/************************************************************************* Copyright (c) 1992-2007 The University of Tennessee. All rights reserved. Contributors: * Sergey Bochkanov (ALGLIB project). Translation from FORTRAN to pseudocode. See subroutines comments for additional copyrights. >>> SOURCE LICENSE >>> This program is free software; you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation (www.fsf.org); either version 2 of the License, or (at your option) any later version. This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. A copy of the GNU General Public License is available at http://www.fsf.org/licensing/licenses >>> END OF LICENSE >>> *************************************************************************/ using System; namespace alglib { public class schur { /************************************************************************* Subroutine performing the Schur decomposition of a general matrix by using the QR algorithm with multiple shifts. The source matrix A is represented as S'*A*S = T, where S is an orthogonal matrix (Schur vectors), T - upper quasi-triangular matrix (with blocks of sizes 1x1 and 2x2 on the main diagonal). Input parameters: A - matrix to be decomposed. Array whose indexes range within [0..N-1, 0..N-1]. N - size of A, N>=0. Output parameters: A - contains matrix T. Array whose indexes range within [0..N-1, 0..N-1]. S - contains Schur vectors. Array whose indexes range within [0..N-1, 0..N-1]. Note 1: The block structure of matrix T can be easily recognized: since all the elements below the blocks are zeros, the elements a[i+1,i] which are equal to 0 show the block border. Note 2: The algorithm performance depends on the value of the internal parameter NS of the InternalSchurDecomposition subroutine which defines the number of shifts in the QR algorithm (similarly to the block width in block-matrix algorithms in linear algebra). If you require maximum performance on your machine, it is recommended to adjust this parameter manually. Result: True, if the algorithm has converged and parameters A and S contain the result. False, if the algorithm has not converged. Algorithm implemented on the basis of the DHSEQR subroutine (LAPACK 3.0 library). *************************************************************************/ public static bool rmatrixschur(ref double[,] a, int n, ref double[,] s) { bool result = new bool(); double[] tau = new double[0]; double[] wi = new double[0]; double[] wr = new double[0]; double[,] a1 = new double[0,0]; double[,] s1 = new double[0,0]; int info = 0; int i = 0; int j = 0; // // Upper Hessenberg form of the 0-based matrix // ortfac.rmatrixhessenberg(ref a, n, ref tau); ortfac.rmatrixhessenbergunpackq(ref a, n, ref tau, ref s); // // Convert from 0-based arrays to 1-based, // then call InternalSchurDecomposition // Awkward, of course, but Schur decompisiton subroutine // is too complex to fix it. // // a1 = new double[n+1, n+1]; s1 = new double[n+1, n+1]; for(i=1; i<=n; i++) { for(j=1; j<=n; j++) { a1[i,j] = a[i-1,j-1]; s1[i,j] = s[i-1,j-1]; } } hsschur.internalschurdecomposition(ref a1, n, 1, 1, ref wr, ref wi, ref s1, ref info); result = info==0; // // convert from 1-based arrays to -based // for(i=1; i<=n; i++) { for(j=1; j<=n; j++) { a[i-1,j-1] = a1[i,j]; s[i-1,j-1] = s1[i,j]; } } return result; } } }