F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) , k ̲ j = ( k j p : k j p Z , p P ) , j = 1 , , r , be the Fourier transform of Q N , M , α ̲ . It is well known that
F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) = Ω r j = 1 r p P * ω j k j p ( p ) d Q N , M , α ̲ ,
where the star “ ” shows that only a finite number of integers k j p are distinct from zero. Thus, the definition of Q N , M , α ̲ implies
F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) = 1 M + 1 k = N N + M j = 1 r p P * p i k j p t k α j = 1 M + 1 k = N N + M exp i j = 1 r t k α j p P * k j p log p .
Clearly,
F N , M , α ̲ ( 0 ̲ , , 0 ̲ ) = 1 ,
where 0 ̲ = ( 0 , , 0 , ) .
Now suppose that ( k ̲ 1 , , k ̲ r ) ( 0 ̲ , , 0 ̲ ) . Then there exists at least one j { 1 , , r } , such that k ̲ j 0 ̲ . Since the set { log p : p P } is linearly independent over the field of rational numbers,
a j = def p P * k j p log p 0
for such j. Let j 0 be the largest of j with a j 0 . Hence,
A α ̲ ( τ ) = def j = 1 r a j t τ α j = j = 1 j 0 a j t τ α j ,
and
A α ̲ ( τ ) = j = 1 j 0 a j ( t τ α j ) = j = 1 j 0 a j α j t τ α j 1 t τ ( 1 + o ( 1 ) ) = 2 π a j 0 α j 0 ( 2 π τ ) α j 0 1 ( log τ ) α j 0 ( 1 + o ( 1 ) ) , τ ,
in view of (2) and (3). For the estimation the sum (14), we apply a representation of trigonometric sums by integrals, see, for example, [18]. Suppose that the real-valued function g ( x ) has a monotonic derivative on [ a , b ] , such that | g ( x ) | ξ < 1 . Then,
a m b e 2 π i g ( m ) = a b e 2 π i g ( x ) d x + O 1 1 ξ .
Relation (16) shows that the function A α ̲ ( τ ) , for sufficiently large N, satisfies the above requirements on [ N , N + M ] . Thus, by (14) and (17),
F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) = 1 M + 1 N N + M exp { i A α ̲ ( τ ) } d τ + O 1 ( M + 1 ) ( 1 δ N ) ,
with
δ N = 4 π a j 0 α j 0 ( 2 π N ) α j 0 1 ( log N ) α j 0 .
Moreover, by the mean value theorem and (16),
N N + M cos ( A α ̲ ( τ ) ) d τ = N N + M 1 A α ̲ ( τ ) cos ( A α ̲ ( τ ) ) d A α ̲ ( τ ) α ̲ ( A α ̲ ( N + M ) ) α ̲ ( log ( N + M ) ) α j 0 ( N + M ) α j 0 1
and
N N + M sin ( A α ̲ ( τ ) ) d τ α ̲ ( log ( N + M ) ) α j 0 ( N + M ) α j 0 1
Therefore, by (18), for sufficiently large N,
F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) α ̲ 1 M N 1 α j 0 ( log N ) α j 0 α ̲ 1 M N 1 α 1 log N .
By the hypotheses for M and (2) and (3),
M α ̲ N α 1 / 3 + 1 α log N log N 26 / 15 ( log N ) α / 3 + α α ̲ N 1 ( 2 α / 3 ) ( log N ) b , b > 0 .
Hence, in view of (19),
F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) α ̲ N α / 3 ( log N ) 1 b .
This, together with (15), shows that
lim N F N , M , α ̲ ( k ̲ 1 , , k ̲ r ) = 1 if ( k ̲ 1 , , k ̲ r ) = ( 0 ̲ , , 0 ̲ ) , 0 if ( k ̲ 1 , , k ̲ r ) ( 0 ̲ , , 0 ̲ ) ,
and the lemma is proved because the right-hand side of the latter equality is the Fourier transform of the measure μ H . □
Lemma 6 implies the weak convergence for
P N , M , n , α ̲ ( A ) = 1 M + 1 # N k N + M : ζ ̲ n ( s + i t ̲ k α ̲ ) A , A B ( H r ( D ) ) ,
as N , where
ζ ̲ n ( s + i t ̲ k α ̲ ) = ( ζ n ( s + i t k α 1 ) , , ζ n ( s + i t k α r ) ) .
Define the mapping u n : Ω r H r ( D ) by
u n ( ω ) = ζ ̲ n ( s , ω )
with
ζ ̲ n ( s , ω ) = ( ζ n ( s , ω 1 ) , , ζ ( s , ω r ) )
and
ζ n ( s , ω j ) = m = 1 ω j ( m ) v n ( m ; κ ) m s , j = 1 , , r .
Then the measure μ H on ( Ω r , B ( Ω r ) ) defines the unique probability measure U n = μ H u n 1 on ( H r ( D ) , B ( H r ( D ) ) ) , where
