| from types import FunctionType |
|
|
| from sympy.core.cache import cacheit |
| from sympy.core.numbers import Float, Integer |
| from sympy.core.singleton import S |
| from sympy.core.symbol import uniquely_named_symbol |
| from sympy.core.mul import Mul |
| from sympy.polys import PurePoly, cancel |
| from sympy.functions.combinatorial.numbers import nC |
| from sympy.polys.matrices.domainmatrix import DomainMatrix |
| from sympy.polys.matrices.ddm import DDM |
|
|
| from .exceptions import NonSquareMatrixError |
| from .utilities import ( |
| _get_intermediate_simp, _get_intermediate_simp_bool, |
| _iszero, _is_zero_after_expand_mul, _dotprodsimp, _simplify) |
|
|
|
|
| def _find_reasonable_pivot(col, iszerofunc=_iszero, simpfunc=_simplify): |
| """ Find the lowest index of an item in ``col`` that is |
| suitable for a pivot. If ``col`` consists only of |
| Floats, the pivot with the largest norm is returned. |
| Otherwise, the first element where ``iszerofunc`` returns |
| False is used. If ``iszerofunc`` does not return false, |
| items are simplified and retested until a suitable |
| pivot is found. |
| |
| Returns a 4-tuple |
| (pivot_offset, pivot_val, assumed_nonzero, newly_determined) |
| where pivot_offset is the index of the pivot, pivot_val is |
| the (possibly simplified) value of the pivot, assumed_nonzero |
| is True if an assumption that the pivot was non-zero |
| was made without being proved, and newly_determined are |
| elements that were simplified during the process of pivot |
| finding.""" |
|
|
| newly_determined = [] |
| col = list(col) |
| |
| |
| |
| if all(isinstance(x, (Float, Integer)) for x in col) and any( |
| isinstance(x, Float) for x in col): |
| col_abs = [abs(x) for x in col] |
| max_value = max(col_abs) |
| if iszerofunc(max_value): |
| |
| |
| |
| if max_value != 0: |
| newly_determined = [(i, 0) for i, x in enumerate(col) if x != 0] |
| return (None, None, False, newly_determined) |
| index = col_abs.index(max_value) |
| return (index, col[index], False, newly_determined) |
|
|
| |
| possible_zeros = [] |
| for i, x in enumerate(col): |
| is_zero = iszerofunc(x) |
| |
| |
| |
| if is_zero == False: |
| |
| return (i, x, False, newly_determined) |
| possible_zeros.append(is_zero) |
|
|
| |
| if all(possible_zeros): |
| |
| |
| return (None, None, False, newly_determined) |
|
|
| |
| |
| |
| |
| |
| for i, x in enumerate(col): |
| if possible_zeros[i] is not None: |
| continue |
| simped = simpfunc(x) |
| is_zero = iszerofunc(simped) |
| if is_zero in (True, False): |
| newly_determined.append((i, simped)) |
| if is_zero == False: |
| return (i, simped, False, newly_determined) |
| possible_zeros[i] = is_zero |
|
|
| |
| |
| if all(possible_zeros): |
| |
| |
| return (None, None, False, newly_determined) |
|
|
| |
| |
| |
| |
| for i, x in enumerate(col): |
| if possible_zeros[i] is not None: |
| continue |
| if x.equals(S.Zero): |
| |
| |
| |
| |
| possible_zeros[i] = True |
| newly_determined.append((i, S.Zero)) |
|
|
| if all(possible_zeros): |
| return (None, None, False, newly_determined) |
|
|
| |
| |
| |
| |
| i = possible_zeros.index(None) |
| return (i, col[i], True, newly_determined) |
|
|
|
|
| def _find_reasonable_pivot_naive(col, iszerofunc=_iszero, simpfunc=None): |
| """ |
| Helper that computes the pivot value and location from a |
| sequence of contiguous matrix column elements. As a side effect |
| of the pivot search, this function may simplify some of the elements |
| of the input column. A list of these simplified entries and their |
| indices are also returned. |
| This function mimics the behavior of _find_reasonable_pivot(), |
| but does less work trying to determine if an indeterminate candidate |
| pivot simplifies to zero. This more naive approach can be much faster, |
| with the trade-off that it may erroneously return a pivot that is zero. |
| |
| ``col`` is a sequence of contiguous column entries to be searched for |
| a suitable pivot. |
| ``iszerofunc`` is a callable that returns a Boolean that indicates |
| if its input is zero, or None if no such determination can be made. |
| ``simpfunc`` is a callable that simplifies its input. It must return |
| its input if it does not simplify its input. Passing in |
| ``simpfunc=None`` indicates that the pivot search should not attempt |
| to simplify any candidate pivots. |
| |
| Returns a 4-tuple: |
| (pivot_offset, pivot_val, assumed_nonzero, newly_determined) |
| ``pivot_offset`` is the sequence index of the pivot. |
| ``pivot_val`` is the value of the pivot. |
| pivot_val and col[pivot_index] are equivalent, but will be different |
| when col[pivot_index] was simplified during the pivot search. |
| ``assumed_nonzero`` is a boolean indicating if the pivot cannot be |
| guaranteed to be zero. If assumed_nonzero is true, then the pivot |
| may or may not be non-zero. If assumed_nonzero is false, then |
| the pivot is non-zero. |
| ``newly_determined`` is a list of index-value pairs of pivot candidates |
