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Article

Local Sharp Vector Variational Type Inequality and Optimization Problems

1
Department of Mathematics Education, Kyungnam University, Changwon, Gyeongnam 51767, Korea
2
Department of Mathematics, Jazan University, Jazan-45142, Saudi Arabia
*
Author to whom correspondence should be addressed.
Mathematics 2020, 8(10), 1844; https://doi.org/10.3390/math8101844
Submission received: 4 September 2020 / Revised: 15 October 2020 / Accepted: 15 October 2020 / Published: 20 October 2020
(This article belongs to the Special Issue Nonlinear Problems and Applications of Fixed Point Theory)

Abstract

:
In this paper, our goal was to establish the relationship between solutions of local sharp vector variational type inequality and sharp efficient solutions of vector optimization problems, also Minty local sharp vector variational type inequality and sharp efficient solutions of vector optimization problems, under generalized approximate η -convexity conditions for locally Lipschitzian functions.

1. Introduction

The research of variational inequality problems is a part of development in the theory of optimization since optimization problems can often be specialized to the solution of variational inequality problems. It is very important to point out that these theories pertain to more than just optimization problems and there in lies much of their attractiveness. Several authors have presented numerous fascinating results on variational inequality problems; see cited references here [1,2,3,4,5,6,7,8,9,10,11,12].
In 1984, Loridan [13] studied the concept of ϵ -efficient solutions for vector minimization problems where the function to be optimized has its values in the R n space, which is a generalization of the classical problem for Pareto solution. Later in 1986, White [14] extended ϵ -optimality for scalar problems to vector maximization problems, or efficiency problems, with m objective functions defined on a subset of R n . In 1993, Burke et al. [15] studied the concept of weak sharp minima for scalar optimization problem which was motivated by the application in convex and convex composite mathematical programming.
Recently, in 2016, Zhu [16] suggested the necessary optimal conditions for the weak local sharp efficient solution of a constrained multi-objective optimization problem by using the generalized Fermat formula, the Mordukhovich subdifferential for maximum functions, the fuzzy sum rule for Fréchet subdifferentials, and the sum rule for Mordukhovich subdifferentials, and also got the some sufficient optimal conditions respectively for the local and global weak sharp efficient solutions of such a multi-objective optimization problem, by applying the approximate projection method, and some appropriate convexity and affineness conditions.
Motivated by the ideas of local sharp and weak local sharp efficient solutions, we define the local sharp vector variational type inequalities and Minty local sharp vector variational type inequalities, and establish the relations between local (or Minty local) sharp vector variational type inequality and vector optimization problems involving generated by locally Lipschitzian mappings.

2. Preliminaries

Throughout this paper, R n denotes the n-dimensional Euclidean space with a norm · . Let X be a nonempty convex subset of R n . The distance function d ( · , X ) : X R is defined by
d ( x , X ) = inf x 0 X x x 0 , x X .
A vector valued function η : X × X X is said to be τ -Lipschitz continuous if there exists a number τ > 0 such that
η ( x , y ) τ x y , x , y X .
Definition 1.
Let η : X × X X be a function. A lower semicontinuous function φ : X R is said to be approximate η -convex at x 0 X if for any τ > 0 , there exists δ > 0 , such that, for all x , y B ( x 0 , δ ) X ,
φ ( y ) φ ( x ) + x , η ( y , x ) τ y x , x * φ ( x ) .
Definition 2.
Let η : X × X X be a function. A function φ : X R is said to be
(i) 
approximate η -pseudoconvex type-I at x 0 X if for any τ > 0 , there exists δ > 0 , such that, whenever x , y B ( x 0 , δ ) X and
x * , η ( y , x ) 0 , f o r s o m e x * φ ( x ) ,
then
φ ( y ) φ ( x ) τ y x ;
(ii) 
approximate η -pseudoconvex type- I I (strictly approximate η -pseudoconvex type- I I ) at x 0 X if for any τ > 0 , there exists δ > 0 , such that, whenever x , y B ( x 0 , δ ) X and
x * , η ( y , x ) + τ y x 0 , f o r s o m e x * φ ( x ) ,
then
φ ( y ) ( > ) φ ( x ) ;
(iii) 
approximate η -quasiconvex type-I at x 0 X if for any τ > 0 , there exists δ > 0 , such that, whenever x , y B ( x 0 , δ ) X and
φ ( y ) φ ( x ) ,
then
x * , η ( y , x ) τ y x 0 , x * φ ( x ) ;
(iv) 
approximate η -quasiconvex type- I I (strictly approximate η -quasiconvex type- I I ) at x 0 X if for any τ > 0 , there exists δ > 0 , such that, whenever x , y B ( x 0 , δ ) X and
φ ( y ) ( < ) φ ( x ) + τ y x ,
then
x * , η ( y , x ) 0 , x * φ ( x ) .
(VOP): A vector optimization problem (VOP) is formulated as follows:
Min f ( x ) , Subject to x X R n ,
where, f ; X R n R p with f ( x ) = ( f 1 ( x ) , , f p ( x ) ) , is a vector valued function.
Definition 3.
[16].
(i) 
A vector x 0 X is said to be a local sharp efficient solution of (VOP), if for any τ > 0 there exists a δ -neighborhood of x 0 , such that for all x B ( x 0 , δ ) X ,
max 1 i p f i ( x ) f i ( x 0 ) τ x x 0 ;
(ii) 
A vector x 0 X is said to be a weak local sharp efficient solution of (VOP), if for any τ > 0 , there exists a δ -neighborhood of x 0 , such that for all x B ( x 0 , δ ) X ,
max 1 i p f i ( x ) f i ( x 0 ) τ d ( x , X ¯ ) ,
where
X ¯ : = x X f ( x ) = f ( x 0 ) = X f 1 ( f ( x 0 ) ) .