μ H u n 1 ( A ) = μ H ( u n 1 A ) , A B ( H r ( D ) ) .
Lemma 7. 
Under hypotheses of Lemma 6, P N , M , n , α ̲ N W U n .
Proof. 
Since the series for ζ n ( s , ω j ) converges absolutely for σ 1 / 2 , the mapping u n is continuous. Moreover,
u n p i t k α 1 : p P , , p i t k α r : p P = ζ ̲ n ( s + i t ̲ k α ̲ ) .
Therefore,
P N , M , n , α ̲ ( A ) = 1 M + 1 # N k N + M : p i t k α 1 : p P , , p i t k α r : p P u n 1 A = Q N , M , α ̲ ( u n 1 A ) , A B ( H r ( D ) ) .
Thus, we have
P N , M , n , α ̲ = Q N , M , α ̲ u n 1 .
The latter equality, Lemma 6, the continuity of u n and the well-known property of preservation of the weak convergence, see, for example, Theorem 2.7 of [19], prove the lemma. □
The weak convergence of the measure U n is very important for that of P N , M , α ̲ . The following statement is true:
Lemma 8 
([10]). The relation U n n W P ζ ̲ holds.
To prove Theorem 2, we need one statement on convergence in distribution of random elements. Let X n , n N , and X be X -valued random elements. Recall that X n as n converges to X in distribution ( X n n D X ) if the distribution of X n converges weakly to the distribution of X.
Lemma 9 
([19]). Suppose that the space ( X , d ) is separable, and the X -valued random elements X m n and Y n , m , n N are defined on the same probability space ( Ω ^ , B ( Ω ^ ) , P ) . If
X m n n D X m , X m m D X ,
and for every δ > 0 ,
lim m lim sup n μ d ( X m n , Y n ) δ = 0 ,
then also Y n n D X .
Before the proof of Theorem 2, recall the metric in the space H r ( D ) . There exists a sequence { K l : l N } D of embedded compact subsets such that the union of the sets K l is the region D , and, for every compact set K D , there exists K l , K K l . Taking
d ( g 1 , g 2 ) = l = 1 2 l sup s K l | g 1 ( s ) g 2 ( s ) | 1 + sup s K l | g 1 ( s ) g 2 ( s ) | , g 1 , g 2 H ( D ) ,
gives a metric in H ( D ) inducing the topology of uniform convergence on compacta. Then,
d ̲ ( g ̲ 1 , g ̲ 2 ) = max 1 j r d ( g 1 j , g 2 j ) , g ̲ k = ( g k 1 , , g k r ) H r ( D ) , k = 1 , 2 ,
is a metric in H r ( D ) which induces its product topology.
Proof of Theorem 2. 
Denote by X n the H r ( D ) -valued random element with distribution U n . Then, by Lemma 8, we have
X n n D P ζ ̲ .
Let ξ N , M be a random variable on a certain probability space with measure P with the distribution
P { ξ N , M = k } = 1 M + 1 , k = N , , N + M .
Define two H r ( D ) -valued random elements
X N , M , n , α ̲ = X N , M , n , α ̲ ( s ) = ζ ̲ n ( s + i t ̲ ξ N , M α ̲ )
and
X N , M , α ̲ = X N , M , α ̲ ( s ) = ζ ̲ ( s + i t ̲ ξ N , M α ̲ ) .
Lemma 7 implies the relation
X N , M , n , α ̲ N D X n .
From the definitions of the metrics d and d ̲ , and Lemma 5, it follows that
lim n lim sup N 1 M + 1 k = N N + M ρ ̲ ζ ̲ ( s + i t ̲ k α ̲ ) , ζ ̲ n ( s + i t ̲ k α ̲ ) = 0 .
Therefore, the definitions of X N , M , n , α ̲ and X N , M , α ̲ , together with Chebyshev’s type inequality, give, for every δ > 0 ,
lim n lim sup N μ d ̲ ( X N , M , α ̲ , X N , M , n , α ̲ ) δ = lim n lim sup N 1 M + 1 # N k N + M : d ̲ ( ζ ̲ ( s + i t ̲ k α ̲ ) , ζ ̲ n ( s + i t ̲ k α ̲ ) ) δ 1 ( M + 1 ) δ k = N N + M d ̲ ( ζ ̲ ( s + i t ̲ k α ̲ ) , ζ ̲ n ( s + i t ̲ k α ̲ ) ) = 0 .
This, (20) and (21) show that all hypotheses of Lemma 9 are satisfied. Thus,
X N , M , α ̲ N D P ζ ̲ ,
and the theorem is proved. □

