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-rw-r--r--unsupported/Eigen/src/SVD/BDCSVD.h748
-rw-r--r--unsupported/Eigen/src/SVD/CMakeLists.txt6
-rw-r--r--unsupported/Eigen/src/SVD/JacobiSVD.h782
-rw-r--r--unsupported/Eigen/src/SVD/SVDBase.h236
-rw-r--r--unsupported/Eigen/src/SVD/TODOBdcsvd.txt29
-rw-r--r--unsupported/Eigen/src/SVD/doneInBDCSVD.txt21
6 files changed, 0 insertions, 1822 deletions
diff --git a/unsupported/Eigen/src/SVD/BDCSVD.h b/unsupported/Eigen/src/SVD/BDCSVD.h
deleted file mode 100644
index 11d4882e4..000000000
--- a/unsupported/Eigen/src/SVD/BDCSVD.h
+++ /dev/null
@@ -1,748 +0,0 @@
-// This file is part of Eigen, a lightweight C++ template library
-// for linear algebra.
-//
-// We used the "A Divide-And-Conquer Algorithm for the Bidiagonal SVD"
-// research report written by Ming Gu and Stanley C.Eisenstat
-// The code variable names correspond to the names they used in their
-// report
-//
-// Copyright (C) 2013 Gauthier Brun <brun.gauthier@gmail.com>
-// Copyright (C) 2013 Nicolas Carre <nicolas.carre@ensimag.fr>
-// Copyright (C) 2013 Jean Ceccato <jean.ceccato@ensimag.fr>
-// Copyright (C) 2013 Pierre Zoppitelli <pierre.zoppitelli@ensimag.fr>
-//
-// 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
-// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
-
-#ifndef EIGEN_BDCSVD_H
-#define EIGEN_BDCSVD_H
-
-#define EPSILON 0.0000000000000001
-
-#define ALGOSWAP 32
-
-namespace Eigen {
-/** \ingroup SVD_Module
- *
- *
- * \class BDCSVD
- *
- * \brief class Bidiagonal Divide and Conquer SVD
- *
- * \param MatrixType the type of the matrix of which we are computing the SVD decomposition
- * We plan to have a very similar interface to JacobiSVD on this class.
- * It should be used to speed up the calcul of SVD for big matrices.
- */
-template<typename _MatrixType>
-class BDCSVD : public SVDBase<_MatrixType>
-{
- typedef SVDBase<_MatrixType> Base;
-
-public:
- using Base::rows;
- using Base::cols;
-
- typedef _MatrixType MatrixType;
- typedef typename MatrixType::Scalar Scalar;
- typedef typename NumTraits<typename MatrixType::Scalar>::Real RealScalar;
- typedef typename MatrixType::Index Index;
- enum {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- DiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_DYNAMIC(RowsAtCompileTime, ColsAtCompileTime),
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- MaxDiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_FIXED(MaxRowsAtCompileTime, MaxColsAtCompileTime),
- MatrixOptions = MatrixType::Options
- };
-
- typedef Matrix<Scalar, RowsAtCompileTime, RowsAtCompileTime,
- MatrixOptions, MaxRowsAtCompileTime, MaxRowsAtCompileTime>
- MatrixUType;
- typedef Matrix<Scalar, ColsAtCompileTime, ColsAtCompileTime,
- MatrixOptions, MaxColsAtCompileTime, MaxColsAtCompileTime>
- MatrixVType;
- typedef typename internal::plain_diag_type<MatrixType, RealScalar>::type SingularValuesType;
- typedef typename internal::plain_row_type<MatrixType>::type RowType;
- typedef typename internal::plain_col_type<MatrixType>::type ColType;
- typedef Matrix<Scalar, Dynamic, Dynamic> MatrixX;
- typedef Matrix<RealScalar, Dynamic, Dynamic> MatrixXr;
- typedef Matrix<RealScalar, Dynamic, 1> VectorType;
-
- /** \brief Default Constructor.
- *
- * The default constructor is useful in cases in which the user intends to
- * perform decompositions via BDCSVD::compute(const MatrixType&).
- */
- BDCSVD()
- : SVDBase<_MatrixType>::SVDBase(),
- algoswap(ALGOSWAP)
- {}
-
-
- /** \brief Default Constructor with memory preallocation
- *
- * Like the default constructor but with preallocation of the internal data
- * according to the specified problem size.
- * \sa BDCSVD()
- */
- BDCSVD(Index rows, Index cols, unsigned int computationOptions = 0)
- : SVDBase<_MatrixType>::SVDBase(),
- algoswap(ALGOSWAP)
- {
- allocate(rows, cols, computationOptions);
- }
-
- /** \brief Constructor performing the decomposition of given matrix.
- *
- * \param matrix the matrix to decompose
- * \param computationOptions optional parameter allowing to specify if you want full or thin U or V unitaries to be computed.
- * By default, none is computed. This is a bit - field, the possible bits are #ComputeFullU, #ComputeThinU,
- * #ComputeFullV, #ComputeThinV.
- *
- * Thin unitaries are only available if your matrix type has a Dynamic number of columns (for example MatrixXf). They also are not
- * available with the (non - default) FullPivHouseholderQR preconditioner.
- */
- BDCSVD(const MatrixType& matrix, unsigned int computationOptions = 0)
- : SVDBase<_MatrixType>::SVDBase(),
- algoswap(ALGOSWAP)
- {
- compute(matrix, computationOptions);
- }
-
- ~BDCSVD()
- {
- }
- /** \brief Method performing the decomposition of given matrix using custom options.
- *
- * \param matrix the matrix to decompose
- * \param computationOptions optional parameter allowing to specify if you want full or thin U or V unitaries to be computed.
- * By default, none is computed. This is a bit - field, the possible bits are #ComputeFullU, #ComputeThinU,
- * #ComputeFullV, #ComputeThinV.
- *
- * Thin unitaries are only available if your matrix type has a Dynamic number of columns (for example MatrixXf). They also are not
- * available with the (non - default) FullPivHouseholderQR preconditioner.
- */
- SVDBase<MatrixType>& compute(const MatrixType& matrix, unsigned int computationOptions);
-
- /** \brief Method performing the decomposition of given matrix using current options.
- *
- * \param matrix the matrix to decompose
- *
- * This method uses the current \a computationOptions, as already passed to the constructor or to compute(const MatrixType&, unsigned int).
- */
- SVDBase<MatrixType>& compute(const MatrixType& matrix)
- {
- return compute(matrix, this->m_computationOptions);
- }
-
- void setSwitchSize(int s)
- {
- eigen_assert(s>3 && "BDCSVD the size of the algo switch has to be greater than 4");
- algoswap = s;
- }
-
-
- /** \returns a (least squares) solution of \f$ A x = b \f$ using the current SVD decomposition of A.
- *
- * \param b the right - hand - side of the equation to solve.
- *
- * \note Solving requires both U and V to be computed. Thin U and V are enough, there is no need for full U or V.
- *
- * \note SVD solving is implicitly least - squares. Thus, this method serves both purposes of exact solving and least - squares solving.
- * In other words, the returned solution is guaranteed to minimize the Euclidean norm \f$ \Vert A x - b \Vert \f$.