3. Local Sharp Vector Variational Type Inequalities

In this section, we consider local sharp and weak local sharp formulations of vector variational type inequality problems as follows:
  • (LSVVTI): For finding x 0 X , there exists a δ -neighborhood of x 0 and for any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) τ x x 0 , x 0 i * φ f i ( x 0 ) .
  • (WLSVVTI): For finding x 0 X , there exists a δ -neighborhood of x 0 and for any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) τ d ( x , X ¯ ) , x 0 i * f i ( x 0 ) ,
    where
    X ¯ = x X f ( x ) = f ( x 0 ) = X f 1 ( f ( x 0 ) ) .
We note that, if x 0 is a solution of (LSVVTI), then x 0 is also a solution of (WLSVVTI).
  • Special Cases: Assume that, if η ( x , x 0 ) = x x 0 . Then,
  • (1) reduces to local sharp vector variational inequalities (LSVVI): for finding x 0 X , there exists a δ -neighborhood of x 0 and for any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , x x 0 τ x x 0 , x 0 i * φ f i ( x 0 ) .
  • In addition, (2) reduces to weak local sharp vector variational inequalities (WLSVVI) for finding x 0 X , there exists a δ -neighborhood of x 0 and for any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , x x 0 τ d ( x , X ¯ ) , x 0 i * f i ( x 0 ) ,
    where
    X ¯ = x X f ( x ) = f ( x 0 ) = X f 1 ( f ( x 0 ) ) .
  • Again, we note that if η ( x , x 0 ) = x x 0 , then the solution of (LSVVI) is also a solution of (AVVI) 1 (defined by [17]), but the converse need not be true:
    Example: consider the function
    f ( x ) = ( f 1 ( x ) , f 2 ( x ) ) , x R ,
    where f 1 ( x ) = x x 2 and f 2 ( x ) = x 2 .
    If we take x 0 = 0 , then for any τ > 0 , there does not exist any δ > 0 such that
    x 0 i * , x x 0 τ x x 0 , i { 1 , 2 } , x 0 i * f i ( x 0 ) , x B ( x 0 , δ ) R ,
    that is, x 0 is a solution of (AVVI) 1 . When x < 0 , then for every δ > 0 and τ > 0 , we do not have
    max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , x x 0 τ x x 0 ,
    that is, x 0 is not a solution of (LSVVI).
Unless otherwise stated, the following condition (C) is always assumed in this section.
(C) 
For the bi-function η : X × X X and the mappings f i : X R , i = 1 , , p ,
f i ( x ) , η ( x , x ) = 0
for all x X .
First of all, in this section, we give the relationship between the solutions of local sharp vector variational type inequalities (LSVVTI) and local sharp (or weak local sharp) efficient solutions of vector optimization problem (VOP).
Now we are at the stage of introducing and proving the main theorems:
Theorem 4.
Let η : X × X X be a function and f i : X R , i = 1 , , p be locally Lipschitz and approximate η-convex at x 0 X , and satisfies the condition (C). If x 0 solves (LSVVTI), then it is a local sharp efficient solution of (VOP).
Proof. 
Contrary, assume that x 0 X is not a local sharp efficient solution of (VOP). Then, for any δ 0 > 0 and τ 2 > 0 , there exists x B ( x 0 , δ 0 ) X such that
max 1 i p f i ( x ) f i ( x 0 ) < τ 2 x x 0 ,
it implies,
f i ( x ) f i ( x 0 ) < τ 2 x x 0 .
Since f i is approximate η -convex at x 0 X , there exists δ ¯ i > 0 such that for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
f i ( x ) f i ( x 0 ) + x 0 i * , η ( x , x 0 ) τ 2 x x 0 , x B ( x 0 , δ ) X and x 0 i * f i ( x 0 ) .
Hence, it follows from (5) and (6) that
τ 2 x x 0 > x 0 i * , η ( x , x 0 ) τ 2 x x 0 .
Therefore, we have
τ x x 0 > x 0 i * , η ( x , x 0 ) ,
it implies that
max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) < τ x x 0 , x B ( x 0 , δ ) X and x 0 i * f i ( x 0 ) .
This is a contradiction to the fact that x 0 solves (LSVVTI). □
