1. Introduction
The best approximation theory is very important in nonlinear optimization theory, nonlinear analysis, game theory, image processing, and signal processing. Various aspects of the best approximation theory such as the existence, the Chebyshev problem, the continuity, the monotonicity, the derivability, etc., have attracted tremendous attention from many authors in recent years. In [
1], Isac and Németh introduced the monotonicity of the metric projections onto cones and the new partial ordering approach in Euclidean spaces. In [
2], by the lattice operator, the monotonicity of the set-valved metric projection was shown in Hilbert lattice. Later in [
3,
4], based on generalizing the lattice operator, the monotonicity of best approximants was extended in ordered Hilbert spaces. Recently, in [
5,
6], new extensions of the best monotone approximation property for general Banach spaces have been introduced and were used to resolve variational inequalities. In [
7], the existence of the best monotone approximants on nonconvex sets in normed spaces was given. In [
8], the best monotone approximants in the space
were introduced. In [
9], Marano and Quesada researched the best monotone approximants in
for a general function
. More generally, in the space
, Landers and Rogge showed the monotonicity of the best approximation operator in [
10]. In [
11], the extended best constant approximant operator over the Orlicz space
was constructed by Favier and Zo. In [
12], in the space
(
), characterizing the best monotone approximations was established by a certain class of subcones. In [
13,
14], monotonicity was proposed in quasi-normed Orlicz and F-normed Musielak–Orlicz spaces, respectively.
Since the Banach function space theory was introduced by Luxemburg in [
15], it has been an active research topic in mathematics and played an important role in operator theory, space theory, harmonic analysis, best approximation theory, and other branches of mathematical analysis. In [
16], characterisations of separability for quasi-Banach function spaces over the Euclidean space were researched. As the special class of Banach function spaces, Lorentz introduced Lorentz spaces
in [
17], while
was first shown in [
18]. Lorentz spaces and their different generalizations such as
, the Orlicz–Lorentz spaces
, etc., play an important role in the Banach space theory. In [
19,
20], characterizations of the best constant approximants were deduced and the monotonicity of the best constant approximation operator in Lorentz spaces
was constructed. In [
21], the best monotone approximants were studied in general Banach spaces endowed with extended partial orders. In the same spirit as in [
11], the extensions of the best constant approximants in Orlicz–Lorentz spaces
were studied. Refs. [
22,
23], Levis, Cuenya, and Priori investigated the best approximants in
with the Orlicz function
and the weight function
. In [
24], the variable exponent Lorentz spaces were introduced and their basic characterizations were researched. In [
25,
26], the best dominated approximation problem for
was considered by the order continuity, where
K is a sublattice. Very recently, in [
27,
28], the local geometry (
points,
points, strict
K-monotonicity, and local uniform rotundity) of the Banach function space and
were discussed, and as an application, the solvability theorems of the best dominated approximation problem for
were proved by property
.
In this paper, we aim to study the existence and monotonicity properties of the metric projection operator as the extension of the best constant approximant operator in Lorentz spaces and Banach function spaces and apply them to solve the best proximity point problems in by partial ordering methods. The motivation is the difficulties in finding more points to satisfy the monotonicity of the metric projection and constructing the increasing sequence to converge to the best proximity point under some geometry and order assumptions. This paper shows the following four highlights. Firstly, using property , we obtain the existence and monotonicity of the metric projections onto closed sublattices K in Banach function spaces for a wider range of problems than . Then, we establish expressions of the metric projection onto subcones in . By the expression of the Gâteaux derivative of , we obtain the necessary and sufficient conditions for monotonicity of the metric projections onto cones and sublattices in Lorentz spaces . Moreover, we show that the Lorentz spaces are reflexive under some assumptions, under the condition , which is basic for the existence of the best approximant. As applications of the monotonicity of the metric projections, solvability and approximation results for the best proximity points are established and proved. We should emphasize that we do not require any contractive and compact conditions in our best proximity point theorems.
