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NAG Toolbox: nag_matop_complex_gen_matrix_cond_pow (f01ke)
Purpose
nag_matop_complex_gen_matrix_cond_pow (f01ke) computes an estimate of the relative condition number of the th power (where is real) of a complex by matrix , in the -norm. The principal matrix power is also returned.
Syntax
Description
For a matrix
with no eigenvalues on the closed negative real line,
(
) can be defined as
where
is the principal logarithm of
(the unique logarithm whose spectrum lies in the strip
).
The Fréchet derivative of the matrix
th power of
is the unique linear mapping
such that for any matrix
The derivative describes the first-order effect of perturbations in on the matrix power .
The relative condition number of the matrix
th power can be defined by
where
is the norm of the Fréchet derivative of the matrix power at
.
nag_matop_complex_gen_matrix_cond_pow (f01ke) uses the algorithms of
Higham and Lin (2011) and
Higham and Lin (2013) to compute
and
. The real number
is expressed as
where
and
. Then
. The integer power
is found using a combination of binary powering and, if necessary, matrix inversion. The fractional power
is computed using a Schur decomposition, a Padé approximant and the scaling and squaring method.
To obtain the estimate of , nag_matop_complex_gen_matrix_cond_pow (f01ke) first estimates by computing an estimate of a quantity , such that . This requires multiple Fréchet derivatives to be computed. Fréchet derivatives of are obtained by differentiating the Padé approximant. Fréchet derivatives of are then computed using a combination of the chain rule and the product rule for Fréchet derivatives.
If is nonsingular but has negative real eigenvalues nag_matop_complex_gen_matrix_cond_pow (f01ke) will return a non-principal matrix th power and its condition number.
References
Higham N J (2008) Functions of Matrices: Theory and Computation SIAM, Philadelphia, PA, USA
Higham N J and Lin L (2011) A Schur–Padé algorithm for fractional powers of a matrix SIAM J. Matrix Anal. Appl. 32(3) 1056–1078
Higham N J and Lin L (2013) An improved Schur–Padé algorithm for fractional powers of a matrix and their Fréchet derivatives
MIMS Eprint 2013.1 Manchester Institute for Mathematical Sciences, School of Mathematics, University of Manchester
http://eprints.ma.man.ac.uk/
Parameters
Compulsory Input Parameters
- 1:
– complex array
-
The first dimension of the array
a must be at least
.
The second dimension of the array
a must be at least
.
The by matrix .
- 2:
– double scalar
-
The required power of .
Optional Input Parameters
- 1:
– int64int32nag_int scalar
-
Default:
the first dimension of the array
a and the second dimension of the array
a. (An error is raised if these dimensions are not equal.)
, the order of the matrix .
Constraint:
.
Output Parameters
- 1:
– complex array
-
The first dimension of the array
a will be
.
The second dimension of the array
a will be
.
The by principal matrix th power, , unless , in which case a non-principal th power is returned.
- 2:
– double scalar
-
If or , an estimate of the relative condition number of the matrix th power, . Alternatively, if , the absolute condition number of the matrix th power.
- 3:
– int64int32nag_int scalar
unless the function detects an error (see
Error Indicators and Warnings).
Error Indicators and Warnings
Errors or warnings detected by the function:
-
-
has eigenvalues on the negative real line. The principal th power is not defined in this case, so a non-principal power was returned.
-
-
is singular so the th power cannot be computed.
-
-
has been computed using an IEEE double precision Padé approximant, although the arithmetic precision is higher than IEEE double precision.
-
-
The relative condition number is infinite. The absolute condition number was returned instead.
-
-
An unexpected internal error occurred. This failure should not occur and suggests that the function has been called incorrectly.
-
-
Constraint: .
-
-
Constraint: .
-
An unexpected error has been triggered by this routine. Please
contact
NAG.
-
Your licence key may have expired or may not have been installed correctly.
-
Dynamic memory allocation failed.
Accuracy
nag_matop_complex_gen_matrix_cond_pow (f01ke) uses the norm estimation function
nag_linsys_complex_gen_norm_rcomm (f04zd) to produce an estimate
of a quantity
, such that
. For further details on the accuracy of norm estimation, see the documentation for
nag_linsys_complex_gen_norm_rcomm (f04zd).
For a normal matrix
(for which
), the Schur decomposition is diagonal and the computation of the fractional part of the matrix power reduces to evaluating powers of the eigenvalues of
and then constructing
using the Schur vectors. This should give a very accurate result. In general, however, no error bounds are available for the algorithm. See
Higham and Lin (2011) and
Higham and Lin (2013) for details and further discussion.
Further Comments
The amount of complex allocatable memory required by the algorithm is typically of the order .
The cost of the algorithm is
floating-point operations; see
Higham and Lin (2013).
If the matrix
th power alone is required, without an estimate of the condition number, then
nag_matop_complex_gen_matrix_pow (f01fq) should be used. If the Fréchet derivative of the matrix power is required then
nag_matop_complex_gen_matrix_frcht_pow (f01kf) should be used. The real analogue of this function is
nag_matop_real_gen_matrix_cond_pow (f01je).
Example
This example estimates the relative condition number of the matrix power
, where
and
Open in the MATLAB editor:
f01ke_example
function f01ke_example
fprintf('f01ke example results\n\n');
a = [ 1+2i 3 2 1+3i;
1+ i 1 1 2+ i;
1 2 1 2i;
3 i 2+i 1];
p = 0.4;
[pa, condpa, ifail] = f01ke(a,p);
disp('A^p:');
disp(pa);
fprintf('Estimated condition number is: %6.2f\n', condpa)
f01ke example results
A^p:
0.9742 + 0.5211i 0.8977 - 0.1170i 0.6389 - 0.3900i 0.0975 + 0.6205i
0.1586 + 0.2763i 1.0176 - 0.0250i 0.0623 - 0.3471i 0.6431 + 0.2560i
0.2589 - 0.5817i 0.5633 + 0.3969i 1.1470 + 0.4042i -0.3771 + 0.3113i
0.8713 - 0.0270i -0.5734 + 0.0868i 0.2816 + 0.3739i 1.3568 - 0.2709i
Estimated condition number is: 6.86
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