In following theorem, we obtain the converse result of Theorem 4 by assuming the approximate η -convexity of f i instead of f i .
Theorem 5.
For each i = 1 , , p , let η and f i be same as in Theorem 4, f i be approximate η-convex at x 0 X , and satisfies the condition (C). Then the converse statement of Theorem 4 is true.
Proof. 
Suppose that x 0 X is not a solution of the (LSVVTI). Then, for any δ 0 > 0 and τ 2 > 0 , there exists x B ( x 0 , δ 0 ) X and x 0 i * f i ( x 0 ) , such that
max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) < τ 2 x x 0 ,
it implies
x 0 i * , η ( x , x 0 ) < τ 2 x x 0 .
Since f i is approximate η -convex at x 0 X , for any τ 2 > 0 , there exists δ ¯ i > 0 , such that for δ : = min δ 0 , δ ¯ i : i = 1 , p , we have
f i ( x ) f i ( x 0 ) + x 0 i * , η ( x , x 0 ) τ 2 x x 0 , x B ( x 0 , δ ) X and x 0 i * f i ( x 0 ) ,
we can write it as
x 0 i * , η ( x , x 0 ) f i ( x ) f i ( x 0 ) τ 2 x x 0 .
From (7) and (8), we have
τ 2 x x 0 > f i ( x ) f i ( x 0 ) τ 2 x x 0 , x B ( x 0 , δ ) X .
Hence, we have
f i ( x ) f i ( x 0 ) < τ x x 0 ,
this implies that
max 1 i p f i ( x ) f i ( x 0 ) < τ x x 0 , x B ( x 0 , δ ) X ,
which is a contradiction to the fact that x 0 is a local sharp efficient solution of (VOP). □
In next theorem, the same result of Theorem 4 is obtained by substituting the strictly approximate η -quasiconvex type-II condition instead of approximate η -convexity condition on f i .
Theorem 6.
Let η and f i be the same as in Theorem 4, f i : X R be a strictly approximate η-quasiconvex type-II at x 0 X , for each i = 1 , , p , and satisfies the condition (C). If x 0 solves (LSVVTI), then it is a local sharp efficient solution of (VOP).
Proof. 
Assume that x 0 X is not a local sharp efficient solution of (VOP). Then, for any δ 0 > 0 and τ > 0 , there exists x B ( x 0 , δ 0 ) X , such that
max 1 i p f i ( x ) f i ( x 0 ) < τ x x 0 ,
it implies,
f i ( x ) f i ( x 0 ) < τ x x 0 .
Since f i is a strictly approximate η -quasiconvex type-II at x 0 X , for any τ > 0 , there exists δ ¯ i > 0 , such that by setting δ = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
x 0 i * , η ( x , x 0 ) 0 < τ x x 0 , x B ( x 0 , δ ) X and x 0 i * f i ( x 0 ) ,
implies that
max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) < τ x x 0 , x B ( x 0 , δ ) X and x 0 i * f i ( x 0 ) .
This means that x 0 is not a solution of (LSVVTI). □
In the following theorem, we can get the the generalization of Theorem 5 by assuming the strictly approximate η -pseudoconvex type-II condition on f i .
Theorem 7.
For each i = 1 , , p , let η and f i be same as in Theorem 4, f i be a strictly approximate η-pseudoconvex type-II at x 0 X , and satisfies the condition (C). If x 0 is a weak local sharp efficient solution of (VOP), then it is also a solution of (LSVVTI).
Proof. 
Suppose that x 0 X is not a solution of (LSVVTI). Then, for any δ 0 > 0 and τ > 0 , there exists x B ( x 0 , δ 0 ) X and x 0 i * f i ( x 0 ) , such that
max 1 i p max x 0 i * f i ( x 0 ) x 0 i * , η ( x , x 0 ) < τ x x 0 .
Hence, we have,
x 0 i * , η ( x , x 0 ) < τ x x 0 ,
and we can rewrite as
x 0 i * , η ( x , x 0 ) + τ x x 0 > 0 .
Since f i is a strictly approximate η -pseudoconvex type-II at x 0 X , for any τ > 0 , there exists δ ¯ i > 0 such that, for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
f i ( x ) > f i ( x 0 ) , x B ( x 0 , δ ) X .
Therefore, we have
f i ( x ) f i ( x 0 ) < 0 τ d ( x , X ¯ ) ,
this implies that
max 1 i p f i ( x ) f i ( x 0 ) < τ d ( x , X ¯ ) , x B ( x 0 , δ ) X .
Therefore, we show that x 0 is a local weak sharp efficient solution of (VOP). This completes the proof. □

