LDLT.h
Go to the documentation of this file.
1 // This file is part of Eigen, a lightweight C++ template library
2 // for linear algebra.
3 //
4 // Copyright (C) 2008-2011 Gael Guennebaud <gael.guennebaud@inria.fr>
5 // Copyright (C) 2009 Keir Mierle <mierle@gmail.com>
6 // Copyright (C) 2009 Benoit Jacob <jacob.benoit.1@gmail.com>
7 // Copyright (C) 2011 Timothy E. Holy <tim.holy@gmail.com >
8 //
9 // This Source Code Form is subject to the terms of the Mozilla
10 // Public License v. 2.0. If a copy of the MPL was not distributed
11 // with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
12 
13 #ifndef EIGEN_LDLT_H
14 #define EIGEN_LDLT_H
15 
16 namespace Eigen {
17 
18 namespace internal {
19  template<typename MatrixType, int UpLo> struct LDLT_Traits;
20 
21  // PositiveSemiDef means positive semi-definite and non-zero; same for NegativeSemiDef
23 }
24 
50 template<typename _MatrixType, int _UpLo> class LDLT
51 {
52  public:
53  typedef _MatrixType MatrixType;
54  enum {
55  RowsAtCompileTime = MatrixType::RowsAtCompileTime,
56  ColsAtCompileTime = MatrixType::ColsAtCompileTime,
57  MaxRowsAtCompileTime = MatrixType::MaxRowsAtCompileTime,
58  MaxColsAtCompileTime = MatrixType::MaxColsAtCompileTime,
59  UpLo = _UpLo
60  };
61  typedef typename MatrixType::Scalar Scalar;
63  typedef Eigen::Index Index;
64  typedef typename MatrixType::StorageIndex StorageIndex;
66 
69 
71 
77  LDLT()
78  : m_matrix(),
79  m_transpositions(),
80  m_sign(internal::ZeroSign),
81  m_isInitialized(false)
82  {}
83 
90  explicit LDLT(Index size)
91  : m_matrix(size, size),
92  m_transpositions(size),
93  m_temporary(size),
94  m_sign(internal::ZeroSign),
95  m_isInitialized(false)
96  {}
97 
104  template<typename InputType>
105  explicit LDLT(const EigenBase<InputType>& matrix)
106  : m_matrix(matrix.rows(), matrix.cols()),
107  m_transpositions(matrix.rows()),
108  m_temporary(matrix.rows()),
109  m_sign(internal::ZeroSign),
110  m_isInitialized(false)
111  {
112  compute(matrix.derived());
113  }
114 
121  template<typename InputType>
122  explicit LDLT(EigenBase<InputType>& matrix)
123  : m_matrix(matrix.derived()),
124  m_transpositions(matrix.rows()),
125  m_temporary(matrix.rows()),
126  m_sign(internal::ZeroSign),
127  m_isInitialized(false)
128  {
129  compute(matrix.derived());
130  }
131 
135  void setZero()
136  {
137  m_isInitialized = false;
138  }
139 
141  inline typename Traits::MatrixU matrixU() const
142  {
143  eigen_assert(m_isInitialized && "LDLT is not initialized.");
144  return Traits::getU(m_matrix);
145  }
146 
148  inline typename Traits::MatrixL matrixL() const
149  {
150  eigen_assert(m_isInitialized && "LDLT is not initialized.");
151  return Traits::getL(m_matrix);
152  }
153 
156  inline const TranspositionType& transpositionsP() const
157  {
158  eigen_assert(m_isInitialized && "LDLT is not initialized.");
159  return m_transpositions;
160  }
161 
164  {
165  eigen_assert(m_isInitialized && "LDLT is not initialized.");
166  return m_matrix.diagonal();
167  }
168 
170  inline bool isPositive() const
171  {
172  eigen_assert(m_isInitialized && "LDLT is not initialized.");
173  return m_sign == internal::PositiveSemiDef || m_sign == internal::ZeroSign;
