Solving polynomial operator equations of degree 2 by Steffensen-type iterations with approximate inverses
Abstract
We give a semilocal convergence theorem for a Steffensen-type method when the nonlinear equation to solve is a polynomial operators of degree 2 . We consider a sequence of linear operators approximating the inverses of the first order divided difference appearing at each iteration step.
We present some numerical results applying the studied method for solving matrix eigenproblems.
Proceedings of the International Symposium
Dedicated to the 75th Anniversary of D.D. Stancu
Cluj-Napoca, May 9-11, 2002, pp. 101-103.
1 Introduction
Let be a Banach space over the field or a polynomial operator of degree 2, and consider the equation
| (1.1) |
Such equations often appear in different problems, as eigenproblems for linear operators, Chandrasekhar integral equations, etc. This motivates the study of the iterative methods for solving (1.1), by enhancing the particularities appearing in the case of the second degree polynomials. The second order derivative is a constant bilinear operator, i.e. its expression does not depend on . This allows the obtaining of some simpler convergence conditions, compared to the general case (see also [19, [26, [36, [10]-[13]).
The solving of a linear equation at each iteration step is an important aspect when analyzing the iterative methods. From this standpoint, the methods which approximate at each step the inverse of the Frechét derivative of the first order divided differences are important to analyze.
Given and the linear continuous operator , we shall consider the sequences and given by
| (1.2) | ||||
where denotes the first order divided difference of on and , and is an operator such that equation (1.1) is equivalent to
| (1.3) |
As it can be seen, the above method is a Steffensen type one, with the approximation of the inverse of the first order divided difference.
We shall consider in the following the application given by
| (1.4) |
with some fixed.
Since is a polynomial of degree 2, one has
| (1.5) |
where denotes the trilinear null mapping, and denotes the divided difference of order 3 of on the nodes . It is then obvious that the second order divided difference is a constant bilinear operator (it does not depend on the nodes). Denote
2 A semilocal convergence result
We shall need the following auxiliary result.
Lemma 1 Let and obeying
| (2.1) |
If for some and , then
| (2.2) |
Proof. Obviously, and . Relations 2.2. for are verified by the assumption. Supposing now that 2.2 are satisfied for , then by 2.1 we obtain for
which ends the proof.
We shall assume that
| (2.3) |
and that, given , there exists such that
| (2.4) |
where .
We obtain the following result.
Theorem 2 Assume (1.5), (2.3), (2.4), and that the operator is invertible, obeying
| (2.5) |
where
,
,
,
,
,
,
and
.
If , and
then
-
•
the elements remain in ,
-
•
the sequences are Cauchy,
-
•
denoting , one has the estimates
, and
Proof. Hypothesis and the existence of imply the existence of for all , and moreover
| (2.6) |
and
| (2.7) |
Denoting and , for , we will show that the elements and satisfy the assumptions of Lemma 2.1, which will imply
| (2.8) |
Indeed, since is a polynomial operator of degree 2 we have
whence, by 1.2
and therefore
i.e. , with .
From (1.2) we also get
One can easily verify that
whence, taking into account the notations we made, it follows
with .
Now we show that .
Assume that for some , .
We have that
Then
and
Using inequality 2.8 we shall show that the sequences and are Cauchy, and therefore they converge.
Indeed,
Then,
which shows that is fundamental. Consequently, there exists and
Regarding the approximations we have
But
whence
which shows that , and
3 Numerical examples: the approximation of the eigenpairs of matrices.
Denote and let where or .
For computing the eigenpairs of one may consider a mapping : with .
The eigenvalues and eigenvectors of are the solutions of
where .
Denoting and then the first components of are
.
If we take as
for some fixed then
The matrices associated to the first order divided differences of at the points are
where and , for .
The second order divided differences of at are given by
for all .
We shall consider the max norm on and taking for all we are led to the max norm on . It can be easily verified that .
The classical choice for is . We have proposed in 11 the choice , which may lead to smaller bounds for the norm of the second order finite differences.
We shall consider the Fidap002 test matrix from the Harwell Boeing collection 1 in order to study the behavior of method (1.2) for approximating the eigenpairs. The program was written in Matlab; we took and , computed with MatLab.
This real symmetric matrix of dimension arise from finite element modeling. Its eigenvalues are all simple and range from to . We have chosen to study the smallest eigenvalue, which is well separated. The initial approximations were taken and for the initial vector we perturbed the solution with random vectors having the components uniformly distributed on ; this value for had to be taken smaller than for other methods in order to obtain the attraction of the iterates (1.2); also, these iterates converged slower than others (see, e.g. [13]). The following results are typical for the runs made (we have considered a common vector ).
| Choice I | Choice II | |||
|---|---|---|---|---|
| 0 | ||||
| 1 | ||||
| 2 | ||||
| 3 | ||||
| 4 | ||||
| 5 | ||||
| 6 | ||||
| 7 | ||||
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