4. Minty Local Sharp Vector Variational Type Inequalities

In this section, we present relationship between the solutions of Minty local sharp vector variational type inequalities (MLSVVTI) and local sharp (or weak local sharp) efficient solutions of vector optimization problem (VOP).
Now, we consider Minty local sharp and Minty weak local sharp formulations of vector variational type inequality problems as follows:
  • (MLSVVTI): Finding x 0 X , there exists a δ -neighborhood of x 0 and any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) τ x x 0 , x i * f i ( x ) .
  • (MWLSVVTI): For finding x 0 X , there exists a δ -neighborhood of x 0 and any τ > 0 , such that x B ( x 0 , δ ) X and
    max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) τ d ( x , X ¯ ) , x i * f i ( x ) ,
    where X ¯ = { x X f ( x ) = f ( x 0 ) } = X f 1 ( f ( x 0 ) ) .
Theorem 8.
For each i = 1 , , p , let η and f i be same as in Theorem 4, f i be approximate η-convex at x 0 X , and satisfies the condition (C). If x 0 solves (MLSVVTI), then x 0 is a local sharp efficient solution of (VOP).
Proof. 
Suppose that x 0 X is not a local sharp efficient solution of (VOP). Then, for any δ 0 > 0 and τ 2 > 0 , there exists x B ( x 0 , δ 0 ) X , such that
max 1 i p f i ( x ) f i ( x 0 ) < τ 2 x x 0 ,
it implies,
f i ( x ) f i ( x 0 ) < τ 2 x x 0 .
Since f i is approximate η -convex at x 0 X , for any τ 2 > 0 , there exists δ ¯ i > 0 , such that, for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
f i ( x 0 ) f i ( x ) + x i * , η ( x 0 , x ) τ 2 x 0 x , x B ( x 0 , δ ) X and x i * f i ( x ) .
It follows from (14) and (15), we have
τ 2 x x 0 > x i * , η ( x 0 , x ) τ 2 x 0 x , x B ( x 0 , δ ) X and x i * f i ( x ) ,
that is,
τ x x 0 > x i * , η ( x 0 , x ) ,
implies that
max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) < τ x x 0 , x B ( x 0 , δ ) X and x i * f i ( x ) ,
which is a contradiction to the fact that x 0 solves (MLSVVTI). This completes the proof. □
In following theorem, we can get the converse result of Theorem 8 by assuming the approximate η -convexity of f i instead of f i .
Theorem 9.
For each i = 1 , , p , let η and f i be same as in Theorem 8, f i : X R be approximate η-convex at x 0 X , and satisfies the condition (C). If x 0 is a local sharp efficient solution of (VOP), then x 0 solves (MLSVVTI).
Proof. 
Suppose that x 0 X is not a solution of the (MLSVVTI). Then, for any δ 0 > 0 and τ 2 > 0 , there exists x B ( x 0 , δ 0 ) X and x i * f i ( x ) , such that
max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) < τ 2 x x 0 ,
it implies,
x i * , η ( x , x 0 ) < τ 2 x x 0 .
Since f i is approximate η -convex at x 0 X , for any τ 2 > 0 , there exists δ ¯ i > 0 , such that, for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
f i ( x 0 ) f i ( x ) + x i * , η ( x 0 , x ) τ 2 x 0 x , x B ( x 0 , δ ) X and x i * f i ( x ) ,
we can rewrite as
x i * , η ( x , x 0 ) f i ( x ) f i ( x 0 ) τ 2 x x 0 .
Combining (16) and (17), we have
τ 2 x x 0 > f i ( x ) f i ( x 0 ) τ 2 x x 0 , x B ( x 0 , δ ) X .
Hence, we have
f i ( x ) f i ( x 0 ) < τ x x 0 ,
implies that
max 1 i p f i ( x ) f i ( x 0 ) < τ x x 0 , x B ( x 0 , δ ) X .
This is a contradiction to the fact that x 0 is a local sharp efficient solution of (VOP). □
In following theorem, we can get same result of Theorem 8 by assuming the strictly approximate η -quasiconvex type-II condition insted of approximate η -convexity on f i .
Theorem 10.
For each i = 1 , , p , let η and f i be same as in Theorem 8, f i be a strictly approximate η-quasiconvex type-II at x 0 X , and satisfies the condition (C). If x 0 solves (MLSVVTI), then x 0 is a local sharp efficient solution of (VOP).
Proof. 
Assume that x 0 X is not a local sharp efficient solution of (VOP). Then, for any δ 0 > 0 and τ > 0 , there exists x B ( x 0 , δ 0 ) X , such that
max 1 i p f i ( x ) f i ( x 0 ) < τ x x 0 ,
it implies,
f i ( x ) f i ( x 0 ) < τ x x 0 .
Hence, we can rewrite as
f i ( x 0 ) ( f i ( x ) ) < τ x 0 x .
Since f i is a strictly approximate η -quasiconvex type-II at x 0 X , for any τ > 0 , there exists δ ¯ i > 0 such that, for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
x i * , η ( x 0 , x ) 0 , x B ( x 0 , δ ) X and x i * f i ( x ) .
That is,
x i * , η ( x , x 0 ) 0 < τ x x 0 ,
implies that
max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) < τ x x 0 , x B ( x 0 , δ ) X and x i * f i ( x ) ,
which is a contradiction to the fact that x 0 solves (MLSVVTI). □
The following theorem is an improvement of the Theorem 9 for the weak local sharp efficient solution of (VOP).
Theorem 11.
For each i = 1 , , p , let η and f i be same as in Theorem 8, f i : X R be a strictly approximate η-pseudoconvex type-II at x 0 X , and satisfies the condition (C). If x 0 is a weak local sharp efficient solution of (VOP), then x 0 solves (MLSVVTI).
Proof. 
On the contrary, assume that x 0 X is not a solution of (MLSVVTI). Then, for any δ 0 > 0 and τ > 0 , there exists x B ( x 0 , δ 0 ) X and x i * f i ( x ) , such that
max 1 i p max x i * f i ( x ) x i * , η ( x , x 0 ) < τ x x 0 .
Hence, we obtain
x i * , η ( x , x 0 ) < τ x x 0 ,
it implies,
x i * , η ( x 0 , x ) + τ x 0 x > 0 .
Since f i is a strictly approximate η -pseudoconvex type-II at x 0 X , for any τ > 0 , there exists δ ¯ i > 0 such that, for δ : = min { δ 0 , δ ¯ i : i = 1 , , p } , we have
f i ( x 0 ) > f i ( x ) , x B ( x 0 , δ ) X .
This implies that
f i ( x ) f i ( x 0 ) < 0 τ d ( x , X ¯ ) ,
hence, we have
max 1 i p f i ( x ) f i ( x 0 ) < τ d ( x , X ¯ ) , x B ( x 0 , δ ) X .
This is a contradiction to the fact that x 0 is a weak local sharp efficient solution of (VOP). □