174  }
175 
177  inline bool isNegative(void) const
178  {
179  eigen_assert(m_isInitialized && "LDLT is not initialized.");
180  return m_sign == internal::NegativeSemiDef || m_sign == internal::ZeroSign;
181  }
182 
198  template<typename Rhs>
199  inline const Solve<LDLT, Rhs>
200  solve(const MatrixBase<Rhs>& b) const
201  {
202  eigen_assert(m_isInitialized && "LDLT is not initialized.");
203  eigen_assert(m_matrix.rows()==b.rows()
204  && "LDLT::solve(): invalid number of rows of the right hand side matrix b");
205  return Solve<LDLT, Rhs>(*this, b.derived());
206  }
207 
208  template<typename Derived>
209  bool solveInPlace(MatrixBase<Derived> &bAndX) const;
210 
211  template<typename InputType>
212  LDLT& compute(const EigenBase<InputType>& matrix);
213 
217  RealScalar rcond() const
218  {
219  eigen_assert(m_isInitialized && "LDLT is not initialized.");
220  return internal::rcond_estimate_helper(m_l1_norm, *this);
221  }
222 
223  template <typename Derived>
224  LDLT& rankUpdate(const MatrixBase<Derived>& w, const RealScalar& alpha=1);
225 
230  inline const MatrixType& matrixLDLT() const
231  {
232  eigen_assert(m_isInitialized && "LDLT is not initialized.");
233  return m_matrix;
234  }
235 
236  MatrixType reconstructedMatrix() const;
237 
243  const LDLT& adjoint() const { return *this; };
244 
245  inline Index rows() const { return m_matrix.rows(); }
246  inline Index cols() const { return m_matrix.cols(); }
247 
254  {
255  eigen_assert(m_isInitialized && "LDLT is not initialized.");
256  return m_info;
257  }
258 
259  #ifndef EIGEN_PARSED_BY_DOXYGEN
260  template<typename RhsType, typename DstType>
261  EIGEN_DEVICE_FUNC
262  void _solve_impl(const RhsType &rhs, DstType &dst) const;
263  #endif
264 
265  protected:
266 
268  {
270  }
271 
278  MatrixType m_matrix;
279  RealScalar m_l1_norm;
280  TranspositionType m_transpositions;
281  TmpMatrixType m_temporary;
285 };
286 
287 namespace internal {
288 
289 template<int UpLo> struct ldlt_inplace;
290 
291 template<> struct ldlt_inplace<Lower>
292 {
293  template<typename MatrixType, typename TranspositionType, typename Workspace>
294  static bool unblocked(MatrixType& mat, TranspositionType& transpositions, Workspace& temp, SignMatrix& sign)
295  {
296  using std::abs;
297  typedef typename MatrixType::Scalar Scalar;
298  typedef typename MatrixType::RealScalar RealScalar;
299  typedef typename TranspositionType::StorageIndex IndexType;
300  eigen_assert(mat.rows()==mat.cols());
301  const Index size = mat.rows();
302  bool found_zero_pivot = false;
303  bool ret = true;
304 
305  if (size <= 1)
306  {
307  transpositions.setIdentity();
308  if (numext::real(mat.coeff(0,0)) > static_cast<RealScalar>(0) ) sign = PositiveSemiDef;
309  else if (numext::real(mat.coeff(0,0)) < static_cast<RealScalar>(0)) sign = NegativeSemiDef;
310  else sign = ZeroSign;
311  return true;
312  }
313 
314  for (Index k = 0; k < size; ++k)
315  {
316  // Find largest diagonal element
317  Index index_of_biggest_in_corner;
318  mat.diagonal().tail(size-k).cwiseAbs().maxCoeff(&index_of_biggest_in_corner);
319  index_of_biggest_in_corner += k;
320 
321  transpositions.coeffRef(k) = IndexType(index_of_biggest_in_corner);
