1. Introduction
Let
be a complex variable. One of the most important objects of the classical analytic number theory is the Riemann zeta-function
, which is defined, for
, by the Dirichlet series
Moreover, the function
has analytic continuation to the region
, and the point
is its simple pole with residue 1. The first value distribution results for
with real
s were obtained by Euler. Riemann was the first mathematician who began to study [
1]
with complex variables, proved the functional equation for
, obtained its analytic continuation, proposed a means of using
for the investigation of the asymptotic prime number distribution law
and stated some hypotheses on
. The most important hypothesis, now called the Riemann hypothesis, states that all zeros of
in the region
are located on the line
. Riemann’s ideas concerning
were correct, and Hadamard [
2] and de la Vallée Poussin [
3], using them, independently proved that
However, the Riemann hypothesis remains open at present; it is among the seven Millennium Problems of mathematics [
4]. In the theory of
, there are other important problems. One of them is connected to the asymptotics of moments
as
. For example, at the moment the asymptotics of
,
is known only for
and
; see [
5]. For the investigation of
, Motohashi proposed (see [
6,
7]) to use the modified Mellin transforms
Let
be a certain function, e.g.,
, and
Then, using the Mellin inverse formula leads to the following equality (see [
8]):
with a certain
. This shows that a suitable choice of the function
reduces investigations of
to those of properties of
. The latter assertion inspired the creation of the analytic theory of the functions
.
In this paper, we limit ourselves to the probabilistic value distribution of the function only. Before this, we recall some known results of the function .
Let
denote the Euler constant and
be defined by
Moreover, let
The analytic behavior of the function
was described in [
9] and forms the following theorem.
Theorem 1 ([
9])
. The function is analytically continuable to the region , except the point , which is a double pole, and Moreover, the estimatesandare valid. Here and in what follows, is an arbitrary fixed positive number that is not always the same, and the notation , , , means that there is a constant such that .
In [
10], Bohr proposed to characterize the asymptotic behavior of the Riemann zeta-function by using a probabilistic approach. This idea is acceptable because the value distribution of
is quite chaotic. Denote by
the Jordan measure of the set
. Then, Bohr, jointly with Jessen, roughly speaking, obtained in [
11,
12] that, for
and every rectangle
with edges parallel to the axes, there exists a limit
In modern terminology, the Bohr–Jessen theorem is stated as a limit theorem on weakly convergent probability measures. Let
stand for the Borel
-field of the space
(in general, topological), and let
,
, and
P be probability measures defined on
. By this definition,
converges weakly to
P as
(
) if
for every real continuous bounded function
g on
. Let
stand for the Lebesgue measure of a measurable set
. Then, the modern version of the Bohr–Jessen theorem is of the following form: for every fixed
, there exists a probability measure
on
such that
converges weakly to
as
.
The first probabilistic limit theorems for the function
were discussed in [
13]. For
, set
Assuming that
, it was obtained that there is a probability measure
on
such that
. On the other hand, for every
, we have
This, together with Theorem 1, implies that, for
,
The latter equality remains valid also for
. Thus, the limit measure
is degenerated at the point
. In order to avoid this situation, we propose to consider
with a certain function
. Moreover, it is more convenient to deal with
because, in this case, additional restrictions for
with
are not needed.
Denote
We suppose that
is a positive increasing to
differentiable function with a monotonically decreasing derivative, such that
The class of such functions
is denoted by
. Consider the weak convergence for
In this case, we have, by
, that
and
for
. Thus, we cannot claim that the limit measure for
is degenerated at zero.
Now, we state a limit theorem for .
Theorem 2. Assume that is a given fixed number, and . Then, on , there exists a probability measure such that .
In virtue of Theorem 1, we see that
with certain
. Take
,
,
. Then,
is decreasing, and
if we choose
This shows that
is an element of the class
.
Theorem 2 shows that the asymptotic behavior of the function
on vertical lines is governed by a certain probabilistic law, and this confirms the chaos in its value distribution. Moreover, Theorem 2 is an example of the application of probability methods in analysis. Thus, it continues a tradition initiated in works [
11,
12] and developed by Selberg [
14], Joyner [
15], Bagchi [
16], Korolev [
17,
18], Kowalski [
19], Lamzouri, Lester and Radziwill [
20,
21], Steuding [
22], and others; see also a survey paper [
23]. We note that a generalization of Theorem 2 for the functional spaces can be applied for approximation problems of some classes of functions.
We divide the proof of Theorem 2 into several parts. First, we discuss weak convergence on a certain group. The second part is devoted to the case related to a integral. Further, we consider a measure defined by an absolutely convergent improper integral. In the last part, Theorem 2 is proven. For proofs of all assertions on weak convergence, the notions of relative compactness as well as of tightness and convergence in distribution are employed.