4. Main Theorem

The main result of the paper is the following theorem:
Theorem 3. 
Suppose that α 1 , , α r are different fixed positive numbers not exceeding 1, and Ψ α ( N ) ( ( t N α ) ) 1 M N 1 . For j = 1 , , r , let K j K and f j ( s ) H 0 ( K j ) . Then, for every ε > 0 ,
lim inf N 1 M + 1 # N k N + M : sup 1 j r sup s K j | ζ ( s + i t k α j ) f j ( s ) | < ε > 0 .
Moreover, the lower limit can be replaced by the limit for all but at most countably many ε > 0 .
Theorem 3 easily follows from Theorem 2 and the Mergelyan theorem on the approximation of analytic functions by polynomials [20].
Let P be a probability measure on ( X , B ( X ) ) , and the space X is separable. Recall that the support of the measure P is a minimal closed set S P X such that P ( S P ) = 1 . The set S P consists of all x X such that, for every open neighbourhood G of x, the inequality P ( G ) > 0 is satisfied. Let S = { g H ( D ) : g ( s ) 0 or g ( s ) 0 } , and
S r = S × × S r .
Lemma 10 
([10]). The support of the measure P ζ ̲ is the set S r .
Proof of Theorem 3. 
By the Mergelyan theorem, there exist polynomials q 1 ( s ) , , q r ( s ) such that
sup 1 j r sup s K j f j ( s ) e q j ( s ) < ε 2 .
Consider the set
G ε = g 1 , , g r H ( D ) : sup 1 j r sup s K j g j ( s ) e q j ( s ) < ε 2 .
In view of Lemma 10, ( e q 1 ( s ) , , e q r ( s ) ) is an element of the support of the measure P ζ ̲ . Therefore, G ε is an open neighbourhood of an element of the support, hence, we have
P ζ ̲ ( G ε ) > 0 .
From this, using Theorem 2 and the equivalent of weak convergence in terms of open sets, see, for example, Theorem 2.1 of [19], we find
lim inf N P N , M , α ̲ ( G ε ) P ζ ̲ ( G ε ) > 0 .
This, the definitions of P N , M , α ̲ and G ε , and inequality (22) prove the first assertion of the theorem.
To prove the second assertion of the theorem, define one more set
G ^ ε = ( g 1 , , g r ) H r ( D ) : sup 1 j r sup s K j g j ( s ) f j ( s ) < ε .
Then the boundaries G ^ ε 1 and G ^ ε 2 do not intersect for different positive ε 1 and ε 2 . Hence, the set G ^ ε is a continuity set of the measure P ζ ̲ , i.e., P ζ ̲ ( G ^ ε ) = 0 , for all but at most countably many ε > 0 . Therefore, by Theorem 2 and the equivalent of weak convergence in terms of continuity set, see, for example, Theorem 2.1 of [19], we have
lim N P N , M , α ̲ ( G ^ ε ) = P ζ ̲ ( G ^ ε )
for all but at most countably many ε > 0 . In view of (22), the inclusion G ε G ^ ε holds. Therefore, by (23), the inequality P ζ ̲ ( G ^ ε ) > 0 is valid. This, (24) and the definitions of P N , M , α ̲ and G ^ ε prove the second assertion of the theorem. □
Theorem 3 is stronger than Theorem 1 because the numbers k for which ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) has the approximating property of analytic functions lie in the interval of length M, which may be taken M = o ( N ) as N .