322  if(k != index_of_biggest_in_corner)
323  {
324  // apply the transposition while taking care to consider only
325  // the lower triangular part
326  Index s = size-index_of_biggest_in_corner-1; // trailing size after the biggest element
327  mat.row(k).head(k).swap(mat.row(index_of_biggest_in_corner).head(k));
328  mat.col(k).tail(s).swap(mat.col(index_of_biggest_in_corner).tail(s));
329  std::swap(mat.coeffRef(k,k),mat.coeffRef(index_of_biggest_in_corner,index_of_biggest_in_corner));
330  for(Index i=k+1;i<index_of_biggest_in_corner;++i)
331  {
332  Scalar tmp = mat.coeffRef(i,k);
333  mat.coeffRef(i,k) = numext::conj(mat.coeffRef(index_of_biggest_in_corner,i));
334  mat.coeffRef(index_of_biggest_in_corner,i) = numext::conj(tmp);
335  }
337  mat.coeffRef(index_of_biggest_in_corner,k) = numext::conj(mat.coeff(index_of_biggest_in_corner,k));
338  }
339 
340  // partition the matrix:
341  // A00 | - | -
342  // lu = A10 | A11 | -
343  // A20 | A21 | A22
344  Index rs = size - k - 1;
345  Block<MatrixType,Dynamic,1> A21(mat,k+1,k,rs,1);
346  Block<MatrixType,1,Dynamic> A10(mat,k,0,1,k);
347  Block<MatrixType,Dynamic,Dynamic> A20(mat,k+1,0,rs,k);
348 
349  if(k>0)
350  {
351  temp.head(k) = mat.diagonal().real().head(k).asDiagonal() * A10.adjoint();
352  mat.coeffRef(k,k) -= (A10 * temp.head(k)).value();
353  if(rs>0)
354  A21.noalias() -= A20 * temp.head(k);
355  }
356 
357  // In some previous versions of Eigen (e.g., 3.2.1), the scaling was omitted if the pivot
358  // was smaller than the cutoff value. However, since LDLT is not rank-revealing
359  // we should only make sure that we do not introduce INF or NaN values.
360  // Remark that LAPACK also uses 0 as the cutoff value.
361  RealScalar realAkk = numext::real(mat.coeffRef(k,k));
362  bool pivot_is_valid = (abs(realAkk) > RealScalar(0));
363 
364  if(k==0 && !pivot_is_valid)
365  {
366  // The entire diagonal is zero, there is nothing more to do
367  // except filling the transpositions, and checking whether the matrix is zero.
368  sign = ZeroSign;
369  for(Index j = 0; j<size; ++j)
370  {
371  transpositions.coeffRef(j) = IndexType(j);
372  ret = ret && (mat.col(j).tail(size-j-1).array()==Scalar(0)).all();
373  }
374  return ret;
375  }
376 
377  if((rs>0) && pivot_is_valid)
378  A21 /= realAkk;
379 
380  if(found_zero_pivot && pivot_is_valid) ret = false; // factorization failed
381  else if(!pivot_is_valid) found_zero_pivot = true;
382 
383  if (sign == PositiveSemiDef) {
384  if (realAkk < static_cast<RealScalar>(0)) sign = Indefinite;
385  } else if (sign == NegativeSemiDef) {
386  if (realAkk > static_cast<RealScalar>(0)) sign = Indefinite;
387  } else if (sign == ZeroSign) {
388  if (realAkk > static_cast<RealScalar>(0)) sign = PositiveSemiDef;
389  else if (realAkk < static_cast<RealScalar>(0)) sign = NegativeSemiDef;
390  }
391  }
392 
393  return ret;
394  }
395 
396  // Reference for the algorithm: Davis and Hager, "Multiple Rank
397  // Modifications of a Sparse Cholesky Factorization" (Algorithm 1)
398  // Trivial rearrangements of their computations (Timothy E. Holy)
399  // allow their algorithm to work for rank-1 updates even if the
400  // original matrix is not of full rank.
