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Optimality and mixed duality in multiobjective E-convex programming

Abstract

In this paper, we consider a class of multiobjective E-convex programming problems with inequality constraints, where the objective and constraint functions are E-convex functions which were firstly introduced by Youness (J. Optim. Theory Appl. 102:439-450, 1999). Fritz-John and Kuhn-Tucker necessary and sufficient optimality theorems for the multiobjective E-convex programming are established under the weakened assumption of the theorems in Megahed et al. (J. Inequal. Appl. 2013:246, 2013) and Youness (Chaos Solitons Fractals 12:1737-1745, 2001). A mixed duality for the primal problem is formulated and weak and strong duality theorems between primal and dual problems are explored. Illustrative examples are given to explain the obtained results.

1 Introduction

The concepts of an E-convex set and an E-convex function were introduced first by Youness [1]. Subsequently, necessary and sufficient optimality criteria for a class of E-convex programming problems were discussed by Youness [2], and E-Fritz-John and E-Kuhn-Tucker problems, which modified the Fritz-John and Kuhn-Tucker problems, were also presented. In Megahed et al. [3], the concept of an E-differentiable convex function which transforms a non-differentiable convex function to a differentiable function under an operator E: \(\Bbb{R}^{n} \rightarrow\Bbb{R}^{n}\) was presented, then a solution of mathematical programming with a non-differentiable function could be found by applying the Fritz-John and Kuhn-Tucker conditions due to Mangasarian [4].

However, on the other hand, the results on E-convex programming in Youness [1] were not correct, and some counterexamples were given by Yang [5]. The results concerning the characterization of an E-convex function f in terms of its E-epigraph in Youness [1] were also not correct, and some characterizations of E-convex functions using a different notion of epigraph were given by Duca et al. [6].

Based on the correct results in Youness [1], a class of semi-E-convex functions was introduced by Chen [7], the concepts of E-quasiconvex functions and strictly E-quasiconvex functions were introduced by Syau and Stanley Lee [8], respectively.

In fact, after defining the E-convex function in 1999, Youness [1] pointed out that the E-convex function that he defined had more generalized results than a convex function. He dealt mainly with some properties of an E-convex set and an E-convex function, a programming problem without E in both objective functions or constrained functions, and the relation between solutions of objective and constrained functions with and without E. He then drew the conclusion that the E-convex set and E-convex function were more generalized than the convex set and function proposed by Hanson [9], Hanson and Mond [10], and Kaul and Kaur [11].

This paper also addresses a counterexample of Theorem 4.1 in Youness [1]. Characterization of efficient solutions based on the modification of Theorem 4.2 in Youness [1] is presented. A sufficient optimality theorem is given by using this characterization and E-convexity conditions. We obtain the scalarization method due to Chankong and Haimes [12] for multiobjective E-convex programming. By employing this scalarization method, Fritz-John and Kuhn-Tucker necessary theorems for the multiobjective case are established under the weakened assumption of the theorems in Megahed et al. [3] and Youness [2]. Moreover, a mixed type dual for the primal problem is given. Under the assumption of the E-convex conditions, weak and strong duality theorems between the primal and dual problems are established, and we also propose some examples to illustrate our results.

2 Preliminaries

Let \(\Bbb{R}^{n}\) denote the n-dimensional Euclidean space. The following conventions for a vector in \(\Bbb{R}^{n}\) will be used in this paper:

$$\begin{aligned} &x< y\quad \mbox{if and only if}\quad x_{i}< y_{i} \quad \mbox{for all } i=1,2, \ldots,p, \\ &x\leqq y \quad\mbox{if and only if}\quad x_{i} \leqq y_{i} \quad\mbox{for all } i=1,2, \ldots, p, \\ &x\leq y \quad\mbox{if and only if}\quad x_{i} \leqq y_{i} \quad\mbox{for all } i=1,2, \ldots,p \mbox{ but } x\neq y. \end{aligned}$$

We present some concepts of E-convex set and E-convex function; for convenience, we recall the definition of E-convex set first.

Definition 2.1

[1]

A set \(M\subset{\Bbb{R}^{n}}\) is said to be E-convex iff there is a map \(E:{\Bbb{R}^{n}} \to{\Bbb{R}^{n}}\) such that \((1-\lambda)E(x)+ \lambda E(y) \in M\), for each \(x,y \in M\), and \(\lambda\in[0, 1]\).

It is clear that if \(M\subset\Bbb{R}^{n}\) is convex, then M is E-convex by taking a map \(E:{\Bbb{R}^{n}} \to{\Bbb{R}^{n}}\) as the identity map, but the converse may not be true; see the following example.

Example 2.1

Consider the set \(S_{1}= \{(x,y)\in\Bbb{R}^{2}\mid y\leqq x, 0\leqq x\leqq1 \}\). Let \(E(x,y)=(\sqrt{x},y)\), it is clear that \(S_{1}\) is E-convex (since \(S_{1}\) is convex). It is easy to check that \(E(S_{1})\) is E-convex by taking the map \(E(x,y)=(\sqrt{x},y)\), while \(E(S_{1})\) is not convex, where \(E(S_{1})= \{(x,y)\in\Bbb{R}^{2}\mid y\leqq x^{2}, 0\leqq x\leqq1 \}\).

However, if \(E: \Bbb{R}^{n} \to\Bbb{R}^{n}\) is a surjective map, it is easy to check that the converse also holds. Note that E is said to be surjective if there exists \(x\in M\) such that \(E(x)=y\), \(\forall y \in E(M)\).

Definition 2.2

[1]

A function \(f: {\Bbb{R}^{n}}\to{\Bbb{R}}\) is said to be E-convex on \(M \in{\Bbb{R}^{n}}\) iff there is a map \(E: {\Bbb{R}^{n}} \to{\Bbb{R}^{n}}\) such that M is an E-convex set and

$$f\bigl(\lambda E(x) + (1-\lambda)E(y)\bigr)\leqq\lambda f\bigl(E(x)\bigr) + (1- \lambda) f\bigl(E(y)\bigr) $$

for each \(x,y \in M\) and \(0 \leqq\lambda\leqq1\). Moreover, if

$$f\bigl(\lambda E(x) + (1-\lambda)E(y)\bigr)\geqq\lambda f\bigl(E(x)\bigr) + (1- \lambda) f\bigl(E(y)\bigr) $$

then f is called E-concave on M. If the inequality signs in the above two inequalities are strict, then f is called strictly E-convex and strictly E-concave, respectively.

Remark 2.1

Let f, g be E-convex on M. Then \(f + g\), αf (\(\alpha\geqq 0\)) are E-convex on the set M.