The structure of this paper is as follows. In
Section 2, we show the terminology, definitions, and notations, and present some basic results used in the paper. In
Section 3, some existence and monotonicity characterizations of the metric projection operator are proved in Banach function spaces. In
Section 4, based on the geometric characterizations of
, we obtain the necessary and sufficient conditions for the monotonicity of the metric projection onto cones and sublattices. In
Section 5, solvability and approximation theorems for best proximity points are obtained.
2. Preliminaries
In this section, we introduce some basic definitions, characterizations, notations, references on the Banach function space, Lorentz space, monotonicity, and the best approximation operator which will be used in the paper.
Let
be the set of all real numbers and
the set of all positive integers. The set of all extended real valued Lebesgue measurable functions on
is denoted by
(or briefly,
), where
. Let
m be the Lebesgue measure on
(see [
29]) and denote by
the support of
, which is the closure of the set where
h is nonzero.
In the rest of the paper, we always denote by
E a Banach lattice. The positive cone of
E is
, where
is the zero element of
E and
denote the partial order with respect to
, i.e.,
if only if
. We say that
is regular if and only if any increasing sequence which is bounded from above is convergent (or equivalently, any decreasing sequence which is bounded from below is convergent). Some details of the lattice can be seen in [
30,
31,
32].
Lemma 1 (see Theorem 2.2.2 in [
33])
. Let E be a Banach lattice and the positive cone of E. If E is reflexive, then is regular. If
K is a subset in
E and
,
denotes
for any
. For convenience, we also adopt the following common notations:
Definition 1 (see [
28])
. If a Banach lattice is a sublattice of and satisfies the following conditions:- (i)
If , and a.e., then and ;
- (ii)
There exists an element such that .
Then we say that is a Banach function space or Köthe space.
If and for each sequence with and a.e., then we say that x has an order continuous norm. A Banach function space E is called order continuous if each has an order continuous norm.
Definition 2 (see [
28])
. Let E be a Banach function space. Then- (i)
E is said to have the Fatou property if and for with in E and ;
- (ii)
E is mentioned to have the semi-Fatou property if for with .
If
and
for every sequence
in
E with
globally in measure and
, then we say that
x is an
point in
E. The space
is said to have Kadec–Klee property globally in measure if every
is an
point. Denote by
and
the closed unit ball and the unit sphere of
E, respectively. A point
is an extreme point in
if for any
in
with
, we have
. If each element of
is an extreme point of
, then
E is said to be strictly convex. Other definitions on Banach function spaces can be found in [
34,
35,
36].
Let
x be any element of
. The distribution function of
x is defined by
The decreasing rearrangement of
x is defined as
The maximal function of
is defined by
Note that
for all
and
is nonincreasing and subadditive, that is,
More characterizations about
and
can be found in [
37,
38,
39].
Let
and a weight function
w be in
, the Lorentz space
(or briefly,
) be a subspace of
such that
Throughout the paper, unless otherwise mentioned, we always assume that the weight function
w is nonnegative. Aiming to
, we also assume that
w satisfies the condition
, that is,
In ref. [
40], it was proved that, for the case when
, the space
is order continuous if and only if
. Moreover, for the case when
, by Lebesgue’s dominated convergence theorem, it was proved that
is order continuous. We now recall the well-known general characterizations on strictly convexity, Kadec–Klee property, and best approximants of space
.
Lemma 2 (see Theorem 3.1 in [
41])
. Suppose that and w is positive. Then the space is strictly convex if and only if and for the case when . Lemma 3 (see Theorem 4.1 in [
28])
. The space has the Kadec–Klee property with respect to global convergence in measure. Lemma 4 (see Theorem 6.1 in [
41])
. Let K be a closed convex subset of and . Then is a best approximant of x onto K if and only if for all , where . For more details about the properties of
, the reader is referred to [
40,
42].
