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Article

Viscosity Methods and Split Common Fixed Point Problems for Demicontractive Mappings

1
Department of Mathematics, Shaoxing University, Shaoxing 312000, China
2
Department of Applied Mathematics, College of Natural Sciences, Pukyong National University, Busan 48513, Korea
*
Author to whom correspondence should be addressed.
Mathematics 2019, 7(9), 844; https://doi.org/10.3390/math7090844
Submission received: 18 July 2019 / Revised: 29 August 2019 / Accepted: 7 September 2019 / Published: 12 September 2019
(This article belongs to the Special Issue Fixed Point Theory and Related Nonlinear Problems with Applications)

Abstract

:
We, first, propose a new method for solving split common fixed point problems for demicontractive mappings in Hilbert spaces, and then establish the strong convergence of such an algorithm, which extends the Halpern type algorithm studied by Wang and Xu to a viscosity iteration. Above all, the step sizes in this algorithm are chosen without a priori knowledge of the operator norms.

1. Introduction

In recent years, the split common fixed point problem (SCFPP) has attracted more and more attention [1,2,3,4,5,6,7] due to its applications in many areas, such as intensity-modulated radiation therapy, image reconstruction, signal processing, modeling inverse problems, and electron microscopy. The SCFPP is defined as finding a point in one fixed point set, and its image is in another fixed point set under a linear transformation. Specifically, assume that H 1 and H 2 are two Hilbert spaces and an operator A : H 1 H 2 is bounded and linear. The SCFPP is to find
x F ( U ) and A x F ( T ) ,
where the mappings U : H 1 H 1 and T : H 2 H 2 are nonlinear, and F ( T ) and F ( U ) stand for the sets of all fixed points of T and U, respectively. Especially, if U and T are both orthogonal projections, the SCFPP (1) becomes the split feasibility problem (SFP) [8], which can be formulated as:
x C and A x Q ,
where the sets C H 1 and Q H 2 are nonempty closed and convex, and A is as (1).
The SCFPP (1) was firstly studied by Censor and Segal [1]. Noting that p is a solution to the SCFPP (1) if the fixed-point equation below holds
p = U ( p τ A * ( I T ) A p ) , τ > 0 .
To solve the SCFPP (1), Censor and Segal [1] introduced the following iterative scheme. For any initial point x 1 H 1 , define { x n } recursively by
x n + 1 = U ( x n γ A * ( I T ) A x n ) ,
where U and T are directed operators, γ ( 0 , 2 / A 2 ) ; they show that the sequence generated by (3) is weakly convergent to a solution of (1). Subsequently, this result was extended to the cases of quasi-nonexpansive mappings [3] and demicontractive operators [9], but the sequence { x n } is still weakly convergent to a point of the SCFPP (1).
Though the difficulty occurs when one implements the algorithm (3) because its step size is linked with the computation of the operator norm A , alternative ways of constructing variable step sizes have been considered to surmount the difficulty (see the works by the authors of [5,6,10]). Of these step sizes, Wang and Xu [10] suggested the following one,
τ n = ρ n x n U x n + A * ( I T ) A x n ,
where { ρ n } ( 0 , + ) is a sequence of real numbers satisfying
k = 0 ρ k = and k = 0 ρ k 2 < ,
and they introduced the following iterative Algorithm 1.
Algorithm 1.
Step 1. Choose an anchor, u H 1 , and initial guess, x 0 H 1 , arbitrarily.
Step 2. If
x n U x n + A * ( I T ) A x n = 0 ,
then stop, and x n is a solution of (1); otherwise, go on to the next step.
Step 3. Update x n + 1 via the iteration formula:
x n + 1 = α n u + ( 1 α n ) [ x n τ n ( x n U x n + A * ( I T ) A x n ) ] ,
where the step size τ n is chosen as
τ n = ρ n x n U x n + A * ( I T ) A x n
with { ρ n } satisfying (4), and return to Step 2.
Under suitable conditions they obtained a strong convergence result for Algorithm 1.
In addition, following the idea of Attouch [11], in Hilbert spaces, Moudafi [12], first, proposed a viscosity approximation iteration for nonexpansive mappings.
Inspired by the above works, we naturally raise the following question. Can we carry the strong convergence of the SCFPP (1) (Algorithm 1) for nonexpansive mappings due to Wang and Xu [10] over the one of “a viscosity method” for more general “demicontractive mappings”? In this work, we shall give a positive answer for the question.