- */
- template<typename Rhs>
- inline const internal::solve_retval<BDCSVD, Rhs>
- solve(const MatrixBase<Rhs>& b) const
- {
- eigen_assert(this->m_isInitialized && "BDCSVD is not initialized.");
- eigen_assert(SVDBase<_MatrixType>::computeU() && SVDBase<_MatrixType>::computeV() &&
- "BDCSVD::solve() requires both unitaries U and V to be computed (thin unitaries suffice).");
- return internal::solve_retval<BDCSVD, Rhs>(*this, b.derived());
- }
-
-
- const MatrixUType& matrixU() const
- {
- eigen_assert(this->m_isInitialized && "SVD is not initialized.");
- if (isTranspose){
- eigen_assert(this->computeV() && "This SVD decomposition didn't compute U. Did you ask for it?");
- return this->m_matrixV;
- }
- else
- {
- eigen_assert(this->computeU() && "This SVD decomposition didn't compute U. Did you ask for it?");
- return this->m_matrixU;
- }
-
- }
-
-
- const MatrixVType& matrixV() const
- {
- eigen_assert(this->m_isInitialized && "SVD is not initialized.");
- if (isTranspose){
- eigen_assert(this->computeU() && "This SVD decomposition didn't compute V. Did you ask for it?");
- return this->m_matrixU;
- }
- else
- {
- eigen_assert(this->computeV() && "This SVD decomposition didn't compute V. Did you ask for it?");
- return this->m_matrixV;
- }
- }
-
-private:
- void allocate(Index rows, Index cols, unsigned int computationOptions);
- void divide (Index firstCol, Index lastCol, Index firstRowW,
- Index firstColW, Index shift);
- void deflation43(Index firstCol, Index shift, Index i, Index size);
- void deflation44(Index firstColu , Index firstColm, Index firstRowW, Index firstColW, Index i, Index j, Index size);
- void deflation(Index firstCol, Index lastCol, Index k, Index firstRowW, Index firstColW, Index shift);
- void copyUV(MatrixXr naiveU, MatrixXr naiveV, MatrixX householderU, MatrixX houseHolderV);
-
-protected:
- MatrixXr m_naiveU, m_naiveV;
- MatrixXr m_computed;
- Index nRec;
- int algoswap;
- bool isTranspose, compU, compV;
-
-}; //end class BDCSVD
-
-
-// Methode to allocate ans initialize matrix and attributs
-template<typename MatrixType>
-void BDCSVD<MatrixType>::allocate(Index rows, Index cols, unsigned int computationOptions)
-{
- isTranspose = (cols > rows);
- if (SVDBase<MatrixType>::allocate(rows, cols, computationOptions)) return;
- m_computed = MatrixXr::Zero(this->m_diagSize + 1, this->m_diagSize );
- if (isTranspose){
- compU = this->computeU();
- compV = this->computeV();
- }
- else
- {
- compV = this->computeU();
- compU = this->computeV();
- }
- if (compU) m_naiveU = MatrixXr::Zero(this->m_diagSize + 1, this->m_diagSize + 1 );
- else m_naiveU = MatrixXr::Zero(2, this->m_diagSize + 1 );
-
- if (compV) m_naiveV = MatrixXr::Zero(this->m_diagSize, this->m_diagSize);
-
-
- //should be changed for a cleaner implementation
- if (isTranspose){
- bool aux;
- if (this->computeU()||this->computeV()){
- aux = this->m_computeFullU;
- this->m_computeFullU = this->m_computeFullV;
- this->m_computeFullV = aux;
- aux = this->m_computeThinU;
- this->m_computeThinU = this->m_computeThinV;
- this->m_computeThinV = aux;
- }
- }
-}// end allocate
-
-// Methode which compute the BDCSVD for the int
-template<>
-SVDBase<Matrix<int, Dynamic, Dynamic> >&
-BDCSVD<Matrix<int, Dynamic, Dynamic> >::compute(const MatrixType& matrix, unsigned int computationOptions) {
- allocate(matrix.rows(), matrix.cols(), computationOptions);
- this->m_nonzeroSingularValues = 0;
- m_computed = Matrix<int, Dynamic, Dynamic>::Zero(rows(), cols());
- for (int i=0; i<this->m_diagSize; i++) {
- this->m_singularValues.coeffRef(i) = 0;
- }
- if (this->m_computeFullU) this->m_matrixU = Matrix<int, Dynamic, Dynamic>::Zero(rows(), rows());
- if (this->m_computeFullV) this->m_matrixV = Matrix<int, Dynamic, Dynamic>::Zero(cols(), cols());
- this->m_isInitialized = true;
- return *this;
-}
-
-
-// Methode which compute the BDCSVD
-template<typename MatrixType>
-SVDBase<MatrixType>&
-BDCSVD<MatrixType>::compute(const MatrixType& matrix, unsigned int computationOptions)
-{
- allocate(matrix.rows(), matrix.cols(), computationOptions);
- using std::abs;
-
- //**** step 1 Bidiagonalization isTranspose = (matrix.cols()>matrix.rows()) ;
- MatrixType copy;
- if (isTranspose) copy = matrix.adjoint();
- else copy = matrix;
-
- internal::UpperBidiagonalization<MatrixX > bid(copy);
-
- //**** step 2 Divide
- // this is ugly and has to be redone (care of complex cast)
- MatrixXr temp;
- temp = bid.bidiagonal().toDenseMatrix().transpose();
- m_computed.setZero();
- for (int i=0; i<this->m_diagSize - 1; i++) {
- m_computed(i, i) = temp(i, i);
- m_computed(i + 1, i) = temp(i + 1, i);
- }
- m_computed(this->m_diagSize - 1, this->m_diagSize - 1) = temp(this->m_diagSize - 1, this->m_diagSize - 1);
- divide(0, this->m_diagSize - 1, 0, 0, 0);
-
- //**** step 3 copy
- for (int i=0; i<this->m_diagSize; i++) {
- RealScalar a = abs(m_computed.coeff(i, i));
- this->m_singularValues.coeffRef(i) = a;
- if (a == 0){
- this->m_nonzeroSingularValues = i;
- break;
- }
- else if (i == this->m_diagSize - 1)
- {
- this->m_nonzeroSingularValues = i + 1;
- break;
- }
- }
- copyUV(m_naiveV, m_naiveU, bid.householderU(), bid.householderV());
- this->m_isInitialized = true;
- return *this;
-}// end compute
-
-
-template<typename MatrixType>
-void BDCSVD<MatrixType>::copyUV(MatrixXr naiveU, MatrixXr naiveV, MatrixX householderU, MatrixX householderV){
- if (this->computeU()){
- MatrixX temp = MatrixX::Zero(naiveU.rows(), naiveU.cols());
- temp.real() = naiveU;
- if (this->m_computeThinU){
- this->m_matrixU = MatrixX::Identity(householderU.cols(), this->m_nonzeroSingularValues );
- this->m_matrixU.block(0, 0, this->m_diagSize, this->m_nonzeroSingularValues) =
- temp.block(0, 0, this->m_diagSize, this->m_nonzeroSingularValues);
- this->m_matrixU = householderU * this->m_matrixU ;
- }
- else
- {
- this->m_matrixU = MatrixX::Identity(householderU.cols(), householderU.cols());
- this->m_matrixU.block(0, 0, this->m_diagSize, this->m_diagSize) = temp.block(0, 0, this->m_diagSize, this->m_diagSize);
- this->m_matrixU = householderU * this->m_matrixU ;
- }
- }
- if (this->computeV()){
- MatrixX temp = MatrixX::Zero(naiveV.rows(), naiveV.cols());
- temp.real() = naiveV;
- if (this->m_computeThinV){
- this->m_matrixV = MatrixX::Identity(householderV.cols(),this->m_nonzeroSingularValues );
- this->m_matrixV.block(0, 0, this->m_nonzeroSingularValues, this->m_nonzeroSingularValues) =
- temp.block(0, 0, this->m_nonzeroSingularValues, this->m_nonzeroSingularValues);
- this->m_matrixV = householderV * this->m_matrixV ;
- }
- else
- {
- this->m_matrixV = MatrixX::Identity(householderV.cols(), householderV.cols());
- this->m_matrixV.block(0, 0, this->m_diagSize, this->m_diagSize) = temp.block(0, 0, this->m_diagSize, this->m_diagSize);
- this->m_matrixV = householderV * this->m_matrixV;
- }
- }
-}
-
-// The divide algorithm is done "in place", we are always working on subsets of the same matrix. The divide methods takes as argument the
-// place of the submatrix we are currently working on.
-
-//@param firstCol : The Index of the first column of the submatrix of m_computed and for m_naiveU;
-//@param lastCol : The Index of the last column of the submatrix of m_computed and for m_naiveU;
-// lastCol + 1 - firstCol is the size of the submatrix.
-//@param firstRowW : The Index of the first row of the matrix W that we are to change. (see the reference paper section 1 for more information on W)
-//@param firstRowW : Same as firstRowW with the column.
-//@param shift : Each time one takes the left submatrix, one must add 1 to the shift. Why? Because! We actually want the last column of the U submatrix
-// to become the first column (*coeff) and to shift all the other columns to the right. There are more details on the reference paper.
-template<typename MatrixType>
-void BDCSVD<MatrixType>::divide (Index firstCol, Index lastCol, Index firstRowW,
- Index firstColW, Index shift)
-{
- // requires nbRows = nbCols + 1;
- using std::pow;
- using std::sqrt;
- using std::abs;
- const Index n = lastCol - firstCol + 1;
- const Index k = n/2;
- RealScalar alphaK;
- RealScalar betaK;
- RealScalar r0;
- RealScalar lambda, phi, c0, s0;
- MatrixXr l, f;
- // We use the other algorithm which is more efficient for small
- // matrices.
- if (n < algoswap){
- JacobiSVD<MatrixXr> b(m_computed.block(firstCol, firstCol, n + 1, n),
- ComputeFullU | (ComputeFullV * compV)) ;
- if (compU) m_naiveU.block(firstCol, firstCol, n + 1, n + 1).real() << b.matrixU();
- else
- {
- m_naiveU.row(0).segment(firstCol, n + 1).real() << b.matrixU().row(0);
- m_naiveU.row(1).segment(firstCol, n + 1).real() << b.matrixU().row(n);
- }
- if (compV) m_naiveV.block(firstRowW, firstColW, n, n).real() << b.matrixV();
- m_computed.block(firstCol + shift, firstCol + shift, n + 1, n).setZero();
- for (int i=0; i<n; i++)
- {
- m_computed(firstCol + shift + i, firstCol + shift +i) = b.singularValues().coeffRef(i);
- }
- return;
- }
- // We use the divide and conquer algorithm
- alphaK = m_computed(firstCol + k, firstCol + k);
- betaK = m_computed(firstCol + k + 1, firstCol + k);
- // The divide must be done in that order in order to have good results. Divide change the data inside the submatrices
- // and the divide of the right submatrice reads one column of the left submatrice. That's why we need to treat the
- // right submatrix before the left one.
