Comrite Unix Man page/Perldoc/Info page, English-Chinese Dictionary, Chinese-English Dictionary

PDL::MatrixOps

Command: man perldoc info search(apropos)  


 
MatrixOps(3pm)        User Contributed Perl Documentation       MatrixOps(3pm)



NAME
       PDL::MatrixOps -- Some Useful Matrix Operations

SYNOPSIS
          $inv = $a->inv;

          $det = $a->det;

          ($lu,$perm,$par) = $a->lu_decomp;
          $x = lu_backsub($lu,$perm,$b); # solve $a x $x = $b

DESCRIPTION
       PDL::MatrixOps is PDL's built-in matrix manipulation code.  It contains
       utilities for many common matrix operations: inversion, determinant
       finding, eigenvalue/vector finding, singular value decomposition, etc.
       PDL::MatrixOps routines are written in a mixture of Perl and C, so that
       they are reliably present even when there no FORTRAN compiler or exter-
       nal library available (e.g.  PDL::Slatec or PDL::GSL).

       Matrix manipulation, particularly with large matrices, is a challenging
       field and no one algorithm is suitable in all cases.  The utilities
       here use general-purpose algorithms that work acceptably for many cases
       but might not scale well to very large or pathological (near-singular)
       matrices.

       Except as noted, the matrices are PDLs whose 0th dimension ranges over
       column and whose 1st dimension ranges over row.  The matrices appear
       correctly when printed.

       These routines should work OK with PDL::Matrix objects as well as with
       normal PDLs.

TIPS ON MATRIX OPERATIONS
       Like most computer languages, PDL addresses matrices in (column,row)
       order in most cases; this corresponds to (X,Y) coordinates in the
       matrix itself, counting rightwards and downwards from the upper left
       corner.  This means that if you print a PDL that contains a matrix, the
       matrix appears correctly on the screen, but if you index a matrix ele-
       ment, you use the indices in the reverse order that you would in a math
       textbook.  If you prefer your matrices indexed in (row, column) order,
       you can try using the PDL::Matrix object, which includes an implicit
       exchange of the first two dimensions but should be compatible with most
       of these matrix operations.  TIMTOWDTI.)

       Matrices, row vectors, and column vectors can be multiplied with the
       'x' operator (which is, of course, threadable):

               $m3 = $m1 x $m2;
               $col_vec2 = $m1 x $col_vec1;
               $row_vec2 = $row_vec1 x $m1;
               $scalar = $row_vec x $col_vec;

       Because of the (column,row) addressing order, 1-D PDLs are treated as
       _row_ vectors; if you want a _column_ vector you must add a dummy
       dimension:

             $rowvec  = pdl(1,2);            # row vector
             $colvec  = $rowvec->(*1);       # 1x2 column vector
             $matrix  = pdl([[3,4],[6,2]]);  # 2x2 matrix
             $rowvec2 = $rowvec x $matrix;   # right-multiplication by matrix
             $colvec  = $matrix x $colvec;   # left-multiplication by matrix
             $m2      = $matrix x $rowvec;   # Throws an error

       Implicit threading works correctly with most matrix operations, but you
       must be extra careful that you understand the dimensionality.  In par-
       ticular, matrix multiplication and other matrix ops need nx1 PDLs as
       row vectors and 1xn PDLs as column vectors.  In most cases you must
       explicitly include the trailing 'x1' dimension in order to get the
       expected results when you thread over multiple row vectors.

       When threading over matrices, it's very easy to get confused about
       which dimension goes where. It is useful to include comments with every
       expression, explaining what you think each dimension means:

               $a = xvals(360)*3.14159/180;        # (angle)
               $rot = cat(cat(cos($a),sin($a)),    # rotmat: (col,row,angle)
                          cat(-sin($a),cos($a)));

ACKNOWLEDGEMENTS
       MatrixOps includes algorithms and pre-existing code from several ori-
       gins.  In particular, "eigens_sym" is the work of Stephen Moshier,
       "svd" uses an SVD subroutine written by Bryant Marks, and "eigens" uses
       a subset of the Small Scientific Library by Kenneth Geisshirt.  All are
       free software, distributable under same terms as PDL itself.