2. Preliminaries

In this section, assume that H is a real Hilbert space and R denotes the set of all real numbers. { x n } H and x H , x n x ( x n x ) denote the strong (weak) convergence of { x n } . Let S : H H be a mapping. The set of all fixed points of S is denote by F ( S ) .
Definition 1.
S : H H is denoted as
(i) 
contractive if there exists κ ( 0 , 1 ) such that
S y S z κ y z , y , z H ;
(ii) 
nonexpansive if
S y S z y z , y , z H ;
(iii) 
quasi-nonexpansive if F ( S ) and
S y p y p , y H , p F ( S ) ;
(iv) 
firmly nonexpansive if
S y S z 2 y z , S y S z , y , z H ;
(v) 
directed if F ( S ) and
S y p 2 y p 2 y S y 2 , y H , p F ( S ) ;
(vi) 
τ-demicontractive if F ( S ) and there exists τ ( , 1 ) , such that
S y p 2 y p 2 + τ y S y 2 , y H , p F ( S ) ,
which can also be written as
y S y , y p 1 τ 2 y S y 2 .
Obviously, if S is a quasi-nonexpansive mapping or a directed mapping, then S is demicontractive.
Remark 1.
Note that every 0-demicontractive mapping is quasi-nonexpansive. If 0 τ < 1 , it is also said to be quasi-strictly pseudo-contractive [13]. Moreover, if τ 0 , every τ-demicontractive mapping is quasi-nonexpansive. Thus, we only take τ ( 0 , 1 ) in (vi) of Definition 1. However, from (v) of Definition 1, if τ = 1 , every directed operator is demicontractive.
Define an orthogonal projection P C : H C as follows,
P C u : = a r g m i n v C { u v } , u H .
It is known that P C is firmly nonexpansive and has the following property [14,15].
u P C u , v P C u 0 , v C .
The mapping I S is said to be demiclosed at 0, if for any { y k } H and y * H , we obtain
y k y * ( I S ) y k 0 y * = S y * .
In uniformly convex Banach spaces, Goebel and Kirk [16] presented a case of the demicloseness principle; especially, if H is a Hilbert space, C H is nonempty, closed, and convex, and if S : C H is nonexpansive, then I S is demiclosed on C. Naturally, we want to know whether I S is still demiclosed on C if S : C H is quasi-nonexpansive. The following example shows that the conclusion is not true.
Example 1
(see Example 2.11 [17]). The mapping S : [ 0 , 1 ] [ 0 , 1 ] is defined by
S x = x 5 , x [ 0 , 1 2 ] , x sin π x , x ( 1 2 , 1 ] .
Then S is quasi-nonexpansive, but I S is not demiclosed at 0.
Remark 2.
Note that there exist some demicontractive mappings which are demiclosed at 0, for instant, for k > 1 , we take H = 2 and S x = k x , x 2 ([17]; see Example 2.5). Then S is τ-demicontactive but not quasi-nonexpansive, where τ : = k 1 k + 1 . However, I S is demiclosed at 0. In fact, assume that { x n } is any sequence in 2 such that x n x 2 and x n S x n 0 , we can get x = 0 F ( S ) .
Next, for making the convergence analysis of our algorithm, we give some lemmas as follows.
Lemma 1
([18]). Assume that { c n } is a sequence of non-negative real numbers, such that
c n + 1 ( 1 γ n ) c n + γ n δ n + ϵ n , n 0 ,
where { γ n } is a sequence in ( 0 , 1 ) and { δ n } is a sequence in R , such that
(i) 
n = 0 γ n = ;
(ii) 
n = 0 ϵ n < ;
(iii) 
lim sup n δ n 0 or Σ n = 1 γ n | δ n | < .
Then lim n c n = 0 .
Lemma 2
([13]). Assume C is a closed convex subset of a Hilbert space H . Let S be a self-mapping of C. If S is τ-demicontractive (which is also said to be τ-quasi-strict pseudo-contractive in the work by the authors of [13]), then F ( S ) is closed and convex.
Lemma 3
([19]). The demiclosedness principle of nonexpansive mappings. If V : H H is a nonexpansive mapping, then I V is demiclosed at 0.