- divide(k + 1 + firstCol, lastCol, k + 1 + firstRowW, k + 1 + firstColW, shift);
- divide(firstCol, k - 1 + firstCol, firstRowW, firstColW + 1, shift + 1);
- if (compU)
- {
- lambda = m_naiveU(firstCol + k, firstCol + k);
- phi = m_naiveU(firstCol + k + 1, lastCol + 1);
- }
- else
- {
- lambda = m_naiveU(1, firstCol + k);
- phi = m_naiveU(0, lastCol + 1);
- }
- r0 = sqrt((abs(alphaK * lambda) * abs(alphaK * lambda))
- + abs(betaK * phi) * abs(betaK * phi));
- if (compU)
- {
- l = m_naiveU.row(firstCol + k).segment(firstCol, k);
- f = m_naiveU.row(firstCol + k + 1).segment(firstCol + k + 1, n - k - 1);
- }
- else
- {
- l = m_naiveU.row(1).segment(firstCol, k);
- f = m_naiveU.row(0).segment(firstCol + k + 1, n - k - 1);
- }
- if (compV) m_naiveV(firstRowW+k, firstColW) = 1;
- if (r0 == 0)
- {
- c0 = 1;
- s0 = 0;
- }
- else
- {
- c0 = alphaK * lambda / r0;
- s0 = betaK * phi / r0;
- }
- if (compU)
- {
- MatrixXr q1 (m_naiveU.col(firstCol + k).segment(firstCol, k + 1));
- // we shiftW Q1 to the right
- for (Index i = firstCol + k - 1; i >= firstCol; i--)
- {
- m_naiveU.col(i + 1).segment(firstCol, k + 1) << m_naiveU.col(i).segment(firstCol, k + 1);
- }
- // we shift q1 at the left with a factor c0
- m_naiveU.col(firstCol).segment( firstCol, k + 1) << (q1 * c0);
- // last column = q1 * - s0
- m_naiveU.col(lastCol + 1).segment(firstCol, k + 1) << (q1 * ( - s0));
- // first column = q2 * s0
- m_naiveU.col(firstCol).segment(firstCol + k + 1, n - k) <<
- m_naiveU.col(lastCol + 1).segment(firstCol + k + 1, n - k) *s0;
- // q2 *= c0
- m_naiveU.col(lastCol + 1).segment(firstCol + k + 1, n - k) *= c0;
- }
- else
- {
- RealScalar q1 = (m_naiveU(0, firstCol + k));
- // we shift Q1 to the right
- for (Index i = firstCol + k - 1; i >= firstCol; i--)
- {
- m_naiveU(0, i + 1) = m_naiveU(0, i);
- }
- // we shift q1 at the left with a factor c0
- m_naiveU(0, firstCol) = (q1 * c0);
- // last column = q1 * - s0
- m_naiveU(0, lastCol + 1) = (q1 * ( - s0));
- // first column = q2 * s0
- m_naiveU(1, firstCol) = m_naiveU(1, lastCol + 1) *s0;
- // q2 *= c0
- m_naiveU(1, lastCol + 1) *= c0;
- m_naiveU.row(1).segment(firstCol + 1, k).setZero();
- m_naiveU.row(0).segment(firstCol + k + 1, n - k - 1).setZero();
- }
- m_computed(firstCol + shift, firstCol + shift) = r0;
- m_computed.col(firstCol + shift).segment(firstCol + shift + 1, k) << alphaK * l.transpose().real();
- m_computed.col(firstCol + shift).segment(firstCol + shift + k + 1, n - k - 1) << betaK * f.transpose().real();
-
-
- // the line below do the deflation of the matrix for the third part of the algorithm
- // Here the deflation is commented because the third part of the algorithm is not implemented
- // the third part of the algorithm is a fast SVD on the matrix m_computed which works thanks to the deflation
-
- deflation(firstCol, lastCol, k, firstRowW, firstColW, shift);
-
- // Third part of the algorithm, since the real third part of the algorithm is not implemeted we use a JacobiSVD
- JacobiSVD<MatrixXr> res= JacobiSVD<MatrixXr>(m_computed.block(firstCol + shift, firstCol +shift, n + 1, n),
- ComputeFullU | (ComputeFullV * compV)) ;
- if (compU) m_naiveU.block(firstCol, firstCol, n + 1, n + 1) *= res.matrixU();
- else m_naiveU.block(0, firstCol, 2, n + 1) *= res.matrixU();
-
- if (compV) m_naiveV.block(firstRowW, firstColW, n, n) *= res.matrixV();
- m_computed.block(firstCol + shift, firstCol + shift, n, n) << MatrixXr::Zero(n, n);
- for (int i=0; i<n; i++)
- m_computed(firstCol + shift + i, firstCol + shift +i) = res.singularValues().coeffRef(i);
- // end of the third part
-
-
-}// end divide
-
-
-// page 12_13
-// i >= 1, di almost null and zi non null.
-// We use a rotation to zero out zi applied to the left of M
-template <typename MatrixType>
-void BDCSVD<MatrixType>::deflation43(Index firstCol, Index shift, Index i, Index size){
- using std::abs;
- using std::sqrt;
- using std::pow;
- RealScalar c = m_computed(firstCol + shift, firstCol + shift);
- RealScalar s = m_computed(i, firstCol + shift);
- RealScalar r = sqrt(pow(abs(c), 2) + pow(abs(s), 2));
- if (r == 0){
- m_computed(i, i)=0;
- return;
- }
- c/=r;
- s/=r;
- m_computed(firstCol + shift, firstCol + shift) = r;
- m_computed(i, firstCol + shift) = 0;
- m_computed(i, i) = 0;
- if (compU){
- m_naiveU.col(firstCol).segment(firstCol,size) =
- c * m_naiveU.col(firstCol).segment(firstCol, size) -
- s * m_naiveU.col(i).segment(firstCol, size) ;
-
- m_naiveU.col(i).segment(firstCol, size) =
- (c + s*s/c) * m_naiveU.col(i).segment(firstCol, size) +
- (s/c) * m_naiveU.col(firstCol).segment(firstCol,size);
- }
-}// end deflation 43
-
-
-// page 13
-// i,j >= 1, i != j and |di - dj| < epsilon * norm2(M)
-// We apply two rotations to have zj = 0;
-template <typename MatrixType>
-void BDCSVD<MatrixType>::deflation44(Index firstColu , Index firstColm, Index firstRowW, Index firstColW, Index i, Index j, Index size){
- using std::abs;
- using std::sqrt;
- using std::conj;
- using std::pow;
- RealScalar c = m_computed(firstColm, firstColm + j - 1);
- RealScalar s = m_computed(firstColm, firstColm + i - 1);
- RealScalar r = sqrt(pow(abs(c), 2) + pow(abs(s), 2));
- if (r==0){
- m_computed(firstColm + i, firstColm + i) = m_computed(firstColm + j, firstColm + j);
- return;
- }
- c/=r;
- s/=r;
- m_computed(firstColm + i, firstColm) = r;
- m_computed(firstColm + i, firstColm + i) = m_computed(firstColm + j, firstColm + j);
- m_computed(firstColm + j, firstColm) = 0;
- if (compU){
- m_naiveU.col(firstColu + i).segment(firstColu, size) =
- c * m_naiveU.col(firstColu + i).segment(firstColu, size) -
- s * m_naiveU.col(firstColu + j).segment(firstColu, size) ;
-
- m_naiveU.col(firstColu + j).segment(firstColu, size) =
- (c + s*s/c) * m_naiveU.col(firstColu + j).segment(firstColu, size) +
- (s/c) * m_naiveU.col(firstColu + i).segment(firstColu, size);
- }
- if (compV){
- m_naiveV.col(firstColW + i).segment(firstRowW, size - 1) =
- c * m_naiveV.col(firstColW + i).segment(firstRowW, size - 1) +
- s * m_naiveV.col(firstColW + j).segment(firstRowW, size - 1) ;
-
- m_naiveV.col(firstColW + j).segment(firstRowW, size - 1) =
- (c + s*s/c) * m_naiveV.col(firstColW + j).segment(firstRowW, size - 1) -
- (s/c) * m_naiveV.col(firstColW + i).segment(firstRowW, size - 1);
- }
-}// end deflation 44
-
-
-
-template <typename MatrixType>
-void BDCSVD<MatrixType>::deflation(Index firstCol, Index lastCol, Index k, Index firstRowW, Index firstColW, Index shift){
- //condition 4.1
- RealScalar EPS = EPSILON * (std::max<RealScalar>(m_computed(firstCol + shift + 1, firstCol + shift + 1), m_computed(firstCol + k, firstCol + k)));
- const Index length = lastCol + 1 - firstCol;
- if (m_computed(firstCol + shift, firstCol + shift) < EPS){
- m_computed(firstCol + shift, firstCol + shift) = EPS;
- }
- //condition 4.2
- for (Index i=firstCol + shift + 1;i<=lastCol + shift;i++){
- if (std::abs(m_computed(i, firstCol + shift)) < EPS){
- m_computed(i, firstCol + shift) = 0;
- }
- }
-
- //condition 4.3
- for (Index i=firstCol + shift + 1;i<=lastCol + shift; i++){
- if (m_computed(i, i) < EPS){
- deflation43(firstCol, shift, i, length);
- }
- }
-
- //condition 4.4
-
- Index i=firstCol + shift + 1, j=firstCol + shift + k + 1;
- //we stock the final place of each line
- Index *permutation = new Index[length];
-
- for (Index p =1; p < length; p++) {
- if (i> firstCol + shift + k){
- permutation[p] = j;
- j++;
- } else if (j> lastCol + shift)
- {
- permutation[p] = i;
- i++;
- }
- else
- {
- if (m_computed(i, i) < m_computed(j, j)){
- permutation[p] = j;
- j++;
- }
- else
- {
- permutation[p] = i;
- i++;
- }
- }
- }
- //we do the permutation
- RealScalar aux;
- //we stock the current index of each col
- //and the column of each index
- Index *realInd = new Index[length];
- Index *realCol = new Index[length];
- for (int pos = 0; pos< length; pos++){
- realCol[pos] = pos + firstCol + shift;
- realInd[pos] = pos;
- }
- const Index Zero = firstCol + shift;
- VectorType temp;
- for (int i = 1; i < length - 1; i++){
- const Index I = i + Zero;
- const Index realI = realInd[i];
- const Index j = permutation[length - i] - Zero;
- const Index J = realCol[j];
-
- //diag displace
- aux = m_computed(I, I);
- m_computed(I, I) = m_computed(J, J);
- m_computed(J, J) = aux;
-
- //firstrow displace
- aux = m_computed(I, Zero);
- m_computed(I, Zero) = m_computed(J, Zero);
- m_computed(J, Zero) = aux;
-
- // change columns
- if (compU) {
- temp = m_naiveU.col(I - shift).segment(firstCol, length + 1);
- m_naiveU.col(I - shift).segment(firstCol, length + 1) <<
- m_naiveU.col(J - shift).segment(firstCol, length + 1);
- m_naiveU.col(J - shift).segment(firstCol, length + 1) << temp;
- }
- else
- {
