1 Introduction
For a given infinite compact Hausdorff topological space T and n∈ℕ, we associate with each triple π=(a,b,c)∈Π:=C(T)n×C(T)×ℝn, where C(T) is the Banach space of all continuous functions over the compact T, a continuous linear semi-infinite programming problem:
and its corresponding Haar’s dual problem:
where ℝ(T)+ is the set of nonnegative functions λ, and λ:T→ℝ+ such that λt≠0 for at most a finite number of indices belonging to T.
Among the recent applications of continuous linear semi-infinite programming (LSIP), let us mention that the primal problem P arises in functional approximation [5, 6], finance [12], Bayesian statistics [14], and the design of telecommunications networks [4, 13, 16], whereas the dual D has been used in robust Bayesian analysis [3] and optimization under uncertainty [1].
We denote the feasible (optimal) set of P and D by F(F*) and Λ(Λ*), respectively. In the space of parameters Π we consider the topology of the uniform convergence generated by the following extended distance: for given πi=(ai,bi,ci)∈Π, i=1,2, the distance between π1 and π2 is:
By ΠPC, ΠPIC, ΠPB and ΠPUB, (ΠDC, ΠDIC, ΠDB and ΠDUB) we denote the sets of parameters providing primal (dual) consistent, inconsistent, bounded, (with finite optimal value), and unbounded, (with unbounded optimal value) problem, respectively.
In ordinary linear programming (LP), if the primal problem is solvable then the dual problem is also solvable and the optimal values of both problems coincide. In LSIP these properties fail in general. The continuity property of π=(a,b,c) ensures nice theoretical properties (e.g., in the duality context) and has computational implications (for instance, continuity guarantees the convergence of LSIP discretization algorithms). In particular, Goberna, Lopez, Todorov, Ochoa and Vera de Serio, among others, have investigated conditions under which the primal-dual pair in LSIP satisfies some of the above mentioned properties (see [7, 10, 11, 15]).
In [11], Goberna and Todorov have considered the consistency of the primal and dual problems, and have presented a characterization of the sets of the primal partition {ΠPIC, ΠPB, ΠPUB} the sets of the dual partition {ΠDIC, ΠDB, ΠDUB} and the sets (or states) of the primal-dual partition, formed by the intersections of the corresponding states of the primal and dual partitions. The stability properties of the different states have been studied, as well.
In [10], Goberna and Todorov divided the set of parameters with bounded primal (dual) problem ΠPB (ΠDB) into sets of parameters that have solvable primal (dual), problem with bounded optimal set ΠPS (ΠDS) and a set of parameters that have unsolvable primal (dual), problem or unbounded optimal set ΠPN (ΠDN). This generates what we call a first general primal partition {ΠPIC, ΠPS, ΠPN, ΠPUB}, a first general dual partition {ΠDIC, ΠDS, ΠDN, ΠDUB}, and a first general primal-dual partition. In the same article, Goberna and Todorov characterized, by means of necessary and sufficient conditions, when a given parameter belongs to a certain state of the above partitions.
They have also studied several topological and stability properties of each cell of the partitions. Later on, Ochoa and Vera de Serio reconsidered the characterizations presented in [11], and investigated the stability of the states in the general case [15], i.e., without continuity properties of the functions involved in LSIP problems.
In this paper we present a more natural primal-dual partition in continuous LSIP than the one given in [10]. The new partition is generated by dividing the set of bounded primal (dual) problems ΠPB (ΠDB) in two: the set of parameters that have solvable primal (dual) problem ΠPS (ΠDS), and the set of parameters that have unsolvable primal (dual) problem ΠPn (ΠDn). Formally, we consider the partitions {ΠPIC, ΠPs, ΠPn, ΠPUB} ({ΠDIC, ΠDs, ΠDn, ΠDUB}) of Π from the primal (dual) perspective, and the primal-dual {ΠPs∩ΠDs, ΠPn∩ΠDs, ΠPs∩ΠDn, ΠPn∩ΠDn} of the set of parameters with primal and dual bounded problems.
