1. Introduction
We use the notation
for the norm of a linear operator from the sequence space
to itself. Several references have addressed the problem of finding the norm and lower bound of operators on matrix domains [
1,
2,
3,
4,
5,
6,
7]. Our study considers infinite matrices
, where all the indices
j and
k are non-negative.
Definition 1 (Hilbert matrix)
. If n is a non-negative integer, we define the Hilbert matrix of order n, , as follows: In the case of , is the well-known Hilbert matrix, which was introduced by David Hilbert in 1894. According to [8] theorem 323, the Hilbert matrix is a bounded operator on and
where is the conjugate of p, i.e., . Definition 2 (Hausdorff matrices)
. One of the best examples of summability matrices is , which is defined aswhere μ is a probability measure on . Even though it is a difficult task to obtain the -norm of operators, the Hausdorff matrices can be computed using Hardy’s formula [9], Theorem 216, which states that this matrix is a bounded operator on , if and only if Hausdorff operators have the interesting norm-separating property.
Theorem 1 ([
7], Theorem 9)
. Let and , and be Hausdorff matrices such that . Then, is bounded on if and only if both and are bounded on . Moreover, we have For comprehensive information about the Hausdorff matrices, the enthusiastic reader can refer to [
10,
11].
Several famous matrices have been derived from the Hausdorff matrix. For positive integer n, the following are the two classes.
Definition 3 (Cesàro matrix)
. The measure gives the Cesàro matrix of order n, , for which Note that
, where
I is the identity matrix, and
is the classical Cesàro matrix. According to (
1),
has the
-norm
which for the famous Cesàro matrix that is
.
Definition 4 (Gamma matrix)
. The measure gives the Gamma matrix of order n, , for which Hence, by Hardy’s formula,
has the
-norm
You should note that is the classical Cesàro matrix C.
A well-known property of Hausdorff means is that products are determined by the diagonal elements. Specifically, if A, B, and C are Hausdorff means and
for all
j, then
. (This is proved in [
9], Section 11.3, though in different notation.) The following result is also known from [
9]:
Theorem 2. , hence for , where .
Proof. The diagonal elements of
are
Hence, the stated identity. □
The following result is known as the Hellinger–Toeplitz theorem.
Theorem 3 ([
1], Proposition 7.2)
. Let . The matrix M maps into if and only if the transposed matrix, , maps into . Then, we have As an example of the Hellinger–Toeplitz theorem, the transposed Cesàro matrix of order
n has the
-norm
Motivation. Hilbert operators are used in a wide range of fields including approximation theory, cryptography, image processing, functional analysis, representation theory, and noncommutative geometry. The estimates of the norm of this operator and the study of its properties in various spaces are of considerable interest and have a long history. Recently, ref. [
12] has introduced some classes of Hilbert’s commutators mostly based on Cesàro and Gamma matrices. In this study, we establish the
norm of these operators.
For non-negative integers
and
k, let us define the matrix
by
where the
function is
where
H represents Hilbert’s matrix.
We need the following lemma before we can discuss the Hilbert operator’s commutants, which reveals the relationship between the Hilbert operator and the Cesàro and Gamma matrices.
Lemma 1 (Lemmas 2.3 and 3.1 of [
13,
14])
. Hilbert matrices satisfy the following identities for positive integer n:where and are the Cesàro and Gamma matrices of order n and is the matrix, which was defined earlier.
Commutants of the infinite Hilbert operator. Assume that
n is a non-negative integer, and define the symmetric matrix as follows:
and for
In [
12] Theorems 11.2.2 and 11.2.4, the author has proved that the above matrices are commutants of Hilbert operators. We present those theorems with their proofs.
Theorem 4. The operators and are commutants of H.
Proof. By applying Lemma 1 twice, we have
It can easily be seen from Lemma 1 that
. Now,
□
Theorem 5. The operators , , and are commutants of the Hilbert operator of order n.
Proof. By applying Lemma 1 twice, we have
Additionally, applying Lemma 1 results in
The proof of the other items is similar. □
3. Proof of Theorems
In this section, we focus on proving our claims, but first, we need the following lemmas.
Lemma 2. For the Hilbert operator, we have .
Proof. Let H be the Hilbert operator with matrix entries , and write . It is well known that for . Here, we show that and (so that equality holds in both cases). The same statements hold for the alternative Hilbert operator with matrix entries .
Choose
r with
, and let
for
. Let
and
. Then,
Informally,
is approximately
, so
is approximately
. For
, we have
, hence
. Hence,
so,
while
. Now, let
from above. Then,
, while
. Hence,
tends to
.
We now turn to . We require the following:
Let
for
. Then,
where
. By (
2),
, so
Write
: this is convergent for
. Then,
When from above, tends to the finite limit . So tends to . □
Lemma 3. For the Hilbert operator of order n, we have .
Proof. With
x and
z as defined in the previous lemma, it shows that, given
, there exists
such that if
, then
. Now, let
and
. Then,
. We show that for
r close enough to
,
. Now, for any
,
Hence,
since
. Meanwhile,
as
. Hence, for
r close enough to
,
, as required. □
Proof of Theorem 6. We first compute the
-norm of
. Obviously,
According to the Lemma 2, we also have
, which results in
Now, regarding the identity
and Lemma 1,
Hence,
which completes the proof.
For computing the norm of
, we suppose that
. The other case
has a similar proof. In this case, regarding Lemma 1 and Theorem 2, we have
However, by applying Lemma 3,
which shows
The other side of the above inequality is obvious, so the proof is complete. □
Proof of Theorem 7. First,
. From the definition and relation
, we have
so
. By Theorem 6 and
hence
.
Similarly, using and Theorem 6. □
Proof of Theorem 8. Using the identities
, we obtain
. Reasoning as in the proof of Theorem 6, we obtain
hence equality. Similarly,
. □