- temp = m_naiveU.col(I - shift).segment(0, 2);
- m_naiveU.col(I - shift).segment(0, 2) <<
- m_naiveU.col(J - shift).segment(0, 2);
- m_naiveU.col(J - shift).segment(0, 2) << temp;
- }
- if (compV) {
- const Index CWI = I + firstColW - Zero;
- const Index CWJ = J + firstColW - Zero;
- temp = m_naiveV.col(CWI).segment(firstRowW, length);
- m_naiveV.col(CWI).segment(firstRowW, length) << m_naiveV.col(CWJ).segment(firstRowW, length);
- m_naiveV.col(CWJ).segment(firstRowW, length) << temp;
- }
-
- //update real pos
- realCol[realI] = J;
- realCol[j] = I;
- realInd[J - Zero] = realI;
- realInd[I - Zero] = j;
- }
- for (Index i = firstCol + shift + 1; i<lastCol + shift;i++){
- if ((m_computed(i + 1, i + 1) - m_computed(i, i)) < EPS){
- deflation44(firstCol ,
- firstCol + shift,
- firstRowW,
- firstColW,
- i - Zero,
- i + 1 - Zero,
- length);
- }
- }
- delete [] permutation;
- delete [] realInd;
- delete [] realCol;
-
-}//end deflation
-
-
-namespace internal{
-
-template<typename _MatrixType, typename Rhs>
-struct solve_retval<BDCSVD<_MatrixType>, Rhs>
- : solve_retval_base<BDCSVD<_MatrixType>, Rhs>
-{
- typedef BDCSVD<_MatrixType> BDCSVDType;
- EIGEN_MAKE_SOLVE_HELPERS(BDCSVDType, Rhs)
-
- template<typename Dest> void evalTo(Dest& dst) const
- {
- eigen_assert(rhs().rows() == dec().rows());
- // A = U S V^*
- // So A^{ - 1} = V S^{ - 1} U^*
- Index diagSize = (std::min)(dec().rows(), dec().cols());
- typename BDCSVDType::SingularValuesType invertedSingVals(diagSize);
- Index nonzeroSingVals = dec().nonzeroSingularValues();
- invertedSingVals.head(nonzeroSingVals) = dec().singularValues().head(nonzeroSingVals).array().inverse();
- invertedSingVals.tail(diagSize - nonzeroSingVals).setZero();
-
- dst = dec().matrixV().leftCols(diagSize)
- * invertedSingVals.asDiagonal()
- * dec().matrixU().leftCols(diagSize).adjoint()
- * rhs();
- return;
- }
-};
-
-} //end namespace internal
-
- /** \svd_module
- *
- * \return the singular value decomposition of \c *this computed by
- * BDC Algorithm
- *
- * \sa class BDCSVD
- */
-/*
-template<typename Derived>
-BDCSVD<typename MatrixBase<Derived>::PlainObject>
-MatrixBase<Derived>::bdcSvd(unsigned int computationOptions) const
-{
- return BDCSVD<PlainObject>(*this, computationOptions);
-}
-*/
-
-} // end namespace Eigen
-
-#endif
diff --git a/unsupported/Eigen/src/SVD/CMakeLists.txt b/unsupported/Eigen/src/SVD/CMakeLists.txt
deleted file mode 100644
index b40baf092..000000000
--- a/unsupported/Eigen/src/SVD/CMakeLists.txt
+++ /dev/null
@@ -1,6 +0,0 @@
-FILE(GLOB Eigen_SVD_SRCS "*.h")
-
-INSTALL(FILES
- ${Eigen_SVD_SRCS}
- DESTINATION ${INCLUDE_INSTALL_DIR}unsupported/Eigen/src/SVD COMPONENT Devel
- )
diff --git a/unsupported/Eigen/src/SVD/JacobiSVD.h b/unsupported/Eigen/src/SVD/JacobiSVD.h
deleted file mode 100644
index 02fac409e..000000000
--- a/unsupported/Eigen/src/SVD/JacobiSVD.h
+++ /dev/null
@@ -1,782 +0,0 @@
-// This file is part of Eigen, a lightweight C++ template library
-// for linear algebra.
-//
-// Copyright (C) 2009-2010 Benoit Jacob <jacob.benoit.1@gmail.com>
-//
-// 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
-// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
-
-#ifndef EIGEN_JACOBISVD_H
-#define EIGEN_JACOBISVD_H
-
-namespace Eigen {
-
-namespace internal {
-// forward declaration (needed by ICC)
-// the empty body is required by MSVC
-template<typename MatrixType, int QRPreconditioner,
- bool IsComplex = NumTraits<typename MatrixType::Scalar>::IsComplex>
-struct svd_precondition_2x2_block_to_be_real {};
-
-/*** QR preconditioners (R-SVD)
- ***
- *** Their role is to reduce the problem of computing the SVD to the case of a square matrix.
- *** This approach, known as R-SVD, is an optimization for rectangular-enough matrices, and is a requirement for
- *** JacobiSVD which by itself is only able to work on square matrices.
- ***/
-
-enum { PreconditionIfMoreColsThanRows, PreconditionIfMoreRowsThanCols };
-
-template<typename MatrixType, int QRPreconditioner, int Case>
-struct qr_preconditioner_should_do_anything
-{
- enum { a = MatrixType::RowsAtCompileTime != Dynamic &&
- MatrixType::ColsAtCompileTime != Dynamic &&
- MatrixType::ColsAtCompileTime <= MatrixType::RowsAtCompileTime,
- b = MatrixType::RowsAtCompileTime != Dynamic &&
- MatrixType::ColsAtCompileTime != Dynamic &&
- MatrixType::RowsAtCompileTime <= MatrixType::ColsAtCompileTime,
- ret = !( (QRPreconditioner == NoQRPreconditioner) ||
- (Case == PreconditionIfMoreColsThanRows && bool(a)) ||
- (Case == PreconditionIfMoreRowsThanCols && bool(b)) )
- };
-};
-
-template<typename MatrixType, int QRPreconditioner, int Case,
- bool DoAnything = qr_preconditioner_should_do_anything<MatrixType, QRPreconditioner, Case>::ret
-> struct qr_preconditioner_impl {};
-
-template<typename MatrixType, int QRPreconditioner, int Case>
-class qr_preconditioner_impl<MatrixType, QRPreconditioner, Case, false>
-{
-public:
- typedef typename MatrixType::Index Index;
- void allocate(const JacobiSVD<MatrixType, QRPreconditioner>&) {}
- bool run(JacobiSVD<MatrixType, QRPreconditioner>&, const MatrixType&)
- {
- return false;
- }
-};
-
-/*** preconditioner using FullPivHouseholderQR ***/
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, FullPivHouseholderQRPreconditioner, PreconditionIfMoreRowsThanCols, true>
-{
-public:
- typedef typename MatrixType::Index Index;
- typedef typename MatrixType::Scalar Scalar;
- enum
- {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime
- };
- typedef Matrix<Scalar, 1, RowsAtCompileTime, RowMajor, 1, MaxRowsAtCompileTime> WorkspaceType;
-
- void allocate(const JacobiSVD<MatrixType, FullPivHouseholderQRPreconditioner>& svd)
- {
- if (svd.rows() != m_qr.rows() || svd.cols() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.rows(), svd.cols());
- }
- if (svd.m_computeFullU) m_workspace.resize(svd.rows());
- }
-
- bool run(JacobiSVD<MatrixType, FullPivHouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.rows() > matrix.cols())
- {
- m_qr.compute(matrix);
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.cols(),matrix.cols()).template triangularView<Upper>();
- if(svd.m_computeFullU) m_qr.matrixQ().evalTo(svd.m_matrixU, m_workspace);
- if(svd.computeV()) svd.m_matrixV = m_qr.colsPermutation();
- return true;
- }
- return false;
- }
-private:
- typedef FullPivHouseholderQR<MatrixType> QRType;
- QRType m_qr;
- WorkspaceType m_workspace;
-};
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, FullPivHouseholderQRPreconditioner, PreconditionIfMoreColsThanRows, true>
-{
-public:
- typedef typename MatrixType::Index Index;
- typedef typename MatrixType::Scalar Scalar;
- enum
- {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- Options = MatrixType::Options
- };
- typedef Matrix<Scalar, ColsAtCompileTime, RowsAtCompileTime, Options, MaxColsAtCompileTime, MaxRowsAtCompileTime>
- TransposeTypeWithSameStorageOrder;
-
- void allocate(const JacobiSVD<MatrixType, FullPivHouseholderQRPreconditioner>& svd)
- {
- if (svd.cols() != m_qr.rows() || svd.rows() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.cols(), svd.rows());
- }
- m_adjoint.resize(svd.cols(), svd.rows());
- if (svd.m_computeFullV) m_workspace.resize(svd.cols());
- }
-
- bool run(JacobiSVD<MatrixType, FullPivHouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.cols() > matrix.rows())
- {
- m_adjoint = matrix.adjoint();
- m_qr.compute(m_adjoint);
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.rows(),matrix.rows()).template triangularView<Upper>().adjoint();
- if(svd.m_computeFullV) m_qr.matrixQ().evalTo(svd.m_matrixV, m_workspace);
- if(svd.computeU()) svd.m_matrixU = m_qr.colsPermutation();
- return true;
- }
- else return false;
- }
-private:
- typedef FullPivHouseholderQR<TransposeTypeWithSameStorageOrder> QRType;
- QRType m_qr;
- TransposeTypeWithSameStorageOrder m_adjoint;
- typename internal::plain_row_type<MatrixType>::type m_workspace;
-};
-
-/*** preconditioner using ColPivHouseholderQR ***/
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, ColPivHouseholderQRPreconditioner, PreconditionIfMoreRowsThanCols, true>
-{
-public:
- typedef typename MatrixType::Index Index;
-
- void allocate(const JacobiSVD<MatrixType, ColPivHouseholderQRPreconditioner>& svd)
- {
- if (svd.rows() != m_qr.rows() || svd.cols() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.rows(), svd.cols());
- }
- if (svd.m_computeFullU) m_workspace.resize(svd.rows());
- else if (svd.m_computeThinU) m_workspace.resize(svd.cols());
- }
-
- bool run(JacobiSVD<MatrixType, ColPivHouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.rows() > matrix.cols())
- {
- m_qr.compute(matrix);
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.cols(),matrix.cols()).template triangularView<Upper>();
