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BY 4.0 license Open Access Published by De Gruyter Open Access February 17, 2021

Sharp conditions for the convergence of greedy expansions with prescribed coefficients

  • Artur R. Valiullin ORCID logo EMAIL logo and Albert R. Valiullin ORCID logo
From the journal Open Mathematics

Abstract

Greedy expansions with prescribed coefficients were introduced by V. N. Temlyakov in a general case of Banach spaces. In contrast to Fourier series expansions, in greedy expansions with prescribed coefficients, a sequence of coefficients { c n } n = 1 is fixed in advance and does not depend on an expanded element. During the expansion, only expanding elements are constructed (or, more precisely, selected from a predefined set – a dictionary). For symmetric dictionaries, V. N. Temlyakov obtained conditions on a sequence of coefficients sufficient for a convergence of a greedy expansion with these coefficients to an expanded element. In case of a Hilbert space these conditions take the form n = 1 c n = and n = 1 c n 2 < . In this paper, we study a possibility of relaxing the latter condition. More specifically, we show that the convergence is guaranteed for c n = o 1 n , but can be violated if c n 1 n .

MSC 2010: 41-xx; 41A58

1 Introduction

We consider greedy expansions with prescribed coefficients in Hilbert spaces. This type of greedy expansion was initially introduced by V. N. Temlyakov [1,2] (see also [3]) in a more general case of Banach spaces. In case of Hilbert spaces, the definition of greedy expansions with prescribed coefficients (further — just greedy expansions) takes the following form.

Definition 1.1

Let H be a Hilbert space over R , D be a symmetric unit-normed dictionary in H (i.e., span D ¯ = H , all elements in D have a unit norm, and if g ∈ D, then −g ∈ D). Additionally, let { t n } n = 1 ( 0 , 1 ] be a weakness sequence and { c n } n = 1 ( 0 , + ) be a sequence of expansion coefficients. For an expanded element f ∈ H remainders { r n } n = 0 H and expanding elements { e n } n = 1 D are defined as follows.

First, r 0 is set to f. Then, if r n−1 ⊂ H ( n N ) has already been defined, an (arbitrary) element which satisfies the condition ( r n 1 , e n ) t n sup e D ( r n 1 , e ) is selected as e n , and r n is defined as r n−1 − c n e n .

The series n = 1 c n e n ( f ) is called a greedy expansion of f in the dictionary D with the prescribed coefficients { c n } n = 1 and the weakness sequence { t n } n = 1 .

It immediately follows from the definition of a greedy expansion that

r N = f n = 1 N c n e n ( f ) ( N N ) ,

and hence the convergence of the expansion to an expanded element is equivalent to the convergence of remainders r n to zero.

As a selection of an expanding element e n is potentially not unique, there may exist different realizations of a greedy expansion for a given expanded element f and a given dictionary D. Furthermore, if t n  = 1 for at least one n N , greedy expansion may turn out to be nonrealizable due to the absence of an element e ∈ D which provides sup e D ( r n 1 , e ) .

In this paper, we consider only symmetric unit-normed dictionaries and the weakness sequence t n = 1 ( n N ) .

Earlier we have shown [4, Theorem 2] (see also [1] or [2] for the case of Banach spaces) that if n = 1 c n = and n = 1 c n 2 < , then a greedy expansion of f converges to f (in other words, all realizations of this expansion converge to f).

Also, we have constructed an example [4, Theorem 3] which shows that a convergence can be violated for a coefficient sequence { c n } n = 1 with c n 1 n and n = 1 c n = . However, the absence of convergence has been shown only for one of the possible realizations of this expansion.

In this paper, we present improvements for both the negative and the positive results.

2 Main results

An improvement of the negative result can be stated as follows.

Theorem 2.1

There exist a Hilbert space H, a symmetric unit-normed dictionary D ⊂ H, an element f ∈ H and a monotonic sequence c n 1 n such that a greedy expansion of f in the dictionary D with the prescribed coefficients { c n } n = 1 has a unique realization and it does not converge to f.

An improvement of the positive result can be stated as follows.

Theorem 2.2

Let H be a Hilbert space and D be a symmetric unit-normed dictionary in H. Let a sequence { c n } n = 1 satisfy the conditions

  1. c n = o 1 n ( n ) ,

  2. n = 1 c n = .

Then for every element f all realizations of its greedy expansion in the dictionary D with the prescribed coefficients { c n } n = 1 converge to f.

3 Proof of Theorem 2.1

Let r 0 ∈ H be an arbitrary vector with r 0 = 1 2 .