It is easy to check that every convex function f on a convex set M is an E-convex function, where E is the identity map. But the converse may not hold, we recall the example from [1].

Example 2.2

Define the function \(f: \Bbb{R}\to\Bbb{R}\) as

$$f(x)= \left \{ \textstyle\begin{array}{@{}l@{\quad}l} 1, & \mbox{if } x> 0, \\ -x, & \mbox{if } x\leqq0, \end{array}\displaystyle \right . $$

and let \(E:{\Bbb{R}} \to{\Bbb{R}}\) be defined as \(E(x)=-x^{2}\). Then \(\Bbb{R}\) is an E-convex set and f is E-convex but not convex.

Obviously, if f is a real-valued differentiable function on an E-convex set \(M \subset{\Bbb{R}^{n}}\), we can define a differentiable E-convex function in the following.

Definition 2.3

f is E-convex on M if and only if for each \(x,y \in M\)

$$f\bigl(E(x)\bigr)-f\bigl(E(y)\bigr) \geqq\nabla f\bigl(E(y)\bigr) \bigl(E(x)-E(y)\bigr). $$

3 Optimality criteria

In this section, we suppose that \(E:M\to M\) (\(M\subset{\Bbb{R}^{n}}\)) is a surjective map. In addition, as we know if a set \(M\subset\Bbb{R}^{n}\) is E-convex with respect to a mapping \(E: \Bbb{R}^{n} \to\Bbb{R}^{n}\), then \(E(M)\subset M\) (see [1], Proposition 2.2). For an E-convex function f, we say that the function \((f\circ E): M\to\Bbb{R}\) defined by \((f\circ E)(x)=f(E(x))\) for all \(x\in M\) is well defined (see [8]).

Consider the following multiobjective nonlinear program:

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} (\mbox{MP}) &\mbox{Maximize}& f(x)=\bigl(f_{1}(x),f_{2}(x), \ldots, f_{p}(x)\bigr),\\ &\mbox{subject to}& x\in M= \bigl\{ x \in\Bbb{R}^{n}\mid g_{j}(x) \leqq0 , j=1,2, \ldots, m \bigr\} , \end{array}\displaystyle \end{aligned}$$

where \(f_{i}:{\Bbb{R}^{n}}\to{\Bbb{R}}\) , \(i\in P=\{1,2,\ldots,p\}\) and \(g_{j}:{\Bbb{R}^{n}}\to{\Bbb{R}}\) , \(j\in Q=\{1,2,\ldots,m\}\) are E-convex functions.

Then we give the following E-convex program related to (MP):

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l} (\mathbf{MP}_{\mathbf{E}}) &\mbox{Maximize} &(f\circ E) (x)= \bigl((f_{1}\circ E) (x),f_{2}\circ E\bigr) (x), \ldots, f_{p}\circ E) (x)),\\ &\mbox{subject to}& x\in E(M)= \bigl\{ x\in\Bbb{R}^{n}\mid (g_{j} \circ E) (x) \leqq0, j=1,2, \ldots,m \bigr\} , \end{array}\displaystyle \end{aligned}$$

where \(f_{i}\circ E\) , \(i\in P\) and \(g_{j}\circ E\) , \(j\in Q\) are differentiable on M.

It states that, for a surjective map E, if f is E-convex, then \(f\circ E\) is obviously convex.

Definition 3.1

A point \(\bar{x} \in E(M)\) is said to be an efficient solution of \({(\mathrm{MP}_{\mathrm{E}})}\) if and only if there is no other \(x\in E(M)\) such that

$$(f_{i_{0}}\circ E) (x) < (f_{i_{0}}\circ E) (\bar{x}) \quad \mbox{for some } {i_{0}}\in P $$

and

$$(f_{i}\circ E) (x) \leqq(f_{i}\circ E) (\bar{x}) \quad \mbox{for all } i\in P, $$

where \(P= \{1,2,\ldots,p \}\), that is

$$(f\circ E) (x) \leq(f\circ E) (\bar{x}). $$

Now we give a counterexample which is easier to understand than the one in [5], to show that Theorem 4.1 (In (MP), the set M is an E-convex set.) in Youness [1] is incorrect.

Example 3.1

In (MP), \(g_{j}\), \(j\in Q\) are E-convex, but M does not always need to be E-convex set.

Let \(g(x)=x\in\Bbb{R} \) and define the map E as \(E(x)=|x|\). Then \(g(x)\) is E-convex. Take \(x=-1\), \(y=-1/2\). Then \(g(-1)=-1\), \(g(-1/2)=-1/2\).

So, \(-1,-1/2 \in M= \{x\in\Bbb{R}\mid g(x) \leqq0 \}\). But, for all \(\lambda\in[0,1]\),

$$g\bigl(\lambda E(x)+(1-\lambda)E(y)\bigr)=g\bigl(\lambda|x|+(1-\lambda)|y| \bigr)= {\frac{1+\lambda}{2}} >0. $$

Hence, M is not E-convex set.

Also, Theorem 4.2 in Youness [1] is incorrect. The counterexample was given by Yang [5].

Now we would like to present the characterization of efficient solutions modifying Theorem 4.2 in Youness [1] by using only surjective assumption of the mapping E as follows.

Theorem 3.1

Let \(E: M\to M\) be a surjective map. Then is an efficient solution of (MPE) if and only if \(E(\bar{x})\) is an efficient solution of (MP).

Proof

Suppose that \(E(\bar{x})\) is not an efficient solution of (MP). Then there exists \(\bar{z}\in M\) such that \(f(\bar{z}) \leq f(E(\bar{x}))\). Since E is surjective, we have \(E(M)=M\), then there exists \(\bar{y} \in M\) such that \(\bar{z}=E(\bar{y})\), that is, \((f\circ E)(\bar{y}) \leq(f\circ E)(\bar{x})\), which contradicts that is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)).

Conversely, suppose that is not an efficient solution of \({(\mathrm{MP}_{\mathrm{E}})}\), then there exists \(y^{*}\in E(M)\) such that \((f\circ E)(y^{*}) \leq(f\circ E)(\bar{x})\). Since E is surjective, there exists \(z^{*}\in M\) such that \(E(y^{*})=z^{*}\). Hence \(f(z^{*}) \leq f(E(\bar{x}))\), which contradicts that \(E(\bar{x})\) is an efficient solution of (MP). □

With the help of Theorem 3.1 and the E-convexity assumption, we now give the sufficient optimality condition.

