1. Introduction
Recall that the Jensen functional
is defined on an interval
by
where
,
and
, is a positive weight sequence.
If
is a convex function on
I, then the inequality
holds for each
and any positive weight sequence
p.
Jensen’s inequality plays a fundamental role in many parts of mathematical analysis and applications. For example, well known
inequality, Hölder’s inequality, Ky Fan inequality, etc., are proven by the help of Jensen’s inequality (cf. [
1,
2,
3,
4]).
Assuming that
, our aim in this paper is to determine some sharp bounds for the generalized Jensen functional
for suitably chosen functions
and
h, such that
i.e., the bounds which does not depend on
p or
x, but only on
and functions
and
h.
Our global bounds will be entirely presented in terms of elementary means.
Recall that the
mean is a map
, with a property
for each
.
In order to make our results condensed and applicable, we shall use in the sequel the class of so-called Stolarsky (or extended) two-parametric mean values, defined for positive values of
by the following:
In this form, it was introduced by Keneth Stolarsky in [
5].
Most of the classical two variable means are just special cases of the class E.
For example,
is the arithmetic mean;
is the geometric mean;
is the logarithmic mean;
is the identric mean, etc.
More generally, the
r-th power mean
is equal to
.
Theory of Stolarsky means is very well developed, cf. [
6,
7] and references therein.
Some basic properties are listed in the following:
Means are
a. symmetric in both parameters, i.e., ;
b. symmetric in both variables, i.e., ;
c. homogeneous of order one, that is ;
d. monotone increasing in either r or s;
e. monotone increasing in either x or y; and
f. logarithmically convex in either r or s for and logarithmically concave for .
Let
be a continuous and strictly monotone function on an interval
. Then, its inverse function
exists and generates so-called
mean
, given by
where
and
is a positive weight sequence.
Quasi-arithmetic means are introduced in [
1] and then investigated by a plenty of researchers with most interesting results (cf. [
8]). In this article, we shall give tight two-sided bounds for the difference
An important special case is the class of generalized power means
, generated by
,
It is well known fact that power means are monotone increasing in
(cf. [
1]).
Some important particular cases are
that is, the generalized harmonic, geometric and arithmetic means, respectively.
Therefore,
represents the celebrated
inequalities.
Some converses of these inequalities will be given in this paper.
For arbitrary positive sequences
a and
b and real numbers
with
, the celebrated Hölder’s inequalities says that
and
We shall give in the sequel precise estimations of the difference
and the quotient
that is,
for
.
2. Results and Proofs
Our main result concerning the generalized Jensen functional is given by the following:
Theorem 1. Let be continuous and eventually differentiable functions on their domains.
For , let h be convex on I and f be an increasing function on J.
Both bounds and are sharp.
Proof. Since , there exist non-negative numbers , such that .
Hence,
where we denoted
.
The above estimate is valid for arbitrary sequences
p and
x. To prove its sharpness, suppose that the maxima is reached at the point
, i.e.,
On the other hand, since
h is a convex function on
I, by Jensen’s inequality we get
Because
f is an increasing function, it follows that
A simple analysis of the constant reveals the next: if minima of the function exists for , then , taken for .
Otherwise, we have that .
Those results are evidently sharp, since
with
or
, respectively. □
Theorem 1 with its variants (a decreasing function f, concave function h) is the source of a plenty of interesting inequalities. Further investigations are left to the reader.
Sometimes, it is a difficult problem to evaluate exact maxima in this theorem.
For this cause, we shall give in the sequel two estimations of with the unique maxima, which could be easily calculated.
Theorem 2. Under the conditions of Theorem 1, assume firstly that f is a convex function on J. Then, Assuming that is a concave function, we obtain Now, both maxima can be easily determined by the standard technique.
Proof. By Theorem 1, we know that there exists
such that
If additionally
f is convex on
J, then
Similarly, if
is a concave function on
J, we have
and
□
An important special case is the converse of Jensen’s inequality.
Theorem 3. Let ϕ be a convex function on and, for , let .
If ϕ is a concave function, then The constant is sharp since there exist sequences such that Proof. This is a simple consequence of Theorem 1 obtained for . If is a concave function, then is convex and the proof follows from the first part of this theorem. □
In this case, the bound can be explicitly calculated.
Theorem 4. For a differentiable convex mapping ϕ, we have thatwhere is the Lagrange mean value of numbers ξ and η, defined by The function is positive and symmetric, i.e., and .
Proof. If the maximum is taken at the point
, by the standard technique we get
that is,
□
Now, some important inequalities concerning quasi-arithmetic mean can be easily obtained from Theorem 1 by putting . Nevertheless, in order to avoid unnecessary monotonicity issues, we turn another way.
Our main result is contained in the following:
Theorem 5. For , let be continuous and strictly monotone function and assume that is convex. Then,where the constant is defined in Theorems 3 and 4. If is a concave function, then Proof. We shall give a simple proof of this theorem.
Namely, since
is a convex function, applying the first part of Theorem 3 with
, we obtain
Now, by changing variables , we get and .
Hence,
or
depending on the monotonicity of
h. However, since
is symmetric in variables, we finally get
The second part of this theorem can be proved along the same lines. □
The most striking example of quasi-arithmetic means is the class of generalized power means
, generated by
, i.e.,
As an application of Theorem 5, we shall estimate the difference .
Theorem 6. Let .
Proof. Let .
If
then
is a concave function on
. Hence, by the second part of Theorem 5, we get
Applying the result from Theorem 4, a simple calculation gives
In cases or , one should apply the first part of Theorem 5, since is convex on . Proceeding as above, the result follows. □
As a consequence, we obtain some converses of the inequality.
Corollary 1. Let .
Corollary 2. Let .
The sequences p and x in Theorem 6 are arbitrary. Specializing a little bit, we obtain sharp converses of slightly generalized Hölder’s inequalities.
Theorem 7. Let be any sequences of positive real numbers with for some constants and for some .
Then,withand ;whereand . Proof. Changing variables
yields
Now, applying Theorem 6 for
, we get
and the result clearly follows by multiplying both sides with
.
Applying the same procedure in the case , we obtain the second part of this theorem. □
Finally, we prove another sharp converses of Hölder’s inequalities. For this cause, we shall estimate firstly the expression
Lemma 1. Let for some .
If , we haveandfor . Proof. Following the method from the proof of Theorem 1, we get
If , then also , hence the function is convex.
Therefore,
and
where we put
Therefore, it follows that
By the standard technique we obtain that this maxima satisfy the equation
that is,
Therefore,
and we finally obtain
On the other hand, by the monotonicity in
s of
, we get
since
.
In the case
, we have that
. Therefore,
and
since
.
Additionally, , hence is a convex function.
However, because the exponent
is negative in this case, we obtain
Therefore, we get
and, proceeding as above, the second part of this theorem follows. □
We are now able to formulate our main result.
Theorem 8. Let be arbitrary sequences of positive numbers with for some constants and .
For , we haveandfor . Proof. Changing variables
we get
and
Now, an application of Lemma 1 gives the result. □