Lobachevskii Journal of Mathematics Vol. 13, 2003, 57 – 65
©Igor V. Konnov, Olga V. Pinyagina
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This work is supported by RFBR (Grant 03-01-96012) and by the Academy of Sciences of Finland (Grant 77796).
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ABSTRACT. We consider a general class of monotone equilibrium problems, which involve nonsmooth convex functions, in a real Banach space. We combine the D-gap function approach and regularization techniques and suggest a descent type algorithm to find solutions to the initial problem.
Let
We consider equilibrium problem (EP for short) of the form: Find a point
| (1) |
It is well known that equilibrium problems represent rather general and suitable format for the formulation and investigation of various complex problems arising in Economics, Mathematical Physics, Transportation, Operations Research and other fields. Moreover, they are closely related to other general problems of Nonlinear Analysis such as fixed point, optimization, complementarity and variational inequality ones. For this reason, various aspects of EPs were investigated by many researchers (see e.g. [1]–[4] and references therein).
One of the most popular approaches to solve various problems of Nonlinear Analysis is to convert them into a suitable optimization problem with the help of so-called gap functions. In particular, in [5] this approach was applied for smooth EPs in a Banach space setting, in [6],[7] we applied this approach to the problem (1) involving a non-smooth function, and we presented descent methods, converging strongly to a solution. However, these methods need additional strong monotonicity properties to ensure convergence. In [8], it was suggested to combine the descent methods with regularization technics for solving monotone variational inequalities. In this paper, combining so the descent and regularization techniques, we will construct a converging method for EPs in a common monotone case.
First, we recall several well-known properties of EPs; see e.g. [1]–[3].
The equilibrium bifunction
(i) monotone, if, for all
(ii) strictly monotone, if, for all
(iii) strongly monotone with constant
Proposition 2.1. (i) If
| (2) |
and it is convex and closed.
(ii) If
(iii) If
In this section, in addition to the assumptions of Section 1, we shall suppose that
Suppose that there exists an equilibrium bifunction
(a)
(b) for all
(c)
For instance, if there exists a hemicontinuous strongly monotone operator
| (3) |
If
We now consider the perturbed problem: Find a point
| (4) |
where
Set
Proof. First we note that EP(5) has the unique solution
Adding these inequalities gives
Since
| (6) |
and
So, the sequence
Since
i.e.
we have by setting
where
The result above is clearly an extension of the known convergence properties of the Browder-Tikhonov approximations from variational inequalities; see e.g. [9].
From now on, we shall consider EP(1) where
| (7) |
In what follows we shall consider the simplified variant (3) for the perturbation bifunction
| (8) |
where
We denote by
For brevity, we set
Set
and
| (9) |
where
The optimality condition for EP(8) and for the inner problem in (9) can be formulated in the form of the mixed variational inequalities.
Proposition 3.1. [6, Propositions 2.1 and 2.3] (i) An element
| (10) |
(ii) For all
| (11) |
The basic properties of the gap function
Proposition 3.2. (i) It holds that
(ii) If
(iii) The following properties are equivalent:
(a)
Therefore, EP(8) can be in principle replaced with the constrained optimization problem:
The gap function
Let us now consider the function
where
Proposition 3.3. For every
| (12) |
Proof. By definition,
i.e. the left inequality in (12) holds. Similarly, we obtain the right inequality in
(12).
The next proposition, which follows directly from Propositions 3.2 and 3.3, says that
the
Proposition 3.4. (i) It holds that
(ii) It is true that
Thus, the perturbed EP(8) is equivalent to the unconstrained minimization problem
| (13) |
However, this problem can have in principle local minima which differ from the global ones. For this reason, it is more suitable to replace EP(8) with the problem of finding a stationary point of problem (13) that is
This result needs certain additional assumptions.
(A1) The map
(A2) The map
(A3) The map
Note that it follows from (A1) that
For each
then
Since
The following results are crucial for applying
Proposition 3.5. (i) Let (A1) and (A2) hold. Then the function
(ii) Let (A1),(A2) and (A3) hold. Then
The proofs of this results follow directly from Theorems 4.1 and 5.1 in [6], respectively.
The smoothing property of
Assertion (ii) shows that the initial non-smooth and constrained problem (8) can be
replaced with the problem of finding a stationary point of a continuously differentiable
function
We first establish an error bound with the help of the
(A4) The map
Lemma 4.1. Let (A1) and (A4) hold. Then
| (14) |
where
Proof. Take an arbitrary point
Since
Since
Besides, it is clear that
i.e. (14) holds with
From this proposition, we can get the following global error result for EP(8).
Theorem 4.1. Let (A1) and (A4) hold. Then there exists a constant
where
Proof. Combining Proposition 3.3 and Lemma 4.1, we have
as desired.
Set
Now we state an algorithm for EP(8), which can be viewed as an application of the algorithm from [6].
Algorithm.
Step 0: Select an initial point
Step 1: If
Step 2: Set
Step 3: Compute
Step 4: Set
A convergence result for this algorithm follows directly from Theorem 6.2 in [6].
Theorem 4.2. Let (A1), (A3) and (A4) hold. Then the sequence
Now we can describe a solution method for monotone EP(7).
Choose a number
such that
| (15) |
Then we set
Theorem 4.3. Let all the assumptions of Theorem 4.2 hold. If EP(7) is solvable, then
Proof. Using Theorem 4.1, we have
In view of (15) we now obtain
It follows that
Due to Theorem 2.1
Note that many problems in Mathematical Physics and various saddle point problems involve non strictly monotone bifunctions; see e.g. [1], [12], [13]. Hence, our approach can be applied for rather broad classes of problems.
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KAZAN STATE UNIVERSITY, DEPARTMENT OF APPLIED MATHEMATICS, 18, KREMLEVSKAYA ST., KAZAN, RUSSIA, 420008
E-mail address: ikonnov@ksu.ru
KAZAN STATE UNIVERSITY, DEPARTMENT OF ECONOMIC CYBERNETICS, 18, KREMLEVSKAYA ST., KAZAN, RUSSIA, 420008
E-mail address: Olga.Piniaguina@ksu.ru