2. Fourier Transform Method
Let
be a fixed finite number, and
The Cartesian product
consists of all functions
. On
, the product topology and operation of pointwise multiplication can be defined. This reduces
to a compact topological group. We will give a limit lemma for probability measures on
.
Lemma 1. Suppose that the function has a monotonically decreasing derivative such thatThen converges weakly to a certain probability measure as . Proof. We use the Fourier transform approach. Denote the elements of
by
. Then, the Fourier transform
,
of the measure
is the integral
where only a finite number of integers
are not zeros. Therefore, the definition of
yields
For brevity, let
. Then, the second mean value theorem, (
4), and (
3) give
provided that
. Clearly, the same estimate holds for
. Hence, for
,
Obviously,
if
. This and (
5) show that
where
is a probability measure on
defined by the Fourier transform
□
Now, we will apply Lemma 1 for the measure defined by means of a certain finite sum.
Let
be a fixed number, and, for
,
Moreover, we use the notation
. Consider the
nth integral sum
where
and
.
For
, set
For simplicity, here and in the following, we omit the dependence on
of some objects. Before the statement of the limit lemma for
, we will present some lower estimates for the mean square
. For this, we will apply the following general lemma from [
8]. Let
be the modified Mellin transform of
, i.e.,
Lemma 2 ([
8], Lemma 5)
. Let be a real-valued function such that has analytic continuation to the half-plane , except for a pole of order l at the point ;
For , is of polynomial growth in .
Then, for and any fixed , Lemma 3. For , and any , the estimateholds.
Proof. As usual, denote by
,
, the Hardy function, i.e.,
where
It is well known that
is a real-valued function satisfying
. Moreover, the estimate [
8]
holds. Take
. Then, we have
In view of Theorem 1 and (
6), the function satisfies the hypotheses of Lemma 1 with
. Thus, for
,
Since [
5]
and
this implies
Consequently,
□
Lemma 4. Assume that is a given fixed number, and . Then, on , there exists a probability measure such that .
Proof. Lemma 3 implies that, for
,
as
. Therefore, if
, then
as
. Thus, the application of Lemma 1 is possible.
Consider the mapping
defined by
Since the latter sum is finite, and
is equipped with the product topology, the mapping
is continuous. Moreover, in view of (
7),
Hence, for
,
where
is from Lemma 1. The continuity of the mapping
implies its
-measurability. Therefore, the mapping
and any probability measure
P on
define the unique probability measure
on
given by
See Section 2 of [
24]. Thus, by (
8), we have
. Therefore, Lemma 1, the continuity of
, and the principle of the preservation of week convergence under continuity mappings (Theorem 5.1 of [
24]) show that
where
, and
is the limit measure in Lemma 1. □
3. Limit Lemma for Integral
Denote
and, for
, set
In this section, we will prove the weak convergence for
as
. Before this, we recall some known probabilistic results. Let
be a certain family of probability measures on
. The family
is called tight if, for every
, there is a compact set
such that
for all
. The family
is said to be relatively compact if every sequence contains a subsequence weakly convergent to a certain probability measure on
. The Prokhorov theorem connects two above notions, and, for convenience, we state it as the following lemma.
Lemma 5. If a family of probability measures is tight, then it is relatively compact.
The proof of the lemma is given in [
24], Theorem 5.1.
Moreover, we recall one useful property on convergence in distribution. Let
and
be
-valued random elements defined on the probability space
with distributions
and
P, respectively. Then,
converges in distribution to
as
(
) if
Now, we state a lemma on convergence in distribution.
Lemma 6. Assume that the metric space is separable, and , are -valued random elements defined on the same probability space . LetandIf, for every ,then The lemma is proven in [
24], Theorem 3.2.
Lemma 7. Assume that is a given fixed number, and . Then, on , there exists a probability measure such that .
Proof. First, we will show that is close in a certain sense to .
Let
Clearly,
We have
Since
and the same bound is true for the imaginary part of the latter integral, we obtain by (
10) that
Reasoning similarly, we find
Thus,
By (
9),
Therefore, (
11) and (
13) yield
Now, we will deal with the sequence
. By (
12), we have
because
Take a random variable
given on the probability space
that is uniformly distributed on
. Consider the complex-valued random variables
and
with the distribution
. Then, rewrite the assertion of Lemma 4 in the form
Fix
. Then, in view of (
15) and (
16),
The set
is compact in
. Moreover, by (
17),
for all
. This and the definition of
show that, for all
,
This means that the sequence
is tight. Therefore, by Lemma 5, it is relatively compact. Hence, there exists a subsequence
and a probability measure
on
such that
. In other words,
This, (
16), and (
14) show that all hypotheses of Lemma 6 for
,
and
are satisfied. Thus, we have
which proves the lemma. □