In [
18], by an analogous way, Calderón defined the spaces
as the famous Lorentz spaces.
where
w is nonnegative and nonincreasing and
. It is easy to obtain
. Conversely,
holds if and only if
w satisfies condition
, that is, there exists
such that for all
,
If
, and for all
, there exists
such that
then
is said to satisfy the reverse condition of
, denoted also by
. By the Sawyer’s result (see Theorem 1 in [
43]), the Köthe dual of
and the Köthe dual of
are also related for
and
, that is, the Köthe dual of
coincides with
, where
and
.
Let
B be a subset in any Banach space
. The set-valued mapping
,
is called the metric projection operator from
E onto
B. It is known that, for every closed convex subset
B of a Banach space
E,
for any
if and only if
E is reflexive. If
E is strict convex, then
is single-valued. Then, set-valued mapping is
if
implies that there exist
and
such that
; in this case, we say that
f is monotone. If
f is single valued, then
f is monotone if and only if
for all
, satisfying
.
Lemma 5 (see Lemma 2.11 in [
44])
. Let be a partially ordered Banach lattice induced by the positive cone K. Suppose that is additive, with . Then for all . 3. Characterizing Best Approximations in Banach Function Spaces
In the section, we consider characterizations of the metric projection operator , including the existence and monotonicity results of onto general sublattices and special lattices. The following basic existence relation between the best approximant of x and is first proposed.
Proposition 1. Let be a Banach function space and K a subset of E. If and , then , where is a measure preserving transformation from onto , satisfying on and .
Proof. Since
, there exists an
such that
As
, we get
and the left of (
5) becomes
Similarly, the right of (
5) becomes
Therefore,
It follows that
. Thus, the assertion is proved. □
In the following proposition, based on the above semi-Fatou property and definition of the point, we introduce the existence and monotonicity proposition of the metric projection operator onto general closed sublattices in Banach function spaces.
Proposition 2. Let be a Banach function space satisfying the semi-Fatou property. Let be a closed sublattice of E. Suppose that, for each point h in K, there exists a with , such that , and there exists a with , such that is an point of E. Then, . Moreover, is monotone.
Proof. Assume that
,
and
satisfies
It follows that there exists
such that
. Without loss of generality, we may suppose that
. Otherwise, it is enough to replace
with
. Take
. As
K is a sublattice, we have
and
. It follows from (
6) that
If we take
, then
, which implies that
pointwisely. If
, using the fact that
and
, then we get
for any
n in
. Let
be random. As
, there exists
, such that
Since
, we have
As
pointwisely, by the Proposition 12° in [
39], we get
, which pointwisely converges to
. Without loss of generality, we may assume that
Otherwise, it is enough to consider a subsequence of
. It follows that
globally in measure. Hence
globally in measure. As
, we have
. Further, adopting the semi-Fatou property of
E, we have that
Since
is an
point, it follows from (
8) that
By the conditon that
K is closed, we obtain that
and
Hence,
. Similarly, for the case when
, we get
.
Now we prove that is monotone. Take for any ; there is a with such that and is an point in E for some with . Let with . Adopting the similar proof as that of the previous stage, we have the and there exists such that . In the process of the above proof that , we take . Similarly, if we take , then it can be proved that such that . Hence is monotone. □
Remark 1. Lemma 5.1 in [
28]
and Propostions 3.1 and 3.3 in [
25]
show for .
Note that we obtain the such existence result for a wider range than in Proposition 2. Indeed, rather than for all ,
it just needs to satisfy that there exists a with such that in Proposition 2. Moreover, we prove the monotonicity of .
Remark 2. If K is a closed sublattice in E satisfying and , by using , the corresponding existence and monotonicity results can be obtained.
We now propose the following example in which all the conditions in Proposition 2 are satisfied and the existence and monotonicity results hold.
Example 1. Let ,
which is the space of all measurable functions being pth power summable on Ω,
where .