- if(svd.m_computeFullU) m_qr.householderQ().evalTo(svd.m_matrixU, m_workspace);
- else if(svd.m_computeThinU)
- {
- svd.m_matrixU.setIdentity(matrix.rows(), matrix.cols());
- m_qr.householderQ().applyThisOnTheLeft(svd.m_matrixU, m_workspace);
- }
- if(svd.computeV()) svd.m_matrixV = m_qr.colsPermutation();
- return true;
- }
- return false;
- }
-
-private:
- typedef ColPivHouseholderQR<MatrixType> QRType;
- QRType m_qr;
- typename internal::plain_col_type<MatrixType>::type m_workspace;
-};
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, ColPivHouseholderQRPreconditioner, PreconditionIfMoreColsThanRows, true>
-{
-public:
- typedef typename MatrixType::Index Index;
- typedef typename MatrixType::Scalar Scalar;
- enum
- {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- Options = MatrixType::Options
- };
-
- typedef Matrix<Scalar, ColsAtCompileTime, RowsAtCompileTime, Options, MaxColsAtCompileTime, MaxRowsAtCompileTime>
- TransposeTypeWithSameStorageOrder;
-
- void allocate(const JacobiSVD<MatrixType, ColPivHouseholderQRPreconditioner>& svd)
- {
- if (svd.cols() != m_qr.rows() || svd.rows() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.cols(), svd.rows());
- }
- if (svd.m_computeFullV) m_workspace.resize(svd.cols());
- else if (svd.m_computeThinV) m_workspace.resize(svd.rows());
- m_adjoint.resize(svd.cols(), svd.rows());
- }
-
- bool run(JacobiSVD<MatrixType, ColPivHouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.cols() > matrix.rows())
- {
- m_adjoint = matrix.adjoint();
- m_qr.compute(m_adjoint);
-
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.rows(),matrix.rows()).template triangularView<Upper>().adjoint();
- if(svd.m_computeFullV) m_qr.householderQ().evalTo(svd.m_matrixV, m_workspace);
- else if(svd.m_computeThinV)
- {
- svd.m_matrixV.setIdentity(matrix.cols(), matrix.rows());
- m_qr.householderQ().applyThisOnTheLeft(svd.m_matrixV, m_workspace);
- }
- if(svd.computeU()) svd.m_matrixU = m_qr.colsPermutation();
- return true;
- }
- else return false;
- }
-
-private:
- typedef ColPivHouseholderQR<TransposeTypeWithSameStorageOrder> QRType;
- QRType m_qr;
- TransposeTypeWithSameStorageOrder m_adjoint;
- typename internal::plain_row_type<MatrixType>::type m_workspace;
-};
-
-/*** preconditioner using HouseholderQR ***/
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, HouseholderQRPreconditioner, PreconditionIfMoreRowsThanCols, true>
-{
-public:
- typedef typename MatrixType::Index Index;
-
- void allocate(const JacobiSVD<MatrixType, HouseholderQRPreconditioner>& svd)
- {
- if (svd.rows() != m_qr.rows() || svd.cols() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.rows(), svd.cols());
- }
- if (svd.m_computeFullU) m_workspace.resize(svd.rows());
- else if (svd.m_computeThinU) m_workspace.resize(svd.cols());
- }
-
- bool run(JacobiSVD<MatrixType, HouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.rows() > matrix.cols())
- {
- m_qr.compute(matrix);
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.cols(),matrix.cols()).template triangularView<Upper>();
- if(svd.m_computeFullU) m_qr.householderQ().evalTo(svd.m_matrixU, m_workspace);
- else if(svd.m_computeThinU)
- {
- svd.m_matrixU.setIdentity(matrix.rows(), matrix.cols());
- m_qr.householderQ().applyThisOnTheLeft(svd.m_matrixU, m_workspace);
- }
- if(svd.computeV()) svd.m_matrixV.setIdentity(matrix.cols(), matrix.cols());
- return true;
- }
- return false;
- }
-private:
- typedef HouseholderQR<MatrixType> QRType;
- QRType m_qr;
- typename internal::plain_col_type<MatrixType>::type m_workspace;
-};
-
-template<typename MatrixType>
-class qr_preconditioner_impl<MatrixType, HouseholderQRPreconditioner, PreconditionIfMoreColsThanRows, true>
-{
-public:
- typedef typename MatrixType::Index Index;
- typedef typename MatrixType::Scalar Scalar;
- enum
- {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- Options = MatrixType::Options
- };
-
- typedef Matrix<Scalar, ColsAtCompileTime, RowsAtCompileTime, Options, MaxColsAtCompileTime, MaxRowsAtCompileTime>
- TransposeTypeWithSameStorageOrder;
-
- void allocate(const JacobiSVD<MatrixType, HouseholderQRPreconditioner>& svd)
- {
- if (svd.cols() != m_qr.rows() || svd.rows() != m_qr.cols())
- {
- m_qr.~QRType();
- ::new (&m_qr) QRType(svd.cols(), svd.rows());
- }
- if (svd.m_computeFullV) m_workspace.resize(svd.cols());
- else if (svd.m_computeThinV) m_workspace.resize(svd.rows());
- m_adjoint.resize(svd.cols(), svd.rows());
- }
-
- bool run(JacobiSVD<MatrixType, HouseholderQRPreconditioner>& svd, const MatrixType& matrix)
- {
- if(matrix.cols() > matrix.rows())
- {
- m_adjoint = matrix.adjoint();
- m_qr.compute(m_adjoint);
-
- svd.m_workMatrix = m_qr.matrixQR().block(0,0,matrix.rows(),matrix.rows()).template triangularView<Upper>().adjoint();
- if(svd.m_computeFullV) m_qr.householderQ().evalTo(svd.m_matrixV, m_workspace);
- else if(svd.m_computeThinV)
- {
- svd.m_matrixV.setIdentity(matrix.cols(), matrix.rows());
- m_qr.householderQ().applyThisOnTheLeft(svd.m_matrixV, m_workspace);
- }
- if(svd.computeU()) svd.m_matrixU.setIdentity(matrix.rows(), matrix.rows());
- return true;
- }
- else return false;
- }
-
-private:
- typedef HouseholderQR<TransposeTypeWithSameStorageOrder> QRType;
- QRType m_qr;
- TransposeTypeWithSameStorageOrder m_adjoint;
- typename internal::plain_row_type<MatrixType>::type m_workspace;
-};
-
-/*** 2x2 SVD implementation
- ***
- *** JacobiSVD consists in performing a series of 2x2 SVD subproblems
- ***/
-
-template<typename MatrixType, int QRPreconditioner>
-struct svd_precondition_2x2_block_to_be_real<MatrixType, QRPreconditioner, false>
-{
- typedef JacobiSVD<MatrixType, QRPreconditioner> SVD;
- typedef typename SVD::Index Index;
- static void run(typename SVD::WorkMatrixType&, SVD&, Index, Index) {}
-};
-
-template<typename MatrixType, int QRPreconditioner>
-struct svd_precondition_2x2_block_to_be_real<MatrixType, QRPreconditioner, true>
-{
- typedef JacobiSVD<MatrixType, QRPreconditioner> SVD;
- typedef typename MatrixType::Scalar Scalar;
- typedef typename MatrixType::RealScalar RealScalar;
- typedef typename SVD::Index Index;
- static void run(typename SVD::WorkMatrixType& work_matrix, SVD& svd, Index p, Index q)
- {
- using std::sqrt;
- Scalar z;
- JacobiRotation<Scalar> rot;
- RealScalar n = sqrt(numext::abs2(work_matrix.coeff(p,p)) + numext::abs2(work_matrix.coeff(q,p)));
- if(n==0)
- {
- z = abs(work_matrix.coeff(p,q)) / work_matrix.coeff(p,q);
- work_matrix.row(p) *= z;
- if(svd.computeU()) svd.m_matrixU.col(p) *= conj(z);
- z = abs(work_matrix.coeff(q,q)) / work_matrix.coeff(q,q);
- work_matrix.row(q) *= z;
- if(svd.computeU()) svd.m_matrixU.col(q) *= conj(z);
- }
- else
- {
- rot.c() = conj(work_matrix.coeff(p,p)) / n;
- rot.s() = work_matrix.coeff(q,p) / n;
- work_matrix.applyOnTheLeft(p,q,rot);
- if(svd.computeU()) svd.m_matrixU.applyOnTheRight(p,q,rot.adjoint());
- if(work_matrix.coeff(p,q) != Scalar(0))
- {
- Scalar z = abs(work_matrix.coeff(p,q)) / work_matrix.coeff(p,q);
- work_matrix.col(q) *= z;
- if(svd.computeV()) svd.m_matrixV.col(q) *= z;
- }
- if(work_matrix.coeff(q,q) != Scalar(0))
- {
- z = abs(work_matrix.coeff(q,q)) / work_matrix.coeff(q,q);
- work_matrix.row(q) *= z;
- if(svd.computeU()) svd.m_matrixU.col(q) *= conj(z);
- }
- }
- }
-};
-
-template<typename MatrixType, typename RealScalar, typename Index>
-void real_2x2_jacobi_svd(const MatrixType& matrix, Index p, Index q,
- JacobiRotation<RealScalar> *j_left,
- JacobiRotation<RealScalar> *j_right)
-{
- using std::sqrt;
- Matrix<RealScalar,2,2> m;
- m << numext::real(matrix.coeff(p,p)), numext::real(matrix.coeff(p,q)),
- numext::real(matrix.coeff(q,p)), numext::real(matrix.coeff(q,q));
- JacobiRotation<RealScalar> rot1;
- RealScalar t = m.coeff(0,0) + m.coeff(1,1);
- RealScalar d = m.coeff(1,0) - m.coeff(0,1);
- if(t == RealScalar(0))
- {
- rot1.c() = RealScalar(0);
- rot1.s() = d > RealScalar(0) ? RealScalar(1) : RealScalar(-1);
- }
- else
- {
- RealScalar u = d / t;
- rot1.c() = RealScalar(1) / sqrt(RealScalar(1) + numext::abs2(u));
- rot1.s() = rot1.c() * u;
- }
- m.applyOnTheLeft(0,1,rot1);
- j_right->makeJacobi(m,0,1);
- *j_left = rot1 * j_right->transpose();
-}
-
-} // end namespace internal
-
-/** \ingroup SVD_Module
- *
- *
- * \class JacobiSVD
- *
- * \brief Two-sided Jacobi SVD decomposition of a rectangular matrix
- *
- * \param MatrixType the type of the matrix of which we are computing the SVD decomposition
- * \param QRPreconditioner this optional parameter allows to specify the type of QR decomposition that will be used internally
- * for the R-SVD step for non-square matrices. See discussion of possible values below.