3. Main Results

Unless other specified, we always assume that H 1 and H 2 are real Hilbert spaces. Let U : H 1 H 1 and T : H 2 H 2 be τ -demicontractive and υ -demicontractive, respectively. Let f : H 1 H 1 be a contraction with constant α ( 0 , 1 / 2 ) . Let an operator A : H 1 H 2 be bounded and linear, and A * be the adjoint of A.
Let Ω denote the solution set of the SCFPP (1), i.e.,
Ω = { p : p F ( U ) and A p F ( T ) } = F ( U ) A 1 ( F ( T ) ) .
Throughout this section, assume Ω .
Algorithm 2.
Step 1: Choose an initial guess x 0 H 1 arbitrarily.
Step 2: If
x n U x n + A * ( I T ) A x n = 0 ,
then stop, and x n is a solution to the problem (1); otherwise, go on to the next step.
Step 3: Update x n + 1 by the iteration formula
x n + 1 = β n f ( x n ) + ( 1 β n ) [ x n τ n ( x n U x n + A * ( I T ) A x n ) ] ,
where the step size τ n is chosen as
τ n = ρ n x n U x n + A * ( I T ) A x n ,
and return to Step 2.
The following lemma of Yao et al. [6] and the proof will be included for the sake of convenience.
Lemma 4.
p solves (1) if and only if p U p + A * ( I T ) A p = 0 .
Proof. 
If p solves (1), then p = U p and ( I T ) A p = 0 . Obviously p U p + A * ( I T ) A p = 0 .
Conversely, if p U p + A * ( I T ) A p = 0 , then for any z Ω , we obtain
0 = p U p + A * ( I T ) A p p z p U p + A * ( I T ) A p , p z = p U p , p z + A * ( I T ) A p , p z ( 7 ) = p U p , p z + ( I T ) A p , A p A z .
Since U and T are demicontractive, by Equation (5), we obtain
p U p , p z 1 τ 2 p U p 2 ,
( I T ) A p , A p A z 1 υ 2 ( I T ) A p 2 .
Then, by Equations (7)–(9), we get
0 p U p , p z + ( I T ) A p , A p A z ( 10 ) 1 τ 2 p U p 2 + 1 υ 2 ( I T ) A p 2 .
Since τ , υ ( 0 , 1 ) , we deduce p F ( U ) and A p F ( T ) by (10). Therefore, p solves the problem (1), completing the proof. □
Lemma 4 implies that Algorithm 2 generally generates an infinite sequence { x n } . Otherwise, the algorithm terminates in a finite number of iterations and a solution is found.
Lemma 5.
Suppose { x n } is a bounded sequence, such that
lim n x n U x n + A * ( I T ) x n = 0 .
Then, lim n x n U x n = 0 and lim n ( I T ) A x n = 0 .
Proof. 
Set y n = x n U x n + A * ( I T ) A x n . For any z Ω we get
y n , x n z = x n U x n , x n z + ( I T ) A x n , A x n A z .
Since z F ( U ) and A z F ( T ) , y n 0 and { x n } is bounded, by Equation (5) we have
1 τ 2 x n U x n 2 + 1 υ 2 ( I T ) A x n 2 y n , x n z y n x n z 0 .
Therefore, by τ , υ ( 0 , 1 ) , we obtain lim n x n U x n = 0 and lim n ( I T ) A x n = 0 , completing the proof. □
Theorem 1.
Assume that the sequences { ρ n } ( 0 , + ) , { β n } ( 0 , 1 ) and the mappings U, T satisfy the following conditions.
(a) 
I U and I T are demiclosed at 0.
(b) 
n = 0 ρ n 2 < .
(c) 
lim n β n = 0 and n = 0 β n = .
(d) 
lim n β n ρ n = 0 .
Then, the sequence { x n } defined by Algorithm 2 converges strongly to a solution p = P Ω f ( p ) to the problem (1).
Proof. 
Firstly, Lemma 2 yields that F ( U ) and F ( T ) are both closed convex sets. Since A is bounded and linear, A 1 ( F ( T ) ) is also closed convex. Therefore, Ω is closed convex. Thus, P Ω f : H 1 H 1 is contractive. By Banach’s contraction principle there exists a unique element p H 1 such that p = P Ω f ( p ) Ω . In particular, by Equation (6), we have
f ( p ) p , y p 0 , y Ω .
Secondly we show that { x n } is bounded.
Indeed, set y n = x n U x n + A * ( I T ) A x n , z n = x n τ n y n . By Equation (5), we have
y n , x n p = x n U x n + A * ( I T ) A x n , x n p = x n U x n , x n p + ( I T ) A x n , A x n A p 1 τ 2 x n U x n 2 + 1 υ 2 ( I T ) A x n 2 1 τ 2 x n U x n 2 + 1 υ 2 A 2 A * ( I T ) A x n 2 min { 1 τ , 1 υ } 2 max { 1 , A 2 } ( x n U x n 2 + A * ( I T ) A x n 2 ) min { 1 τ , 1 υ } 4 max { 1 , A 2 } x n U x n + A * ( I T ) A x n 2 ( 12 ) = τ * y n 2 ,
where τ * = min { 1 τ , 1 υ } 4 max { 1 , A 2 } . It follows from (12) and τ n y n = ρ n that
z n p 2 = x n p τ n y n 2 = x n p 2 2 τ n y n , x n p + τ n 2 y n 2 x n p 2 2 τ * τ n y n 2 + τ n 2 y n 2 ( 13 ) x n p 2 2 τ * ρ n y n + ρ n 2 ( 14 ) x n p 2 + ρ n 2 .
