Best Simultaneous Approximation of Finite Set in Inner Product Space ()
1. Introduction
As we known, best approximation theory has many applications. One of the best results is best simultaneous approximation of a bounded set but this target cannot be achieved easily. Frank Deutsch in [1] defined hyperplanes and gave the best approximation of a point in convex sets.
In [3,4] we can see that a hyperplane of an n-dimensional space is a flat subset with dimension
.
In this paper we try to find best simultaneous approximation of n arbitrary points in convex sets. We say theorems of best approximation of a point in convex sets.
Then we give the method of finding best simultaneous approximation of n points in convex set.
2. Preliminary Notes
.
Recall that a point
is a best approximation of
if 
If each
has at least one best approximation
, then W is called proximinal.
We denote by
, the set of all best approximations of x in W. Therefore

It is well-known that
is a closed and bounded subset of X. If
, then
is located in the boundary of W.
In 2.4 lemma of [1] we can see that if K be a convex subset of X. Then each
has at most one best approximation in K.
In particular, every closed convex subset K of a Hilbert space X has a unique best approximation in K.
Also in 4.1 lemma of [1] if K be a convex set and
,
. Then
if and only if

For a nonempty subset W of X and a nonempty bounded set S in X, define

and

Each element in
(If
) is called a best simultaneous approximation to S from W (see [2] Preliminary Notes).
For
and
hyperplane H in X defined by
and we denote H by
.
The Kernel of a functional f is the set
and for
we say that
is in the below of hyperplane H, if
.
3. Best simultaneous Approximation in Convex Sets
In this section,we consider

and

Define
(1.1)
Lemma 3.1. Let
consider the hyperplane
then
Proof. Give
so we have



So by adding
with equation of above, we have


Therefore have

■
Note 3.2. It is obvious that
. Now let
, so there exist
such that
for all 
Thus
, therefore w will be in Wi, that we conclude

Theorem 3.3. Let
then:
1) 
2) If W be a convex subset of X, then Wi is a convex set.
3) If W be a closed set, then Wi is a closed set.
Proof. 1) Let
therefore
so
then we have



so by adding
with equation of above, we have


therefore we have

.
Thus we have

.
Therefore
.
Since all previous steps will be reversible, so for any
in a fixed i, we have
that consider
thus we have

so
therefore

and finally
.
2) First we proof
, for all
is convex set.
Give
and
, set

thus we have
So
. Thus
is convex set and since intersection of any convex set is convex, therefore Wi is convex set.
3) It is obviously that f is continuous function and we know
.
So,
is closed set, this implies Wi is closed set. ■
4. Algorithm
The following theorem states that to find best simultaneous approximation of a bounded set S of W, it is enough to obtain the best approximation to any
.
Thus
would be the best simultaneous approximation of S from W if
is minimal.
Theorem 4.1. If W be a convex subset of X and there exist
for all
, then

Proof. With attention of best simultaneous approximation and (3.2) notation, we have

but according to the definition of Wi we have

thus the above equation can be written as follows

and since exist

so we have
■
Corollary 4.2. With the assumptions of the previous theorem there exist i, such that
is best simultaneous approximation of S in W.
Proof. With attention previous theorem, there exist
such that

and by the definition of
we have

after according to the above equation and define the best simultaneous approximation of the relationship will

However, the algorithm with assumes a convex set W and
introduce the following.
With attention 3.1 lemma for points x1, x2 the hyperplane
are possible to obtain, by 3.4 definition the points W in below H12 are V12 called.
Also for points x1, x3 the hyperplane

are formed and the points of W in below H13 are V13 called and so we do order to the points x1, xn.
By taking subscribe of any
, find W1 that this set is convex (by Theorem 3.3, 2).
Therefore, if best approximation x1 exists in this set, it is called
. Thus obtain
for any
.
Finally, the point
which has minimal distance to xi, is the best simultaneous approximation of S in W.