We have obtained some necessary and some sufficient conditions showing that a certain element of the space of parameters belongs to certain subset generated by the second general primal-dual partition. Intersecting the nonempty pairs of the new general primal and dual partitions we obtain the second general primal-dual partition. By means of suitable examples we demonstrate that each subset of the second general primal-dual partition is nonempty. Only in a few cases we have succeeded to find necessary and sufficient conditions. If it is not the case, we provide counterexamples showing that given conditions are only necessary or sufficient. Finally, we investigate several topological and stability properties of the cells in the second general primal-dual partition.
This paper is organized as follows. In Section 2, we introduce the necessary notations, recall the basic results on LSIP which are frequently used throughout this article, and summarize the conditions presented in [10] and [11] that characterize the states of the primal-dual partition and the first general primal-dual partition. Section 2.1 provides new conditions which are either necessary of sufficient guaranteeing that a given parameter belongs to a certain element of the second general primal-dual partition. Finally, we study some topological properties of the states of the second general primal-dual partition in Section 2.1.1. More precisely, we prove that the interior of certain cells is nonempty and provide some density results.
The results of this paper are partially announced without proofs in [2].
2 Preliminaries
Let us introduce the necessary notations for this paper. The symbol 0n denotes the null-vector in ℝn, the j-th element of the canonical basis of ℝn is ej. Given a nonempty set X⊂ℝn, conv X and cone X are the convex and the canonical hull of X, respectively (cone ∅={0n}). If X is a convex set, dimX(dim∅=−1) denotes its dimension. From the topological side, if X is a subset of any topological space, intX, cl X and bd X represent the interior, the closure and the boundary of X, respectively.
We recall some concepts and basic results on LSIP, we shall use (all the proofs and references can be found in [9] and [17]). We associate with each triple π=(a,b,c) the first and second moment cones of π:
and
as well as its characteristic cone
The Existence Theorem establishes that P is consistent if and only if (0n,1)′∉cl N. In such a case, the non-homogeneous Farkas Lemma establishes that the inequality c′x≥d holds for all x∈F, if and only if (c,d)∈cl K. For the dual problem, D is consistent if and only if c∈M.
When various triples are simultaneously considered, they and their associated feasible, optimal, etc. sets will be distinguished by means of superscripts or subscripts: πi, Pi, Di, Fi, F*i, Λi, Λ*i, Mi, Ni, Ki.
We denote by υP(π) and υD(π) the optimal value of P and D, defining as usual:
respectively, when the corresponding problem is inconsistent.
If we consider different primal-dual states of the LSIP problems, since P and D can be either inconsistent (IC), bounded (B), or unbounded (UB), crossing both criteria, we get nine possible duality states, which are reduced to six by the Weak Duality Theorem: υD(π)≤υP(π). The primal-dual partition is presented in Table 1 (according to the Duality Theorem, the duality states 5 and 6 are impossible in LP [8], Proposition 4.2):
where Π1=ΠPB∩ΠDB, Π2=ΠPUB∩ΠDIC, Π3=ΠPIC∩ΠDUB, Π4=ΠPIC∩ΠDIC, Π5=ΠPB∩ΠDIC, and Π6=ΠPIC∩ΠDB.
The next Lemma describes the characterization of the duality states Πi, i=1,…,6 in terms of M, N, and K. This characterization appears in [11].
Lemma 2.1. The following assertions hold:
(i)π∈Π1if and only if(0n,1)′∉cl Nandc∈M.
(ii)π∈Π2if and only if(0n,1)′∉cl Nand({c}×ℝ)∩cl N=∅.
(iii)π∈Π3if and only if{c}×ℝ⊆K.
(iv)π∈Π4if and only if(0n,1)′∈cl Nandc∉M.
(v)π∈Π5if and only ifc∉M, (0n,1)′∉cl Nand({c}×ℝ)∩cl N≠∅.
(vi)π∈Π6if and only if(0n,1)′∈cl N, c∈Mand{c}×ℝ⊆K.
Corollary 2.2. [[9], Corollary 9.3.1] Given a consistent problemPin LSIP, the next statements are equivalent.
(i)F*is nonempty and bounded;
(ii)c∈intM.
The next results are valid in continuous LSIP, where the Slater Condition plays a crucial role. Recall that π=(a,b,c) satisfies the Slater Condition if there exists ˉx∈ℝn such that a′tˉx>bt, for all t∈T. π satisfies the Slater Condition if and only if π∈intΠPC (This result can be found in [9]).
