1. Introduction
Throughout this work, we always suppose that C is a non-empty, convex and closed subset of a real Banach space X. will be used to present the dual space of space X. In this present work, we let the norms of X and be presented by the denotation . Let T be a nonlinear self mapping with fixed points defined on subset C.
One use to denote the duality pairing. The possible set-valued normalized duality mapping is defined by
Banach space X is said to be a smooth space (has a Gâteaux differentiable norm) if exists for all . J is norm-to-weak continuous single-valued map in such a space. X is also said to be a uniformly smooth space (has a uniformly Fréchet differentiable norm) if the above limit is attained uniformly for and J is norm-to-norm uniformly continuous on bounded sets in such a space. X is said to be a strictly convex space if for all . Space X is said to be uniformly convex if, for each , we have a constant such that for all . A uniformly convex Banach space yields a strictly convex Banach space. Under the reflexive framework, X is strictly convex if and only if is smooth.
Next, we suppose
X is smooth, i.e.,
J is single-valued. Let
be two nonlinear single-valued mappings. One is concerned with the problem of approximating
such that
with two real positive constants
and
. This optimization system is called a general system of variational inequalities (GSVI). In particular, in the case that
is Hilbert, then GSVI (
1) is reduced to the following GSVI of finding
such that
with two real positive constants
and
. This was introduced and studied in [
1]. Additionally, if
and
, then GSVI (
1) becomes the variational problem of finding
such that
. In 2006, Aoyama, Iiduka and Takahashi [
2] proposed an iterative scheme of finding its approximate solutions and claimed the weak convergence of the iterative sequences governed by the proposed algorithm. Recently, many researchers investigated the variational inequality problem through gradient-based or splitting-based methods; see, e.g., [
3,
4,
5,
6,
7,
8,
9,
10,
11,
12,
13]. Some stability results can be found at [
14,
15].
In 2013, Ceng, Latif and Yao [
16] analyzed and introduced an implicit computing method by using a double-step relaxed gradient idea in the setting of 2-uniformly smooth and uniformly convex space
X with 2-uniform smoothness coefficient
. Let
be a retraction, which is both sunny and nonexpansive. Let
be a contraction with constant
. Let the mapping
be
-inverse-strongly accretive for
. Let
be a countable family of nonexpansive self single-valued mappings on
C such that
, where
stands for the set of fixed points the mapping
. For a arbitrary initial
, let
be the sequence generated by
with
for
, where
and
are sequences of real numbers in
satisfying the restrictions:
,
,
and
. They got convergence analysis of
to
, which treats the variational inequality:
. Recently, projection-like methods, including sunny nonexpansive retractions, have largely studied in Hilbert and Banach spaces; see, e.g., [
17,
18,
19,
20,
21,
22,
23,
24] and the references therein.
2. Preliminaries
Next, we let
X be a space with uniformly convex and
q-uniformly smooth structures. Then the following inequality holds:
where
is the smoothness coefficient. Let
be the same mappings as above. Assume that
. Suppose that
is a
-strongly accretive operator with constants
and
k-Lipschitzian, and
is
L-Lipschitzian mapping. Assume
, and
, where
. Recently, Song and Ceng [
25] proposed and considered a very general iterative scheme by the modified relaxed extragradient method, i.e., for arbitrary initial
, we generate
by
where
satisfying the conditions: (i)
,
and
; (ii)
,
,
; and (iii)
,
. The authors claimed convergence of
to
, which deals with the variational inequality:
.
