Permutation matrix P in the qr function

5 visualizaciones (últimos 30 días)
Gabriele Galli
Gabriele Galli el 5 de Mzo. de 2021
Comentada: David Goodmanson el 11 de Mzo. de 2021
Hello,
I understand that using the following sintax
[Q,R,P]=qr(A)
I obtain the QR decomposition of the matrix A and, P is a permutation matrix that reorder A such that AP=QR where abs(diag(R)) is decreasing.
How this matrix P is obtained?
Let's call the new matrx B=AP. Are the columns of the matrix B ordered from the most to the least independent?
Thank you in advance,
Gabri

Respuesta aceptada

David Goodmanson
David Goodmanson el 10 de Mzo. de 2021
Editada: David Goodmanson el 10 de Mzo. de 2021
Hello Gabriele,
I don't think you can conclude anything about the columns of A. That's because the usual qr decomposition is unique (not counting the signs of the diagonal elements of R. Those are easy to make all positive if desired, along with simultaneously changing Q) Matlab does not choose to do so).
But the solution with the P option is not unique. In the code below, [Q R P] = qr(A) is the Matlab solution, and A*P puts the columns of A into the order [2 1 4 3].
However, Q1,R1,P1 below is also a solution. R1 has different values from R (still decreasing in abs value down the diagonal as required) and P1 is a lot different from P, putting the columns of A into the order [4 2 3 1].
The column associated with the smallest diagonal value of R is different in each case. Same for column associated with the largest diagonal value. it's hard to draw any conclusions.
A = ...
[1.0933 -1.2141 -0.7697 -1.0891
1.1093 -1.1135 0.3714 0.0326
-0.8637 -0.0068 -0.2256 0.5525
0.0774 1.5326 1.1174 1.1006];
[Q R P] = qr(A);
Q =
-0.5396 -0.3593 0.3554 0.6734
-0.4949 -0.4048 -0.7354 -0.2244
-0.0030 0.6125 -0.5175 0.5975
0.6811 -0.5761 -0.2551 0.3730
R =
2.2501 -1.0836 1.3195 0.9933
0 -1.4155 0.0825 -0.6557
0 0 -0.9777 -0.7149
0 0 0 -0.3196
P =
0 1 0 0
1 0 0 0
0 0 0 1
0 0 1 0
% another solution
Q1 =
-0.6623 -0.0135 0.0242 0.7487
0.0198 -0.8560 0.5164 -0.0146
0.3360 -0.4569 -0.7616 0.3136
0.6693 0.2414 0.3909 0.5839
R1 =
1.6443 1.8056 1.1893 -0.9405
0 1.3426 0.0653 -0.5510
0.0000 0 0.7818 1.2872
-0.0000 -0.0000 -0.0000 0.5767
P1 =
0 0 0 1
0 1 0 0
0 0 1 0
1 0 0 0
chk = Q1*R1-A*P1 % for a solution, should be small. comes out
% ~~1e-3 if the data is used from the listing above,
% since there are only three significant figures.
chk =
1.0e-15 *
0 -0.4441 0.1110 0
-0.4372 -0.2220 -0.3331 0.2220
0 0.1240 -0.1665 -0.3331
0 0.2220 0 -0.3053
  2 comentarios
Gabriele Galli
Gabriele Galli el 10 de Mzo. de 2021
Editada: Gabriele Galli el 10 de Mzo. de 2021
Hello David,
Thank you for your reply! How did you get the second qr decomposition (i.e. Q1, R1, P1)?
I tried to run multiple time the [Q,R,P]=qr(A) but I am always getting the same result which is the same as your Q, R, P.
Is the algorithm behind the [Q,R,P]=qr(A) sintax the so-called "Rank Revealing QR"?
David Goodmanson
David Goodmanson el 11 de Mzo. de 2021
Hello Gabriele.
all I did was
A = ...
[1.0933 -1.2141 -0.7697 -1.0891
1.1093 -1.1135 0.3714 0.0326
-0.8637 -0.0068 -0.2256 0.5525
0.0774 1.5326 1.1174 1.1006];
p = [4 2 3 1]; % one that works
P = full(sparse(p,1:4,1))
[q r] = qr(A*P)
In the code above, a permutation p and the constructed permutation matrix P shuffle the columns of A identically,
A(:,p) = A*P
When you impose a permutation matrix P, it is not always going to be the case that R has decreasing absolute values down the diagonal, making it conform to the same rule as the Matlab result. I just ran through some random matrices A and permutations p until I found one that worked . It did not take long.
I wish I knew, but I have no idea if RRQR is involved with what Matlab is doing here.

Iniciar sesión para comentar.

Más respuestas (1)

Shiva Kalyan Diwakaruni
Shiva Kalyan Diwakaruni el 9 de Mzo. de 2021
Permutation information, returned as a matrix or vector. The shape of P depends on the value of outputForm. Also, qr selects P to satisfy different criteria depending on whether the first input matrix is full or sparse:
  • Full — qr selects P so that abs(diag(R)) is decreasing.
  • Sparse — qr selects P to reduce fill-in in R.
please refer to the below link for more information
hope it helps,
thanks.
  1 comentario
Gabriele Galli
Gabriele Galli el 9 de Mzo. de 2021
Hello Shiva,
Thank you for the answer.
If the matrix is selected using the "Full" criteria, this means that the new matrix B=A*P, (where A is the input matrix) is a matrix with columns ordered from the most to the less independent?
Thank you! Gabri

Iniciar sesión para comentar.

Categorías

Más información sobre Linear Algebra en Help Center y File Exchange.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by