- *
- * SVD decomposition consists in decomposing any n-by-p matrix \a A as a product
- * \f[ A = U S V^* \f]
- * where \a U is a n-by-n unitary, \a V is a p-by-p unitary, and \a S is a n-by-p real positive matrix which is zero outside of its main diagonal;
- * the diagonal entries of S are known as the \em singular \em values of \a A and the columns of \a U and \a V are known as the left
- * and right \em singular \em vectors of \a A respectively.
- *
- * Singular values are always sorted in decreasing order.
- *
- * This JacobiSVD decomposition computes only the singular values by default. If you want \a U or \a V, you need to ask for them explicitly.
- *
- * You can ask for only \em thin \a U or \a V to be computed, meaning the following. In case of a rectangular n-by-p matrix, letting \a m be the
- * smaller value among \a n and \a p, there are only \a m singular vectors; the remaining columns of \a U and \a V do not correspond to actual
- * singular vectors. Asking for \em thin \a U or \a V means asking for only their \a m first columns to be formed. So \a U is then a n-by-m matrix,
- * and \a V is then a p-by-m matrix. Notice that thin \a U and \a V are all you need for (least squares) solving.
- *
- * Here's an example demonstrating basic usage:
- * \include JacobiSVD_basic.cpp
- * Output: \verbinclude JacobiSVD_basic.out
- *
- * This JacobiSVD class is a two-sided Jacobi R-SVD decomposition, ensuring optimal reliability and accuracy. The downside is that it's slower than
- * bidiagonalizing SVD algorithms for large square matrices; however its complexity is still \f$ O(n^2p) \f$ where \a n is the smaller dimension and
- * \a p is the greater dimension, meaning that it is still of the same order of complexity as the faster bidiagonalizing R-SVD algorithms.
- * In particular, like any R-SVD, it takes advantage of non-squareness in that its complexity is only linear in the greater dimension.
- *
- * If the input matrix has inf or nan coefficients, the result of the computation is undefined, but the computation is guaranteed to
- * terminate in finite (and reasonable) time.
- *
- * The possible values for QRPreconditioner are:
- * \li ColPivHouseholderQRPreconditioner is the default. In practice it's very safe. It uses column-pivoting QR.
- * \li FullPivHouseholderQRPreconditioner, is the safest and slowest. It uses full-pivoting QR.
- * Contrary to other QRs, it doesn't allow computing thin unitaries.
- * \li HouseholderQRPreconditioner is the fastest, and less safe and accurate than the pivoting variants. It uses non-pivoting QR.
- * This is very similar in safety and accuracy to the bidiagonalization process used by bidiagonalizing SVD algorithms (since bidiagonalization
- * is inherently non-pivoting). However the resulting SVD is still more reliable than bidiagonalizing SVDs because the Jacobi-based iterarive
- * process is more reliable than the optimized bidiagonal SVD iterations.
- * \li NoQRPreconditioner allows not to use a QR preconditioner at all. This is useful if you know that you will only be computing
- * JacobiSVD decompositions of square matrices. Non-square matrices require a QR preconditioner. Using this option will result in
- * faster compilation and smaller executable code. It won't significantly speed up computation, since JacobiSVD is always checking
- * if QR preconditioning is needed before applying it anyway.
- *
- * \sa MatrixBase::jacobiSvd()
- */
-template<typename _MatrixType, int QRPreconditioner>
-class JacobiSVD : public SVDBase<_MatrixType>
-{
- public:
-
- typedef _MatrixType MatrixType;
- typedef typename MatrixType::Scalar Scalar;
- typedef typename NumTraits<typename MatrixType::Scalar>::Real RealScalar;
- typedef typename MatrixType::Index Index;
- enum {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- DiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_DYNAMIC(RowsAtCompileTime,ColsAtCompileTime),
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- MaxDiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_FIXED(MaxRowsAtCompileTime,MaxColsAtCompileTime),
- MatrixOptions = MatrixType::Options
- };
-
- typedef Matrix<Scalar, RowsAtCompileTime, RowsAtCompileTime,
- MatrixOptions, MaxRowsAtCompileTime, MaxRowsAtCompileTime>
- MatrixUType;
- typedef Matrix<Scalar, ColsAtCompileTime, ColsAtCompileTime,
- MatrixOptions, MaxColsAtCompileTime, MaxColsAtCompileTime>
- MatrixVType;
- typedef typename internal::plain_diag_type<MatrixType, RealScalar>::type SingularValuesType;
- typedef typename internal::plain_row_type<MatrixType>::type RowType;
- typedef typename internal::plain_col_type<MatrixType>::type ColType;
- typedef Matrix<Scalar, DiagSizeAtCompileTime, DiagSizeAtCompileTime,
- MatrixOptions, MaxDiagSizeAtCompileTime, MaxDiagSizeAtCompileTime>
- WorkMatrixType;
-
- /** \brief Default Constructor.
- *
- * The default constructor is useful in cases in which the user intends to
- * perform decompositions via JacobiSVD::compute(const MatrixType&).
- */
- JacobiSVD()
- : SVDBase<_MatrixType>::SVDBase()
- {}
-
-
- /** \brief Default Constructor with memory preallocation
- *
- * Like the default constructor but with preallocation of the internal data
- * according to the specified problem size.
- * \sa JacobiSVD()
- */
- JacobiSVD(Index rows, Index cols, unsigned int computationOptions = 0)
- : SVDBase<_MatrixType>::SVDBase()
- {
- allocate(rows, cols, computationOptions);
- }
-
- /** \brief Constructor performing the decomposition of given matrix.
- *
- * \param matrix the matrix to decompose
- * \param computationOptions optional parameter allowing to specify if you want full or thin U or V unitaries to be computed.
- * By default, none is computed. This is a bit-field, the possible bits are #ComputeFullU, #ComputeThinU,
- * #ComputeFullV, #ComputeThinV.
- *
- * Thin unitaries are only available if your matrix type has a Dynamic number of columns (for example MatrixXf). They also are not
- * available with the (non-default) FullPivHouseholderQR preconditioner.
- */
- JacobiSVD(const MatrixType& matrix, unsigned int computationOptions = 0)
- : SVDBase<_MatrixType>::SVDBase()
- {
- compute(matrix, computationOptions);
- }
-
- /** \brief Method performing the decomposition of given matrix using custom options.
- *
- * \param matrix the matrix to decompose
- * \param computationOptions optional parameter allowing to specify if you want full or thin U or V unitaries to be computed.
- * By default, none is computed. This is a bit-field, the possible bits are #ComputeFullU, #ComputeThinU,
- * #ComputeFullV, #ComputeThinV.
- *
- * Thin unitaries are only available if your matrix type has a Dynamic number of columns (for example MatrixXf). They also are not
- * available with the (non-default) FullPivHouseholderQR preconditioner.
- */
- SVDBase<MatrixType>& compute(const MatrixType& matrix, unsigned int computationOptions);
-
- /** \brief Method performing the decomposition of given matrix using current options.
- *
- * \param matrix the matrix to decompose
- *
- * This method uses the current \a computationOptions, as already passed to the constructor or to compute(const MatrixType&, unsigned int).
- */
- SVDBase<MatrixType>& compute(const MatrixType& matrix)
- {
- return compute(matrix, this->m_computationOptions);
- }
-
- /** \returns a (least squares) solution of \f$ A x = b \f$ using the current SVD decomposition of A.
- *
- * \param b the right-hand-side of the equation to solve.
- *
- * \note Solving requires both U and V to be computed. Thin U and V are enough, there is no need for full U or V.
- *
- * \note SVD solving is implicitly least-squares. Thus, this method serves both purposes of exact solving and least-squares solving.
- * In other words, the returned solution is guaranteed to minimize the Euclidean norm \f$ \Vert A x - b \Vert \f$.
- */
- template<typename Rhs>
- inline const internal::solve_retval<JacobiSVD, Rhs>
- solve(const MatrixBase<Rhs>& b) const
- {
- eigen_assert(this->m_isInitialized && "JacobiSVD is not initialized.");
- eigen_assert(SVDBase<MatrixType>::computeU() && SVDBase<MatrixType>::computeV() && "JacobiSVD::solve() requires both unitaries U and V to be computed (thin unitaries suffice).");
- return internal::solve_retval<JacobiSVD, Rhs>(*this, b.derived());
- }
-
-
-
- private:
- void allocate(Index rows, Index cols, unsigned int computationOptions);
-
- protected:
- WorkMatrixType m_workMatrix;
-
- template<typename __MatrixType, int _QRPreconditioner, bool _IsComplex>
- friend struct internal::svd_precondition_2x2_block_to_be_real;
- template<typename __MatrixType, int _QRPreconditioner, int _Case, bool _DoAnything>
- friend struct internal::qr_preconditioner_impl;
-
- internal::qr_preconditioner_impl<MatrixType, QRPreconditioner, internal::PreconditionIfMoreColsThanRows> m_qr_precond_morecols;
- internal::qr_preconditioner_impl<MatrixType, QRPreconditioner, internal::PreconditionIfMoreRowsThanCols> m_qr_precond_morerows;
-};
-
-template<typename MatrixType, int QRPreconditioner>
-void JacobiSVD<MatrixType, QRPreconditioner>::allocate(Index rows, Index cols, unsigned int computationOptions)
-{
- if (SVDBase<MatrixType>::allocate(rows, cols, computationOptions)) return;
-
- if (QRPreconditioner == FullPivHouseholderQRPreconditioner)
- {
- eigen_assert(!(this->m_computeThinU || this->m_computeThinV) &&
- "JacobiSVD: can't compute thin U or thin V with the FullPivHouseholderQR preconditioner. "
- "Use the ColPivHouseholderQR preconditioner instead.");
- }
-
- m_workMatrix.resize(this->m_diagSize, this->m_diagSize);
-
- if(this->m_cols>this->m_rows) m_qr_precond_morecols.allocate(*this);
- if(this->m_rows>this->m_cols) m_qr_precond_morerows.allocate(*this);
-}
-
-template<typename MatrixType, int QRPreconditioner>
-SVDBase<MatrixType>&
-JacobiSVD<MatrixType, QRPreconditioner>::compute(const MatrixType& matrix, unsigned int computationOptions)
-{
- using std::abs;
- allocate(matrix.rows(), matrix.cols(), computationOptions);
-
- // currently we stop when we reach precision 2*epsilon as the last bit of precision can require an unreasonable number of iterations,
- // only worsening the precision of U and V as we accumulate more rotations
- const RealScalar precision = RealScalar(2) * NumTraits<Scalar>::epsilon();
-
- // limit for very small denormal numbers to be considered zero in order to avoid infinite loops (see bug 286)
- const RealScalar considerAsZero = RealScalar(2) * std::numeric_limits<RealScalar>::denorm_min();
-
- /*** step 1. The R-SVD step: we use a QR decomposition to reduce to the case of a square matrix */
-
- if(!m_qr_precond_morecols.run(*this, matrix) && !m_qr_precond_morerows.run(*this, matrix))
- {
- m_workMatrix = matrix.block(0,0,this->m_diagSize,this->m_diagSize);
- if(this->m_computeFullU) this->m_matrixU.setIdentity(this->m_rows,this->m_rows);
- if(this->m_computeThinU) this->m_matrixU.setIdentity(this->m_rows,this->m_diagSize);
- if(this->m_computeFullV) this->m_matrixV.setIdentity(this->m_cols,this->m_cols);
- if(this->m_computeThinV) this->m_matrixV.setIdentity(this->m_cols, this->m_diagSize);
- }
-
- /*** step 2. The main Jacobi SVD iteration. ***/
-
- bool finished = false;
- while(!finished)
- {
- finished = true;
-
- // do a sweep: for all index pairs (p,q), perform SVD of the corresponding 2x2 sub-matrix
-
- for(Index p = 1; p < this->m_diagSize; ++p)
- {
- for(Index q = 0; q < p; ++q)
- {
- // if this 2x2 sub-matrix is not diagonal already...