401  // Here only rank-1 updates are implemented, to reduce the
402  // requirement for intermediate storage and improve accuracy
403  template<typename MatrixType, typename WDerived>
404  static bool updateInPlace(MatrixType& mat, MatrixBase<WDerived>& w, const typename MatrixType::RealScalar& sigma=1)
405  {
406  using numext::isfinite;
407  typedef typename MatrixType::Scalar Scalar;
408  typedef typename MatrixType::RealScalar RealScalar;
409 
410  const Index size = mat.rows();
411  eigen_assert(mat.cols() == size && w.size()==size);
412 
413  RealScalar alpha = 1;
414 
415  // Apply the update
416  for (Index j = 0; j < size; j++)
417  {
418  // Check for termination due to an original decomposition of low-rank
419  if (!(isfinite)(alpha))
420  break;
421 
422  // Update the diagonal terms
423  RealScalar dj = numext::real(mat.coeff(j,j));
424  Scalar wj = w.coeff(j);
425  RealScalar swj2 = sigma*numext::abs2(wj);
426  RealScalar gamma = dj*alpha + swj2;
427 
428  mat.coeffRef(j,j) += swj2/alpha;
429  alpha += swj2/dj;
430 
431 
432  // Update the terms of L
433  Index rs = size-j-1;
434  w.tail(rs) -= wj * mat.col(j).tail(rs);
435  if(gamma != 0)
436  mat.col(j).tail(rs) += (sigma*numext::conj(wj)/gamma)*w.tail(rs);
437  }
438  return true;
439  }
440 
441  template<typename MatrixType, typename TranspositionType, typename Workspace, typename WType>
442  static bool update(MatrixType& mat, const TranspositionType& transpositions, Workspace& tmp, const WType& w, const typename MatrixType::RealScalar& sigma=1)
443  {
444  // Apply the permutation to the input w
445  tmp = transpositions * w;
446 
447  return ldlt_inplace<Lower>::updateInPlace(mat,tmp,sigma);
448  }
449 };
450 
451 template<> struct ldlt_inplace<Upper>
452 {
453  template<typename MatrixType, typename TranspositionType, typename Workspace>
454  static EIGEN_STRONG_INLINE bool unblocked(MatrixType& mat, TranspositionType& transpositions, Workspace& temp, SignMatrix& sign)
455  {
456  Transpose<MatrixType> matt(mat);
457  return ldlt_inplace<Lower>::unblocked(matt, transpositions, temp, sign);
458  }
459 
460  template<typename MatrixType, typename TranspositionType, typename Workspace, typename WType>
461  static EIGEN_STRONG_INLINE bool update(MatrixType& mat, TranspositionType& transpositions, Workspace& tmp, WType& w, const typename MatrixType::RealScalar& sigma=1)
462  {
463  Transpose<MatrixType> matt(mat);
464  return ldlt_inplace<Lower>::update(matt, transpositions, tmp, w.conjugate(), sigma);
465  }
466 };
467 
468 template<typename MatrixType> struct LDLT_Traits<MatrixType,Lower>
469 {
472  static inline MatrixL getL(const MatrixType& m) { return MatrixL(m); }
473  static inline MatrixU getU(const MatrixType& m) { return MatrixU(m.adjoint()); }
474 };
475 
476 template<typename MatrixType> struct LDLT_Traits<MatrixType,Upper>
477 {
480  static inline MatrixL getL(const MatrixType& m) { return MatrixL(m.adjoint()); }
481  static inline MatrixU getU(const MatrixType& m) { return MatrixU(m); }
482 };
483 
484 } // end namespace internal
485 
488 template<typename MatrixType, int _UpLo>
489 template<typename InputType>
491 {
492  check_template_parameters();
493 
494  eigen_assert(a.rows()==a.cols());
495  const Index size = a.rows();
496 
497  m_matrix = a.derived();
498 
499  // Compute matrix L1 norm = max abs column sum.
