// This file is part of Eigen, a lightweight C++ template library // for linear algebra. // // Copyright (C) 2012 Desire Nuentsa Wakam // // This Source Code Form is subject to the terms of the Mozilla // Public License v. 2.0. If a copy of the MPL was not distributed #include "sparse.h" #include template int generate_sparse_rectangular_problem(MatrixType& A, DenseMat& dA, int maxRows = 300, int maxCols = 300) { eigen_assert(maxRows >= maxCols); typedef typename MatrixType::Scalar Scalar; int rows = internal::random(1,maxRows); int cols = internal::random(1,rows); double density = (std::max)(8./(rows*cols), 0.01); A.resize(rows,rows); dA.resize(rows,rows); initSparse(density, dA, A,ForceNonZeroDiag); A.makeCompressed(); int nop = internal::random(0, internal::random(0,1) > 0.5 ? cols/2 : 0); for(int k=0; k(0,cols-1); int j1 = internal::random(0,cols-1); Scalar s = internal::random(); A.col(j0) = s * A.col(j1); dA.col(j0) = s * dA.col(j1); } return rows; } template void test_sparseqr_scalar() { typedef SparseMatrix MatrixType; typedef Matrix DenseMat; typedef Matrix DenseVector; MatrixType A; DenseMat dA; DenseVector refX,x,b; SparseQR > solver; generate_sparse_rectangular_problem(A,dA); int n = A.cols(); b = DenseVector::Random(n); solver.compute(A); if (solver.info() != Success) { std::cerr << "sparse QR factorization failed\n"; exit(0); return; } x = solver.solve(b); if (solver.info() != Success) { std::cerr << "sparse QR factorization failed\n"; exit(0); return; } //Compare with a dense QR solver ColPivHouseholderQR dqr(dA); refX = dqr.solve(b); VERIFY_IS_EQUAL(dqr.rank(), solver.rank()); if(solver.rank() (A * x - b).norm() ); else VERIFY_IS_APPROX(x, refX); } void test_sparseqr() { for(int i=0; i()); CALL_SUBTEST_2(test_sparseqr_scalar >()); } }