- // notice that this comparison will evaluate to false if any NaN is involved, ensuring that NaN's don't
- // keep us iterating forever. Similarly, small denormal numbers are considered zero.
- using std::max;
- RealScalar threshold = (max)(considerAsZero, precision * (max)(abs(m_workMatrix.coeff(p,p)),
- abs(m_workMatrix.coeff(q,q))));
- if((max)(abs(m_workMatrix.coeff(p,q)),abs(m_workMatrix.coeff(q,p))) > threshold)
- {
- finished = false;
-
- // perform SVD decomposition of 2x2 sub-matrix corresponding to indices p,q to make it diagonal
- internal::svd_precondition_2x2_block_to_be_real<MatrixType, QRPreconditioner>::run(m_workMatrix, *this, p, q);
- JacobiRotation<RealScalar> j_left, j_right;
- internal::real_2x2_jacobi_svd(m_workMatrix, p, q, &j_left, &j_right);
-
- // accumulate resulting Jacobi rotations
- m_workMatrix.applyOnTheLeft(p,q,j_left);
- if(SVDBase<MatrixType>::computeU()) this->m_matrixU.applyOnTheRight(p,q,j_left.transpose());
-
- m_workMatrix.applyOnTheRight(p,q,j_right);
- if(SVDBase<MatrixType>::computeV()) this->m_matrixV.applyOnTheRight(p,q,j_right);
- }
- }
- }
- }
-
- /*** step 3. The work matrix is now diagonal, so ensure it's positive so its diagonal entries are the singular values ***/
-
- for(Index i = 0; i < this->m_diagSize; ++i)
- {
- RealScalar a = abs(m_workMatrix.coeff(i,i));
- this->m_singularValues.coeffRef(i) = a;
- if(SVDBase<MatrixType>::computeU() && (a!=RealScalar(0))) this->m_matrixU.col(i) *= this->m_workMatrix.coeff(i,i)/a;
- }
-
- /*** step 4. Sort singular values in descending order and compute the number of nonzero singular values ***/
-
- this->m_nonzeroSingularValues = this->m_diagSize;
- for(Index i = 0; i < this->m_diagSize; i++)
- {
- Index pos;
- RealScalar maxRemainingSingularValue = this->m_singularValues.tail(this->m_diagSize-i).maxCoeff(&pos);
- if(maxRemainingSingularValue == RealScalar(0))
- {
- this->m_nonzeroSingularValues = i;
- break;
- }
- if(pos)
- {
- pos += i;
- std::swap(this->m_singularValues.coeffRef(i), this->m_singularValues.coeffRef(pos));
- if(SVDBase<MatrixType>::computeU()) this->m_matrixU.col(pos).swap(this->m_matrixU.col(i));
- if(SVDBase<MatrixType>::computeV()) this->m_matrixV.col(pos).swap(this->m_matrixV.col(i));
- }
- }
-
- this->m_isInitialized = true;
- return *this;
-}
-
-namespace internal {
-template<typename _MatrixType, int QRPreconditioner, typename Rhs>
-struct solve_retval<JacobiSVD<_MatrixType, QRPreconditioner>, Rhs>
- : solve_retval_base<JacobiSVD<_MatrixType, QRPreconditioner>, Rhs>
-{
- typedef JacobiSVD<_MatrixType, QRPreconditioner> JacobiSVDType;
- EIGEN_MAKE_SOLVE_HELPERS(JacobiSVDType,Rhs)
-
- template<typename Dest> void evalTo(Dest& dst) const
- {
- eigen_assert(rhs().rows() == dec().rows());
-
- // A = U S V^*
- // So A^{-1} = V S^{-1} U^*
-
- Index diagSize = (std::min)(dec().rows(), dec().cols());
- typename JacobiSVDType::SingularValuesType invertedSingVals(diagSize);
-
- Index nonzeroSingVals = dec().nonzeroSingularValues();
- invertedSingVals.head(nonzeroSingVals) = dec().singularValues().head(nonzeroSingVals).array().inverse();
- invertedSingVals.tail(diagSize - nonzeroSingVals).setZero();
-
- dst = dec().matrixV().leftCols(diagSize)
- * invertedSingVals.asDiagonal()
- * dec().matrixU().leftCols(diagSize).adjoint()
- * rhs();
- }
-};
-} // end namespace internal
-
-/** \svd_module
- *
- * \return the singular value decomposition of \c *this computed by two-sided
- * Jacobi transformations.
- *
- * \sa class JacobiSVD
- */
-template<typename Derived>
-JacobiSVD<typename MatrixBase<Derived>::PlainObject>
-MatrixBase<Derived>::jacobiSvd(unsigned int computationOptions) const
-{
- return JacobiSVD<PlainObject>(*this, computationOptions);
-}
-
-} // end namespace Eigen
-
-#endif // EIGEN_JACOBISVD_H
diff --git a/unsupported/Eigen/src/SVD/SVDBase.h b/unsupported/Eigen/src/SVD/SVDBase.h
deleted file mode 100644
index fd8af3b8c..000000000
--- a/unsupported/Eigen/src/SVD/SVDBase.h
+++ /dev/null
@@ -1,236 +0,0 @@
-// This file is part of Eigen, a lightweight C++ template library
-// for linear algebra.
-//
-// Copyright (C) 2009-2010 Benoit Jacob <jacob.benoit.1@gmail.com>
-//
-// Copyright (C) 2013 Gauthier Brun <brun.gauthier@gmail.com>
-// Copyright (C) 2013 Nicolas Carre <nicolas.carre@ensimag.fr>
-// Copyright (C) 2013 Jean Ceccato <jean.ceccato@ensimag.fr>
-// Copyright (C) 2013 Pierre Zoppitelli <pierre.zoppitelli@ensimag.fr>
-//
-// 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
-// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
-
-#ifndef EIGEN_SVD_H
-#define EIGEN_SVD_H
-
-namespace Eigen {
-/** \ingroup SVD_Module
- *
- *
- * \class SVDBase
- *
- * \brief Mother class of SVD classes algorithms
- *
- * \param MatrixType the type of the matrix of which we are computing the SVD decomposition
- * SVD decomposition consists in decomposing any n-by-p matrix \a A as a product
- * \f[ A = U S V^* \f]
- * where \a U is a n-by-n unitary, \a V is a p-by-p unitary, and \a S is a n-by-p real positive matrix which is zero outside of its main diagonal;
- * the diagonal entries of S are known as the \em singular \em values of \a A and the columns of \a U and \a V are known as the left
- * and right \em singular \em vectors of \a A respectively.
- *
- * Singular values are always sorted in decreasing order.
- *
- *
- * You can ask for only \em thin \a U or \a V to be computed, meaning the following. In case of a rectangular n-by-p matrix, letting \a m be the
- * smaller value among \a n and \a p, there are only \a m singular vectors; the remaining columns of \a U and \a V do not correspond to actual
- * singular vectors. Asking for \em thin \a U or \a V means asking for only their \a m first columns to be formed. So \a U is then a n-by-m matrix,
- * and \a V is then a p-by-m matrix. Notice that thin \a U and \a V are all you need for (least squares) solving.
- *
- * If the input matrix has inf or nan coefficients, the result of the computation is undefined, but the computation is guaranteed to
- * terminate in finite (and reasonable) time.