Let us consider the inequality

(1) c n + 1 c n + 2 2 c n c n + 1 2 > 1 c n c n + 1 2 r 0 2 .

For c n = 1 n the left part of (1) equals

1 1 2 n + O 1 n 2 ( n ) ,

and the right part equals

1 1 2 n r 0 2 + O 1 n 2 ( n ) .

Hence, as r 0 = 1 2 , there exists a number N, that for all n > N the inequality (1) holds.

Now, let us consider the inequality

(2) c n c n + 1 2 2 > c n + 1 c n + 2 2 2 1 + 8 n 2 .

For c n = 1 n the left part of (2) equals

1 4 n + 1 4 n 2 + O 1 n 3 ( n ) ,

and the right part equals

1 4 n + O 1 n 3 ( n ) .

Hence, there exists a number M, that for all n > M the inequality (2) holds. Thus, we can reenumerate (shift) a sequence:

(3) c n c n + max { N , M , 9 } ,

and as a result obtain a sequence for which the inequalities (1) and (2) hold for all n N .

Let α n denote arccos ( r n 1 , e n ) r n 1 (i.e., an angle between r n−1 and e n ), and h n denote r n 1 sin α n . Let e −1e 0 be vectors (which will be included in the dictionary D), such that r 0e −1e 0 lie on the same plane, (e 0r 0) =(e −1r 0) and the angle between r 0 and e 0 is greater than arccos c 1 c 2 2 r 0 (the inequality c n + 1 c n + 2 2 r n < 1 for every n = 0,1, 2,… will be proven further).

We construct the example inductively. First, as e 1 we take an (arbitrary) element of H which satisfies the following conditions:

  1. the angle between e 1 and r 0 equals α 1 = arccos c 1 c 2 2 r 0 ;

  2. the projection of e 1 on the plane ⟨e −1e 0⟩ is collinear to r 0.

We then set r 1 to r 0 − c 1 e 1.

Let vectors e −1e 0e 1, …, e n and r 0r 1r 2, …, r n have already been constructed. Then as e n+1 we take an (arbitrary) element of H which satisfies the following conditions:

  1. the angle between e n+1 and r n equals α n + 1 = arccos c n + 1 c n + 2 2 r n ;

  2. the projection of e n+1 on the subspace ⟨e −1e 0, …, e n ⟩ is collinear to r n ;

and define r n+1 as r n  − c n+1 e n+1.

We note that in this construction the angle α n+1 is equal to the angle between e n+1 and the subspace ⟨e −1e 0, …, e n ⟩.

Let D be defined as { e n } n = 1 { e n } n = 1 . It is sufficient to show that for each n = 0, 1, 2, … the element e n+1 is the only vector from D that can be selected as an expanding element at the step n, and that ∥r n ∥ ↛ 0 as n → ∞.

We split the proof of these assertions into the following steps. First, we show that ∥r n ∥ ↛ 0. Second, we show that at the step (n + 1) the vector  −e n cannot be selected as an expanding element. Third, we show the same for vectors e k and  −e k k > n + 1. As ( e n + 1 , r n ) ^ and ( e n , r n ) ^ are obtuse (where ( a , b ) ^ is the angle between vectors a and b), vectors  −e n+1 and e n also cannot be selected as expanding elements at the step (n + 1). And finally, we show that it also holds for vectors e k and −e k k < n.

1. Due to the law of cosines

(4) r n 2 = r n 1 2 + c n 2 2 r n 1 c n cos α n = r n 1 2 + c n 2 2 c n c n c n + 1 2 = r n 1 2 c n 2 + c n c n + 1 > r n 1 2 c n 2 + c n + 1 2

(the last inequality holds due to monotonicity of the sequence { c n } n = 1 ). Hence, using (3), which directly implies that c 1 2 < 1 9 , we get the inequality

r n 2 > r 0 2 c 1 2 > 1 4 1 9 = 5 36 .

We see that c n + 1 c n + 2 2 r n < c 1 r n < 1 3 6 5 < 1 and, additionally, that the sequence { r n } n = 0 is monotonically decreasing. Thus, ∥r n ∥ ↛ 0, which completes the first part of the proof.

2. Next, we note that α n+1 < γ n where γ n = arccos ( r n , e n ) r n (i.e., an angle between r n and −e n , see Figure 1), which implies that a vector −e n is not selected at the step (n + 1) of the algorithm. Indeed, it immediately follows from the inequality

c n + 1 c n + 2 2 > c n + 1 2 ,

which is a direct corollary of the monotonicity of the { c n } n = 1 .

Figure 1 
               Selection of e
                  
                     n
                  .
Figure 1

Selection of e n .