From Algorithm 2, Equation (14), and α ( 0 , 1 / 2 ) we obtain
x n + 1 p 2 = β n ( f ( x n ) p ) + ( 1 β n ) ( z n p ) 2 β n f ( x n ) p 2 + ( 1 β n ) z n p 2 2 β n [ α 2 x n p 2 + f ( p ) p 2 ] + ( 1 β n ) ( x n p 2 + ρ n 2 ) [ 1 β n ( 1 2 α 2 ) ] x n p 2 + 2 β n f ( p ) p 2 + ρ n 2 = [ 1 β n ( 1 2 α 2 ) ] x n p 2 + β n ( 1 2 α 2 ) 2 f ( p ) p 2 1 2 α 2 + ρ n 2 .
By induction, we can get
x n + 1 p 2 max { x 0 p 2 , 2 f ( p ) p 2 1 2 α 2 } + i = 0 n ρ i 2 .
Hence, { x n } is bounded due to the condition ( b ) . The condition ( b ) implies that ρ n 2 0 . So { y n } and { z n } are bounded by (12) and (14).
It follows from Algorithm 2 and (13) that
x n + 1 p 2 = ( 1 β n ) ( z n p ) + β n ( f ( x n ) p ) 2 ( 1 β n ) 2 z n p 2 + 2 β n ( 1 β n ) f ( x n ) p , z n p + β n 2 f ( x n ) p 2 ( 1 β n ) 2 z n p 2 + β n 2 f ( x n ) p 2 + 2 β n ( 1 β n ) ( f ( x n ) f ( p ) , z n p + f ( p ) p , z n p ) ( 1 β n ) 2 z n p 2 + β n 2 f ( x n ) p 2 + β n ( 1 β n ) [ f ( x n ) f ( p ) 2 + z n p 2 ] + 2 β n ( 1 β n ) f ( p ) p , z n p ( 1 β n ) 2 z n p 2 + β n 2 f ( x n ) p 2 + β n ( 1 β n ) [ α 2 x n p 2 + z n p 2 ] + 2 β n ( 1 β n ) f ( p ) p , z n p = ( 1 β n ) z n p 2 + β n ( 1 β n ) α 2 x n p 2 + 2 β n ( 1 β n ) f ( p ) p , z n p + β n 2 f ( x n ) p 2 ( 1 β n ) [ x n p 2 2 τ * ρ n y n + ρ n 2 ] + β n ( 1 β n ) α 2 x n p 2 + 2 β n ( 1 β n ) f ( p ) p , z n p + β n 2 M [ 1 β n ( 1 ( 1 β n ) α 2 ) ] x n p 2 + ρ n 2 + 2 β n ( 1 β n ) f ( p ) p , z n p 2 τ * ( 1 β n ) ρ n y n + β n 2 M = [ 1 β n ( 1 ( 1 β n ) α 2 ) ] x n p 2 + ρ n 2 + β n ( 1 ( 1 β n ) α 2 ) [ 2 ( 1 β n ) 1 ( 1 β n ) α 2 f ( p ) p , z n p ( 15 ) 2 τ * ( 1 β n ) 1 ( 1 β n ) α 2 ρ n β n y n + β n M 1 ( 1 β n ) α 2 ] ,
where M = sup n 0 { f ( x n ) p 2 } . Set
b n = 2 ( 1 β n ) 1 ( 1 β n ) α 2 f ( p ) p , z n p 2 τ * ( 1 β n ) 1 ( 1 β n ) α 2 ρ n β n y n + β n M 1 ( 1 β n ) α 2 .
Next we show that lim sup n b n 0 .
It is obvious that { b n } is bounded from above, so lim sup n b n is finite, and
z n x n = τ n y n = ρ n 0 .
Therefore, we can choose a subsequence { n k } in { n } satisfying
lim sup n b n = lim k b n k = lim k [ 2 ( 1 β n k ) 1 ( 1 β n k ) α 2 f ( p ) p , z n k x n k + x n k p 2 τ * ( 1 β n k ) 1 ( 1 β n k ) α 2 ρ n k β n k y n k + β n k M 1 ( 1 β n k ) α 2 ] = lim k [ 2 ( 1 β n k ) 1 ( 1 β n k ) α 2 f ( p ) p , x n k p ( 16 ) 2 τ * ( 1 β n k ) 1 ( 1 β n k ) α 2 ρ n k β n k y n k ] .
Due to the boundedness of { x n } , there exists a weakly convergent subsequence, and we suppose that { x n k } converges weakly to some point x * , such that
lim k f ( p ) p , x n k p = f ( p ) p , x * p .
It follows from (16) and (17) and β n k 0 that
lim k ρ n k β n k y n k
exists. Therefore, from condition ( d ) , we have
y n k = β n k ρ n k ρ n k β n k y n k 0 ,
that is,
lim k y n k = lim k x n k U x n k + A * ( I T ) A x n k = 0 ,
which together with Lemma 5 implies that
lim k x n k U x n k = lim k ( I T ) A x n k = 0 .
Therefore, by the condition ( a ) we have x * F ( U ) and A x * F ( T ) , i.e., x * Ω . So from (11), (16), and (17) we get
lim sup n b n 2 1 α 2 lim k f ( p ) p , x n k p = 2 1 α 2 f ( p ) p , x * p 0 .
Finally, we prove that { x n } is strongly convergent to p = P Ω f ( p ) .
From the condition ( b ) , ( c ) , applying Lemma 1 to Equation (15) we get x n p 0 , that is, the sequence { x n } converges strongly to p = P Ω f ( p ) , completing the proof. □
Remark 3.
Choose ρ n = 1 n r , β n = 1 n s , 1 2 < r < s 1 . The sequences { ρ n } and { β n } satisfy the conditions (b)–(d) in Theorem 1.
If U and T are nonexpansive with F ( U ) and F ( T ) , then U and T are demicontractive; by Lemma 3, the condition ( a ) in Theorem 1 is satisfied. Hence, by Theorem 1, we get the result below.
Corollary 1.
Assume that U and T are two nonexpansive mappings and Ω . "Assume that two control sequences { β n } and { ρ n } satisfy the conditions the conditions (b)–(d) in Theorem 1. Then, the sequence { x n } generated by Algorithm 2 converges strongly to a solution p = P Ω f ( p ) to the problem (1).