500  m_l1_norm = RealScalar(0);
501  // TODO move this code to SelfAdjointView
502  for (Index col = 0; col < size; ++col) {
503  RealScalar abs_col_sum;
504  if (_UpLo == Lower)
505  abs_col_sum = m_matrix.col(col).tail(size - col).template lpNorm<1>() + m_matrix.row(col).head(col).template lpNorm<1>();
506  else
507  abs_col_sum = m_matrix.col(col).head(col).template lpNorm<1>() + m_matrix.row(col).tail(size - col).template lpNorm<1>();
508  if (abs_col_sum > m_l1_norm)
509  m_l1_norm = abs_col_sum;
510  }
511 
512  m_transpositions.resize(size);
513  m_isInitialized = false;
514  m_temporary.resize(size);
515  m_sign = internal::ZeroSign;
516 
517  m_info = internal::ldlt_inplace<UpLo>::unblocked(m_matrix, m_transpositions, m_temporary, m_sign) ? Success : NumericalIssue;
518 
519  m_isInitialized = true;
520  return *this;
521 }
522 
528 template<typename MatrixType, int _UpLo>
529 template<typename Derived>
531 {
532  typedef typename TranspositionType::StorageIndex IndexType;
533  const Index size = w.rows();
534  if (m_isInitialized)
535  {
536  eigen_assert(m_matrix.rows()==size);
537  }
538  else
539  {
540  m_matrix.resize(size,size);
541  m_matrix.setZero();
542  m_transpositions.resize(size);
543  for (Index i = 0; i < size; i++)
544  m_transpositions.coeffRef(i) = IndexType(i);
545  m_temporary.resize(size);
547  m_isInitialized = true;
548  }
549 
550  internal::ldlt_inplace<UpLo>::update(m_matrix, m_transpositions, m_temporary, w, sigma);
551 
552  return *this;
553 }
554 
555 #ifndef EIGEN_PARSED_BY_DOXYGEN
556 template<typename _MatrixType, int _UpLo>
557 template<typename RhsType, typename DstType>
558 void LDLT<_MatrixType,_UpLo>::_solve_impl(const RhsType &rhs, DstType &dst) const
559 {
560  eigen_assert(rhs.rows() == rows());
561  // dst = P b
562  dst = m_transpositions * rhs;
563 
564  // dst = L^-1 (P b)
565  matrixL().solveInPlace(dst);
566 
567  // dst = D^-1 (L^-1 P b)
568  // more precisely, use pseudo-inverse of D (see bug 241)
569  using std::abs;
570  const typename Diagonal<const MatrixType>::RealReturnType vecD(vectorD());
571  // In some previous versions, tolerance was set to the max of 1/highest and the maximal diagonal entry * epsilon
572  // as motivated by LAPACK's xGELSS:
573  // RealScalar tolerance = numext::maxi(vecD.array().abs().maxCoeff() * NumTraits<RealScalar>::epsilon(),RealScalar(1) / NumTraits<RealScalar>::highest());
574  // However, LDLT is not rank revealing, and so adjusting the tolerance wrt to the highest
575  // diagonal element is not well justified and leads to numerical issues in some cases.
576  // Moreover, Lapack's xSYTRS routines use 0 for the tolerance.
578 
579  for (Index i = 0; i < vecD.size(); ++i)
580  {
581  if(abs(vecD(i)) > tolerance)
582  dst.row(i) /= vecD(i);
583  else
584  dst.row(i).setZero();
585  }
586 
587  // dst = L^-T (D^-1 L^-1 P b)
588  matrixU().solveInPlace(dst);
589 
590  // dst = P^-1 (L^-T D^-1 L^-1 P b) = A^-1 b
591  dst = m_transpositions.transpose() * dst;
592 }
593 #endif
594 
608 template<typename MatrixType,int _UpLo>
609 template<typename Derived>
611 {
612  eigen_assert(m_isInitialized && "LDLT is not initialized.");
613  eigen_assert(m_matrix.rows() == bAndX.rows());
614 
615  bAndX = this->solve(bAndX);
616 
617  return true;
618 }
619 
623 template<typename MatrixType, int _UpLo>
625 {
626  eigen_assert(m_isInitialized && "LDLT is not initialized.");
627  const Index size = m_matrix.rows();
628  MatrixType res(size,size);
629 
630  // P
631  res.setIdentity();
632  res = transpositionsP() * res;
633  // L^* P
634  res = matrixU() * res;
635  // D(L^*P)
636  res = vectorD().real().asDiagonal() * res;
637  // L(DL^*P)
638  res = matrixL() * res;
639  // P^T (LDL^*P)
640  res = transpositionsP().transpose() * res;
641 
642  return res;
643 }
644 
649 template<typename MatrixType, unsigned int UpLo>
652 {
653  return LDLT<PlainObject,UpLo>(m_matrix);
654 }
655 
660 template<typename Derived>
663 {
664  return LDLT<PlainObject>(derived());
665 }
666 
667 } // end namespace Eigen
668 
669 #endif // EIGEN_LDLT_H
Robust Cholesky decomposition of a matrix with pivoting.
