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svd: compute numerically when matrix has Floats and Integers
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Maybe we want to do this upstream in SymPy, so sort of RFC for now.
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cbm755 committed Mar 9, 2017
1 parent fca5944 commit ff6fe82
Showing 1 changed file with 176 additions and 11 deletions.
187 changes: 176 additions & 11 deletions inst/@sym/svd.m
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%% Copyright (C) 2014, 2016 Colin B. Macdonald
%% Copyright (C) 2014, 2016-2017 Colin B. Macdonald
%%
%% This file is part of OctSymPy.
%%
Expand All @@ -20,11 +20,25 @@
%% @documentencoding UTF-8
%% @deftypemethod @@sym {@var{S} =} svd (@var{A})
%% @deftypemethodx @@sym {[@var{U}, @var{S}, @var{V}] =} svd (@var{A})
%% @deftypemethodx @@sym {[@var{U}, @var{S}, @var{V}] =} svd (@var{A}, 'econ')
%% Symbolic singular value decomposition.
%%
%% The SVD: U*S*V' = A
%% The SVD is the factorization of matrix
%% @iftex
%% @math{A} into @math{U S V^T = A},
%% where @math{S} is a diagonal matrix of @emph{singular values},
%% and @math{U} and @math{V}
%% @end iftex
%% @ifnottex
%% A into U*S*V' = A,
%% where S is a diagonal matrix of @emph{singular values},
%% and U and V
%% @end ifnottex
%% are orthogonal matrices whose columns form the left and right
%% @emph{singular vectors}.
%%
%% Singular values example:
%% When the matrix contains symbols, expressions, rational numbers, and other
%% things, this command finds the singular values via symbolic manipulation:
%% @example
%% @group
%% A = sym([1 0; 3 0]);
Expand All @@ -37,35 +51,161 @@
%%
%% @end group
%% @end example
%% Currently only the singular values (not the singular vectors) are supported
%% in symbolic mode.
%%
%% FIXME: currently only singular values, not singular vectors.
%% Should add full SVD to sympy.
%%
%% If the matrix contains Float entries (@pxref{vpa}) (and possibly Integers),
%% the SVD is computing numerically in variable precision
%% arithmetic in the precision given by @pxref{digits}.
%% The singular values and singular vectors can be computed in this mode.
%% Example:
%% @example
%% @group
%% A = vpa (3*hilb (sym(3)));
%% [U, S, V] = svd (A)
%% @result{} U = (sym 3×3 matrix)
%% ...
%% @result{} S = (sym 3×3 matrix)
%% ...
%% @result{} V = (sym 3×3 matrix)
%% ...
%% @end group
%%
%% @group
%% diag(S)
%% @result{} (sym 3×1 matrix)
%% ⎡ 4.2249567813709618726124675083017 ⎤
%% ⎢ ⎥
%% ⎢ 0.3669811975617175396944034278698 ⎥
%% ⎢ ⎥
%% ⎣0.008062021067320587693129063828546⎦
%% @end group
%% @end example
%%
%% Next, extract one singular value and associated left/right
%% singular vectors:
%% @example
%% @group
%% sv = S(1, 1)
%% u = U(:, 1)
%% v = V(:, 1)
%% @result{} sv = (sym) 4.2249567813709618726124675083017
%% @result{} u = (sym 3×1 matrix)
%% ⎡-0.82704492697200940922027703647284⎤
%% ⎢ ⎥
%% ⎢-0.45986390436554392104852568981886⎥
%% ⎢ ⎥
%% ⎣-0.32329843524449897629157179151973⎦
%% @result{} v = (sym 3×1 matrix)
%% ⎡-0.82704492697200940922027703647284⎤
%% ⎢ ⎥
%% ⎢-0.45986390436554392104852568981886⎥
%% ⎢ ⎥
%% ⎣-0.32329843524449897629157179151973⎦
%% @end group
%% @end example
%%
%% Check the SVD is satisfied to high-precision:
%% @example
%% @group
%% sv*u - A*v
%% @result{} (sym 3×1 matrix)
%% ⎡-9.2444637330587320946686941244077e-33⎤
%% ⎢ ⎥
%% ⎢-3.0814879110195773648895647081359e-33⎥
%% ⎢ ⎥
%% ⎣-3.0814879110195773648895647081359e-33⎦
%% @end group
%% @end example
%%
%% If the @qcode{'econ'} keyboard is passed, an ``economy size''
%% SVD is returned (@pxref{svd}).
%% @seealso{svd, @@sym/eig}
%% @end deftypemethod