NOTES
       This is intended as a general-purpose linear algebra package for small-
       to-mid sized matrices.  The algorithms may not scale well to large
       matrices (hundreds by hundreds) or to near singular matrices.

       If there is something you want that is not here, please add and docu-
       ment it!

FUNCTIONS
       identity

        Signature: (n; [o]a(n,n))

       Return an identity matrix of the specified size.  If you hand in a
       scalar, its value is the size of the identity matrix; if you hand in a
       dimensioned PDL, the 0th dimension is the size of the matrix.

       stretcher

         Signature: (a(n); [o]b(n,n))

         $mat = stretcher($eigenvalues);

       Return a diagonal matrix with the specified diagonal elements

       inv

        Signature: (a(m,m); sv opt )

         $a1 = inv($a, {$opt});

       Invert a square matrix.

       You feed in an NxN matrix in $a, and get back its inverse (if it
       exists).  The code is inplace-aware, so you can get back the inverse in
       $a itself if you want -- though temporary storage is used either way.
       You can cache the LU decomposition in an output option variable.

       "inv" uses lu_decomp by default; that is a numerically stable (pivot-
       ing) LU decomposition method.  If you ask it to thread then a numeri-
       cally unstable (non-pivoting) method is used instead, so avoid thread-
       ing over collections of large (say, more than 4x4) or near-singular
       matrices unless precision is not important.

       OPTIONS:

       * s
          Boolean value indicating whether to complain if the matrix is singu-
          lar.  If this is false, singular matrices cause inverse to barf.  If
          it is true, then singular matrices cause inverse to return undef.
          In the threading case, no checking for singularity is performed, if
          any of the matrices in your threaded collection are singular, they
          receive NaN entries.

       * lu (I/O)
          This value contains a list ref with the LU decomposition, permuta-
          tion, and parity values for $a.  If you do not mention the key, or
          if the value is undef, then inverse calls lu_decomp.  If the key
          exists with an undef value, then the output of lu_decomp is stashed
          here (unless the matrix is singular).  If the value exists, then it
          is assumed to hold the lu decomposition.

       * det (Output)
          If this key exists, then the determinant of $a get stored here,
          whether or not the matrix is singular.

       det

        Signature: (a(m,m); sv opt)

         $det = det($a,{opt});

       Determinant of a square matrix using LU decomposition (for large matri-
       ces)

       You feed in a square matrix, you get back the determinant.  Some
       options exist that allow you to cache the LU decomposition of the
       matrix (note that the LU decomposition is invalid if the determinant is
       zero!).  The LU decomposition is cacheable, in case you want to re-use
       it.  This method of determinant finding is more rapid than recursive-
       descent on large matrices, and if you reuse the LU decomposition it's
       essentially free.

       If you ask det to thread (by giving it a 3-D or higher dim piddle) then
       lu_decomp drops you through to lu_decomp2, which is numerically unsta-
       ble (and hence not useful for very large matrices) but quite fast.

       If you want to use threading on a matrix that's less than, say, 10x10,
       and might be near singular, then you might want to use determinant,
       which is a more robust (but slower) determinant finder, instead.

       OPTIONS:

       * lu (I/O)
          Provides a cache for the LU decomposition of the matrix.  If you
          provide the key but leave the value undefined, then the LU decompo-
          sition goes in here; if you put an LU decomposition here, it will be
          used and the matrix will not be decomposed again.

       determinant

        Signature: (a(m,m))

         $det = determinant($a);

       Determinant of a square matrix, using recursive descent (threadable).

       This is the traditional, robust recursive determinant method taught in
       most linear algebra courses.  It scales like "O(n!)" (and hence is
       pitifully slow for large matrices) but is very robust because no divi-
       sion is involved (hence no division-by-zero errors for singular matri-
       ces).  It's also threadable, so you can find the determinants of a
       large collection of matrices all at once if you want.

       Matrices up to 3x3 are handled by direct multiplication; larger matri-
       ces are handled by recursive descent to the 3x3 case.