Definition: LDLT.h:50
static void check_template_parameters()
Definition: LDLT.h:267
EIGEN_STRONG_INLINE EIGEN_DEVICE_FUNC bool() isfinite(const half &a)
Definition: Half.h:379
#define EIGEN_STRONG_INLINE
Definition: Macros.h:493
const AutoDiffScalar< DerType > & conj(const AutoDiffScalar< DerType > &x)
TranspositionType m_transpositions
Definition: LDLT.h:280
const LDLT< PlainObject > ldlt() const
Definition: LDLT.h:662
NumTraits< typename MatrixType::Scalar >::Real RealScalar
Definition: LDLT.h:62
static bool update(MatrixType &mat, const TranspositionType &transpositions, Workspace &tmp, const WType &w, const typename MatrixType::RealScalar &sigma=1)
Definition: LDLT.h:442
EIGEN_DEVICE_FUNC RealReturnType real() const
LDLT & compute(const EigenBase< InputType > &matrix)
_MatrixType MatrixType
Definition: LDLT.h:53
Expression of the transpose of a matrix.
Definition: Transpose.h:52
LDLT(Index size)
Default Constructor with memory preallocation.
Definition: LDLT.h:90
Matrix< Scalar, RowsAtCompileTime, 1, 0, MaxRowsAtCompileTime, 1 > TmpMatrixType
Definition: LDLT.h:65
Index rows() const
Definition: LDLT.h:245
XmlRpcServer s
Definition: LDLT.h:16
LDLT & rankUpdate(const MatrixBase< Derived > &w, const RealScalar &alpha=1)
static constexpr size_t size(Tuple< Args... > &)
Provides access to the number of elements in a tuple as a compile-time constant expression.
Holds information about the various numeric (i.e. scalar) types allowed by Eigen. ...
Definition: NumTraits.h:150
EIGEN_DEVICE_FUNC EIGEN_STRONG_INLINE const AbsReturnType abs() const
static bool updateInPlace(MatrixType &mat, MatrixBase< WDerived > &w, const typename MatrixType::RealScalar &sigma=1)
Definition: LDLT.h:404
Decomposition::RealScalar rcond_estimate_helper(typename Decomposition::RealScalar matrix_norm, const Decomposition &dec)
Reciprocal condition number estimator.
void setZero()
Definition: LDLT.h:135
RealScalar m_l1_norm
Definition: LDLT.h:279
MatrixType m_matrix
Definition: LDLT.h:278
const MatrixType & matrixLDLT() const
Definition: LDLT.h:230
internal::SignMatrix m_sign
Definition: LDLT.h:282
static EIGEN_STRONG_INLINE bool update(MatrixType &mat, TranspositionType &transpositions, Workspace &tmp, WType &w, const typename MatrixType::RealScalar &sigma=1)
Definition: LDLT.h:461
MatrixType::StorageIndex StorageIndex
Definition: LDLT.h:64
LDLT()
Default Constructor.
Definition: LDLT.h:77
EIGEN_DEVICE_FUNC ColXpr col(Index i)
This is the const version of col().
Definition: BlockMethods.h:838
EIGEN_DEVICE_FUNC const SignReturnType sign() const
const mpreal gamma(const mpreal &x, mp_rnd_t r=mpreal::get_default_rnd())
Definition: mpreal.h:2262
bool solveInPlace(MatrixBase< Derived > &bAndX) const
Definition: LDLT.h:610
LDLT(const EigenBase< InputType > &matrix)
Constructor with decomposition.
Definition: LDLT.h:105
EIGEN_DEFAULT_DENSE_INDEX_TYPE Index
The Index type as used for the API.