function [S, varargout] = svd(A)
function [S, varargout] = svd(A, econ)

if (nargin >= 2)
error('svd: economy-size not supported yet')
if (nargin == 1)
econ = false;
elseif (nargin == 2)
if (isnumeric(econ) && econ == 0)
error('svd: auto econ mode ("0") is not yet supported')
else
econ = true;
end
else
print_usage ();
end

if (nargout >= 2)
error('svd: singular vectors not yet computed by sympy')
if (nargout <= 1)
svecs = false;
elseif (nargout == 3)
svecs = true;
else
print_usage ();
end


cmd = { 'A, = _ins'
'A = A if A.is_Matrix else Matrix([A])'
'return (any([x.is_Float for x in A]) and'
' all([x.is_Float or x.is_Integer for x in A]))' };
is_vpa_matrix = python_cmd (cmd, sym(A));

if (is_vpa_matrix)
myd = digits (); % TODO: or take from the object itself
cmd = { '(A, svecs, econ, digits) = _ins'
'A = A if A.is_Matrix else Matrix([A])'
'import mpmath'
'mpmath.mp.dps = digits'
'tmp = mpmath.svd(mpmath.matrix(A), full_matrices=(not econ), compute_uv=svecs)'
'#dbout(tmp)'
'if svecs:'
' (U, S, Vt) = tmp'
' U = Matrix(U.rows, U.cols, lambda i,j: U[i, j])'
' #assert U.is_Matrix' % made from a copy of A
' S = Matrix(S)'
' m, n = A.shape'
' r, c = (m, n) if not econ else (min(m,n),)*2'
' S = Matrix(r, c, lambda i,j: S[i] if i == j else 0)'
' V = Vt.transpose()' % TODO: or transpose_conj?
' V = Matrix(V.rows, V.cols, lambda i,j: V[i, j])'
'else:'
' S = Matrix(tmp)'
' U, V = None, None'
'return (U, S, V)' };
[U, S, V] = python_cmd (cmd, sym(A), svecs, econ, myd);

if (nargout >= 2)
varargout{1} = S;
varargout{2} = V;
S = U;
end

else
if (svecs)
error ('svd: singular vectors not yet implemented for non-vpa matrices')
end
if (econ)
error ('svd: "economy size" not yet implemented for non-vpa matrices')
end

cmd = { '(A,) = _ins'
'if not A.is_Matrix:'
' A = sp.Matrix([A])'
'L = sp.Matrix(A.singular_values())'
'return L,' };

S = python_cmd (cmd, sym(A));

end
end


%!error <Invalid> svd (sym(1), 2, 3)
%!error <Invalid> [a, b] = svd (sym(1))

%!test
%! % basic
%! A = [1 2; 3 4];
Expand Down Expand Up @@ -99,3 +239,28 @@
%%! A = [x 0; sym(0) 2*x]
%%! [u,s,v] = cond(A)
%%! assert (false)

%!test
%! % econ & non-square matrices
%! A = vpa([1 2 4; 1 2 4]);
%! S = svd (A);
%! assert (size (S), [2 1])
%! [U, S, V] = svd (A)
%! assert (size (U), [2 2])
%! assert (size (S), [2 3])
%! assert (size (V), [3 3])
%! [U, S, V] = svd (A, 'econ');
%! assert (size (U), [2 2])
%! assert (size (S), [2 2])
%! assert (size (V), [3 2])
%! A = A';
%! S = svd (A);
%! assert (size (S), [2 1])
%! [U, S, V] = svd (A, 'econ');
%! assert (size (U), [3 2])
%! assert (size (S), [2 2])
%! assert (size (V), [2 2])
%! [U, S, V] = svd (A);
%! assert (size (U), [3 3])
%! assert (size (S), [3 2])
%! assert (size (V), [2 2])

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