       The LU-decomposition method det is faster in isolation for single
       matrices larger than about 4x4, and is much faster if you end up
       reusing the LU decomposition of $a, but does not thread well.

       eigens_sym

         Signature: ([phys]a(m); [o,phys]ev(n,n); [o,phys]e(n))

       Eigenvalues and -vectors of a symmetric square matrix.  If passed an
       asymmetric matrix, the routine will warn and symmetrize it, by taking
       the average value.  That is, it will solve for 0.5*($a+$a->mv(0,1)).

       It's threadable, so if $a is 3x3x100, it's treated as 100 separate 3x3
       matrices, and both $ev and $e get extra dimensions accordingly.

       If called in scalar context it hands back only the eigenvalues.  Ulti-
       mately, it should switch to a faster algorithm in this case (as dis-
       carding the eigenvectors is wasteful).

       The algorithm used is due to J. vonNeumann, which was a rediscovery of
       Jacobi's method.  http://en.wikipedia.org/wiki/Jacobi_eigenvalue_algo-
       rithm

       The eigenvectors are returned in COLUMNS of the returned PDL.  That
       makes it slightly easier to access individual eigenvectors, since the
       0th dim of the output PDL runs across the eigenvectors and the 1st dim
       runs across their components.

               ($ev,$e) = eigens_sym $a;  # Make eigenvector matrix
               $vector = $ev->($n);       # Select nth eigenvector as a column-vector
               $vector = $ev->(($n));     # Select nth eigenvector as a row-vector

        ($ev, $e) = eigens_sym($a); # e'vects & e'vals
        $e = eigens_sym($a);        # just eigenvalues

       eigens

         Signature: ([phys]a(m); [o,phys]ev(l,n,n); [o,phys]e(l,n))

       Real eigenvalues and -vectors of a real square matrix.

       (See also "eigens_sym", for eigenvalues and -vectors of a real, symmet-
       ric, square matrix).

       PLEASE NOTE: THE EIGENS FUNCTION HAS BEEN DISABLED FOR ASYMMETRIC
       MATRICES PENDING FIX TO THE CODE.

       The eigens function will attempt to compute the eigenvalues and eigen-
       vectors of a square matrix with real components.  If the matrix is sym-
       metric, the same underlying code as "eigens_sym" is used.  If asymmet-
       ric, the eigenvalues and eigenvectors are computed with algorithms from
       the sslib library (anyone know what algorithm is used?).  If any imagi-
       nary components exist in the eigenvalues, the results are currently
       considered to be invalid, and such eigenvalues are returned as "NaN"s.
       This is true for eigenvectors also.  That is if there are imaginary
       components to any of the values in the eigenvector, the eigenvalue and
       corresponding eigenvectors are all set to "NaN".  Finally, if there are
       any repeated eigenvectors, they are replaced with all "NaN"s.

       Use of the eigens function on asymmetric matrices should be considered
       experimental!  For asymmetric matrices, nearly all observed matrices
       with real eigenvalues produce incorrect results, due to errors of the
       sslib algorithm.  If your assymmetric matrix returns all NaNs, do not
       assume that the values are complex.  Also, problems with memory access
       is known in this library.

       Not all square matrices are diagonalizable.  If you feed in a non-diag-
       onalizable matrix, then one or more of the eigenvectors will be set to
       NaN, along with the corresponding eigenvalues.

       "eigens" is threadable, so you can solve 100 eigenproblems by feeding
       in a 3x3x100 array. Both $ev and $e get extra dimensions accordingly.

       If called in scalar context "eigens" hands back only the eigenvalues.
       This is somewhat wasteful, as it calculates the eigenvectors anyway.

       The eigenvectors are returned in COLUMNS of the returned PDL (ie the
       the 0 dimension).  That makes it slightly easier to access individual
       eigenvectors, since the 0th dim of the output PDL runs across the
       eigenvectors and the 1st dim runs across their components.

               ($ev,$e) = eigens $a;  # Make eigenvector matrix
               $vector = $ev->($n);   # Select nth eigenvector as a column-vector
               $vector = $ev->(($n)); # Select nth eigenvector as a row-vector

       DEVEL NOTES:

       For now, there is no distinction between a complex eigenvalue and an
       invalid eigenvalue, although the underlying code generates complex num-
       bers.  It might be useful to be able to return complex eigenvalues.

        ($ev, $e) = eigens($a); # e'vects & e'vals
        $e = eigens($a);        # just eigenvalues

       svd

         Signature: (a(n,m); [o]u(n,m); [o,phys]z(n); [o]v(n,n))

        ($r1, $s, $r2) = svd($a);

       Singular value decomposition of a matrix.

       "svd" is threadable.

       $r1 and $r2 are rotation matrices that convert from the original
       matrix's singular coordinates to final coordinates, and from original
       coordinates to singular coordinates, respectively.  $s is the diagonal
       of the singular value matrix, so that, if $a is square, then you can
       make an expensive copy of $a by saying:

        $ess = zeroes($r1); $ess->diagonal(0,1) .= $s;
        $a_copy .= $r2 x $ess x $r1;

       EXAMPLE

       The computing literature has loads of examples of how to use SVD.
       Here's a trivial example (used in PDL::Transform::Map) of how to make a
       matrix less, er, singular, without changing the orientation of the
       ellipsoid of transformation:

        { my($r1,$s,$r2) = svd $a;
          $s++;             # fatten all singular values
          $r2 *= $s;        # implicit threading for cheap mult.
          $a .= $r2 x $r1;  # a gets r2 x ess x r1
        }

       lu_decomp

         Signature: (a(m,m); [o]b(n); [o]c; [o]lu)

       LU decompose a matrix, with row permutation

         ($lu, $perm, $parity) = lu_decomp($a);

         $lu = lu_decomp($a, $perm, $par);  # $perm and $par are outputs!

         lu_decomp($a->inplace,$perm,$par); # Everything in place.

       lu_decomp returns an LU decomposition of a square matrix, using Crout's
       method with partial pivoting.  It's ported from Numerical Recipes.  The
       partial pivoting keeps it numerically stable but defeats efficient
       threading, so if you have a few matrices to decompose accurately, you
       should use lu_decomp, but if you have a million matrices to decompose
       and don't mind a higher error budget you probably want to use
       lu_decomp2, which doesn't do the pivoting (and hence gives wrong
       answers for near-singular or large matrices), but does do threading.

       lu_decomp decomposes the input matrix into matrices L and U such that
       LU = A, L is a subdiagonal matrix, and U is a superdiagonal matrix.  By
       convention, the diagonal of L is all 1's.

       The single output matrix contains all the variable elements of both the
       L and U matrices, stacked together.  Because the method uses pivoting
       (rearranging the lower part of the matrix for better numerical stabil-
       ity), you have to permute input vectors before applying the L and U
       matrices.  The permutation is returned either in the second argument
       or, in list context, as the second element of the list.  You need the
       permutation for the output to make any sense, so be sure to get it one
       way or the other.

       LU decomposition is the answer to a lot of matrix questions, including
       inversion and determinant-finding, and lu_decomp is used by inverse.

       If you pass in $perm and $parity, they either must be predeclared PDLs
       of the correct size ($perm is an n-vector, $parity is a scalar) or
       scalars.

       If the matrix is singular, then the LU decomposition might not be
       defined; in those cases, lu_decomp silently returns undef.  Some singu-
       lar matrices LU-decompose just fine, and those are handled OK but give
       a zero determinant (and hence can't be inverted).

       lu_decomp uses pivoting, which rearranges the values in the matrix for
       more numerical stability.  This makes it really good for large and even
       near-singular matrices, but makes it unable to properly vectorize
       threaded operation.  If you have a LOT of small matrices to invert
       (like, say, a 3x3x1000000 PDL) you should use lu_decomp2, which doesn't
       pivot and is therefore threadable (and, of course, works in-place).

       If you ask lu_decomp to thread (by having a nontrivial third dimension
       in the matrix) then it will call lu_decomp2 instead.  That is a numeri-
       cally unstable (non-pivoting) method that is mainly useful for small-
       ish, not-so-singular matrices but is threadable.

       lu_decomp is ported from _Numerical_Recipes to PDL.  It should probably
       be implemented in C.

       lu_decomp2

        Signature: (a(m,m); [0]lu(n)

       LU decompose a matrix, with no row permutation (threadable!)

         ($lu, $perm, $parity) = lu_decomp2($a);

         $lu = lu_decomp2($a,[$perm,$par]);

         lu_decomp($a->inplace,[$perm,$par]);

       "lu_decomp2" works just like lu_decomp, but it does no pivoting at all
       and hence can be usefully threaded.  For compatibility with lu_decomp,
       it will give you a permutation list and a parity scalar if you ask for
       them -- but they are always trivial.

       Because "lu_decomp2" does not pivot, it is numerically unstable -- that
       means it is less precise than lu_decomp, particularly for large or
       near-singular matrices.  There are also specific types of non-singular
       matrices that confuse it (e.g. ([0,-1,0],[1,0,0],[0,0,1]), which is a
       90 degree rotation matrix but which confuses lu_decomp2).  On the other
       hand, if you want to invert rapidly a few hundred thousand small matri-
       ces and don't mind missing one or two, it's just the ticket.

       The output is a single matrix that contains the LU decomposition of $a;
       you can even do it in-place, thereby destroying $a, if you want.  See
       lu_decomp for more information about LU decomposition.

       lu_decomp2 is ported from _Numerical_Recipes_ into PDL.  If lu_decomp
       were implemented in C, then lu_decomp2 might become unnecessary.

       lu_backsub

        Signature: (lu(m,m); perm(m); b(m))

       Solve A X = B for matrix A, by back substitution into A's LU decomposi-
       tion.

         ($lu,$perm) = lu_decomp($a);
         $x = lu_backsub($lu,$perm,$par,$b);

         lu_backsub($lu,$perm,$b->inplace); # modify $b in-place

         $x = lu_backsub(lu_decomp($a),$b); # (ignores parity value from lu_decomp)

       Given the LU decomposition of a square matrix (from lu_decomp),
       lu_backsub does back substitution into the matrix to solve "A X = B"
       for given vector "B".  It is separated from the lu_decomp method so
       that you can call the cheap lu_backsub multiple times and not have to
       do the expensive LU decomposition more than once.

       lu_backsub acts on single vectors and threads in the usual way, which
       means that it treats $b as the transpose of the input.  If you want to
       process a matrix, you must hand in the transpose of the matrix, and
       then transpose the output when you get it back.  That is because PDLs
       are indexed by (col,row), and matrices are (row,column) by convention,
       so a 1-D PDL corresponds to a row vector, not a column vector.

       If $lu is dense and you have more than a few points to solve for, it is
       probably cheaper to find "A^-1" with inverse, and just multiply "X =
       A^-1 B".)  In fact, inverse works by calling lu_backsub with the iden-
       tity matrix.

       lu_backsub is ported from Section 2.3 of Numerical Recipes.  It is
       written in PDL but should probably be implemented in C.

       simq

         Signature: ([phys]a(n,n); [phys]b(n); [o,phys]x(n); int [o,phys]ips(n); int flag)

       Solution of simultaneous linear equations, "a x = b".

       $a is an "n x n" matrix (i.e., a vector of length "n*n"), stored
       row-wise: that is, "a(i,j) = a[ij]", where "ij = i*n + j".

       While this is the transpose of the normal column-wise storage, this
       corresponds to normal PDL usage.  The contents of matrix a may be
       altered (but may be required for subsequent calls with flag = -1).

       $b, $x, $ips are vectors of length "n".

       Set "flag=0" to solve.  Set "flag=-1" to do a new back substitution for
       different $b vector using the same a matrix previously reduced when
       "flag=0" (the $ips vector generated in the previous solution is also
       required).

       See also lu_backsub, which does the same thing with a slightly less
       opaque interface.

       squaretotri

         Signature: (a(n,n); b(m))

       Convert a symmetric square matrix to triangular vector storage.

AUTHOR
       Copyright (C) 2002 Craig DeForest (deforest AT boulder.edu), R.J.R.
       Williams (rjrw AT ast.uk), Karl Glazebrook
       (kgb AT aaoepp.au).  There is no warranty.  You are allowed to
       redistribute and/or modify this work under the same conditions as PDL
       itself.  If this file is separated from the PDL distribution, then the
       PDL copyright notice should be included in this file.



perl v5.8.8                       2007-01-14                    MatrixOps(3pm)
 

©2005 Comrite