3. Here we show that vectors e n+2, −e n+2 are not selected at the step (n + 1). As α n+1 is the angle between the vector e n+1 and the subspace ⟨e −1e 0, …, e n ⟩, it is sufficient to show that α n+1 < α n+2, i.e.,

(5) c n + 1 c n + 2 2 r n > c n + 2 c n + 3 2 r n + 1 .

Using (2), (3) and (4) we can note that the following inequalities hold:

c n + 1 c n + 2 2 2 > c n + 2 c n + 3 2 2 1 + 8 ( n + 1 ) 2 > c n + 2 c n + 3 2 2 1 + c n + 1 2 c n + 2 2 5 36 > c n + 2 c n + 3 2 2 1 + c n + 1 2 c n + 2 2 r n + 1 2 > c n + 2 c n + 3 2 2 r n 2 r n + 1 2 ,

which is equivalent to (5). Similarly, vectors e k and  −e k (k > n + 2) are not selected at this step.

4. Now, it remains to prove that if k < n, then the angles ( e k , r n ) ^ and ( e k , r n ) ^ exceed α n . We prove it inductively by n. The induction base holds as the angle between e 0 and r 0 exceeds α 1. Let β n k be the min { ( r n , e k ) ^ , ( r n , e k ) ^ } , and let x n be the angle between r n and r n−1 (Figure 1). Without loss of generality let β n + 1 k = ( r n + 1 , e k ) ^ . Due to the spherical law of cosines [5, Chapter 12] we get

cos β n + 1 k = cos γ n k cos x n ,

where γ n k = ( r n , e k ) ^ . As r n 2 > 5 36 , r n + 1 2 > 5 36 and c n 2 < c 1 2 < 1 9 , then ∥r n ∥ > c n and ∥r n+1∥ > c n . Therefore, the angle x n is acute. Thus, the sign of cos β n + 1 k coincides with the sign of cos γ n k , therefore, γ n k = β n k .

Due to the induction assumption, the inequality cos α n > cos β n k holds (in the case of k = n − 1 this inequality holds due to the point 2 of the proof). Hence, it is sufficient to show that

(6) cos α n + 1 > cos α n cos x n .

Let us prove the inequality (6). The following series of inequalities holds:

(7) cos x n = cos ( π α n γ n ) = cos ( α n + γ n ) = cos α n cos γ n + sin α n sin γ n = h n r n 1 h n r n c n c n + 1 2 r n 1 c n + 1 2 r n = 1 r n r n 1 r n 2 c n + 1 2 2 c n c n + 1 2 + c n + 1 2 2 = 1 r n r n 1 r n 2 c n c n + 1 2 .

Combining (7) and (6), we see that it is sufficient to prove that

c n + 1 c n + 2 2 r n > c n c n + 1 2 r n 1 1 r n r n 1 r n 2 c n c n + 1 2 ,

which is equivalent to the inequality

c n + 1 c n + 2 2 c n c n + 1 2 > 1 r n 1 2 r n 2 c n c n + 1 2 .

We have already shown (see step 1 of the proof) that the sequence { r n } n = 0 is monotonically decreasing. Therefore, it is sufficient to show that

c n + 1 c n + 2 2 c n c n + 1 2 > 1 r n 1 2 r n 1 2 c n c n + 1 2 ,

or, equivalently

c n + 1 c n + 2 2 c n c n + 1 2 > 1 c n c n + 1 2 r n 1 2 .

And due to the monotonicity of the sequence { r n } n = 0 , it is sufficient to prove that

c n + 1 c n + 2 2 c n c n + 1 2 > 1 c n c n + 1 2 r 0 2 ,

which coincides with (1). It completes the proof of this step and the theorem in general.

4 Proof of Theorem 2.2

For every non-zero element f ∈ H, let F f ( g ) = ( f , g ) f and let r D (f) =  sup g D F f ( g ) = sup g D ( f , g ) f .

We split the proof of Theorem 2.2 into two parts.

1. First, we show that

lim inf n r n = 0 .

Let us assume the contrary, i.e.,

lim inf n r n > 0 .

If there exists a number k > 0 such that ∥r k ∥ = 0, then it is obvious that a greedy expansion converges to an expanded element. Otherwise, there exists a number r > 0, such that for every k N

(8) r k r .

Let S k be the kth partial sum of the sequence { c n } n = 1 , i.e., S k = j = 1 k c j . Then the following lemma holds.

Lemma 4.1

Let the conditions of Theorem 2.2 hold together with the inequalityr k ∥ ≥ r > 0 ( k N ) . Then

lim inf n S n r D ( r n 1 ) = 0 .