The space is endowed with the following positive cone and norm:Taking such that ,
it is easy to prove that the order interval is a sublattice and all the conditions in Proposition 2 are satisfied. From Lemma 5, for any ,
and it is monotone.
In the two results, by the positive operator, we propose the explicit expression of the metric projection operator, which is also monotone.
Proposition 3. Let be a Banach function space and B any closed subset of . Let . Then, for any , and .
Proof. Take any
. As
; we have
Similarly, for any
, we have
on
and
Since
, from (
10) and (
11), we get
Therefore,
Thus, the assertion is proved. □
Corollary 1. Let be a Banach function space and a closed subset sequence of with for . LetThen, for any , . Proof. Take any
(
) and
Then
where
(
). By the proof of Proposition 3,
The assertion is proved. □
4. Characterizing Best Approximations in Lorentz Spaces
In the section, based on the above existence and monotonicity results in general Banach function spaces, using the better characterizations of Lorentz spaces , we continue to study more specific existence and monotonicity propositions of the metric projection operators. Firstly, based on Proposition 2, the corresponding proposition in is shown.
Proposition 4. Let be a closed sublattice of with . If for every , there exists with such that and for some . Then . Moreover, is monotone.
Proof. From Lemma 3, we get that each point in
is an
point. Since
,
is order continuous. Then
and
It follows that
has the semi-Fatou property. Following the same proof as that of Proposition 2,
and
is monotone. □
By the Gâteaux derivative of the norm and the boundary conditions, we establish the necessary and sufficient conditions for the best approximants onto the cone in the following proposition.
Proposition 5. Let K be the closed convex positive cone of . Suppose that is such that for any and for all and . Then, is a best approximant of onto K if and only if
Proof. Since
K is a closed convex cone, it is easy to get
. By the assumptions, we have
From Theorem 5.3 in [
41], we have that
x is a smooth point and the Gâteaux derivative of
in
at
is
for any
, where
is a measure preserving transformation satisfying
. From Definition 1.2 in [
41], by using the conditions that
and
for every
, we get
It follows from Lemma 4 that
is a best approximant of
onto
K if and only if
for all
; that is,
As
K is a closed convex cone, we get
. It follows that
The assertion is proved. □
In turn, we consider the necessary and sufficient conditions for the monotonicity of the metric projection onto random closed convex sublattices in the strictly convex spaces in the following proposition.
Proposition 6. Let and for the case when . Let be the closed convex positive cone, and K a closed convex sublattice of . Let the set , such that for all and for any and . Then is monotone in C if and only if for any with and , Proof. By assumptions and Lemma 2, we get that is strictly convex, which yields that is single-valued.
If
is monotone, for
and
, then
and
, which implies that (
13) holds.
Inversely, if we suppose that
is not monotone, then there exist
with
such that
; that is,
. Therefore,
Since
K is convex and closed, we get
. Moreover, through Theorem 5.3 in [
41],
is a smooth point of
and
is the Gâteaux derivative of
at
. It follows that
By (
14), we get
which contradicts to (
13). Thus,
is monotone. □
In the following proposition, by the partial ordering relation between the metric projection operator and identity operator, we establish the sufficient condition for the monotonicity of the metric projection operator onto closed convex sublattices.
Proposition 7. Let , and in the case when , it holds . Let be the closed convex positive cone and K a closed convex sublattice of . Suppose that the set is such that for any and for all and . If for any , then is monotone in C.
Proof. Take any with . Since , we have . It follows that (13) holds. By Proposition 6, is monotone. □
Example 2. Let . It is easy to see that K is a cone in . Take . It is easy to see that for any . From Proposition 7, we have and is monotone in C.
Since the reflexivity of Banach spaces is crucial to the existence of the best approximant, by the condition , we introduce the sufficient condition for the reflexivity of .
Proposition 8. Let . If and w satisfies the condition and for the case when , then is reflexive, where .
