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Updated: June 2017
 
 

cgelsd (3p)

Name

cgelsd - norm solution to a real linear least squares problem

Synopsis

SUBROUTINE CGELSD(M, N, NRHS, A, LDA, B, LDB, S, RCOND, RANK, WORK,
LWORK, RWORK, IWORK, INFO)

COMPLEX A(LDA,*), B(LDB,*), WORK(*)
INTEGER M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
INTEGER IWORK(*)
REAL RCOND
REAL S(*), RWORK(*)

SUBROUTINE CGELSD_64(M, N, NRHS, A, LDA, B, LDB, S, RCOND, RANK,
WORK, LWORK, RWORK, IWORK, INFO)

COMPLEX A(LDA,*), B(LDB,*), WORK(*)
INTEGER*8 M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
INTEGER*8 IWORK(*)
REAL RCOND
REAL S(*), RWORK(*)




F95 INTERFACE
SUBROUTINE GELSD(M, N, NRHS, A, LDA, B, LDB, S, RCOND,
RANK, WORK, LWORK, RWORK, IWORK, INFO)

COMPLEX, DIMENSION(:) :: WORK
COMPLEX, DIMENSION(:,:) :: A, B
INTEGER :: M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
INTEGER, DIMENSION(:) :: IWORK
REAL :: RCOND
REAL, DIMENSION(:) :: S, RWORK

SUBROUTINE GELSD_64(M, N, NRHS, A, LDA, B, LDB, S, RCOND,
RANK, WORK, LWORK, RWORK, IWORK, INFO)

COMPLEX, DIMENSION(:) :: WORK
COMPLEX, DIMENSION(:,:) :: A, B
INTEGER(8) :: M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
INTEGER(8), DIMENSION(:) :: IWORK
REAL :: RCOND
REAL, DIMENSION(:) :: S, RWORK




C INTERFACE
#include <sunperf.h>

void cgelsd(int m, int n, int nrhs, complex *a, int  lda,  complex  *b,
int ldb, float *s, float rcond, int *rank, int *info);

void cgelsd_64(long m, long n, long nrhs, complex *a, long lda, complex
*b, long ldb, float *s, float rcond, long *rank, long *info);

Description

Oracle Solaris Studio Performance Library                           cgelsd(3P)



NAME
       cgelsd  -  compute  the  minimum-norm  solution  to a real linear least
       squares problem


SYNOPSIS
       SUBROUTINE CGELSD(M, N, NRHS, A, LDA, B, LDB, S, RCOND, RANK, WORK,
             LWORK, RWORK, IWORK, INFO)

       COMPLEX A(LDA,*), B(LDB,*), WORK(*)
       INTEGER M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
       INTEGER IWORK(*)
       REAL RCOND
       REAL S(*), RWORK(*)

       SUBROUTINE CGELSD_64(M, N, NRHS, A, LDA, B, LDB, S, RCOND, RANK,
             WORK, LWORK, RWORK, IWORK, INFO)

       COMPLEX A(LDA,*), B(LDB,*), WORK(*)
       INTEGER*8 M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
       INTEGER*8 IWORK(*)
       REAL RCOND
       REAL S(*), RWORK(*)




   F95 INTERFACE
       SUBROUTINE GELSD(M, N, NRHS, A, LDA, B, LDB, S, RCOND,
              RANK, WORK, LWORK, RWORK, IWORK, INFO)

       COMPLEX, DIMENSION(:) :: WORK
       COMPLEX, DIMENSION(:,:) :: A, B
       INTEGER :: M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
       INTEGER, DIMENSION(:) :: IWORK
       REAL :: RCOND
       REAL, DIMENSION(:) :: S, RWORK

       SUBROUTINE GELSD_64(M, N, NRHS, A, LDA, B, LDB, S, RCOND,
              RANK, WORK, LWORK, RWORK, IWORK, INFO)

       COMPLEX, DIMENSION(:) :: WORK
       COMPLEX, DIMENSION(:,:) :: A, B
       INTEGER(8) :: M, N, NRHS, LDA, LDB, RANK, LWORK, INFO
       INTEGER(8), DIMENSION(:) :: IWORK
       REAL :: RCOND
       REAL, DIMENSION(:) :: S, RWORK




   C INTERFACE
       #include <sunperf.h>

       void cgelsd(int m, int n, int nrhs, complex *a, int  lda,  complex  *b,
                 int ldb, float *s, float rcond, int *rank, int *info);

       void cgelsd_64(long m, long n, long nrhs, complex *a, long lda, complex
                 *b, long ldb, float *s, float rcond, long *rank, long *info);



PURPOSE
       cgelsd  computes  the  minimum-norm  solution  to  a  real linear least
       squares problem:
           minimize 2-norm(| b - A*x |)
       using the singular value decomposition (SVD)  of  A.  A  is  an  M-by-N
       matrix which may be rank-deficient.