Theorem 3.2

(Sufficient optimality condition)

Assume that \((\bar{x},\bar{\lambda},\bar{\mu})\) satisfies the following conditions:

$$\begin{aligned} &\bar{\lambda}\nabla(f\circ E) (\bar{x})+\bar{\mu}\nabla(g\circ E) (\bar{x})=0, \\ &\bar{\mu}(g\circ E) (\bar{x})=0, \\ &(g\circ E) (\bar{x}) \leqq0, \\ &\bar{\lambda}> 0,\qquad\bar{\mu}\geqq0, \end{aligned}$$

where \(\bar{\lambda}\in\Bbb{R}^{p}\), \(\bar{\mu}\in\Bbb{R}^{m}\).

Then is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)).

Proof

Suppose that is not an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)), then there exists \(x^{*}\in E(M)\) such that

$$\begin{aligned} (f\circ E) \bigl(x^{*}\bigr) \leq(f\circ E) (\bar{x}). \end{aligned}$$
(3.1)

Since \(f_{i}\) and \(g_{j}\) are E-convex and \(f_{i}\circ E\) and \(g_{j}\circ E\) are differentiable on M, for any \(x\in E(M)\), we have

$$\begin{aligned} &(f_{i}\circ E) (x)-(f_{i}\circ E) (\bar{x}) \geqq(x-\bar{x})\nabla(f_{i}\circ E) (\bar{x}), \end{aligned}$$
(3.2)
$$\begin{aligned} &(g_{j}\circ E) (x)-(g_{j}\circ E) (\bar{x}) \geqq(x-\bar{x})\nabla(g_{j}\circ E) (\bar{x}). \end{aligned}$$
(3.3)

Since \(\bar{\lambda}>0\), \(\bar{\mu}\geqq0\), from (3.2) and (3.3), for each \(i\in P\) and \(j\in Q\), we have

$$\begin{aligned} &\bar{\lambda}(f\circ E) (x)-\bar{\lambda}(f\circ E) (\bar{x})+\bar{\mu}(g\circ E) (x)-\bar{\mu}(g\circ E) (\bar{x}) \\ &\quad\geqq(x-\bar{x})\bigl[\bar{\lambda}\nabla(f\circ E) (\bar{x})+\bar{\mu}\nabla (g \circ E) (\bar{x})\bigr]. \end{aligned}$$

Since \(\bar{\lambda}\nabla(f\circ E)(\bar{x})+\bar{\mu}\nabla(g\circ E)(\bar{x})=0\), \(\bar{\mu}(g\circ E)(\bar{x})=0\) and \((g\circ E)(\bar{x}) \leqq0\), we get

$$(f\circ E) (x) \geqq(f\circ E) (\bar{x}), $$

which contradicts (3.1). □

Remark 3.1

If we replace the E-convexity of \(f_{i}\) and \(\bar{\lambda}> 0\) by the strictly E-convexity of \(f_{i}\) and \(\bar{\lambda}\geq0\), respectively, then Theorem 3.2 also holds.

Now we present the following lemma due to Chankong and Haimes [12] to deal with the relationship between the scalar and multiobjective programming problems.

Lemma 3.1

is an efficient solution for \({(\mathrm{MP}_{\mathrm{E}})}\) if and only if solves

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} (\mathbf{MP}_{\mathbf{E}})_{\boldsymbol {k}} &\textit{Minimize} & (f_{k}\circ E) (x)\\ &\textit{subject to} &(f_{i}\circ E) (x) \leqq(f_{i} \circ E) (\bar{x}),\quad i\in P^{k}:=P\setminus\{k\},\\ &&(g\circ E) (x) \leqq0, \end{array}\displaystyle \end{aligned}$$

for each \(k=1,2,\ldots,p\).

Proof

Suppose that is not a solution of \((\mathrm{MP}_{\mathrm{E}})_{k}\). Then there exists \(x\in E(M)\) such that

$$\begin{aligned} &(f_{k}\circ E) (x)< (f_{k}\circ E) (\bar{x}), \quad k\in P, \end{aligned}$$
(3.4)
$$\begin{aligned} &(f_{i}\circ E) (x)\leqq(f_{i}\circ E) (\bar{x}) , \quad i\neq k. \end{aligned}$$
(3.5)

From (3.4) and (3.5), we conclude that is not efficient for \({(\mathrm{MP}_{\mathrm{E}})}\).

Conversely, assume that is a solution of \((\mathrm{MP}_{\mathrm{E}})_{k}\) for every \(k \in P\), then for all \(x\in E(M)\) with \((f_{i}\circ E)(x)\leqq (f_{i}\circ E)(\bar{x})\), \(i\neq k\), we have \((f_{k}\circ E)(\bar{x}) \leqq(f_{k}\circ E)(x)\). Then there exists no other \(x\in E(M)\) such that \((f_{i}\circ E)(x) \leqq(f_{i}\circ E )(\bar{x})\), \(i\in P\), with strict inequality holding for at least one i. This implies that is efficient for (\(\mathrm{MP}_{\mathrm{E}}\)). □

Remark 3.2

Without loss of generality, we assume that \(P\cap Q= \emptyset\). Set

$$(G_{t}\circ E) (x)=\left \{ \textstyle\begin{array}{@{}l@{\quad}l} (f_{t}\circ E)(x)-(f_{t}\circ E)({\bar{x}}),& t \in P^{k},\\ (g_{t}\circ E)(x),& t\in Q, \end{array}\displaystyle \right . $$

and \(T=P^{k} \cup Q\). Then \((\mathrm{MP}_{\mathrm{E}})_{k}\) is equivalent to the following problem:

$$\min (f_{k}\circ E) (x) \quad\mbox{subject to}\quad (G_{t} \circ E) (x) \leqq0 ,\quad t\in T , \mbox{for each } k\in P. $$

In order to obtain the necessary optimality condition, we employ the following generalized linearization lemma due to Mangasarian [4].

Lemma 3.2

Let be a local solution of \((\mathrm{MP}_{\mathrm{E}})_{k}\), let \(f_{k}\circ E\), for each \(k\in P\) and \(G_{t}\circ E\), \(t\in T\) be differentiable at . Then the system

$$\begin{aligned}& \nabla(f_{k}\circ E) (\bar{x})z< 0, \\& \nabla(G_{W}\circ E) (\bar{x})z< 0, \\& \nabla(G_{V}\circ E) (\bar{x})z\leqq0, \end{aligned}$$

has no solution \(z\in\Bbb{R}^{n}\), for each \(k\in P\), where we denote

$$\begin{aligned} &I=\bigl\{ t \mid (G_{t}\circ E) (\bar{x})=0\bigr\} ,\qquad J=\bigl\{ t \mid (G_{t}\circ E) (\bar{x})< 0\bigr\} , \qquad I\cup J=T, \\ &V=\bigl\{ t \mid (G_{t}\circ E) (\bar{x})=0 \textit{ and } (G_{t}\circ E) \textit{ is } E\textit{-concave at } \bar{x}\bigr\} , \\ &W=\bigl\{ t\mid (G_{t}\circ E) (\bar{x})=0 \textit{ and } (G_{t}\circ E) \textit{ is not } E\textit{-concave at } \bar{x}\bigr\} , \\ &I=V\cup W. \end{aligned}$$

We establish the following Fritz-John necessary optimality criteria by using Lemma 3.2.

Theorem 3.3

(Fritz-John necessary condition)

Assume that \(\bar{x}\in E(M)\) is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)), then there exist \(\bar{\lambda}\in\Bbb{R}^{p}\), \(\bar{\mu}\in \Bbb{R}^{m}\) such that

$$\begin{aligned}& \bar{\lambda}\nabla(f\circ E) (\bar{x})+ \bar{\mu}\nabla(g\circ E) (\bar{x})=0, \\& \bar{\mu}(g\circ E) (\bar{x})=0, \\& (g\circ E) (\bar{x}) \leqq0, \\& (\bar{\lambda},\bar{\mu}) \geq0. \end{aligned}$$

Proof

Since is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)), then from Lemma 3.1, solves \((\mathrm{MP}_{\mathrm{E}})_{k}\) for each \(k\in P\). By Lemma 3.2 and Remark 3.2, we see that the system

$$\begin{aligned}& \nabla(f_{k}\circ E) (\bar{x})z< 0, \\& \nabla(G_{W}\circ E) (\bar{x})z< 0, \\& \nabla(G_{V}\circ E) (\bar{x})z\leqq0, \end{aligned}$$

has no solution \(z\in\Bbb{R}^{n}\). Hence by Motzin’s theorem [4], there exist \(\bar{\lambda}_{k}\), \(\bar{\mu}_{W}\), \(\bar{\mu}_{V}\) such that

$$\begin{aligned}& \bar{\lambda}_{k}\nabla(f_{k}\circ E) (\bar{x})+\bar{\mu}_{W}\nabla(G_{W}\circ E) (\bar{x})+\bar{\mu}_{V} \nabla(G_{V}\circ E) (\bar{x})=0, \\& (\bar{\lambda}_{k}, \bar{\mu}_{W}) \geq0, \\& \bar{\mu}_{V} \geqq0. \end{aligned}$$

Since \((G_{W}\circ E)(\bar{x})=0\) and \((G_{V}\circ E)(\bar{x})=0\), it follows that if we define \(\bar{\mu}_{J}=0\) and \(\bar{\mu}=(\bar{\mu}_{W}, \bar{\mu}_{V}, \bar{\mu}_{J})\), then

$$\bar{\mu}(G\circ E) (\bar{x})=\bar{\mu}_{W}(G_{W}\circ E) (\bar{x})+\bar{\mu}_{V}(G_{V}\circ E) (\bar{x})+\bar{\mu}_{J}(G_{J}\circ E) (\bar{x})=0, $$

here, we can reduce \(\bar{\mu}(g\circ E)(\bar{x})=0\). Thus \(\bar{\lambda}_{k}\nabla(f_{k}\circ E)(\bar{x})+\bar{\mu}(g\circ E)(\bar{x})=0\) and \((\bar{\lambda}_{k}, \bar{\mu}) \geq0\). Then, for each \(k\in P\), we have

$$\begin{aligned}& \bar{\lambda}\nabla(f\circ E) (\bar{x})+ \bar{\mu}\nabla(g\circ E) (\bar{x})=0, \\& (\bar{\lambda},\bar{\mu}) \geq0. \end{aligned}$$

Since \(x^{*}\in E(M)\), \((g\circ E)(x^{*}) \leqq0\).

The proof is complete. □

Theorem 3.4

(Kuhn-Tucker necessary condition)

If \(\bar{x}\in E(M)\) is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)) and \(G_{t}\circ E\), \(t\in T\) satisfies a constraint qualification [4] for \((\mathrm{MP}_{\mathrm{E}})_{k}\) for at least one \(k\in P\). Then there exist \(\bar{\lambda}\in\Bbb{R}^{p}\) and \(\bar{\mu}\in\Bbb{R}^{m}\) such that

$$\begin{aligned}& \bar{\lambda}\nabla(f\circ E) (\bar{x})+\bar{\mu}\nabla(g\circ E) (\bar{x})=0, \\& \bar{\mu}(g\circ E) (\bar{x})=0, \\& (g\circ E) (\bar{x}) \leqq0, \\& \bar{\lambda}\geq0, \qquad\bar{\mu}\geqq0. \end{aligned}$$

Proof

Since is an efficient solution of (\(\mathrm{MP}_{\mathrm{E}}\)), then by Theorem 3.3 there exist \(\bar{\lambda}\in\Bbb{R}^{p}\), \(\bar{\mu}\in\Bbb{R}^{m}\) such that \((\bar{x}, \bar{\lambda}, \bar{\mu})\) satisfies

$$\begin{aligned}& \bar{\lambda}\nabla(f\circ E) (\bar{x})+\bar{\mu}\nabla(g\circ E) (\bar{x})=0, \\& \bar{\mu}(g\circ E) (\bar{x})=0, \\& (g\circ E) (\bar{x}) \leqq0, \\& (\bar{\lambda},\bar{\mu})\geq0. \end{aligned}$$

We only have to show that \(\bar{\lambda}\geq0\), that is, \(\bar{\lambda}_{k} >0\) for at least one \(k\in P\).

Since \((\bar{\lambda},\bar{\mu})\geq0\), \((\bar{\lambda}, \bar{\mu}_{W}) \geq0\), we have \(\bar{\lambda}_{k} > 0\) for at least one \(k\in P\) if W is empty. Now, we show that \(\bar{\lambda}_{k} > 0\) for at least one \(k\in P\) if W is nonempty by contradiction.

Suppose that \(\bar{\lambda}_{k} = 0\) for all \(k\in P\). Since \(\bar{\mu}_{J} =0\) as we define in the proof of Theorem 3.3, we have \(\bar{\mu}_{W}\nabla(G_{W}\circ E)(\bar{x}) + \bar{\mu}_{V}\nabla (G_{V}\circ E)(\bar{x})=0\), \(\bar{\mu}_{W} \geq0\), \(\bar{\mu}_{V} \geqq0\). Since \(G_{t}\circ E\) satisfies the Arrow-Hurwicz-Uzawa constraint qualification [4] at for \({(\mathrm{MP}_{\mathrm{E}})_{k}}\) for at least one \(k\in P\), there exists \(\bar{z}\in\Bbb{R}^{n}\) such that

$$\begin{aligned} \nabla(G_{W}\circ E) (\bar{x})\bar{z}>0, \end{aligned}$$
(3.6)
$$\begin{aligned} \nabla(G_{V}\circ E) (\bar{x})\bar{z}\geqq0. \end{aligned}$$
(3.7)

Multiplying (3.6) and (3.7) by \(\bar{\mu}_{W}\) and \(\bar{\mu}_{V}\), respectively, then yields

$$\bar{\mu}_{W} \nabla(G_{W}\circ E) (\bar{x})\bar{z}+\bar{\mu}_{V} \nabla (G_{W}\circ E) (\bar{x})\bar{z}>0, $$

which contradicts the fact that

$$\bar{\mu}_{W} \nabla(G_{W}\circ E) (\bar{x})\bar{z}+\bar{\mu}_{V} \nabla (G_{W}\circ E) (\bar{x})\bar{z}=0. $$

Hence \(\bar{\lambda}_{k} > 0\) for at least one \(k\in P\). Then we obtain \(\bar{\lambda}\geq0\). □

Remark 3.3

If we replace our surjective assumption of E by bijection (or linearity) of E, then our Fritz-John and Kuhn-Tucker necessary optimality results reduce to the ones in Megahed et al. [3] (or Youness [2]).

Example 3.2

Consider the following problem:

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} \widehat{(\mathbf{MP})} &\mbox{Minimize}& \bigl(f_{1}(x),f_{2}(x) \bigr),\\ &\mbox{subject to}& x\in M= \bigl\{ x \in\Bbb{R} \mid g_{1}(x) \leqq0, g_{2}(x)\leqq0 \bigr\} , \end{array}\displaystyle \end{aligned}$$

where \(f_{1}(x)=x\), \(f_{2}(x)=x^{2}\), \(g_{1}(x)=x-1\), and \(g_{2}(x)=-x\).

Let \(E:M\to E(M)\) defined by \(E(x)=x+1\) be the surjective map, then we get the following E-convex programming problem related to \(\widehat{(\mathrm{MP})}\):

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} \widehat{(\mathbf{MP}_{\mathbf{E}})} &\mbox{Minimize}& \bigl((f_{1}\circ E) (x), (f_{2}\circ E) (x)\bigr),\\ &\mbox{subject to}& x\in E(M)= \bigl\{ x \in\Bbb{R} \mid (g_{1}\circ E) (x) \leqq0, (g_{2}\circ E) (x)\leqq0 \bigr\} , \end{array}\displaystyle \end{aligned}$$

where \((f_{1}\circ E)(x)=x-1\), \((f_{2}\circ E)(x)=x^{2}-2x+1\), \((g_{1}\circ E)(x)=x-2\), and \((g_{2}\circ E)(x)=-x+1\).

  1. (a)

    It is easy to check that the feasible sets of \({\widehat {(\mathrm{MP})}}\) and \({\widehat{(\mathrm{MP}_{\mathrm{E}})}}\) are \(M=[0, 1]\) and \(E(M)=[1,2]\), respectively.

  2. (b)

    By the definition of an efficient solution, we see that \(x^{*}=0 \in M\) is the efficient solution of \({\widehat{(\mathrm{MP})}}\) and \(\bar{x}=E(x^{*})=1\in E(M)\) is the efficient solution of \({\widehat {(\mathrm{MP}_{\mathrm{E}})}}\), hence Theorem 3.1 holds.

  3. (c)

    We can easily check that \((\bar{x}, (\bar{\lambda}_{1}, \bar{\lambda}_{2}), (\bar{\mu}_{1}, \bar{\mu}_{2}))=(1, ({1\over 2}, 1), (0, {1\over 2}))\) satisfy the conditions in Theorem 3.2, and \(\bar{x}=1\) is the efficient solution of \({\widehat{(\mathrm{MP}_{\mathrm{E}})}}\), hence Theorem 3.2 holds.

  4. (d)

    Since the efficient solution \(\bar{x}=1\) for \({\widehat {(\mathrm{MP}_{\mathrm{E}})}}\), also solves both \({\widehat{(\mathrm{MP}_{\mathrm{E}})}_{1}}\) and \({\widehat{(\mathrm{MP}_{\mathrm{E}})}_{2}}\), Lemma 3.1 holds, where

    $$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} \widehat{(\mathbf{MP}_{\mathbf{E}})}_{\mathbf{1}} &\mbox{Mimimize}& (f_{1}\circ E) (x),\\ &\mbox{subject to}& (f_{2}\circ E) (x)\leqq(f_{2}\circ E) ( \bar{x}),\\ &&x\in E(M), \end{array}\displaystyle \end{aligned}$$

    and

    $$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} \widehat{(\mathbf{MP}_{\mathbf{E}})}_{\mathbf{2}} &\mbox{Mimimize}& (f_{2}\circ E) (x),\\ &\mbox{subject to}& (f_{1}\circ E) (x)\leqq(f_{1}\circ E) (\bar{x}),\\ &&x\in E(M). \end{array}\displaystyle \end{aligned}$$
  5. (e)

    As \(\bar{x}=1\) is the efficient solution of \(\widehat {(\mathrm{MP}_{\mathrm{E}})}\), then there exist \(\bar{\lambda}=(\frac{1}{2}, 1)\) and \(\bar{\mu}= (0, \frac{1}{2})\) satisfy the conditions in Theorem 3.3, hence Theorem 3.3 holds.

  6. (f)

    \(\bar{x}= 1\) is the efficient solution of \(\widehat{(\mathrm{MP}_{\mathrm{E}})}\) and it is easy to check the problem \(\widehat{(\mathrm{MP}_{\mathrm{E}})}_{1}\) satisfies the Kuhn-Tucker constraint qualification [4], and there exist \(\bar{\lambda}=(\frac{1}{2}, 1)\) and \(\bar{\mu}= (0, \frac{1}{2})\) satisfying the conditions in Theorem 3.4, hence Theorem 3.4 holds.

4 Duality

Recently, several researchers found some results on mixed dual model under some generalized convexity; see [1315], for example. In this section, first we establish the following mixed dual problem (MD) to (MP):

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} (\mathbf{MD}) &\mbox{Maximize} &\displaystyle\biggl(f_{1}(u)+\sum _{j\in J_{0}}\mu_{j}^{T} g_{j}(u), \ldots ,f_{p}(u)+\sum_{j\in J_{0}} \mu_{j}^{T} g_{j}(u)\biggr)\\ &\mbox{subject to} &\displaystyle \sum_{i=1}^{p} \lambda_{i}^{T} \nabla f_{i}^{T}(u)+\sum _{j=1}^{q}\mu_{j}^{T} \nabla g_{j}(u)=0,\\ &&\displaystyle\sum_{j\in J_{\alpha}}\mu_{j}^{T} g_{j}(u)\geqq0 , \quad\alpha=1,2,\ldots ,r,\\ &&\displaystyle \lambda=(\lambda_{1}, \lambda_{2}, \ldots, \lambda_{p})\in\Lambda ^{+},\\ &&\displaystyle \mu_{j} \geqq0,\quad j\in Q=\{1,2,\ldots, q\}, \end{array}\displaystyle \end{aligned}$$

where \(J_{\alpha}\subset Q=\{1,2,\ldots,q\}\), \(\alpha=0,1,\ldots,r\) with \(\bigcup_{\alpha=0}^{r} J_{\alpha}=Q\) and \(J_{\alpha}\cap J_{\beta}=\emptyset\) if \(\alpha\neq\beta\). \(\Lambda^{+}=\{\lambda\in\Bbb{R}^{p} \mid\lambda\geqq0, \lambda^{T}e=1, e=(1,\ldots, 1)^{T}\in\Bbb{R}^{p}\}\).

Then we formulate the following mixed dual problem (\(\mathrm{MD}_{\mathrm{E}}\)) to (\(\mathrm{MP}_{\mathrm{E}}\)):

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l@{}} (\mathbf{MD}_{\mathbf{E}}) &\mbox{Maximize} & \displaystyle\biggl((f_{1} \circ E) (u)+\sum_{j\in J_{0}} \mu_{j}^{T}(g_{j} \circ E) (u),\ldots,\\ &&\displaystyle(f_{p}\circ E) (u)+\sum _{j\in J_{0}} \mu_{j}^{T}(g_{j}\circ E) (u)\biggr)\\ &\mbox{subject to} &\displaystyle \sum_{i=1}^{p} \lambda_{i}^{T} \nabla(f_{i}\circ E) (u)+\sum _{j=1}^{q}\mu_{j}^{T} \nabla(g_{j}\circ E) (u)=0 ,\\ &&\displaystyle\sum_{j\in J_{\alpha}}\mu_{j}^{T} (g_{j}\circ E) (u)\geqq0 ,\quad \alpha =1,2,\ldots,r,\\ &&\displaystyle \lambda=(\lambda_{1}, \lambda_{2}, \ldots, \lambda_{p})\in\Lambda ^{+},\\ &&\displaystyle \mu_{j} \geqq0,\quad j\in Q=\{1,2,\ldots, q\}, \end{array}\displaystyle \end{aligned}$$

where \(J_{\alpha}\subset Q=\{1,2,\ldots,q\}\), \(\alpha=0,1,\ldots,r\) with \(\bigcup_{\alpha=0}^{r} J_{\alpha}=Q\) and \(J_{\alpha}\cap J_{\beta}=\emptyset\) if \(\alpha\neq\beta\); \(\Lambda^{+}=\{\lambda\in\Bbb{R}^{p} \mid\lambda\geqq0, \lambda^{T}e=1, e=(1,\ldots, 1)^{T}\in\Bbb{R}^{p}\}\).

  1. (1)

    If \(J_{0}=Q\), then our mixed dual type (\(\mathrm{MD}_{\mathrm{E}}\)) (or (MD)) reduces to the Wolfe dual type.

  2. (2)

    If \(J_{0}=\emptyset\), then our mixed dual type (\(\mathrm{MD}_{\mathrm{E}}\)) (or (MD)) reduces to the Mond-Weir dual type.

Theorem 4.1

Let \(E:M\to M\) be a surjective map. Then ū is an efficient solution of (\(\mathrm{MD}_{\mathrm{E}}\)) if and only if \(E(\bar{u})\) is an efficient solution of (MD).

Proof

By Lemma 3.1, we can obtain this theorem. □

Assume that f is an E-convex function and \(E:M\to M \) (\(M\subset\Bbb{R}^{n}\)) is a surjective map, by Lemma 3.1, we can study dual problem between (MP) and (MD). Here, we would like to study the dual problem between \({(\mathrm{MP}_{\mathrm{E}})}\) and \({(\mathrm{MD}_{\mathrm{E}})}\).

Theorem 4.2

(Weak duality)

Assume that for all feasible x of \({(\mathrm{MP}_{\mathrm{E}})}\) and all feasible \((u,\lambda,\mu)\) of \({(\mathrm{MD}_{\mathrm{E}})}\), \(f_{i}\), \(g_{j}\) are E-convex functions. If also either

  1. (a)

    \(\lambda_{i}>0\) for all \(i=1,2,\ldots,p\), or

  2. (b)

    \(\sum_{i=1}^{p}\lambda_{i}f_{i}(\cdot)+\sum_{j=1}^{q}\mu_{j}g_{j}(\cdot)\) is strictly E-convex at u,

then the following cannot hold:

$$\begin{aligned} &(f_{i_{0}}\circ E) (x) \leqq(f_{i_{0}}\circ E) (u)+ \sum_{j\in J_{0}}\mu _{j}^{T}(g_{j} \circ E) (u) \quad\textit{for all } i_{0}\in P, \end{aligned}$$
(4.1)
$$\begin{aligned} &(f_{i}\circ E) (x) < (f_{i}\circ E) (u)+ \sum_{j\in J_{0}}\mu_{j}^{T}(g_{j} \circ E) (u) \quad\textit{for some } i\in P . \end{aligned}$$
(4.2)

Proof

Suppose to the contrary that (4.1) and (4.2) hold. Since x is feasible for \({(\mathrm{MP}_{\mathrm{E}})}\) and \(\mu\geqq0\), from (4.1) and (4.2), we imply

$$\begin{aligned} &(f_{i_{0}}\circ E) (x)+\sum_{j\in J_{0}} \mu_{j}^{T}(g_{j}\circ E) (x)\leqq (f_{i_{0}}\circ E) (u)+\sum_{j\in J_{0}} \mu_{j}^{T}(g_{j}\circ E) (u) \quad\mbox{for all } i_{0}\in P, \end{aligned}$$
(4.3)
$$\begin{aligned} &(f_{i}\circ E) (x)+\sum_{j\in J_{0}} \mu_{j}^{T}(g_{j}\circ E) (x)< (f_{i} \circ E) (u)+\sum_{j\in J_{0}}\mu_{j}^{T}(g_{j} \circ E) (u) \quad \mbox{for some } i\in P. \end{aligned}$$
(4.4)