5. Conclusions

Let { t n } be a sequence of Gram points, and 0 < α 1 < < α r 1 fixed numbers. In this paper, it is obtained that the interval [ Ψ α 1 ( N ) ( ( t N α 1 ) ) 1 , N 1 ] with Ψ α 1 ( N ) = ( t N α 1 ) 1 / 3 ( log t N α 1 ) 26 / 15 contains infinitely many k N , such that the shifts ( ζ ( s + i t k α 1 ) , , ζ ( s + i t k α r ) ) approximate every collection ( f 1 ( s ) , , f r ( s ) ) of analytics in { s C : 1 / 2 < σ < 1 } non-vanishing functions.
The problems for future studies are the following:
1 To remove the requirement α r 1 ;
2 To decrease the lower bound for Ψ α 1 ( N ) .

Funding

This research received no external funding.

Data Availability Statement

Data is contained within the article.

Acknowledgments

The author thank the referees for useful remarks and comments.

Conflicts of Interest

The author declare no conflict of interest.

References

  1. Bitar, K.M.; Khuri, N.N.; Ren, H.C. Path integrals and Voronin’s theorem on the universality of the Riemann zeta-function. Ann. Phys. 1991, 211, 172–196. [Google Scholar] [CrossRef]
  2. Gutzwiller, M.C. Stochastic behavior in quantum scattering. Phys. D Nonlinear Phenom. 1983, 7, 341–355. [Google Scholar] [CrossRef]
  3. Trudgian, T.S. On the success and failure of Gram’s Law and the Rosser Rule. Acta Arith. 2011, 148, 225–256. [Google Scholar] [CrossRef]
  4. Laurinčikas, A. Joint approximation of analytic functions by shifts of the Riemann zeta-function twisted by the Gram function II. Axioms 2022, 11, 613. [Google Scholar] [CrossRef]
  5. Laurinčikas, A. Joint discrete approximation of analytic functions by shifts of the Riemann zeta-function twisted by Gram points. Mathematics 2023, 11, 565. [Google Scholar] [CrossRef]
  6. Voronin, S.M. Theorem on the “universality” of the Riemann zeta-function. Math. USSR Izv. 1975, 9, 443–453. [Google Scholar] [CrossRef]
  7. Karatsuba, A.A.; Voronin, S.M. The Riemann Zeta-Function; Walter de Gruiter: Berlin, Germany; New York, NY, USA, 1992. [Google Scholar]
  8. Matsumoto, K. A survey on the theory of universality for zeta and L-functions. In Number Theory: Plowing and Starring Through High Wave Forms, Proceedings of the 7th China-Japan Seminar, Fukuoka, Japan, 28 October–1 November 2013; Kaneko, M., Kanemitsu, S., Liu, J., Eds.; Series on Number Theory and its Applilication; World Scientific Publishing Co.: Hackensack, NJ, USA; London, UK; Singapore; Bejing, China; Shanghai, China; Hong Kong, China; Taipei, China; Chennai, Indian, 2015; pp. 95–144. [Google Scholar]
  9. Reich, A. Werteverteilung von Zetafunktionen. Arch. Math. 1980, 34, 440–451. [Google Scholar] [CrossRef]
