1. Introduction
The notion of convexity plays an important role in many areas of mathematics, especially in analysis, optimization and inequality theory. Convex functions possess a number of useful properties which make them suitable for studying various analytical and functional problems. Because of their simple geometric interpretation and wide applicability, convexity methods are frequently used in the derivation of different inequalities and estimates.
A function
is said to be convex if
for all
and
.
Inequalities related to convex functions have been studied extensively and have found applications in mathematical analysis, probability theory and optimization. Among the most important results in this area, an essential tool in the study of convex functions is the Jensen inequality
which holds for every convex function
, every vector
and every nonnegative
-tuple
satisfying
where
Jensen’s inequality is important because it allows us to compare the value of a convex function at an average point with the average of the values of that function. This is why it has many applications in mathematical evaluations and proofs. Since it is very flexible and can be used in various areas of mathematics, numerous upgrades and extensions have been developed. Today, Jensen’s inequalities play an important role in inequality theory, especially in the study of means, optimization and variational methods.
The geometric structure of convex functions also leads naturally to various reflected and generalized forms of Jensen’s inequality. Among them, particular attention has been devoted to the Jensen-Mercer inequality, introduced by A. McD. Mercer in [
1]. This inequality may be viewed as a reflected counterpart of the classical Jensen inequality and is based on the transformation
.
More precisely, for a convex function
, numbers
with
a vector
and a nonnegative
-tuple
such that
and
the Jensen-Mercer inequality states that
The reflected form appearing in Jensen-Mercer inequalities allows a finer control of endpoint contributions than the classical Jensen framework. This becomes particularly effective in the strongly convex setting, a stronger form of convexity.
A function
is called strongly convex with modulus
if
for all
and
Strong convexity may be viewed as a natural strengthening of ordinary convexity obtained by adding a quadratic correction term to the defining inequality. This additional term allows better control of the function and often leads to stronger versions of classical inequalities. For this reason, many results involving convex functions have been extended to the strongly convex setting. Strong convexity concept provides sharper estimates in various optimization problems. Together with ordinary convex functions, they are being increasingly studied and applied in the recent literature because of their useful analytical properties.
Throughout the paper, the notation means that is strongly convex on with modulus .
Every strongly convex function is necessarily convex, while the converse statement is generally false. Several useful characterizations of strong convexity are summarized in the following lemmas (see [
5,
15,
16]).
Lemma 1.
The function if and only if the mapping defined by is convex.
Lemma 2.
Suppose that is twice differentiable. Then if and only if for every .
In
Section 3, we focus in particular on the following example of strongly convex functions.
Example 1.
Let , where and . Since
Lemma 2, implies that the modulus of strong convexity is determined by
with the explicit representation
Consequently, one may choose
Strongly convex functions satisfy the strengthened Jensen inequality
For
, inequality (
5) becomes the classical Jensen inequality (
2). This means that strong convexity can be seen as a stronger version of ordinary convexity because of the additional quadratic term. Moreover, for
, the difference between the two sides of (
5) can be written as
In the special case
, we obtain
The quantities and measure the deviation from linear behavior at the midpoint and naturally arise in refined forms of Jensen type inequalities. Their nonnegativity follows directly from Jensen’s inequality for strongly convex and convex functions, respectively.
Both Jensen’s inequality (
2) and the Jensen–Mercer inequality (
3) can be extended to positive linear functionals, which gives a useful framework for deriving different functional inequalities. Let
L be a linear class of real-valued functions defined on a nonempty set
T, containing the unit function
where
for every
. We consider a positive normalized linear functional
(briefly,
) characterized by the following properties:
for all and
if and for all then , together with the normalization condition
This functional approach connects discrete, integral and probabilistic versions of Jensen type inequalities within one general framework. In particular, if
,
is continuous and convex on
, and
with
, then Jessen’s inequality has the form
Conversely, the associated converse Jessen inequality provides the estimate
Hence, inequalities (
8) and (
9) together yield two-sided bounds for the quantity
which measures the deviation from equality in Jensen’s inequality.
The corresponding functional Jensen–Mercer inequality is given by
and is based on the reflected transformation
This reflected form gives estimates that complement those obtained from the classical Jensen inequality.
For the purposes of several results below, we additionally assume that L is a lattice, meaning that:
if then and
We will explicitly emphasize when L is assumed to be a lattice, whenever this property is required.
Remark 1.
