// This file is part of Eigen, a lightweight C++ template library // for linear algebra. // // This code initially comes from MINPACK whose original authors are: // Copyright Jorge More - Argonne National Laboratory // Copyright Burt Garbow - Argonne National Laboratory // Copyright Ken Hillstrom - Argonne National Laboratory // // This Source Code Form is subject to the terms of the Minpack license // (a BSD-like license) described in the campaigned CopyrightMINPACK.txt file. #ifndef EIGEN_LMPAR_H #define EIGEN_LMPAR_H namespace Eigen { namespace internal { template void lmpar2( const QRSolver &qr, const VectorType &diag, const VectorType &qtb, typename VectorType::Scalar m_delta, typename VectorType::Scalar &par, VectorType &x) { using std::sqrt; using std::abs; typedef typename QRSolver::MatrixType MatrixType; typedef typename QRSolver::Scalar Scalar; // typedef typename QRSolver::StorageIndex StorageIndex; /* Local variables */ Index j; Scalar fp; Scalar parc, parl; Index iter; Scalar temp, paru; Scalar gnorm; Scalar dxnorm; // Make a copy of the triangular factor. // This copy is modified during call the qrsolv MatrixType s; s = qr.matrixR(); /* Function Body */ const Scalar dwarf = (std::numeric_limits::min)(); const Index n = qr.matrixR().cols(); eigen_assert(n==diag.size()); eigen_assert(n==qtb.size()); VectorType wa1, wa2; /* compute and store in x the gauss-newton direction. if the */ /* jacobian is rank-deficient, obtain a least squares solution. */ // const Index rank = qr.nonzeroPivots(); // exactly double(0.) const Index rank = qr.rank(); // use a threshold wa1 = qtb; wa1.tail(n-rank).setZero(); //FIXME There is no solve in place for sparse triangularView wa1.head(rank) = s.topLeftCorner(rank,rank).template triangularView().solve(qtb.head(rank)); x = qr.colsPermutation()*wa1; /* initialize the iteration counter. */ /* evaluate the function at the origin, and test */ /* for acceptance of the gauss-newton direction. */ iter = 0; wa2 = diag.cwiseProduct(x); dxnorm = wa2.blueNorm(); fp = dxnorm - m_delta; if (fp <= Scalar(0.1) * m_delta) { par = 0; return; } /* if the jacobian is not rank deficient, the newton */ /* step provides a lower bound, parl, for the zero of */ /* the function. otherwise set this bound to zero. */ parl = 0.; if (rank==n) { wa1 = qr.colsPermutation().inverse() * diag.cwiseProduct(wa2)/dxnorm; s.topLeftCorner(n,n).transpose().template triangularView().solveInPlace(wa1); temp = wa1.blueNorm(); parl = fp / m_delta / temp / temp; } /* calculate an upper bound, paru, for the zero of the function. */ for (j = 0; j < n; ++j) wa1[j] = s.col(j).head(j+1).dot(qtb.head(j+1)) / diag[qr.colsPermutation().indices()(j)]; gnorm = wa1.stableNorm(); paru = gnorm / m_delta; if (paru == 0.) paru = dwarf / (std::min)(m_delta,Scalar(0.1)); /* if the input par lies outside of the interval (parl,paru), */ /* set par to the closer endpoint. */ par = (std::max)(par,parl); par = (std::min)(par,paru); if (par == 0.) par = gnorm / dxnorm; /* beginning of an iteration. */ while (true) { ++iter; /* evaluate the function at the current value of par. */ if (par == 0.) par = (std::max)(dwarf,Scalar(.001) * paru); /* Computing MAX */ wa1 = sqrt(par)* diag; VectorType sdiag(n); lmqrsolv(s, qr.colsPermutation(), wa1, qtb, x, sdiag); wa2 = diag.cwiseProduct(x); dxnorm = wa2.blueNorm(); temp = fp; fp = dxnorm - m_delta; /* if the function is small enough, accept the current value */ /* of par. also test for the exceptional cases where parl */ /* is zero or the number of iterations has reached 10. */ if (abs(fp) <= Scalar(0.1) * m_delta || (parl == 0. && fp <= temp && temp < 0.) || iter == 10) break; /* compute the newton correction. */ wa1 = qr.colsPermutation().inverse() * diag.cwiseProduct(wa2/dxnorm); // we could almost use this here, but the diagonal is outside qr, in sdiag[] for (j = 0; j < n; ++j) { wa1[j] /= sdiag[j]; temp = wa1[j]; for (Index i = j+1; i < n; ++i) wa1[i] -= s.coeff(i,j) * temp; } temp = wa1.blueNorm(); parc = fp / m_delta / temp / temp; /* depending on the sign of the function, update parl or paru. */ if (fp > 0.) parl = (std::max)(parl,par); if (fp < 0.) paru = (std::min)(paru,par); /* compute an improved estimate for par. */ par = (std::max)(parl,par+parc); } if (iter == 0) par = 0.; return; } } // end namespace internal } // end namespace Eigen #endif // EIGEN_LMPAR_H