  10. Korolev, M.; Laurinčikas, A. Joint approximation of analytic functions by shifts of the Riemann zeta-function twisted by the Gram function. Carpathian J. Math. 2023, 39, 175–187. [Google Scholar] [CrossRef]
  11. Gram, J.-P. Sur les zéros de la fonction ζ(s) de Riemann. Acta Math. 1903, 27, 289–304. [Google Scholar] [CrossRef]
  12. Korolev, M.A. Gram’s law in the theory of the Riemann zeta-function. Part 1. Proc. Steklov Inst. Math. 2016, 292, 1–146. [Google Scholar] [CrossRef]
  13. Korolev, M.A. Gram’s law in the theory of the Riemann zeta-function. Part 2. Proc. Steklov Inst. Math. 2016, 294, 1–78. [Google Scholar] [CrossRef]
  14. Lavrik, A.A. Titchmarsh problem in the discrete theory of the Riemann zeta-function. Proc. Steklov Inst. Math. 1995, 207, 179–209. [Google Scholar]
  15. Ivič, A. The Riemann Zeta-Function: The Theory of the Riemann Zeta-Function with Applications; John Wiley & Sons: New York, NY, USA, 1985. [Google Scholar]
  16. Montgomery, H.L. Topics in Multiplicative Number Theory; Lecture Notes Mathematics; Springer: Berlin/Heidelberg, Germany; New York, NY, USA, 1971; Volume 227. [Google Scholar]
  17. Laurinčikas, A. Limit Theorems for the Riemann Zeta-Function; Kluwer Academic Publishers: Dordrecht, The Netherlands; Boston, MA, USA; London, UK, 1996. [Google Scholar]
  18. Titchmarsh, E.C. The Theory of the Riemann Zeta-Function; Second edition revised by D.R. Heath-Brown; Clarendon Press: Oxford, UK, 1986. [Google Scholar]
  19. Billingsley, P. Convergence of Probability Measures, 2nd ed.; John Wiley & Sons: New York, NY, USA, 1999. [Google Scholar]
  20. Mergelyan, S.N. Uniform approximations to functions of a complex variable. In American Mathematical Society Translations, No. 101; American Mathematical Society: Providence, RI, USA, 1954. [Google Scholar]
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Laurinčikas, A. Joint Discrete Approximation of Analytic Functions by Shifts of the Riemann Zeta Function Twisted by Gram Points II. Axioms 2023, 12, 426. https://doi.org/10.3390/axioms12050426

AMA Style

Laurinčikas A. Joint Discrete Approximation of Analytic Functions by Shifts of the Riemann Zeta Function Twisted by Gram Points II. Axioms. 2023; 12(5):426. https://doi.org/10.3390/axioms12050426

Chicago/Turabian Style

Laurinčikas, Antanas. 2023. "Joint Discrete Approximation of Analytic Functions by Shifts of the Riemann Zeta Function Twisted by Gram Points II" Axioms 12, no. 5: 426. https://doi.org/10.3390/axioms12050426

APA Style

Laurinčikas, A. (2023). Joint Discrete Approximation of Analytic Functions by Shifts of the Riemann Zeta Function Twisted by Gram Points II. Axioms, 12(5), 426. https://doi.org/10.3390/axioms12050426

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop