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DTGSJA(l)			       )			     DTGSJA(l)

NAME
       DTGSJA - compute the generalized singular value decomposition (GSVD) of
       two real upper triangular (or trapezoidal) matrices A and B

SYNOPSIS
       SUBROUTINE DTGSJA( JOBU, JOBV, JOBQ, M, P, N, K, L,  A,	LDA,  B,  LDB,
			  TOLA,	 TOLB,	ALPHA,	BETA,  U, LDU, V, LDV, Q, LDQ,
			  WORK, NCYCLE, INFO )

	   CHARACTER	  JOBQ, JOBU, JOBV

	   INTEGER	  INFO, K, L, LDA, LDB, LDQ, LDU, LDV, M, N, NCYCLE, P

	   DOUBLE	  PRECISION TOLA, TOLB

	   DOUBLE	  PRECISION A( LDA, * ), ALPHA( *  ),  B(  LDB,	 *  ),
			  BETA(	 *  ),	Q( LDQ, * ), U( LDU, * ), V( LDV, * ),
			  WORK( * )

PURPOSE
       DTGSJA computes the generalized singular value decomposition (GSVD)  of
       two real upper triangular (or trapezoidal) matrices A and B.  On entry,
       it is assumed that matrices A and B have the following forms, which may
       be obtained by the preprocessing subroutine DGGSVP from a general M-by-
       N matrix A and P-by-N matrix B:

		    N-K-L  K	L
	  A =	 K ( 0	  A12  A13 ) if M-K-L >= 0;
		 L ( 0	   0   A23 )
	     M-K-L ( 0	   0	0  )

		  N-K-L	 K    L
	  A =  K ( 0	A12  A13 ) if M-K-L < 0;
	     M-K ( 0	 0   A23 )

		  N-K-L	 K    L
	  B =  L ( 0	 0   B13 )
	     P-L ( 0	 0    0	 )

       where the K-by-K matrix A12 and L-by-L matrix B13 are nonsingular upper
       triangular; A23 is L-by-L upper triangular if M-K-L >= 0, otherwise A23
       is (M-K)-by-L upper trapezoidal.

       On exit,

		   U'*A*Q = D1*( 0 R ),	   V'*B*Q = D2*( 0 R ),

       where U, V and Q are orthogonal matrices, Z' denotes the	 transpose  of
       Z,  R  is  a  nonsingular  upper	 triangular  matrix, and D1 and D2 are
       ``diagonal'' matrices, which are of the following structures:

       If M-K-L >= 0,

			   K  L
	      D1 =     K ( I  0 )
		       L ( 0  C )
		   M-K-L ( 0  0 )

			 K  L
	      D2 = L   ( 0  S )
		   P-L ( 0  0 )

		      N-K-L  K	  L
	 ( 0 R ) = K (	0   R11	 R12 ) K
		   L (	0    0	 R22 ) L

       where

	 C = diag( ALPHA(K+1), ... , ALPHA(K+L) ),
	 S = diag( BETA(K+1),  ... , BETA(K+L) ),
	 C**2 + S**2 = I.

	 R is stored in A(1:K+L,N-K-L+1:N) on exit.

       If M-K-L < 0,

		      K M-K K+L-M
	   D1 =	  K ( I	 0    0	  )
		M-K ( 0	 C    0	  )

			K M-K K+L-M
	   D2 =	  M-K ( 0  S	0   )
		K+L-M ( 0  0	I   )
		  P-L ( 0  0	0   )

		      N-K-L  K	 M-K  K+L-M

		 M-K ( 0     0	 R22  R23  )
	       K+L-M ( 0     0	  0   R33  )

       where
       C = diag( ALPHA(K+1), ... , ALPHA(M) ),
       S = diag( BETA(K+1),  ... , BETA(M) ),
       C**2 + S**2 = I.

       R = ( R11 R12 R13 ) is stored in A(1:M, N-K-L+1:N) and R33 is stored
	   (  0	 R22 R23 )
       in B(M-K+1:L,N+M-K-L+1:N) on exit.

       The computation of the orthogonal transformation matrices U, V or Q  is
       optional.   These matrices may either be formed explicitly, or they may
       be postmultiplied into input matrices U1, V1, or Q1.

ARGUMENTS
       JOBU    (input) CHARACTER*1
	       = 'U':  U must contain an orthogonal matrix U1  on  entry,  and
	       the  product  U1*U is returned; = 'I':  U is initialized to the
	       unit matrix, and the orthogonal matrix U is returned; = 'N':  U
	       is not computed.

       JOBV    (input) CHARACTER*1
	       =  'V':	 V  must contain an orthogonal matrix V1 on entry, and
	       the product V1*V is returned; = 'I':  V is initialized  to  the
	       unit matrix, and the orthogonal matrix V is returned; = 'N':  V
	       is not computed.

       JOBQ    (input) CHARACTER*1
	       = 'Q':  Q must contain an orthogonal matrix Q1  on  entry,  and
	       the  product  Q1*Q is returned; = 'I':  Q is initialized to the
	       unit matrix, and the orthogonal matrix Q is returned; = 'N':  Q
	       is not computed.

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

       P       (input) INTEGER
	       The number of rows of the matrix B.  P >= 0.

       N       (input) INTEGER
	       The number of columns of the matrices A and B.  N >= 0.

       K       (input) INTEGER
	       L	(input)	 INTEGER  K and L specify the subblocks in the
	       input matrices A and B:
	       A23 = A(K+1:MIN(K+L,M),N-L+1:N) and B13 = B(1:L,N-L+1:N)	 of  A
	       and  B, whose GSVD is going to be computed by DTGSJA.  See Fur‐
	       ther details.

       A       (input/output) DOUBLE PRECISION array, dimension (LDA,N)
	       On entry, the M-by-N matrix A.  On exit, A(N-K+1:N,1:MIN(K+L,M)
	       )  contains  the triangular matrix R or part of R.  See Purpose
	       for details.

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

       B       (input/output) DOUBLE PRECISION array, dimension (LDB,N)
	       On entry, the P-by-N matrix B.  On  exit,  if  necessary,  B(M-
	       K+1:L,N+M-K-L+1:N)  contains  a	part  of  R.   See Purpose for
	       details.

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

       TOLA    (input) DOUBLE PRECISION
	       TOLB    (input) DOUBLE PRECISION TOLA and TOLB are the  conver‐
	       gence  criteria	for  the Jacobi- Kogbetliantz iteration proce‐
	       dure. Generally, they are the same as used in the preprocessing
	       step,	say    TOLA   =	  max(M,N)*norm(A)*MAZHEPS,   TOLB   =
	       max(P,N)*norm(B)*MAZHEPS.

       ALPHA   (output) DOUBLE PRECISION array, dimension (N)
	       BETA    (output) DOUBLE PRECISION array, dimension (N) On exit,
	       ALPHA  and BETA contain the generalized singular value pairs of
	       A and B; ALPHA(1:K) = 1,
	       BETA(1:K)  = 0, and if M-K-L >= 0, ALPHA(K+1:K+L) = diag(C),
	       BETA(K+1:K+L)  = diag(S), or if M-K-L  <	 0,  ALPHA(K+1:M)=  C,
	       ALPHA(M+1:K+L)= 0
	       BETA(K+1:M)  =  S, BETA(M+1:K+L) = 1.  Furthermore, if K+L < N,
	       ALPHA(K+L+1:N) = 0 and
	       BETA(K+L+1:N)  = 0.

       U       (input/output) DOUBLE PRECISION array, dimension (LDU,M)
	       On entry, if JOBU = 'U', U must contain a  matrix  U1  (usually
	       the  orthogonal matrix returned by DGGSVP).  On exit, if JOBU =
	       'I', U contains the orthogonal matrix U; if JOBU = 'U', U  con‐
	       tains the product U1*U.	If JOBU = 'N', U is not referenced.

       LDU     (input) INTEGER
	       The leading dimension of the array U. LDU >= max(1,M) if JOBU =
	       'U'; LDU >= 1 otherwise.

       V       (input/output) DOUBLE PRECISION array, dimension (LDV,P)
	       On entry, if JOBV = 'V', V must contain a  matrix  V1  (usually
	       the  orthogonal matrix returned by DGGSVP).  On exit, if JOBV =
	       'I', V contains the orthogonal matrix V; if JOBV = 'V', V  con‐
	       tains the product V1*V.	If JOBV = 'N', V is not referenced.

       LDV     (input) INTEGER
	       The leading dimension of the array V. LDV >= max(1,P) if JOBV =
	       'V'; LDV >= 1 otherwise.

       Q       (input/output) DOUBLE PRECISION array, dimension (LDQ,N)
	       On entry, if JOBQ = 'Q', Q must contain a  matrix  Q1  (usually
	       the  orthogonal matrix returned by DGGSVP).  On exit, if JOBQ =
	       'I', Q contains the orthogonal matrix Q; if JOBQ = 'Q', Q  con‐
	       tains the product Q1*Q.	If JOBQ = 'N', Q is not referenced.

       LDQ     (input) INTEGER
	       The leading dimension of the array Q. LDQ >= max(1,N) if JOBQ =
	       'Q'; LDQ >= 1 otherwise.

       WORK    (workspace) DOUBLE PRECISION array, dimension (2*N)

       NCYCLE  (output) INTEGER
	       The number of cycles required for convergence.

       INFO    (output) INTEGER
	       = 0:  successful exit
	       < 0:  if INFO = -i, the i-th argument had an illegal value.
	       = 1:  the procedure does not converge after MAXIT cycles.

PARAMETERS
       MAXIT   INTEGER
	       MAXIT specifies the total loops that  the  iterative  procedure
	       may take. If after MAXIT cycles, the routine fails to converge,
	       we return INFO = 1.

	       Further Details ===============

	       DTGSJA essentially uses a variant of Kogbetliantz algorithm  to
	       reduce  min(L,M-K)-by-L	triangular (or trapezoidal) matrix A23
	       and L-by-L matrix B13 to the form:

	       U1'*A13*Q1 = C1*R1; V1'*B13*Q1 = S1*R1,

	       where U1, V1 and Q1 are orthogonal matrix, and Z' is the trans‐
	       pose of Z.  C1 and S1 are diagonal matrices satisfying

	       C1**2 + S1**2 = I,

	       and R1 is an L-by-L nonsingular upper triangular matrix.

LAPACK version 3.0		 15 June 2000			     DTGSJA(l)
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