Proof. If
, by
and Propostion 1.4 in [
40], then
is order continuous. It follows from Theorem 1.8 in [
40] that
is an associated space of
, where
. Since
,
is order continuous. As
w satisfies the conditions
and
, by Proposition 3.5 and Corollary 4.4 in [
37], we get that
is reflexive. If
, by the Lebesgue dominated convergence theorem,
, and the order continuity of its associated space, then
is reflexive. □
5. Best Proximity Point Theorems
In this section, based on the above characterizations of the monotonicity of the best approximants and partial ordering fixed point theory, we establish the existence and approximation results for the following proximity problems.
Assume that
A,
B are two nonempty subsets of
and
. The best proximity problem is to find a point
satisfying
We denote
and
In ref. [
45], Kirk et al. proved that
and
are nonempty in reflexive Banach spaces. Also, in ref. [
46], Basha and Veeramani showed that
. It is well known that if
A and
B are closed and convex, then
and
are also convex closed subsets of
A and
B, respectively. More results on the best proximity point problems can refer to [
44,
45,
46]. However, partial ordering methods are seldom considered in the previous literature. We first show the partial ordering method based on the Proposition 4 to resolve the best proximity point problem in the following theorem.
Theorem 1. Let A be a convex closed and bounded subset in with . Let be a convex closed sublattice in . Suppose that and w satisfies condition and for the case when . Assume that the following conditions are satisfied:
- (i)
is a monotone and continuous mapping such that ;
- (ii)
There exists a point such that ;
- (iii)
For all , there exists with such that ;
- (iv)
for some .
Then there exists a point such that .
Moreover, if ,
then Proof. From Proposition 8, we have that the space
is reflexive. By Lemma 3.2 in [
45],
and
are two nonempty, convex and closed subsets. Therefore,
By assumptions, we get that
is strictly monotone, which implies that
is single valued. As
,
, let
and
. Then
and
,
(
). By Proposition 4,
is monotone. Since
and
f is monotone, we have
and
As
A is bounded, there exists an element
, such that
It follows that
Since
is reflexive, by Lemma 1, we have that the positive cone of
is regular, which deduces that
is convergent. Let
for
. As
f is continuous, we have
for
. It follows from (
15) that
. The proof ends. □
We now give a corresponding example of the above Theorem 1.
Example 3. Suppose that and . Let K be the positive cone of . Let with and . We havewhich implies that the condition of w holds. One can easily prove that . Sincewe have . For each , . Define asThen f is continuous and monotone. It is easy to see that and . Therefore, all the conditions of Theorem 1 are satisfied. Hence f has the best proximity points and In the following theorem, by Proposition 6, we show the existence and approximation of the best proximity points.
Theorem 2. Let , and w satisfy the condition and for the case when . Let B be a convex closed sublattice of and satisfies for any and for all and . Let be convex closed and bounded. Suppose that the following conditions are satisfied:
- (i)
is monotone and continuous and ;
- (ii)
There exists such that and (
13)
holds.
Then there exists such that Moreover, if , then Proof. By Proposition 6, is monotone. By the same proof as that of Theorem 1, one can deduce the assertion. □
6. Conclusions
In this paper, based on the works on Banach space theory and the best constant approximant operator, we studied the existence and monotonicity characterizations of the metric projection operator in Lorentz spaces and Banach function spaces, respectively. Based on these monotonicity results and partial ordering iterative theory, solvability and approximation theorems for the best proximity points in were established by partial ordering methods, in which the mappings need not to satisfy contractive and compact conditions. In further research, we shall deduce more monotonicity, generalized isotonicity and subadditivity characterizations of the metric projection operator in partial ordering spaces endowed with different and general cones. Specially, we shall focus on the monotonicity and general monotonicity of similar projection operators, such as the Bregman projection operator, the proximity operator, the Bregman proximity operator, etc. As applications, we shall solve more optimization problems without continuous conditions and establish iterative algorithms without contractive and compact conditions by different order methods.