Theorem 2.3. [[9], Theorem 9.8] IfPis a consistent LSIP problem with consistent dual problemD, then the next statements are equivalent.
(i)Λ*is nonempty and bounded;
(ii)πsatisfies the Slater Condition.
We will use the next characterization of ΠPS and ΠDS.
Lemma 2.4. [[10], Lemma 2.2]
(i)π∈ΠPSif and only if(0n1)∉cl Nandc∈intM.
(ii)π∈ΠDSif and only ifc∈Mandπsatisfies the Slater Condition.
If we consider the parameter space Π, P and D can be either consistent, inconsistent, bounded or unbounded. Now, if in addition to the boundedness we consider the solvability, the bounded problems can be either solvable with optimal set nonempty and bounded (S) or unsolvable (N). In the latter case we include the problems that have optimal set unbounded. With this classification we obtain the first general primal partition {ΠPIC, ΠPS, ΠPN, ΠPUB} and the first general dual partition {ΠDIC, ΠDS, ΠDN, ΠDUB} of the optimization problems space. Crossing both partitions, we get the first general primal-dual partition, which is presented in Table 2:
Table 2 First general primal-dual partition
D\P | IC | UB | ||||||||
B | ||||||||||
S | N | |||||||||
IC | Π4 | Π5 | Π2 | |||||||
B | S | Π11 | Π31 | |||||||
N | Π6 | Π21 | Π41 | |||||||
UB | Π3 |
where Π11=ΠPS∩ΠDS, Π21=ΠPS∩ΠDN, Π31=ΠPN∩ΠDS and Π41=ΠPN∩ΠDN.
In [10], Goberna and Todorov showed that ΠPS∩ΠDIC and ΠPIC∩ΠDS are empty sets, for this reason the corresponding boxes do not appear numbered. The next Theorem confirms that Πi1, i=1,…,4 are nonempty.
Theorem 2.5. [[10], Theorem 3.1]Πi1≠∅,i=1,…,4.
The states Πi1≠∅, i=1,…,4, in continuous LSIP, are characterized by Goberna and Todorov in the next Theorem.
Theorem 2.6. [[10], Theorem 3.3]
(i)π∈Π11if and only ifc∈intMandπsatisfies the Slater Condition.
(ii)π∈Π21if and only if(0n1)∉cl N,c∈intMandπdoes not satisfy the Slater Condition.
(iii)π∈Π31if and only ifc∈M\intMandπsatisfies the Slater Condition.
(iv)π∈Π41if and only if(0n1)∉cl N,c∈M\intMandπdoes not satisfy the Slater Condition.
2.1 Second Refined Primal-dual Partition
In this section we present a refinement of Table 1, different to the refinement of Goberna and Todorov, presented in Table 2. To do this, we separate the parameter set with bounded primal problem ΠPB, into two parameter sets. The first one, with solvable primal problem ΠPs and the other with unsolvable primal problem ΠPn. The same classification is made with respect to the dual problem. Having in mind the new notations, we get the second general primal partition {ΠPIC, ΠPs, ΠPn, ΠPUB} and the second general dual partition {ΠDIC, ΠDs, ΠDn, ΠDUB} of the parameter space. Crossing both partitions we obtain the second general primal-dual partition. The possible duality states in continuous linear optimization are enumerated in Table 3:
Table 3 Possible duality states in continuous linear optimization
D\P | IC | UB | ||||||||
B | ||||||||||
s | n | |||||||||
IC | Π4 | ˆΠ15 | ˆΠ25 | Π2 | ||||||
B | s | ˆΠ16 | ˆΠ11 | ˆΠ31 | ||||||
n | ˆΠ26 | ˆΠ21 | ˆΠ41 | |||||||
UB | Π3 |
where ˆΠ11=ΠPs∩ΠDs, ˆΠ21=ΠPs∩ΠDn, ˆΠ31=ΠPn∩ΠDs, ˆΠ41=ΠPn∩ΠDn, ˆΠ15=ΠPs∩ΠDIC, ˆΠ25=ΠPn∩ΠDIC, ˆΠ16=ΠPIC∩ΠDs and ˆΠ26=ΠPIC∩ΠDn.