If hypothesis (a) holds, then with \(\sum_{i=1}^{p}\lambda_{i}=1\), one has

$$\begin{aligned} \sum_{i=1}^{p}\lambda_{i}(f_{i} \circ E) (x)+\sum_{j\in J_{0}}\mu _{j}^{T}(g_{j} \circ E) (x)< \sum_{i=1}^{p} \lambda_{i}(f_{i}\circ E) (u)+\sum _{j\in J_{0}}\mu_{j}^{T}(g_{j}\circ E) (u) \end{aligned}$$
(4.5)

and since \(f_{i}\), \(g_{j}\) are E-convex and \(\lambda_{i}>0\), \(i=1,2,\ldots ,p\), \(\mu\geqq0\), it now follows from (4.5) that

$$\bigl(E(x)-E(u)\bigr)^{T}\Biggl(\sum_{i=1}^{p} \lambda_{i}\nabla(f_{i}\circ E) (u)+\sum _{j\in J_{0}}\mu_{j}^{T}(g_{j}\circ E) (u)\Biggr)< 0, $$

which contradicts the fact that

$$\sum_{i=1}^{p} \lambda_{i} \nabla(f_{i}\circ E) (u)+\sum_{j=1}^{q} \mu _{j}^{T}\nabla(g_{j}\circ E) (u)=0. $$

On the other hand, since \(\lambda_{i}\geqq0\), \(i=1,2,\ldots,p\) and \(\sum_{i=1}^{p}\lambda_{i}=1\), (4.3) and (4.4) imply

$$\begin{aligned} \sum_{i=1}^{p}\lambda_{i}(f_{i} \circ E) (x)+\sum_{j\in J_{0}}\mu _{j}^{T}(g_{j} \circ E) (x) \leqq\sum_{i=1}^{p} \lambda_{i}(f_{i}\circ E) (u)+\sum _{j\in J_{0}}\mu_{j}^{T}(g_{j}\circ E) (u) . \end{aligned}$$
(4.6)

Now (4.6) and hypothesis (b) imply (4.5), which also contradicts the fact that

$$\sum_{i=1}^{p} \lambda_{i} \nabla(f_{i}\circ E) (u)+\sum_{j=1}^{q} \mu _{j}^{T}\nabla(g_{j}\circ E) (u)=0. $$

 □

Corollary 4.1

Assume that weak duality (Theorem  4.2) holds between (\(\mathrm{MP}_{\mathrm{E}}\)) and (\(\mathrm{MD}_{\mathrm{E}}\)). If \((\bar{u},\bar{\lambda},\bar{\mu})\) is feasible for (\(\mathrm{MD}_{\mathrm{E}}\)) with \(\bar{\mu}^{T}(g\circ E)(\bar{u})=0\) and if ū is feasible for (\(\mathrm{MP}_{\mathrm{E}}\)), then ū is efficient for (\(\mathrm{MP}_{\mathrm{E}}\)) and \((\bar{u},\bar{\lambda},\bar{\mu})\) is efficient for (\(\mathrm{MD}_{\mathrm{E}}\)).

Proof

Suppose that ū is not efficient for (\(\mathrm{MP}_{\mathrm{E}}\)). Then there exists a feasible x for (\(\mathrm{MP}_{\mathrm{E}}\)) such that

$$\begin{aligned} &(f_{i_{0}}\circ E) (x)\leqq(f_{i_{0}}\circ E) (\bar{u}) \quad\mbox{for all } i_{0}\in P, \end{aligned}$$
(4.7)
$$\begin{aligned} &(f_{i}\circ E) (x)< (f_{i}\circ E) (\bar{u}) \quad\mbox{for some } i\in P. \end{aligned}$$
(4.8)

By hypothesis \(\bar{\mu}^{T}(g\circ E)(\bar{u})=0\), so (4.7) and (4.8) can be written as

$$\begin{aligned} &(f_{i_{0}}\circ E) (x)\leqq(f_{i_{0}}\circ E) (\bar{u})+\bar{\mu}^{T}(g\circ E) (\bar{u}) \quad\mbox{for all } i_{0}\in P, \\ &(f_{i}\circ E) (x)< (f_{i}\circ E) (\bar{u})+\bar{\mu}^{T}(g\circ E) (\bar{u}) \quad\mbox{for some } i \in P. \end{aligned}$$

Since \((\bar{u},\bar{\lambda}, \bar{\mu})\) is feasible for (\(\mathrm{MD}_{\mathrm{E}}\)) and x is feasible for (\(\mathrm{MP}_{\mathrm{E}}\)), these inequalities contradict weak duality (Theorem 4.2).

Also, suppose that \((\bar{u},\bar{\lambda},\bar{\mu})\) is not efficient for (\(\mathrm{MD}_{\mathrm{E}}\)), then there exists a feasible solution \((u,\lambda ,\mu)\) for (\(\mathrm{MD}_{\mathrm{E}}\)) such that

$$\begin{aligned} &(f_{j}\circ E) (u)+\mu^{T}(g\circ E) (u) \geqq(f_{j}\circ E) (\bar{u})+\bar{\mu}^{T}(g\circ E) (\bar{u}) \quad\mbox{for all } j\in P, \end{aligned}$$
(4.9)
$$\begin{aligned} &(f_{i}\circ E) (u)+\mu^{T}(g\circ E) (u)>(f_{i}\circ E) (\bar{u})+\bar{\mu}^{T}(g\circ E) (\bar{u}) \quad\mbox{for some } i\in P. \end{aligned}$$
(4.10)

Since \(\bar{\mu}^{T}(g\circ E)(\bar{u})=0\), (4.9) and (4.10) reduce to

$$\begin{aligned} &(f_{j}\circ E) (u)+\mu^{T}(g\circ E) (u) \geq(f_{j}\circ E) (\bar{u}) \quad\mbox{for all } j\in P, \\ &(f_{i}\circ E) (u)+\mu^{T}(g\circ E) (u)>(f_{i} \circ E) (\bar{u}) \quad\mbox{for some } i\in P. \end{aligned}$$

Since ū is feasible for (\(\mathrm{MP}_{\mathrm{E}}\)), these inequalities contradict weak duality (Theorem 4.2). Therefore ū and \((\bar{u},\bar{\lambda},\bar{\mu})\) are efficient for their respective problems. □

Theorem 4.3

(Strong duality)

Let be an efficient solution for \({(\mathrm{MP}_{\mathrm{E}})}\) and assume that satisfies a constraint qualification [4] for \({(\mathrm{MP}_{\mathrm{E}})_{k}}\) for at least one \(k=1,2,\ldots,p\). Then there exist \(\bar{\lambda}\in\Bbb{R}^{p}\) and \(\bar{\mu}\in\Bbb{R}^{q}\) such that \((\bar{x},\bar{\lambda},\bar{\mu})\) is feasible for \({(\mathrm{MD}_{\mathrm{E}})}\). Moreover, if weak duality (Theorem  4.2) holds between \({(\mathrm{MP}_{\mathrm{E}})}\) and \({(\mathrm{MD}_{\mathrm{E}})}\), then \((\bar{x},\bar{\lambda},\bar{\mu})\) is efficient for \({(\mathrm{MD}_{\mathrm{E}})}\).