Proof

Assume the contrary. In this case, there exists a number c > 0, such that

(9) r D ( r k 1 ) S k c ( k 1 ) .

We note that

r n 2 = ( r n , r n ) = ( r n 1 c n e n , r n 1 c n e n ) = r n 1 2 2 c n ( r n 1 , e n ) + c n 2 = = r 0 2 2 k = 1 n c k ( r k 1 , e k ) + k = 1 n c k 2 = r 0 2 2 k = 1 n c k S k r k 1 r D ( r k 1 ) S k + k = 1 n c k 2 .

Taking into account formulas (8) and (9), we get that

(10) r n 2 r 0 2 2 c r k = 1 n c k S k + k = 1 n c k 2 .

It is known (see [6, Chapter 11]) that if k = 1 c k = , then we have k = 1 c k S k = . Hence, (10) implies that k = 1 c k 2 = .

Next, as there exists a number a > 0 such that c k < a k for all k N , there exists a number A > 0, such that S k < A k . As c k = o 1 k , there exists a function f(k), such that c k = 1 k f ( k ) and f(k) →  as k → . Therefore,

(11) k = 1 n c k S k = k = 1 n 1 k f ( k ) S k k = 1 n 1 A k f ( k ) .

We note that the equality

k = 1 c k 2 = k = 1 1 k f 2 ( k ) =

implies that

(12) k = 1 1 k f ( k ) = .

Combining (10), (11) and (12) results in

0 < r n 2 r 0 2 2 c r k = 1 n 1 A k f ( k ) + k = 1 n 1 k f 2 ( k ) = r 0 2 k = 1 n 1 k f ( k ) 2 c r A 1 f ( k ) .

It contradicts our assumption. Thus, the proof of Lemma 4.1 is complete.□

Now, let us proceed to the proof of Theorem 2.2.

Lemma 4.1 and monotonicity of S n imply that

lim inf n S n r D ( r n ) = 0 .

Therefore, there exists a subsequence { n k } k = 1 such that

lim n S n k r D ( r n k ) = 0 .

Let us consider a sequence of functionals { F r n k } k = 1 . The norm of each functional equals 1. As a unit sphere is a weak compact (according to the Banach–Alaoglu theorem), there exists a weakly converging subsequence { F r n k i } i = 1 . For simplicity we denote F r n k i as F i . As noted above, there exists a weak limit

F lim i F i .

Due to the fact that the dictionary D is symmetric, for all sufficiently large i the following inequality holds:

(13) F i ( f ) = F i r n k i + j = 1 n k i c j e j = r n k i + j = 1 n k i c j F i ( e j ) r S n k i r D ( r n k i ) .

Passage to the limit results in an estimate F(f) ≥ r, which implies that F ≠ 0. 

On the other hand, for every g from the dictionary D

(14) F ( g ) = lim i F i ( g ) lim i r D ( r n k i ) = 0 , F ( g ) = lim i F i ( g ) lim i r D ( r n k i ) = 0 .

Hence, F(g) equals 0 for all g ∈ D and, due to completeness of D, we get that F = 0. We have come to a contradiction, which proved the equality

lim inf n r n = 0 .

Thus, we completed the first part of the proof of Theorem 2.2.

2. Now it remains to prove the following two lemmas.

Lemma 4.2

Let H be a Hilbert space, D be a symmetric unit-normed dictionary, f ∈ H be an expanded element. For a greedy algorithm let α n denote arccos ( r n 1 , e n ) r n 1 and h n denote r n 1 sin α n (Figure 1). Then { h n } n = 1 is a non-increasing sequence.

Lemma 4.3

Let H be a Hilbert space, D be a symmetric unit-normed dictionary and f ∈ H be an expanded element. Let a sequence { c n } n = 1 converge to zero. Then the equality

lim inf n r n = 0

(where { r n } n = 0 is a sequence of remainders of the greedy expansion of f in D with coefficients { c n } n = 0 ) implies that r n  → 0 (n → ).

Proof of Lemma 4.2

Let β n denote min { ( r n , e n ) ^ , ( r n , e n ) ^ } . Then h n = r n sin β n . Since an expansion is greedy with t n  = 1, we have that α n+1 ≤ β n , and thus

h n + 1 = r n sin α n + 1 r n sin β n = h n .

Proof of Lemma 4.3

Similar to Lemma 4.2, let h n denote r n 1 sin α n . Due to Lemma 4.2 a sequence { h n } n = 1 is non-increasing.

Let us fix an arbitrary ε > 0. Then there exists a number m N , such that for all n > m

(15) c n < ε 2 .