Lemma 2.7. ˆΠ11⊇Π11 and ˆΠ41⊆Π41.
Theorem 2.8. Letπ∈Πwith primal and dual problems be consistent and bounded. The following assertions are true:
(i) Ifc∈intMandπsatisfies Slater Condition, thenπ∈ˆΠ11;
(ii)π∈ˆΠ21, thenπdoes not satisfy the Slater Condition;
(iii) Ifπ∈ˆΠ31, thenc∈M\intM;
(iv) Ifπ∈ˆΠ41, thenc∈M\intMandπdoes not satisfy the Slater Condition.
Proof. i) Suppose that c∈intM and π satisfies the Slater Condition. First, if c∈intM, then F*≠∅ and F* is bounded [Corollary 2.2]. On the other hand, if π satisfies the Slater Condition, then Λ*≠∅ and Λ* is bounded [Theorem 2.3]. Therefore, if c∈intM and π satisfies the Slater Condition, then π∈ˆΠ11.
ii) if π∈ˆΠ21, then Λ*=∅, by Theorem 2.3 π does not satisfy the Slater condition.
iii) If π∈ˆΠ31, then F*=∅, by Corollary 2.2 c∉intM, in addition from hypothesis c∈M. So, we conclude that c∈M\intM.
iv) If π∈ˆΠ41, then F*=∅ and Λ*=∅ this implies c∈M\intM and π does not satisfy the Slater Condition.
With the following examples, we show that the above conditions, are only sufficient or necessary, respectively. The examples also show that ˆΠi1≠∅ for i=1,2,3,4, which justifies the previous partition and Theorem. In ordinary linear programming we have ˆΠ21=ˆΠ31=ˆΠ41=∅, according to the Duality Theorem [[8], Theorem 4.4].
In the Example 2.9, π1∈ˆΠ21 and π1 does not satisfy the Slater Condition, while in the Example 2.10, ℝ2 does not satisfy the Slater Condition and π2∉ˆΠ21. This shows that the condition (ii), stated in Theorem 2.8, is not a sufficient one.
Example 2.9. Consider the optimization problem inℝ2
Ifr=0=s, thenx1≥0and−x1≥0, we conclude thatx1=0. Now, asx1=0, ifr,s∈(0,1]thenrx2≥−r2ysx2≥−s2, i.e.,x2≥−ryx2≥−s, it follows thatx2≥0. Therefore:
andF*1={(00)}. AsdimF1=1,F1⊂ℝ2andπ1is continuous, we have thatπ1does not satisfy the Slater Condition. InFigure 1, we showF1:
The dual problem ofP1is:
which is equivalent to:
If:
we have0≤υ1. Now, ift0∈(0,1], thenˉθ0=(λ0;γ0)is inΛ1, if and only if:
whereλ0t0=γ0t0andλ0r=0=γ0sfor allr,s∈[0,1]\{t0}. l.e.,λ0t0has to satisfy the equality:
So, we conclude thatˉθ0∈Λ1, if and only ifλ0t0=12t0. Then:
Ift0approaches to zero in(1), we haveυ1≤0. ThereforeυD(π1)=0. On the other hand,υD(π1)=0, if and only ifλrr2=0=λss2, for all(r,s)∈[0,1]×[0,1]. Then, the only possible optimal solutions have the formˉθ1=(λ1;γ1), whereλ10,γ10∈ℝ+andλ1r=0=γ1sfor allr,s∈(0,1], butˉθ1∉Λ1, because:
is impossible. ThereforeΛ*1=∅. All these show thatπ1∈ˆΠ21andˆΠ21≠∅.
Example 2.10. We consider, the following problem:
InFigure 2, we show the feasible set ofP2.
We observe thatP2is consistent,υP(π2)=0andF*2={(00)}. In addition, asdimF2=1andF2⊂ℝ2, we have thatπ2does not satisfy the Slater Condition.
The dual problem ofP2is:
From the problem it follows thatυD(π2)=0. Now,ˉλ=(λ1,λ2,λ3)′withλ1,λ2,λ3≥0is inΛ2=Λ*2, if and only if:
i.e.,0=λ1−λ2and1=λ3, or equivalentlyλ1=λ2and1=λ3. Then:
Therefore,π2∉ˆΠ21..