- * \sa MatrixBase::genericSvd()
- */
-template<typename _MatrixType>
-class SVDBase
-{
-
-public:
- typedef _MatrixType MatrixType;
- typedef typename MatrixType::Scalar Scalar;
- typedef typename NumTraits<typename MatrixType::Scalar>::Real RealScalar;
- typedef typename MatrixType::Index Index;
- enum {
- RowsAtCompileTime = MatrixType::RowsAtCompileTime,
- ColsAtCompileTime = MatrixType::ColsAtCompileTime,
- DiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_DYNAMIC(RowsAtCompileTime,ColsAtCompileTime),
- MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
- MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
- MaxDiagSizeAtCompileTime = EIGEN_SIZE_MIN_PREFER_FIXED(MaxRowsAtCompileTime,MaxColsAtCompileTime),
- MatrixOptions = MatrixType::Options
- };
-
- typedef Matrix<Scalar, RowsAtCompileTime, RowsAtCompileTime,
- MatrixOptions, MaxRowsAtCompileTime, MaxRowsAtCompileTime>
- MatrixUType;
- typedef Matrix<Scalar, ColsAtCompileTime, ColsAtCompileTime,
- MatrixOptions, MaxColsAtCompileTime, MaxColsAtCompileTime>
- MatrixVType;
- typedef typename internal::plain_diag_type<MatrixType, RealScalar>::type SingularValuesType;
- typedef typename internal::plain_row_type<MatrixType>::type RowType;
- typedef typename internal::plain_col_type<MatrixType>::type ColType;
- typedef Matrix<Scalar, DiagSizeAtCompileTime, DiagSizeAtCompileTime,
- MatrixOptions, MaxDiagSizeAtCompileTime, MaxDiagSizeAtCompileTime>
- WorkMatrixType;
-
-
-
-
- /** \brief Method performing the decomposition of given matrix using custom options.
- *
- * \param matrix the matrix to decompose
- * \param computationOptions optional parameter allowing to specify if you want full or thin U or V unitaries to be computed.
- * By default, none is computed. This is a bit-field, the possible bits are #ComputeFullU, #ComputeThinU,
- * #ComputeFullV, #ComputeThinV.
- *
- * Thin unitaries are only available if your matrix type has a Dynamic number of columns (for example MatrixXf). They also are not
- * available with the (non-default) FullPivHouseholderQR preconditioner.
- */
- SVDBase& compute(const MatrixType& matrix, unsigned int computationOptions);
-
- /** \brief Method performing the decomposition of given matrix using current options.
- *
- * \param matrix the matrix to decompose
- *
- * This method uses the current \a computationOptions, as already passed to the constructor or to compute(const MatrixType&, unsigned int).
- */
- //virtual SVDBase& compute(const MatrixType& matrix) = 0;
- SVDBase& compute(const MatrixType& matrix);
-
- /** \returns the \a U matrix.
- *
- * For the SVDBase decomposition of a n-by-p matrix, letting \a m be the minimum of \a n and \a p,
- * the U matrix is n-by-n if you asked for #ComputeFullU, and is n-by-m if you asked for #ComputeThinU.
- *
- * The \a m first columns of \a U are the left singular vectors of the matrix being decomposed.
- *
- * This method asserts that you asked for \a U to be computed.
- */
- const MatrixUType& matrixU() const
- {
- eigen_assert(m_isInitialized && "SVD is not initialized.");
- eigen_assert(computeU() && "This SVD decomposition didn't compute U. Did you ask for it?");
- return m_matrixU;
- }
-
- /** \returns the \a V matrix.
- *
- * For the SVD decomposition of a n-by-p matrix, letting \a m be the minimum of \a n and \a p,
- * the V matrix is p-by-p if you asked for #ComputeFullV, and is p-by-m if you asked for ComputeThinV.
- *
- * The \a m first columns of \a V are the right singular vectors of the matrix being decomposed.
- *
- * This method asserts that you asked for \a V to be computed.
- */
- const MatrixVType& matrixV() const
- {
- eigen_assert(m_isInitialized && "SVD is not initialized.");
- eigen_assert(computeV() && "This SVD decomposition didn't compute V. Did you ask for it?");
- return m_matrixV;
- }
-
- /** \returns the vector of singular values.
- *
- * For the SVD decomposition of a n-by-p matrix, letting \a m be the minimum of \a n and \a p, the
- * returned vector has size \a m. Singular values are always sorted in decreasing order.
- */
- const SingularValuesType& singularValues() const
- {
- eigen_assert(m_isInitialized && "SVD is not initialized.");
- return m_singularValues;
- }
-
-
-
- /** \returns the number of singular values that are not exactly 0 */
- Index nonzeroSingularValues() const
- {
- eigen_assert(m_isInitialized && "SVD is not initialized.");
- return m_nonzeroSingularValues;
- }
-
-
- /** \returns true if \a U (full or thin) is asked for in this SVD decomposition */
- inline bool computeU() const { return m_computeFullU || m_computeThinU; }
- /** \returns true if \a V (full or thin) is asked for in this SVD decomposition */
- inline bool computeV() const { return m_computeFullV || m_computeThinV; }
-
-
- inline Index rows() const { return m_rows; }
- inline Index cols() const { return m_cols; }
-
-
-protected:
- // return true if already allocated
- bool allocate(Index rows, Index cols, unsigned int computationOptions) ;
-
- MatrixUType m_matrixU;
- MatrixVType m_matrixV;
- SingularValuesType m_singularValues;
- bool m_isInitialized, m_isAllocated;
- bool m_computeFullU, m_computeThinU;
- bool m_computeFullV, m_computeThinV;
- unsigned int m_computationOptions;
- Index m_nonzeroSingularValues, m_rows, m_cols, m_diagSize;
-
-
- /** \brief Default Constructor.
- *
- * Default constructor of SVDBase
- */
- SVDBase()
- : m_isInitialized(false),
- m_isAllocated(false),
- m_computationOptions(0),
- m_rows(-1), m_cols(-1)
- {}
-
-
-};
-
-
-template<typename MatrixType>
-bool SVDBase<MatrixType>::allocate(Index rows, Index cols, unsigned int computationOptions)
-{
- eigen_assert(rows >= 0 && cols >= 0);
-
- if (m_isAllocated &&
- rows == m_rows &&
- cols == m_cols &&
- computationOptions == m_computationOptions)
- {
- return true;
- }
-
- m_rows = rows;
- m_cols = cols;
- m_isInitialized = false;
- m_isAllocated = true;
- m_computationOptions = computationOptions;
- m_computeFullU = (computationOptions & ComputeFullU) != 0;
- m_computeThinU = (computationOptions & ComputeThinU) != 0;
- m_computeFullV = (computationOptions & ComputeFullV) != 0;
- m_computeThinV = (computationOptions & ComputeThinV) != 0;
- eigen_assert(!(m_computeFullU && m_computeThinU) && "SVDBase: you can't ask for both full and thin U");
- eigen_assert(!(m_computeFullV && m_computeThinV) && "SVDBase: you can't ask for both full and thin V");
- eigen_assert(EIGEN_IMPLIES(m_computeThinU || m_computeThinV, MatrixType::ColsAtCompileTime==Dynamic) &&
- "SVDBase: thin U and V are only available when your matrix has a dynamic number of columns.");
-
- m_diagSize = (std::min)(m_rows, m_cols);
- m_singularValues.resize(m_diagSize);
- if(RowsAtCompileTime==Dynamic)
- m_matrixU.resize(m_rows, m_computeFullU ? m_rows
- : m_computeThinU ? m_diagSize
- : 0);
- if(ColsAtCompileTime==Dynamic)
- m_matrixV.resize(m_cols, m_computeFullV ? m_cols
- : m_computeThinV ? m_diagSize
- : 0);
-
- return false;
-}
-
-}// end namespace
-
-#endif // EIGEN_SVD_H
diff --git a/unsupported/Eigen/src/SVD/TODOBdcsvd.txt b/unsupported/Eigen/src/SVD/TODOBdcsvd.txt
deleted file mode 100644
index 0bc9a46e6..000000000
--- a/unsupported/Eigen/src/SVD/TODOBdcsvd.txt
+++ /dev/null
@@ -1,29 +0,0 @@
-TO DO LIST
-
-
-
-(optional optimization) - do all the allocations in the allocate part
- - support static matrices
- - return a error at compilation time when using integer matrices (int, long, std::complex<int>, ...)
-
-to finish the algorithm :
- -implement the last part of the algorithm as described on the reference paper.
- You may find more information on that part on this paper
-
- -to replace the call to JacobiSVD at the end of the divide algorithm, just after the call to
- deflation.
-
-(suggested step by step resolution)
- 0) comment the call to Jacobi in the last part of the divide method and everything right after
- until the end of the method. What is commented can be a guideline to steps 3) 4) and 6)
- 1) solve the secular equation (Characteristic equation) on the values that are not null (zi!=0 and di!=0), after the deflation
- wich should be uncommented in the divide method
- 2) remember the values of the singular values that are already computed (zi=0)
- 3) assign the singular values found in m_computed at the right places (with the ones found in step 2) )
- in decreasing order
- 4) set the firstcol to zero (except the first element) in m_computed
- 5) compute all the singular vectors when CompV is set to true and only the left vectors when
- CompV is set to false
- 6) multiply naiveU and naiveV to the right by the matrices found, only naiveU when CompV is set to
- false, /!\ if CompU is false NaiveU has only 2 rows
- 7) delete everything commented in step 0)
diff --git a/unsupported/Eigen/src/SVD/doneInBDCSVD.txt b/unsupported/Eigen/src/SVD/doneInBDCSVD.txt
deleted file mode 100644
index 8563ddab8..000000000
--- a/unsupported/Eigen/src/SVD/doneInBDCSVD.txt
+++ /dev/null
@@ -1,21 +0,0 @@
-This unsupported package is about a divide and conquer algorithm to compute SVD.
-
-The implementation follows as closely as possible the following reference paper :
-http://www.cs.yale.edu/publications/techreports/tr933.pdf
-
-The code documentation uses the same names for variables as the reference paper. The code, deflation included, is
-working but there are a few things that could be optimised as explained in the TODOBdsvd.
-
-In the code comments were put at the line where would be the third step of the algorithm so one could simply add the call
-of a function doing the last part of the algorithm and that would not require any knowledge of the part we implemented.
-
-In the TODOBdcsvd we explain what is the main difficulty of the last part and suggest a reference paper to help solve it.
-
-The implemented has trouble with fixed size matrices.
-
-In the actual implementation, it returns matrices of zero when ask to do a svd on an int matrix.
-
-
-Paper for the third part:
-http://www.stat.uchicago.edu/~lekheng/courses/302/classics/greengard-rokhlin.pdf
-