If lim inf n r n = 0 , there exists a number k > m such that

r k 1 < ε 2 .

But then for all p ≥ k we have that

(16) h p < ε 2 .

Furthermore, by induction we show that the estimate ∥r p ∥ ≤ ε holds for all p ≥ k. Indeed, for p ≥ k either

r p r p 1 ε

or (due to (15) and (16))

r p 2 h p 2 + c p 2 < ε 2 2 + ε 2 2 = ε 2 .

Hence, lim n r n = 0 .□

Thus, we have proved both Lemmas 4.2 and 4.3, and therefore, we completed the proof of Theorem 2.2.

Remark 4.4

The statement of Theorem 2.2 does not cover the statement of [4, Theorem 2] entirely.

Proof

Indeed, let us construct a sequence { c n } n = 1 in the following way. Let

K = { k 2 } k = 1 , c n = 1 n , n K , 1 2 n , n K .

Then the sequence { c n } n = 1 satisfies the assumptions of Theorem [4, Theorem 2], but does not satisfy the assumptions of Theorem 2.2.□

5 Generalization

One of the disadvantages of a greedy expansion with the prescribed coefficients in case of t n  ≡ 1 is that there might be no greedy expansion for an expanded element. Another disadvantage is that (irrespective of t n ) in a general case selection of expanding element is not constructive.

We consider the following generalization of the greedy algorithm that eliminates these undesirable properties. Let symmetric sets { D n } n = 1 be an exhaustion of a dictionary D, i.e., D n  ⊂ D n+1 for all n N , and n = 1 D n = D .

At the step n of a greedy algorithm we select an element e n from D n such that ( r n 1 , e n ) = sup e D n ( r n 1 , e ) . In other words, at the step n we consider D n instead of D. If D n is finite, then e n always exists and can be constructively selected by a simple exhaustive search. Let us call this modification of a greedy expansion “a greedy expansion with prescribed coefficients in the exhaustion { D n } n = 1 .”

Let us note that for this modification the analogue of Theorem 2.2 holds. It can be stated in the following way.

Theorem 5.1

Let H be a Hilbert space, D be a symmetric unit-normed dictionary and { D n } n = 1 be its exhaustion. If a sequence { c n } n = 1 satisfies conditions

  1. c n = o 1 n ( n ) ,

  2. n = 1 c n = ,

then for every element f all realizations of its greedy expansion in the exhaustion { D n } n = 1 with the prescribed coefficients { c n } n = 1 converge to f.

Proof

The proof almost repeats the proof of Theorem 2.2. For clarity, we specify which parts of this proof require adaptation.

1. We should change the statement of Lemma 4.1 in the following way:

lim inf n S n r D n ( r n 1 ) = 0 .

The proof remains identical.

2. Next, we have that

lim inf n S n r D n ( r n ) = 0 ,

and we select a subsequence { n k } k = 1 in such a way that

lim n S n k r D n k r n k = 0 .

3. Nestedness of sets D n allows rewriting inequality (13) as follows:

F i ( f ) r S n k i r D n k i r n k i .

4. Now, we show that inequalities (14) hold. Let g ∈ D. Then there exists D p such that g ∈ D p . Hence, for all n k i > p we have that F i ( g ) r D n k i ( r n k i ) . Thus, the inequalities can be rewritten as follows:

F ( g ) = lim i F i ( g ) lim i r D n k i ( r n k i ) = 0 , F ( g ) = lim i F i ( g ) lim i r D n k i ( r n k i ) = 0 .

All other steps of this proof repeat the corresponding steps of the proof of Theorem 2.2.□

6 Conclusion

In this paper, we presented improvements for both negative and positive results on the convergence of greedy expansions with prescribed coefficients. These improvements, in particular, allowed to remove completely a gap between positive and negative results.

We expect that the technique we used in this research is applicable also to greedy expansions with errors in coefficient calculation [7], where a gap between negative and positive results still exists, and we are going to present results for greedy expansions with errors in coefficient calculation in our subsequent publications. We are also going to study a possibility of generalizing positive results to the case of t n  ≡ t ∈ (0, 1).

Acknowledgments

This research was supported by the Russian Federation Government Grant No. 14.W03.31.0031. The authors thank Dr. Vladimir V. Galatenko for valuable discussions, comments and suggestions.

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Received: 2020-08-05
Revised: 2020-12-23
Accepted: 2020-12-26
Published Online: 2021-02-17

© 2021 Artur R. Valiullin and Albert R. Valiullin, published by DeGruyter

This work is licensed under the Creative Commons Attribution 4.0 International License.

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