The ordered space equipped with the pointwise order, forms a lattice. Moreover, a subspace is a lattice if and only if implies . Indeed, for every the positive and negative parts and are determined through lattice operations, where for while In addition, the lattice operations can be represented by
In recent years, numerous strengthened and refined forms of the Jensen-Mercer inequality have been investigated, especially in the setting of positive linear functionals. Special attention has been given to improvements of Jessen’s inequality and its converse obtained through Jensen-Mercer type methods. One important improvement was proved in [
2], and is stated below,
and holds for all continuous convex function
and
such that
A key example of improvement is another sharp Jessen-Mercer type inequalities [
3],
with
valid for all continuous convex function
on lattice
L and
such that
Both inequalities (
11) and (
12) provide the intermediate bounds for the Jessen-Mercer inequality (
10).
The classical Jessen (
8) and the converse Jessen inequality (
9) can be further sharpened by virtue of the stronger properties of strongly convex functions. The first refinement results were obtained in the paper [
4]. Subsequently, exploiting the stronger structure of strongly convex functions, further refinements of Jessen’s and converse Jessen’s inequalities were established more recent in [
5], which we cite and present here.
Let
be an open interval,
and
Further, let
such that
Then the following refinement holds:
In the same paper [
5], the improvement of the converse Jessen inequality (
9) was proved. Let
be an open interval,
with
and
Assume that
on a lattice
with values in
such that
Then
where
is defined by
and
Specially for
inequality (
15) reduces to
where
and
are given by (
17), (
16), respectively.
Remark 2.
That enables as to write (15) in the equivalent forms
Finally, we mention another important result from the paper [
5]. For
where
is an open interval,
and
we have
In the following remark, we present some key derivations and conclusions that we use in the proofs of the new refinements.
Remark 3.
i.e. inequality (23) is equivalent to
The growing number of recent studies highlights the significant role and wide applicability of Jensen’s inequality in various areas of mathematics and optimization. In 2009, M. A. Khan [
6] developed improved forms of Jensen’s inequality for convex and monotone functions. Their work also included several applications to different types of means, and they further investigated related Jensen-type inequalities along with applications involving the Cauchy mean. Jensen’s inequality has been improved in a number of ways to increase its range of applications and provide more accurate bounds. D. Choi [
7] proposed a method based on linear interpolation to improve Jensen-type inequalities for convex and piecewise convex functions. Their results also produced refinements of Young-type and matrix inequalities. In 2015, Matković et al.[
8] improved the Jessen-Mercer inequality, provided generalizations for convex functions, and introduced a method for constructing exponentially convex functions. In addition, several mean value theorems were established and applied to study Stolarsky-type means using Jessen-Mercer differences. The generalization of Jensen-type inequalities to broader convexity classes has resulted in new findings with significant applications in integral and functional analysis. In this direction, S. S. Dragomir (2018) [
9] derived several Lebesgue integral Jensen-type inequalities for convex functions defined on real intervals, thereby further enriching the theory of integral inequalities in generalized convex settings. Operator variants of Jensen’s inequality have also received considerable attention. M. S. Hosseini [
10] studied operator Jensen’s inequalities and established a new general form along with its reverse version for convex functions that are not necessarily operator convex. In 2023, S. I. Bradanović [
5] used strongly convex functions to improve Jessen’s and Jensen’s inequalities, including their converses and interpolating forms. These improved inequalities were then applied to define and study strongly
f-divergences. As a result, stronger bounds were obtained for well-known divergences such as Kullback-Leibler,
Hellinger, Bhattacharyya, and Jeffreys distances. In 2025, Dragomir et al. [
11] presented key characterizations of the generalized
-convex functions and used these results to establish majorization-type inequalities, leading to improved estimates for several classical mean inequalities.
The main objective of this paper is to establish new refinements of the Jessen-Mercer inequality and its converse by employing the class of strongly convex functions. More precisely, recent improvements of the Jessen (
14) and converse Jessen inequalities (
15), together with the newly established structural characterization of strong convexity (
24), enable us to derive sharper Jessen-Mercer type inequalities that improve inequalities (
11) and (
12). Furthermore, our main results lead to improved integral and probabilistic inequalities of Jensen-Mercer type, as well as to inequalities involving generalized logarithmic means and their special cases.
Our exposition is structured as follows. In
Section 2, we establish the main results concerning new refinements of the Jessen-Mercer inequality and its converse for strongly convex functions. In doing so, we also clarify how these results relate to the classical Jensen framework.
Section 3 is devoted to applications in the integral setting, where we derive inequalities improving several recent results from [
12]. As particular cases, we obtain new estimates for generalized logarithmic means. Finally, in the last section, we formulate probabilistic counterparts of the obtained inequalities. These results refine and extend several previously published inequalities from [
4,
13] and [
14].