Zhao Ren-qing,Zhong Zhen-hua,Liu Peng
(School of Mathematics and Statistics,Chuxiong Normal University,Chuxiong,Yunnan,675000)
Let Mn(C)be the set of all complex matrices of order n×n,A=(aij)∈Mn(C).Denote
N:={1,2,…n},the set of all indices;
S,a non-empty proper subset of N;
S:=NS,the complement of S;
For the matrix A=(aij)∈Mn(C),satisfying aii≠0 for all i∈N,we will use the notations
In numerical analysis,a bound is often required for ‖A-1‖∞or the smallest singular value or the condition number κ(A)= ‖A‖·‖A-1‖ for some norm of A ∈ Mn(C).It is known that bounding‖A-1‖ is usually difficult in any norm unless A-1is known explicitly.
For a strictly diagonally dominant matrix,i.e.,
the following well-known bounds were given by Varah in[1]:
In[2],Johnson obtained the following easily calculable lower bound for σn(A)of an arbitrary matrix A∈Mn(C),
In[3],Johnson and Szulc obtained further lower bound for σn(A)of an arbitrary matrix A∈Mn(C),
Let A=(aij)∈Mn(C),n≥2,S be a non-empty proper subset of N.We call A an S-SDD if
for all i∈ S,and
In[4],Nenad Moracˇa obtained the following bound for‖A-1‖∞of an S-SDD matrix for some nonempty proper subset S?N,
In this paper,a new upper bound of‖A-1‖∞and a new lower bound of the smallest singular value are presented.The results obtained are suited to the GS-SDD matrices introduced in section 2,which is an extended matrix class of the strictly diagonally dominant matrices.Examples will show the effectiveness of our new result.
Lemma 1[5].A matrix A is an H - matrix if and only if there exists a positive diagonal matrix X such that AX is strictly diagonally dominant.
Definition 1.A matrix A is called a GS-SDD matrix if there exists a positive diagonal matrix D such that AD is an S-SDD matrix.In particular,when D is a unit matrix,AD is an S-SDD matrix.
Lemma 2.Let A=(aij)∈Mn(C),n≥2,be a matrix with nonzero diagonal entries.If there exists some nonempty proper subset S?N such that
and
then A is an GS-SDD matrix.
Proof Take the positive diagonal matrix D=diag(d1,d2,…,dn),where
Denote A(1)=AD=(),we have
and for each i∈N,
then A(1)=AD is an S-SDD matrix from(9)and(10),thus A is an GS-SDD matrix.
Lemma 3.Let A=(aij)∈Mn(C),n≥2,be a matrix with nonzero diagonal entries.If there exists some nonempty proper subset S?N such that(9)and(10)hold,then A is an H -matrix.
Proof Denote
(1)For i∈ S,
(2)For j∈S,
Hence,
Then,A is a nonsingular H -matrix.
For convenience,we denote
Theorem 1.Let A=(aij)∈Mn(C),n≥2,be a matrix with nonzero diagonal entries.If there exists some nonempty proper subset S?N such that
and
then
Proof From the proof of Lemma 1,we have that A(1)=AD is an S-SDD matrix.By(8)we obtain
From A(1)=AD,we get that
Similarly,we have the following result.
Corollary 1.Let A=(aij)∈Mn(C),n≥2,be a matrix with nonzero diagonal entries.If there exists some nonempty proper subset S?N such that
and
then
By Theorem 1 and Corollary 1,we have the following lower bound of σn(A),immediately.
Theorem 2.Let A=(aij)∈Mn(C),n≥2,be a matrix with nonzero diagonal entries.If there exists some nonempty proper subset S?N such that
and
then
Proof Because the inequality‖A‖22≤‖A‖∞·‖A‖1holds for every A∈Mn(C),by Theorem 1 and Corollary 1,the conclusion is obtained immediately
Example 1.Let
It is easy to verify that A is a GS-SDD matrix.Taking S={1,2},by(11)of Theorem 1,we have
Taking S={1,2},by(12)of Corollary 1,we have
And by(13)of Theorem 2,σn(A)≥0.5773(the true value is σn(A)=3.9438).However,A is not a diagonally dominant matrix,the estimates(1)and(2)cannot be used.Using the estimates(3),(4)and(5),we get the following bounds,respectively:
σn(A)≥0.1980(by(3)of[2]);σn(A)≥0.5131(by(4)of[3]);σn(A)≥0(by(5)of[3]).
Example 2.Let
It is easy to verify that A is a GS-SDD matrix.Taking S={1,2},by(11)of Theorem 1,we have
Taking S={1,2},by(12)of Corollary 1,we have
And by(13)of Theorem 2,σn(A)≥0.24(the true value is σn(A)=5.3586).However,A is not a diagonally dominant matrix,the estimates(1)and(2)cannot be used.Using the estimates(3),(4)and(5),we get the following meaningless bounds(negative lower bounds),respectively:
σn(A)≥-0.5(by(3)of[2]);σn(A)≥-0.4438(by(4)of[3]);σn(A)≥-0.2485(by(5)of[3]).
The two examples show that the estimate formulas(11)in Theorem 1 and(12)of Corollary 1 are effective and that estimate formula of Theorem 2 is much better than those in[2]and[3].
[1]J.M.Varah.A lower bound for the smallest singular value.Linear Algebra Appl.1975(11):3—5.
[2]C.Johnson.A Ger?gorin-type lower bound for the smallest singular value.Linear Algebra Appl.1989(112):1—7.
[3]C.R.Johnson,T.Szulc.Further lower bounds for the smallest singular value.Linear Algebra Appl.1998(272):169—179.
[5]Ting Zhu Huang.Estimation of‖A-1‖∞and the smallest singular value.Comput.Math.Appl.2008(55):1075—1080.
楚雄師范學(xué)院學(xué)報(bào)2014年6期