How to calculate expm of a badly scaled matrix?
7 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
I'm using expm for a matrix with big and small coefficients and I get NaN in the result. Is there a method to get the good matrix exponential even if the matrix is badly scaled? Normally there is a exponential for every matrix.
ALEX
2 comentarios
Matt J
el 4 de Jun. de 2013
Editada: Matt J
el 4 de Jun. de 2013
Suppose you had a simple badly scaled matrix like
>> A=diag( [1e6,1] )
A =
1000000 0
0 1
What would you like the result of expm(A) to be? The following has no NaNs. Would it be an okay answer?
>> expmA=diag( exp([1e6,1]) )
expmA =
Inf 0
0 2.7183
Respuesta aceptada
Richard Brown
el 5 de Jun. de 2013
You might this Cleve's corner instructive http://blogs.mathworks.com/cleve/2012/07/23/a-balancing-act-for-the-matrix-exponential/
In particular, have you tried the alternative versions expmdemo1 and expmdemo3 ?
0 comentarios
Más respuestas (2)
Matt J
el 4 de Jun. de 2013
Editada: Matt J
el 4 de Jun. de 2013
I think I have a different problem. My matrix isn't even invertible, there are two zero lines, moreover there are some coefficients that are of order of 1e6. In my opinion at some point Matlab is doing some inversion that's why expm doesn't work properly with badly scaled matrices.
No, it's not an invertibility issue. The reason for the NaNs is the big 1e6 order numbers. Below is an example of a non-invertible matrix on which EXPM works fine.
>> expm(diag([1,0]))
ans =
2.7183 0
0 1.0000
3 comentarios
Matt J
el 4 de Jun. de 2013
Editada: Matt J
el 4 de Jun. de 2013
Even if the matrix is well-scaled, you could have the same problem, for example:
>> A=diag([1e6,1e6]); %a well-scaled matrix
>> expm(A)
ans =
NaN NaN
NaN NaN
The bottom line is, you must avoid matrices with large eigenvalues, and then things should be fine. Otherwise, they will not be fine.
There are any number of transformations you could consider to reduce the magnitude of the eigenvalues. Dividing the matrix by a large number is one way, but I can't know if that suits your application.
Ver también
Productos
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!