5. Conclusions

In this paper, we formulate local (Minty local) sharp vector variational type inequality problems and establish the relationship between local (Minty local) sharp vector variational type inequality and vector optimization problems involving locally Lipschitzian functions; that is, in Theorems 4–7, we give the necessary or sufficient conditions between the local sharp vector variational type inequality (LSVVTI) and vector optimization problems (VOP), and in Theorems 8–11, we give the necessary or sufficient conditions between the Minty local sharp vector variational type inequality (MLSVVTI) and vector optimization problems (VOP), by using the approximate η -convexity, strictly approximate η -quasiconvex type-II condition, and strictly approximate η -pseudoconvex type-II condition at x 0 X ,
The results of our research in this paper are generalized, extended, and improved studies of concepts of ϵ -efficient solutions for vector minimization problems [13], ϵ -optimality for scalar problems to vector maximization problems, or efficiency problems [14], weak sharp minima for scalar optimization problem [15], weak local sharp efficient solution of a constrained multi-objective optimization, and the local and global weak sharp efficient solutions of such a multi-objective optimization problem [16].

Author Contributions

Conceptualization, J.K.K.; investigation, S. All the authors have contributed equally to this paper. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Ministry of Education of the republic of Korea, grant number 2018R1D1A1B07045427.

Acknowledgments

All the authors wish to express their warm thanks to the referees.

Conflicts of Interest

The authors declare no conflict of interest.

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