Definition: Meta.h:33
EIGEN_DEVICE_FUNC void _solve_impl(const RhsType &rhs, DstType &dst) const
bool isNegative(void) const
Definition: LDLT.h:177
const TriangularView< const typename MatrixType::AdjointReturnType, UnitLower > MatrixL
Definition: LDLT.h:478
#define eigen_assert(x)
Definition: Macros.h:577
#define EIGEN_STATIC_ASSERT_NON_INTEGER(TYPE)
Definition: StaticAssert.h:182
const TriangularView< const MatrixType, UnitLower > MatrixL
Definition: LDLT.h:470
Transpositions< RowsAtCompileTime, MaxRowsAtCompileTime > TranspositionType
Definition: LDLT.h:67
RealScalar rcond() const
Definition: LDLT.h:217
MatrixType reconstructedMatrix() const
Definition: LDLT.h:624
EIGEN_DEVICE_FUNC Index cols() const
Definition: EigenBase.h:62
static MatrixL getL(const MatrixType &m)
Definition: LDLT.h:472
const LDLT & adjoint() const
Definition: LDLT.h:243
internal::LDLT_Traits< MatrixType, UpLo > Traits
Definition: LDLT.h:70
const TranspositionType & transpositionsP() const
Definition: LDLT.h:156
static MatrixU getU(const MatrixType &m)
Definition: LDLT.h:473
EIGEN_DEVICE_FUNC EIGEN_STRONG_INLINE const Abs2ReturnType abs2() const
Traits::MatrixU matrixU() const
Definition: LDLT.h:141
static EIGEN_STRONG_INLINE bool unblocked(MatrixType &mat, TranspositionType &transpositions, Workspace &temp, SignMatrix &sign)
Definition: LDLT.h:454
Index cols() const
Definition: LDLT.h:246
TmpMatrixType m_temporary
Definition: LDLT.h:281
Eigen::Index Index
Definition: LDLT.h:63
const Solve< LDLT, Rhs > solve(const MatrixBase< Rhs > &b) const
Definition: LDLT.h:200
ComputationInfo m_info
Definition: LDLT.h:284
EIGEN_DEVICE_FUNC SegmentReturnType tail(Index n)
Definition: DenseBase.h:950
bool isPositive() const
Definition: LDLT.h:170
TFSIMD_FORCE_INLINE const tfScalar & w() const
static MatrixU getU(const MatrixType &m)
Definition: LDLT.h:481
ComputationInfo info() const
Reports whether previous computation was successful.
Definition: LDLT.h:253
Expression of a fixed-size or dynamic-size block.
Definition: Block.h:103
MatrixType::Scalar Scalar
Definition: LDLT.h:61
Diagonal< const MatrixType > vectorD() const
Definition: LDLT.h:163
Traits::MatrixL matrixL() const
Definition: LDLT.h:148
Expression of a triangular part in a matrix.
EIGEN_DEVICE_FUNC Index rows() const
Definition: EigenBase.h:59
const TriangularView< const MatrixType, UnitUpper > MatrixU
Definition: LDLT.h:479
const TriangularView< const typename MatrixType::AdjointReturnType, UnitUpper > MatrixU
Definition: LDLT.h:471
Expression of a diagonal/subdiagonal/superdiagonal in a matrix.
Definition: Diagonal.h:63
Pseudo expression representing a solving operation.
Definition: Solve.h:62
static bool unblocked(MatrixType &mat, TranspositionType &transpositions, Workspace &temp, SignMatrix &sign)
Definition: LDLT.h:294
LDLT(EigenBase< InputType > &matrix)
Constructs a LDLT factorization from a given matrix.
Definition: LDLT.h:122
ComputationInfo
Definition: Constants.h:430
EIGEN_DEVICE_FUNC const Scalar & b
EIGEN_DEVICE_FUNC Derived & derived()
Definition: EigenBase.h:45
Base class for all dense matrices, vectors, and expressions.
Definition: MatrixBase.h:48
PermutationMatrix< RowsAtCompileTime, MaxRowsAtCompileTime > PermutationType
Definition: LDLT.h:68
bool m_isInitialized
Definition: LDLT.h:283
void swap(mpfr::mpreal &x, mpfr::mpreal &y)
Definition: mpreal.h:2986
const LDLT< PlainObject, UpLo > ldlt() const
Definition: LDLT.h:651
static MatrixL getL(const MatrixType &m)
Definition: LDLT.h:480


hebiros
Author(s): Xavier Artache , Matthew Tesch
autogenerated on Thu Sep 3 2020 04:08:20