In the Example 2.11, π3∈ˆΠ31 and c3∈M3\intM3. While, in the Example 2.12, π4∉ˆΠ31 and c4∈M4\intM4. This shows that the condition (iii), stated in Theorem 2.8, is not a sufficient condition.
Example 2.11. Consider inℝ2the problem:
InFigure 3, we show the feasible set ofP3:
π3satisfies the Slater Condition and(22)is a Slater point. In fact1+t2>tfor allt∈[0,1]if and only if2+2t2>2tfor allt∈[0,1], so,P3is consistent. InFigure 3, we observe thatυP(π3)=0butF*3=∅, i.e.,P3is not solvable. Moreover, inFigure 4, we show thatc3∈M3\intM3.
The dual problem ofP3is:
The functionλ∈ℝ([0,1])+defined as:
is a feasible solution for the problemD3withυD(π3)=0. It follows thatD3is solvable. Therefore,π3∈ˆΠ31andˆΠ31≠∅.
Example 2.12. The primal problemP4is formulated as follows:
InFigure 5, we show the feasible set ofP4.
Sinceπ4satisfies the Slater Condition, thenP4is consistent. We observe thatυP(π4)=0andF*4={0}×ℝ+, thereforeP4is solvable. On the other hand, as in the above example,c4∈M4\intM4.
The dual problem ofP4is now:
Again, we have that the functionλ∈ℝ([0,1])defined as:
is a feasible solution of the problemD4withυD(π4)=0. Thus, we conclude thatD4is solvable.
Observation 2.13. With the previous example we also show thatˆΠ11∉∅. In the same exampleπ4∈ˆΠ11andc4∉intM. On the other hand, in the Example 2.10π2∈ˆΠ11andπ2does not satisfy the Slater Condition. This means that bothc∈intMand the Slater Condition are not necessary conditions forπ∈ˆΠ11.
In the next Example 2.14, π5∈ˆΠ41, c5∈M5\intM5 and π5 does not satisfy the Slater Condition. Later on, in the Example 2.15, π6∈ˆΠ11, (0n1)∉cl N6, c6∈M6\intM6 and π6 does not satisfy Slater Condition. This shows two things. First the condition (i) in Theorem 2.8 is not a necessary condition, and second the condition (iv), stated in Theorem 2.8, is not a sufficient one.
Example 2.14. Consider inℝ3the primal problem, withα>0:
Ifs, r∈(0,1]thenx3≥−sandx3≤r, which means thatx3=0. So,dimF5≤2. We can look atF5inℝ2, as the feasible set ofP3. Therefore,υP(π5)=0andF*5=∅. In addition, asF5=2andF5⊂ℝ3, we have thatπ5does not satisfy the Slater condition. On the other hand,c5∈M5\intM5. In fact:
and, for allε>0:
and:
Therefore,c5∈M5\intM5.
The dual problemP5is:
This is equivalent to:
From the above equality system, we have that:
The only solution of the equation above isλ0∈ℝ([0,1])+withλ00=1andλ0t=0, for allt∈(0,1]. Then, feasible points ofD5have the form:
whereβ,γ∈ℝ([0,1])+. If we evaluate the objective function of the last problem at the points that have the above form, the problem will be reduced to:
From(2)it follows that:
Note that for eachi∈(0,1]:
whereβ0,γ0∈ℝ([0,1])+,β0i=αi,β0s=0for alls∈[0,1]\{i}andγ0r=0for allr∈[0,1], is a feasible point of(2). Moreover, if we evaluate∑s∈[0,1]βss2+∑r∈[0,1]γrr2inθ0, we have that:
Ifi→0in(3), we have thatυ5≤0. ThereforeυD(π5)=0. On the other hand, if a feasible point of the problemD5is an optimal solution, the objective function evaluated at this point must satisfy:
Then, the possible optimal solutions of problemD5have the following form:ˉθ0=(λ0;β1;γ1), whereλ0,β1,γ1∈ℝ([0,1])+,λ00=1,λ0t=0for allt∈(0,1],β10∈ℝ+,β1s=0for alls∈(0,1],γ10∈ℝ+andγ1r=0for allr∈(0,1]. Butˉθ0∉Λ5, because it impliesα=0, which is a contradiction with the hypothesisα>0. Therefore,Λ*5=∅.