On the other hand, Let
be an
-inverse-strongly accretive operator,
be an
m-accretive operator,
be a contraction with constant
. Assume that the inclusion of finding
such that
, has a solution, i.e.,
. In 2017, Chang et al. [
26] introduced and studied a generalized viscosity implicit rule, i.e., for arbitrary initial
, we generate
by
where
,
and
satisfying the conditions: (i)
and
; (ii)
; (iii)
; and (iv)
. These authors studied and proved convergence of
to
, solving the inequality:
. For recent results, we refer the reader to [
27,
28,
29,
30,
31,
32,
33,
34]. The purpose of this work is to approximate a common solution of GSVI (
1), a variational inclusion and a common fixed point problem of a countable family of nonexpansive mappings in spaces with uniformly convex and
q-uniformly smooth structures. This paper introduces and considers a generalized Mann viscosity implicit rule, based on the Korpelevich’s extragradient method, the implicit approximation method and the Mann’s iteration method. We investigate norm convergence of the sequences generated by the generalized Mann viscosity implicit rule to a common solution of the GSVI, VI and CFPP, which solves a hierarchical variational inequality. Our results improve and extend the results reported recently, e.g., Ceng et al. [
16], Song and Ceng [
25] and Chang et al. [
26].
Next, for simplicity, we employ (resp., ) to present the weak (resp., strong) convergence of the sequence to x. It is known that and for all and . Then the convex modulus of X is defined by . X is said to be uniformly convex if , and for each . Let q be a fixed real number with . Then a Banach space X is said to be q-uniformly convex if , where . Each Hilbert space H is 2-uniformly convex, while and spaces are -uniformly convex for each .
Proposition 1. [
35]
Let X be space with smooth and uniformly convex structures, and . Then and for all , where is a continuous, strictly increasing, and convex function. Let be the smooth modulus of X defined by
A Banach space X is said to be q-uniformly smooth if , where . It is known that each Hilbert, and spaces are uniformly smooth where . More precisely, each Hilbert space H is 2-uniformly smooth, while and spaces are -uniformly smooth for each . Let . , the duality mapping, is defined by
It is quite easy to see that , and if , then the identity mapping of H.
Proposition 2. [
35]
Let a given real number and let X be uniformly smooth with order q. Then , where is the real smooth constant. In particular, if X is uniformly smooth with order 2, then . Using the structures of subdifferentials, we obtain the following tool.
Lemma 1. Let and X be a real normed space with the generalized duality mapping . Then, for any given , .
Let D be a set in set C and let map C into D. We say that is sunny if , whenever for and . We say is a retraction if . We say that a subset D of C is a sunny nonexpansive retract of C if there exists a sunny nonexpansive retraction from C onto D.
Proposition 3. [
36]
Let X be smooth, D be a non-empty set in C and Π be a retraction onto D. (i) Π is nonexpansive sunny; (ii) , ; (iii) , . Then the above relations are equivalent to each other. Let be a set-valued operator with . Let . An operator A is accretive if for each , there exists such that . An accretive operator A is inverse-strongly accretive of order q, i.e., -inverse-strongly accretive, if for each , there exist such that , where . In a Hilbert space H, is called -inverse-strongly monotone.
Operator A is said to be m-accretive if and only if for all and A is accretive. One defines the mapping by with real constant . Such is called the resolvent mapping of A for each .
Lemma 2. [
37]
The following statements hold:- (i)
the resolvent identity: ;
- (ii)
if is a resolvent of A for , then is a single-valued nonexpansive mapping with , where ;
- (iii)
in a Hilbert space H, an operator A is maximal monotone iff it is m-accretive.
Let
be an
-inverse-strongly accretive mapping and
be an
m-accretive operator. In the sequel, one will use the notation
. The following statements (see [
38]) hold:
- (i)
;
- (ii)
for and .