       Several right hand side vectors b and solution vectors x can be handled
       in a single call; they are stored as the columns of the M-by-NRHS right
       hand side matrix B and the N-by-NRHS solution matrix X.

       The problem is solved in three steps:
       (1) Reduce the coefficient matrix A to bidiagonal form with
           Householder tranformations, reducing the original problem
           into a "bidiagonal least squares problem" (BLS)
       (2) Solve the BLS using a divide and conquer approach.
       (3) Apply back all the Householder tranformations to solve
           the original least squares problem.

       The  effective rank of A is determined by treating as zero those singu-
       lar values which are less than RCOND times the largest singular  value.

       The  divide  and  conquer  algorithm  makes very mild assumptions about
       floating point arithmetic. It will work on machines with a guard  digit
       in add/subtract, or on those binary machines without guard digits which
       subtract like the Cray X-MP, Cray Y-MP, Cray C-90, or Cray-2. It  could
       conceivably  fail on hexadecimal or decimal machines without guard dig-
       its, but we know of none.


ARGUMENTS
       M (input) The number of rows of the matrix A. M >= 0.


       N (input) The number of columns of the matrix A. N >= 0.


       NRHS (input)
                 The number of right hand sides, i.e., the number  of  columns
                 of the matrices B and X. NRHS >= 0.


       A (input/output)
                 On  entry,  the  M-by-N  matrix  A.   On  exit,  A  has  been
                 destroyed.


       LDA (input)
                 The leading dimension of the array A. LDA >= max(1,M).


       B (input/output)
                 On entry, the M-by-NRHS right hand side matrix B.  On exit, B
                 is overwritten by the N-by-NRHS solution matrix X.  If m >= n
                 and RANK = n, the residual sum-of-squares for the solution in
                 the  i-th  column  is given by the sum of squares of elements
                 n+1:m in that column.


       LDB (input)
                 The leading dimension of the array B.  LDB >= max(1,M,N).


       S (output)
                 The singular values of A in decreasing order.  The  condition
                 number of A in the 2-norm = S(1)/S(min(m,n)).


       RCOND (input)
                 RCOND is used to determine the effective rank of A.  Singular
                 values S(i) <= RCOND*S(1) are treated as zero.  If RCOND < 0,
                 machine precision is used instead.


       RANK (output)
                 The  effective rank of A, i.e., the number of singular values
                 which are greater than RCOND*S(1).


       WORK (workspace)
                 On exit, if INFO = 0, WORK(1) returns the optimal LWORK.


       LWORK (input)
                 The dimension of the array WORK. LWORK >= 1.  The exact mini-
                 mum  amount of workspace needed depends on M, N and NRHS.  If
                 M >= N, LWORK >= 2*N + MAX(M, N*NRHS).  If M <  N,  LWORK  >=
                 2*M  +  MAX(N,  M*NRHS).   For good performance, LWORK should
                 generally be larger.

                 If LWORK = -1, then a workspace query is assumed; the routine
                 only  calculates  the optimal size of the WORK array, returns
                 this value as the first entry of the WORK array, and no error
                 message related to LWORK is issued by XERBLA.


       RWORK (workspace)
                 If  M  >=  N, LRWORK >= 8*N + 2*N*SMLSIZ + 8*N*NLVL + N*NRHS.
                 If M < N, LRWORK >= 8*M + 2*M*SMLSIZ  +  8*M*NLVL  +  M*NRHS.
                 SMLSIZ is returned by ILAENV and is equal to the maximum size
                 of the subproblems at the  bottom  of  the  computation  tree
                 (usually  about  25), and NLVL = INT( LOG_2( MIN( M,N )/(SML-
                 SIZ+1) ) ) + 1


       IWORK (workspace)
                 LIWORK >= 3 * MINMN * NLVL + 11 * MINMN, where MINMN  =  MIN(
                 M,N ).


       INFO (output)
                 = 0: successful exit
                 < 0: if INFO = -i, the i-th argument had an illegal value.
                 > 0:  the algorithm for computing the SVD failed to converge;
                 if INFO = i, i off-diagonal elements of an intermediate bidi-
                 agonal form did not converge to zero.

FURTHER DETAILS
       Based on contributions by
          Ming  Gu  and  Ren-Cang Li, Computer Science Division, University of
       California at Berkeley, USA
          Osni Marques, LBNL/NERSC, USA




                                  7 Nov 2015                        cgelsd(3P)