Example 2.15. Consider the following problem in:ℝ2
The feasible set ofP6is the same as the feasible set of the Example 2.10. ThenυP(π6)=0andF*6={0}×ℝ+in addition, sincedimF6=1andF6⊂ℝ2, we have thatπ6does not satisfy the Slater Condition. On the other hand, inFigure 6, we show thatc6∈M6\intM6.
The dual problem ofP6is:
From the problem it follows that,υD(π6)=0. Now:
if and only if:
i.e.,1=λ1−λ2and0=λ3, or equivalently,λ1=1+λ2andλ3=0. Then:
which implies thatΛ*6≠∅. Therefore,π6∉ˆΠ41.
Remember that in the first refined primal-dual partition, the sets ΠPS∩ΠDIC and ΠPIC∩ΠPS are empty. However, we will show that the sets ΠPs∩ΠDIC=ˆΠ15 and ΠPIC∩ΠDs=ˆΠ16, in the second general primal-dual partition, are nonempty. We shall present some necessary conditions for the fact that a given parameter π belongs to the state ˆΠ25=ΠPn∩ΠDIC and ˆΠ26=ΠPIC∩ΠDn, respectively. Using also the definitions of the states, we shall characterize the cells ˆΠ15 and ˆΠ16.
Proposition 2.16. π∈ˆΠ15, if and only ifc∉MandF*is not bounded.
Proof. Suppose that π∈ˆΠ15 and c∈M or F* is bounded. First, if c∈M, we have the contradiction Λ≠∅. Second, if F* is bounded, then π∈ΠPS∩ΠDIC and again we get to a contradiction. On the other hand, if c∉M and F* is not bounded, then Λ=∅ and F*≠∅. Therefore, π∈ˆΠ15.
Now, ˆΠi5⊂Π5 for i=1,2. Then, for the Lemma 2.1:
is a necessary condition for π belongs to ˆΠi5 for i=1,2, respectively.
Proposition 2.17. π∈ˆΠ16, if and only if(0n1)∈cl NandΛ*is not bounded.
Proof. Suppose that π∈ˆΠ16 and (0n1)∉cl N or Λ* is bounded. First, if (0n1)∉cl N, we have the contradiction F≠∅. Second, if Λ* is bounded, then π∈ΠPIC∩ΠDS and also we get again to a contradiction. On the other hand, if (0n1)∈cl N and Λ* is not bounded, then F=∅ and Λ*≠∅. Therefore, π∈ˆΠ16.
Again, ˆΠi6⊂Π6 for i=1,2. Then, by the Lemma 2.1:
is a necessary condition for π belongs to ˆΠi6 for i=1,2, respectively.
With the following examples, we will show that the conditions (v) and (vi), presented in Lemma 2.1, are only necessary. We will also show that in continuous LSIP ˆΠij≠∅ for i=1,2 and j=5,6. However, in ordinary linear programming all these sets are empty [[8], Proposition 4.2].
Example 2.18. Consider, inℝ2, the optimization problem:
The feasible set ofP7is presented in theFigure 7.
Figure 7, shows thatP7is consistent and bounded, with an optimal valueυP(π7)=1, and an optimal set:
From the previous equality it follows thatF*7is unbounded. The coneM7ofP7, is shown in theFigure 8.
Asc7=(01), we have thatc7∈cl M7\M7, then the dual problemD7is inconsistent. We conclude thatπ7∈ˆΠ15, thereforeˆΠ15≠∅.
Example 2.19. Consider now, the next problem inℝ2:
The feasible set ofP8is shown in theFigure 9.
Figure 9, shows thatP8is consistent and bounded, with optimal valueυP(π8)=0, howeverF*=∅, i.e.,P8is unsolvable. The coneM8ofP8, is presented in theFigure 10:
Asc8=(10), we have thatc8∈cl M8\M8, whereby the dual problemD8is inconsistent. So, whe observe thatπ8∈ˆΠ25, thereforeˆΠ25≠∅.