Proposition 4. [
38]
Let X be a Banach space with the uniformly convex and q-uniformly smooth structures with . Assume that is a α-inverse-strongly accretive single-valued mapping and is an m-accretive operator. Thenfor all , where with is a convex, strictly increasing and continuous function, λ and r two positive real constants, is the real smooth constant of X, and and are resolvent operators defined as above. In particular, if , then is nonexpansive. Lemma 3. [
39]
Let X be uniformly smooth, T be single-valued nonexpansivitity on C with , and be a any contraction. For each , one employs to present the unique fixed point of the new contraction on C, i.e., . Then converges to in norm, which deals with the variational inequality: . Lemma 4. [
25]
Let X be a uniformly smooth with order q. Suppose that is a sunny nonexpansive retraction from X onto C. Let the mapping be -inverse-strongly accretive of order q for . Let the mapping be defined as . If for , then is nonexpansive. For given , is a solution of GSVI (1) if and only if where , i.e., . Lemma 5. [
40]
Let be a mapping sequence on C. Suppose that . Then converges to some point of C in norm for each . Besides, we present S, a self-mapping, on C by . Then . Lemma 6. [
41]
Let X be Banach space. Let be a real sequence in with and . Let and , where and be bounded sequences in X. Then . Lemma 7. [
42]
Let X be strictly convex, and be a sequence of nonexpansive mappings on C. Suppose that . Let be a sequence of positive numbers with . Then a mapping S on C defined by for is defined well, nonexpansive and holds. Lemma 8. [
43]
Let be a non-negative number sequence of with , where and are sequences such that (a) (or ) and (b) and . Then goes to zero as n goes to the infinity. Lemma 9. [
7,
35]
Let X be uniformly convex, and the ball . Thenfor all and with , where is a convex, continuous and strictly increasing function. 4. Applications
In this section, we will apply the main result of this paper for solving some important optimization problems in the setting of Hilbert spaces.
4.1. Variational Inequality Problems
Let be a single-valued nonself mapping. Recall the monotone variational inequality of getting the desired vector with , whose solution set of is . Let be an indicator operator of C given by
We denote the normal cone of C at u by , i.e., is a set consists of such points which solve . It is known that is a convex, lower semi-continuous and proper function and the subdifferential is maximally monotone. For , the resolvent mapping of is denoted by , i.e., . Please note that
So we know that . Hence we get .
Next, putting in Theorem 1, we can obtain the following result.
Theorem 2. Let non-empty set C be a convex close in a Hilbert space X stated as Theorem 1. For , mappings are α-inverse-strongly monotone and -inverse-strongly monotone, respectively. Let S be a nonexpansive singled-valued self-mapping on C. Suppose , where is the fixed-point set of with for . Let be a strictly contraction with constant . For arbitrary initial , define bywhere and , and satisfy conditions (i)–(iii) as in Theorem 1 in Section 2. Then , which is the unique solution to the variational inequality: . 4.2. Convex Minimization Problems
Let and be two functions, where g is convex smooth and h is proper convex and lower semicontinuous. The associated minima problem is to find such that
By Fermat’s rule, we know that the problem (
30) is equivalent to the fact that finds
such that
with
being the gradient of function
g and
being the subdifferential function of function
h. It is also known that if
is
-Lipschitz continuous, then it is also
-inverse-strongly monotone. Next, putting
and
in Theorem 1, we can obtain the following result.
Theorem 3. Let be a convex and differentiable function whose gradient is -Lipschitz continuous and be a convex and lower semi-continuous function. are supposed to be -inverse-strongly monotone for . Let S be a nonexpansive single-valued self-mapping on C such that where is the set of minima attained by , and is the fixed point set of with for . Let be a strictly contraction with constant . For arbitrary initial , define bywhere and , and satisfy conditions (i)–(iii) as in Theorem 1 in Section 2. Then , which uniquely solves . 4.3. Split Feasibility Problems
Let
C and
Q be non-empty convex closed sets in Hilbert spaces
and
, respectively. Let
be a linearly bounded operator with its adjoint
. Consider the split feasibility problem (SFP) of obtaining a desired point
. The SFP can be borrowed to model the radiation therapy. It is clear that the set of solutions of the SFP is
. To solve the SFP, we can rewrite it as the following convexly constrained minimization problem:
Please note that the function g is differentiable convex whose Lipschitz gradient is given by . Furthermore, is -inverse-strongly monotone, where is the spectral radius of . Thus, solves the SFP if and only if such that
Next, putting and in Theorem 1, we can obtain the following result:
Theorem 4. Let C and Q be nonempty closed convex subsets of and , respectively. Let be a bounded linear operator with its adjoint . Let the mapping be -inverse-strongly monotone for . Let S be a nonexpansive self-mapping on C such that where is the fixed point set of with for . Let be a δ-contraction with constant . For arbitrarily given , let be a sequence generated bywhere and , and satisfy conditions (i)–(iii) as in Theorem 1 in Section 2. Then , which uniquely solves .