Proof

Since is efficient for (\(\mathrm{MP}_{\mathrm{E}}\)), by Lemma 3.1, solves \((\mathrm{MP}_{\mathrm{E}})_{k}\) for all \(k=1,2,\ldots,p\). By hypothesis, there exists a \(k\in P= \{ 1,2,\ldots,p \}\) for which satisfies a constraint qualification of \((\mathrm{MP}_{\mathrm{E}})_{k}\).

From the Kuhn-Tucker necessary conditions [4], there exist \(\lambda_{i}\geqq0\) such that, for all \(i\neq k\) and \(\mu\geqq0\), \(\mu\in\Bbb{R}^{m}\),

$$\begin{aligned} &(f_{k}\circ E) (\bar{x})+\sum _{i\neq k}\lambda_{i}\nabla(f_{i}\circ E) ( \bar{x})+\nabla\mu^{T}(g\circ E) (\bar{x})=0, \end{aligned}$$
(4.11)
$$\begin{aligned} &\mu^{T}(g\circ E) (\bar{x})=0. \end{aligned}$$
(4.12)

Now we divide all terms in (4.11) and (4.12) by \(1+\sum_{i\neq k} \lambda_{i}\) and set \(\bar{\lambda}_{k}={\frac{1}{1+\sum_{i\neq k} \lambda_{i}}} > 0\), \(\bar{\lambda}_{j}={\frac{\lambda_{i}}{1+\sum_{i\neq k} \lambda_{i}}} \geqq0\), \(\bar{\mu}={\frac{\mu}{1+\sum_{i\neq k} \lambda_{i}}} \geqq0\). Since weak duality (Theorem 4.2) holds, from Corollary 4.1, we conclude that \((\bar{x},\bar{\lambda},\bar{\mu})\) is feasible as well as efficient for (\(\mathrm{MD}_{\mathrm{E}}\)). □

Example 4.1

Recall the problem in Example 3.2, and we now give the mixed dual problem to \(\widehat{(\mathrm{MP}_{\mathrm{E}})}\).

$$\begin{aligned} \textstyle\begin{array}{@{}l@{\quad}l@{\quad}l} \widehat{(\mathbf{MD}_{\mathbf{E}})} &\mbox{Maximize}& \bigl((f_{1}\circ E) (u)+\mu _{1}(g_{1}\circ E) (u), (f_{2}\circ E) (u)+\mu_{1}(g_{1}\circ E) (u) \bigr)\\ &\mbox{subject to}& \lambda^{T}\nabla(f\circ E) (u)+\mu^{T} \nabla (g\circ E) (u)=0,\\ && \mu_{2}(g_{2}\circ E) (u)\geqq0,\\ && \lambda_{1}+\lambda_{2}=1,\qquad \lambda\geqq0,\qquad \mu \geqq0, \end{array}\displaystyle \end{aligned}$$

where \(\lambda=(\lambda_{1}, \lambda_{2})\) and \(\mu=(\mu_{1}, \mu_{2})\).

As we know the feasible set of \(\widehat{(\mathrm{MP}_{\mathrm{E}})}\) is \(E(M)=[1, 2]\) and it is easy to check that the feasible set of \(\widehat {(\mathrm{MD}_{\mathrm{E}})}\) denoted by G is \(G=\{ (u, \lambda, \mu)\in\Bbb{R}\times\Bbb{R}^{2}\times\Bbb{R}^{2}\mid \lambda_{2}(2u-3)+1+\mu_{1}-\mu_{2}=0, \mu_{2}(-u+1)\geqq0, 0\leqq \lambda_{2} \leqq1, \mu_{1}\geqq0, \mu_{2}\geqq0\}\).

Now we check the validity of weak duality, say Theorem 4.2, that is, for any feasible point \(x\in E(M)\) and \((u, \lambda, \mu)\in G\) with positive \(\lambda_{1}\) and \(\lambda_{2}\),

$$ \begin{pmatrix} x-1\\ x^{2}-2x+1 \end{pmatrix} \leq \begin{pmatrix} u-1+\mu_{1}(u-2)\\ u^{2}-2u+1+\mu_{1}(u-2) \end{pmatrix} $$
(4.13)

cannot hold. In fact, by the positivity of \(\lambda_{2}\), we have \(G=\{ (u, \lambda, \mu)\in\Bbb{R}\times\Bbb{R}^{2}\times\Bbb{R}^{2}\vert\ 1\leqq u\leqq{3\over 2}-{{1+\mu_{1}}\over {2\lambda_{2}}}, 0< \lambda _{2} < 1, \mu_{1}\geqq0\}\), and

$$\min(x-1) =0 > \max\bigl(u-1+\mu_{1}(u-2)\bigr)={ {{1}\over {2}}-{{1}\over {2 \lambda_{2}}}}, $$

which implies (4.13) cannot hold, and we conclude that weak duality (Theorem 4.2) holds.

Finally we turn to strong duality (Theorem 4.3), as we know \(\bar{x}=1\) is an efficient solution of \(\widehat{(\mathrm{MP}_{\mathrm{E}})}\), and with the satisfy of Kuhn-Tucker constraint qualification [4], it is easy to check that there exist \(\bar{\lambda}=(1, 0)\) and \(\bar{\mu}=(0, 1)\) such that \((\bar{x}, \bar{\lambda}, \bar{\mu})=(1, (1,0), (0, 1))\) is a feasible solution of \(\widehat{(\mathrm{MD}_{\mathrm{E}})}\). Moreover, if weak duality (Theorem 4.2) holds, \((\bar{x}, \bar{\lambda}, \bar{\mu})=(1, (1,0), (0, 1))\) is efficient for \(\widehat{(\mathrm{MD}_{\mathrm{E}})}\), hence strong duality (Theorem 4.3) holds.

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Acknowledgements

This research was supported by Basic Science Research Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Education (NRF-2013R1A1A2A10008908).

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Piao, GR., Jiao, L. & Kim, D.S. Optimality and mixed duality in multiobjective E-convex programming. J Inequal Appl 2015, 335 (2015). https://doi.org/10.1186/s13660-015-0854-6

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