Author Contributions

All authors read and approved the final manuscript. Conceptualization, Y.W.; Validation, Y.W. and T.-H.K.; writing-original draft preparation, Y.W., X.F. and T.-H.K.; writing-review and editing, Y.W., X.F. and T.-H.K.

Funding

The work was supported by the Natural Science Fundation of China (No. 11975156, 11671365), and Zhejiang Provincial Natural Science Foundation of China (No. LQ13A010007, LY14A010006).

Acknowledgments

The authors would like to thank the referee for valuable suggestions to improve the manuscript.

Conflicts of Interest

The authors declare no conflicts of interest.

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Wang, Y.; Fang, X.; Kim, T.-H. Viscosity Methods and Split Common Fixed Point Problems for Demicontractive Mappings. Mathematics 2019, 7, 844. https://doi.org/10.3390/math7090844

AMA Style

Wang Y, Fang X, Kim T-H. Viscosity Methods and Split Common Fixed Point Problems for Demicontractive Mappings. Mathematics. 2019; 7(9):844. https://doi.org/10.3390/math7090844

Chicago/Turabian Style

Wang, Yaqin, Xiaoli Fang, and Tae-Hwa Kim. 2019. "Viscosity Methods and Split Common Fixed Point Problems for Demicontractive Mappings" Mathematics 7, no. 9: 844. https://doi.org/10.3390/math7090844

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