Observation 2.20. In the Example 2.19,c8∉M8,(0n,1)′∉cl N8(P8is consistent), also({c8}×ℝ)∩cl N8≠∅(P8is bounded), butπ8∉ˆΠ15. It shows thatc∉M,(0n,1)′∉cl Nand({c}×ℝ)∩cl N≠∅is not a sufficient condition forπ∈ˆΠ15. On the other hand, in the Example 2.18,c7∉M7,(0n,1)′∉cl N7, and({c7}×ℝ)∩cl N7≠∅, butπ7∉ˆΠ25. It shows thatc∉M,(0n,1)′∉cl Nand({c}×ℝ)∩cl N≠∅is not a sufficient condition forπ∈ˆΠ25, as well.
Example 2.21. We now study the following problem inℝ2:
We observe that for eacht∈(0,1]:
is an element ofN9. Ift→0in(4), we have that(02,1)′∈cl N9. ThereforeP9is inconsistent.
The dual problem ofP9is:
we have thatˉθ=(λ0;γ), whereγ∈ℝ+andλ0∈ℝ([0,1])+defined as:
is a feasible point ofD9. ThenυD(π9)=0andΛ*is unbounded. This means thatπ9∈ˆΠ16. ThereforeˆΠ16≠∅.
Example 2.22. Consider, inℝ2, the following problem:
We observed that for eacht∈(0,1]:
is an element ofN10. Ift→0in(5), we observe that(02,1)′∈cl N10. Therefore,P10is inconsistent.
The dual problem ofP10is:
From the system above, we have that:
whose solutions have the formλ0∈ℝ([0,1])+withλ00∈ℝ+andλ0t=0for allt∈(0,1]. Then, the feasible points ofD10look like:
whereγ∈ℝ([0,1])+. If we evaluate the objective function of dual problem in points that have the above form, the problem is reduced to:
which is equivalent to:
we have that:
Now, ifs0∈(0,1], thenγ0∈ℝ([0,1])+satisfies:
whereγ0s0=1s0andγ0s=0for alls∈[0,1]\{s0}. Hence:
Ifs0→0in(6), we haveυ10≤0. Therefore,υD(π10)=0. On the other hand,υD(π10)=0, if and only if:
but, ifˉθ10∈Λ10,
it follows that:
So, the possible optimal solutions ofD10, have the formˉθ010=(λ0;γ1), whereλ0,γ1∈ℝ([0,1])+,λ00,γ10∈ℝ+andλ0t=0=γ1sfor allt,s∈(0,1]. Ifˉθ010∈Λ10, then:
which is impossible. Therefore,ˉθ010∉Λ10, wherebyΛ*10=∅. So, we conclude thatπ10∈ˆΠ26, and thusˆΠ26≠∅.
Observation 2.23. We see in Example 2.22 that(0n,1)′∈cl N10(P10is inconsistent),c10∈M10(ˉθ10=(λ0;γ0)∈Λ10, i.e,D10is consistent) and{c10}×ℝ⊆K10(υD(π10)=0, i.e,D10is bounded), butπ10∉ˆΠ16. This shows that(0n,1)′∈cl N,c∈Mand{c}×ℝ⊆Kis not a sufficient condition forπ∈ˆΠ16. On the other hand, in the Example 2.21,(0n,1)′∈cl N9,c9∈M9and{c9}×ℝ⊆K9, butπ9∉ˆΠ26. It demonstrates that(0n,1)′∈cl N,c∈Mand{c}×ℝ⊆Kis not a sufficient condition for the following statementπ∈ˆΠ26.
2.1.1 Some Topological Properties of the Sets Generated by the Second General Primal-dual Partition
In [11], Goberna and Todorov presented the characterization of the interior of the sets Π2, Π3 and Π4. They also studied the density properties and the interior of these and other sets of the first general primal-dual partition. In this section, we shall study some topological properties of the sets ˆΠ11, ˆΠ21, ˆΠ31, ˆΠ41, ˆΠ15, ˆΠ25, ˆΠ16 and ˆΠ26. In particular, we investigate the interior and some density properties of the mentioned sets of the new second general primal-dual partition.
Theorem 2.24. ˆΠ11is dense inΠ1.
Proof. Since Π11⊆ˆΠ11 and Π11 is dense in Π1 [[10], Theorem 3.3], hence ˆΠ11 is dense in Π1.
Theorem 2.25. The setsˆΠi1,i=1,2,3,4are neither closed nor open.
