// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2008-2012 Gael Guennebaud <gael.guennebaud@inria.fr>
/*
NOTE: thes functions vave been adapted from the LDL library:
LDL Copyright (c) 2005 by Timothy A. Davis. All Rights Reserved.
LDL License:
Your use or distribution of LDL or any modified version of
LDL implies that you agree to this License.
This library is free software; you can redistribute it and/or
modify it under the terms of the GNU Lesser General Public
License as published by the Free Software Foundation; either
version 2.1 of the License, or (at your option) any later version.
This library is distributed in the hope that it will be useful,
but WITHOUT ANY WARRANTY; without even the implied warranty of
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
Lesser General Public License for more details.
You should have received a copy of the GNU Lesser General Public
License along with this library; if not, write to the Free Software
Foundation, Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301
USA
Permission is hereby granted to use or copy this program under the
terms of the GNU LGPL, provided that the Copyright, this License,
and the Availability of the original version is retained on all copies.
User documentation of any code that uses this code or any modified
version of this code must cite the Copyright, this License, the
Availability note, and "Used by permission." Permission to modify
the code and to distribute modified code is granted, provided the
Copyright, this License, and the Availability note are retained,
and a notice that the code was modified is included.
*/
#include "../Core/util/NonMPL2.h"
#ifndef EIGEN_SIMPLICIAL_CHOLESKY_IMPL_H
#define EIGEN_SIMPLICIAL_CHOLESKY_IMPL_H
namespace Eigen {
template<typename Derived>
void SimplicialCholeskyBase<Derived>::analyzePattern_preordered(const CholMatrixType& ap, bool doLDLT)
{
const Index size = ap.rows();
m_matrix.resize(size, size);
m_parent.resize(size);
m_nonZerosPerCol.resize(size);
ei_declare_aligned_stack_constructed_variable(Index, tags, size, 0);
for(Index k = 0; k < size; ++k)
{
/* L(k,:) pattern: all nodes reachable in etree from nz in A(0:k-1,k) */
m_parent[k] = -1; /* parent of k is not yet known */
tags[k] = k; /* mark node k as visited */
m_nonZerosPerCol[k] = 0; /* count of nonzeros in column k of L */
for(typename CholMatrixType::InnerIterator it(ap,k); it; ++it)
{
Index i = it.index();
if(i < k)
{
/* follow path from i to root of etree, stop at flagged node */
for(; tags[i] != k; i = m_parent[i])
{
/* find parent of i if not yet determined */
if (m_parent[i] == -1)
m_parent[i] = k;
m_nonZerosPerCol[i]++; /* L (k,i) is nonzero */
tags[i] = k; /* mark i as visited */
}
}
}
}
/* construct Lp index array from m_nonZerosPerCol column counts */
Index* Lp = m_matrix.outerIndexPtr();
Lp[0] = 0;
for(Index k = 0; k < size; ++k)
Lp[k+1] = Lp[k] + m_nonZerosPerCol[k] + (doLDLT ? 0 : 1);
m_matrix.resizeNonZeros(Lp[size]);
m_isInitialized = true;
m_info = Success;
m_analysisIsOk = true;
m_factorizationIsOk = false;
}
template<typename Derived>
template<bool DoLDLT>
void SimplicialCholeskyBase<Derived>::factorize_preordered(const CholMatrixType& ap)
{
using std::sqrt;
eigen_assert(m_analysisIsOk && "You must first call analyzePattern()");
eigen_assert(ap.rows()==ap.cols());
const Index size = ap.rows();
eigen_assert(m_parent.size()==size);
eigen_assert(m_nonZerosPerCol.size()==size);
const Index* Lp = m_matrix.outerIndexPtr();
Index* Li = m_matrix.innerIndexPtr();
Scalar* Lx = m_matrix.valuePtr();
ei_declare_aligned_stack_constructed_variable(Scalar, y, size, 0);
ei_declare_aligned_stack_constructed_variable(Index, pattern, size, 0);
ei_declare_aligned_stack_constructed_variable(Index, tags, size, 0);
bool ok = true;
m_diag.resize(DoLDLT ? size : 0);
for(Index k = 0; k < size; ++k)
{
// compute nonzero pattern of kth row of L, in topological order
y[k] = 0.0; // Y(0:k) is now all zero
Index top = size; // stack for pattern is empty
tags[k] = k; // mark node k as visited
m_nonZerosPerCol[k] = 0; // count of nonzeros in column k of L
for(typename MatrixType::InnerIterator it(ap,k); it; ++it)
{
Index i = it.index();
if(i <= k)
{
y[i] += numext::conj(it.value()); /* scatter A(i,k) into Y (sum duplicates) */
Index len;
for(len = 0; tags[i] != k; i = m_parent[i])
{
pattern[len++] = i; /* L(k,i) is nonzero */
tags[i] = k; /* mark i as visited */
}
while(len > 0)
pattern[--top] = pattern[--len];
}
}
/* compute numerical values kth row of L (a sparse triangular solve) */
RealScalar d = numext::real(y[k]) * m_shiftScale + m_shiftOffset; // get D(k,k), apply the shift function, and clear Y(k)
y[k] = 0.0;
for(; top < size; ++top)
{
Index i = pattern[top]; /* pattern[top:n-1] is pattern of L(:,k) */
Scalar yi = y[i]; /* get and clear Y(i) */
y[i] = 0.0;
/* the nonzero entry L(k,i) */
Scalar l_ki;
if(DoLDLT)
l_ki = yi / m_diag[i];
else
yi = l_ki = yi / Lx[Lp[i]];
Index p2 = Lp[i] + m_nonZerosPerCol[i];
Index p;
for(p = Lp[i] + (DoLDLT ? 0 : 1); p < p2; ++p)
y[Li[p]] -= numext::conj(Lx[p]) * yi;
d -= numext::real(l_ki * numext::conj(yi));
Li[p] = k; /* store L(k,i) in column form of L */
Lx[p] = l_ki;
++m_nonZerosPerCol[i]; /* increment count of nonzeros in col i */
}
if(DoLDLT)
{
m_diag[k] = d;
if(d == RealScalar(0))
{
ok = false; /* failure, D(k,k) is zero */
break;
}
}
else
{
Index p = Lp[k] + m_nonZerosPerCol[k]++;
Li[p] = k ; /* store L(k,k) = sqrt (d) in column k */
if(d <= RealScalar(0)) {
ok = false; /* failure, matrix is not positive definite */
break;
}
Lx[p] = sqrt(d) ;
}
}
m_info = ok ? Success : NumericalIssue;
m_factorizationIsOk = true;
}
} // end namespace Eigen
#endif // EIGEN_SIMPLICIAL_CHOLESKY_IMPL_H