Proof. Since these sets are cones with the null triplet belonging to ˆΠ11, only ˆΠ11 could be closed:
ˆΠ11 is not closed. In fact, consider the sequence {πr} in ˆΠ11, where πr:=(1re1,1,e1), obviously:
but (0n,1,e1)∈Π4. Therefore, ˆΠ11 is not closed.
ˆΠ11 is not open. Indeed, consider π:=(0n,0,0n) in ˆΠ11. Let r>0, we define πr:=(0n,0,r2e1). It is easy to see that, for all r>0, 0,πr∈Π2 and d(π,πr)=r2<r. This implies that ˆΠ11 is not open.
We shall prove that the sets ˆΠi1, i=2,3,4 are not open. Since ˆΠi1⊂Π1, then intˆΠi1⊂intΠ1, but intΠ1=Π11 [[10], Theorem 2], as Π11⊂ˆΠ11, so it follows that intˆΠi1⊂ˆΠ11. However ˆΠi1∩ˆΠ11=∅, and, the above inclusion is only possible if intˆΠi1=∅. Since ˆΠi1≠∅ it follows that ˆΠi1 is not open for every i=2,3,4.
Corollary 2.26. intˆΠi1,i=2,3,4are empty.
Theorem 2.27. intˆΠ11≠∅.
Proof. Since Π11⊂ˆΠ11 then intΠ11⊂intˆΠ11.
but:
and:
we conclude that intˆΠ11≠∅.
Theorem 2.28. intˆΠ11is dense inΠ1.
Proof. Since Π11⊂ˆΠ11⊂Π1, then:
it follows:
As intΠ11 is dense on Π1 [[10], Theorem 3.3] and intΠ1 is dense on Π1 [[11], Theorem 2], we have that ¯intˆΠ11=Π1. Therefore, intˆΠ11 is dense in Π1.
Theorem 2.29. intˆΠ11=Π11.
Proof. Since Π11 is open [[10], Theorem 3.3], it follows Π11⊂intˆΠ11. We will only show that intˆΠ11\Π11=∅. Suppose the contrary, i.e., intˆΠ11∩(Π11)c≠∅. Then, there exists π∈intˆΠ11, such that π∉Π11, so it follows that c∉intM or π does not satisfy the Slater Condition [Theorem 2.6].
First, c∉intM implies that c∈M\intM because, by hypothesis π∈intˆΠ11, but:
In addition, c∉intM implies M≠ℝn. From the above two implications, we conclude that, there exists a sequence {cr} from ℝn\M such that:
We define πr:=(a,b,cr). The sequence {πr} is in ΠDIC and satisfies:
This is a contradiction, because, by hypothesis, π∈intˆΠ11.
Second, if π does not satisfy the Slater Condition, then π∉intΠPC. Now, by hypothesis π∈intˆΠ11, we have π∈ΠPC. So, if π does not satisfy the Slater Condition and the hypothesis is true, π∈bd ΠPC. Therefore there exists a sequence {πr} on ΠPIC such that:
This is a contradiction, because π∈intˆΠ11.
It follows that intˆΠ11\Π11=∅, or equivalently intˆΠ11=Π11.
Observation 2.30. SinceintΠ5=∅andintΠ6=∅[[11], Theorem 2], we conclude thatintˆΠij=∅fori=1,2andj=5,6.
We have proved that all parameters in Π1 can be approached by parameters in ˆΠ11. In addition, we have shown that the sets ˆΠ11, ˆΠ21, ˆΠ31 and ˆΠ41 are neither closed nor open, and that the interior of the sets ˆΠ21, ˆΠ31 and ˆΠ41 are empty. The characterization of ˆΠ11 follows from the equality ˆΠ11=Π11 which was also proved in this section.
3 Conclusion and Future Work
To conclude, we would like to mention that the lack of necessary and sufficient conditions, characterizing the majority of the states of the second general primal-dual partition has, in some sense, its justification. Namely, there are no necessary and sufficient conditions for the solvability, neither for the primal nor for the dual linear semi-infinite optimization problems. On the contrary, for the solvability, considered in the first general primal-dual partition, the conditions could be found in lemma 2.4. Anyway, finding such necessary and sufficient conditions is still a challenging problem. Another open question is how will apply the developed theory in this article removing the continuity in the LSIP.