| that were simplified during the pivot search. |
| """ |
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| indeterminates = [] |
| for i, col_val in enumerate(col): |
| col_val_is_zero = iszerofunc(col_val) |
| if col_val_is_zero == False: |
| |
| return i, col_val, False, [] |
| elif col_val_is_zero is None: |
| |
| |
| indeterminates.append((i, col_val)) |
|
|
| if len(indeterminates) == 0: |
| |
| |
| return None, None, False, [] |
|
|
| if simpfunc is None: |
| |
| |
| |
| |
| return indeterminates[0][0], indeterminates[0][1], True, [] |
|
|
| |
| |
| newly_determined = [] |
| for i, col_val in indeterminates: |
| tmp_col_val = simpfunc(col_val) |
| if id(col_val) != id(tmp_col_val): |
| |
| newly_determined.append((i, tmp_col_val)) |
| if iszerofunc(tmp_col_val) == False: |
| |
| return i, tmp_col_val, False, newly_determined |
|
|
| return indeterminates[0][0], indeterminates[0][1], True, newly_determined |
|
|
|
|
| |
| def _berkowitz_toeplitz_matrix(M): |
| """Return (A,T) where T the Toeplitz matrix used in the Berkowitz algorithm |
| corresponding to ``M`` and A is the first principal submatrix. |
| """ |
|
|
| |
| if M.rows == 0 and M.cols == 0: |
| return M._new(1,1, [M.one]) |
|
|
| |
| |
| |
| |
|
|
| a, R = M[0,0], M[0, 1:] |
| C, A = M[1:, 0], M[1:,1:] |
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| |
| |
| |
| |
| diags = [C] |
| for i in range(M.rows - 2): |
| diags.append(A.multiply(diags[i], dotprodsimp=None)) |
| diags = [(-R).multiply(d, dotprodsimp=None)[0, 0] for d in diags] |
| diags = [M.one, -a] + diags |
|
|
| def entry(i,j): |
| if j > i: |
| return M.zero |
| return diags[i - j] |
|
|
| toeplitz = M._new(M.cols + 1, M.rows, entry) |
| return (A, toeplitz) |
|
|
|
|
| |
| def _berkowitz_vector(M): |
| """ Run the Berkowitz algorithm and return a vector whose entries |
| are the coefficients of the characteristic polynomial of ``M``. |
| |
| Given N x N matrix, efficiently compute |
| coefficients of characteristic polynomials of ``M`` |
| without division in the ground domain. |
| |
| This method is particularly useful for computing determinant, |
| principal minors and characteristic polynomial when ``M`` |
| has complicated coefficients e.g. polynomials. Semi-direct |
| usage of this algorithm is also important in computing |
| efficiently sub-resultant PRS. |
| |
| Assuming that M is a square matrix of dimension N x N and |
| I is N x N identity matrix, then the Berkowitz vector is |
| an N x 1 vector whose entries are coefficients of the |
| polynomial |
| |
| charpoly(M) = det(t*I - M) |
| |
| As a consequence, all polynomials generated by Berkowitz |
| algorithm are monic. |
| |
| For more information on the implemented algorithm refer to: |
| |
| [1] S.J. Berkowitz, On computing the determinant in small |
| parallel time using a small number of processors, ACM, |
| Information Processing Letters 18, 1984, pp. 147-150 |
| |
| [2] M. Keber, Division-Free computation of sub-resultants |
| using Bezout matrices, Tech. Report MPI-I-2006-1-006, |
| Saarbrucken, 2006 |
| """ |
|
|
| |
| if M.rows == 0 and M.cols == 0: |
| return M._new(1, 1, [M.one]) |
| elif M.rows == 1 and M.cols == 1: |
| return M._new(2, 1, [M.one, -M[0,0]]) |
|
|
| submat, toeplitz = _berkowitz_toeplitz_matrix(M) |
|
|
| return toeplitz.multiply(_berkowitz_vector(submat), dotprodsimp=None) |
|
|
|
|
| def _adjugate(M, method="berkowitz"): |
| """Returns the adjugate, or classical adjoint, of |
| a matrix. That is, the transpose of the matrix of cofactors. |
| |
| https://en.wikipedia.org/wiki/Adjugate |
| |
| Parameters |
| ========== |
| |
| method : string, optional |
| Method to use to find the cofactors, can be "bareiss", "berkowitz", |
| "bird", "laplace" or "lu". |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2], [3, 4]]) |
| >>> M.adjugate() |
| Matrix([ |
| [ 4, -2], |
| [-3, 1]]) |
| |
| See Also |
| ======== |
| |
| cofactor_matrix |
| sympy.matrices.matrixbase.MatrixBase.transpose |
| """ |
|
|
| return M.cofactor_matrix(method=method).transpose() |
|
|
|
|
| |
| def _charpoly(M, x='lambda', simplify=_simplify): |
| """Computes characteristic polynomial det(x*I - M) where I is |
| the identity matrix. |
| |
| A PurePoly is returned, so using different variables for ``x`` does |
| not affect the comparison or the polynomials: |
| |
| Parameters |
| ========== |
| |
| x : string, optional |
| Name for the "lambda" variable, defaults to "lambda". |
| |
| simplify : function, optional |
| Simplification function to use on the characteristic polynomial |
| calculated. Defaults to ``simplify``. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> from sympy.abc import x, y |
| >>> M = Matrix([[1, 3], [2, 0]]) |
| >>> M.charpoly() |
| PurePoly(lambda**2 - lambda - 6, lambda, domain='ZZ') |
| >>> M.charpoly(x) == M.charpoly(y) |
| True |
| >>> M.charpoly(x) == M.charpoly(y) |
| True |
| |
| Specifying ``x`` is optional; a symbol named ``lambda`` is used by |
| default (which looks good when pretty-printed in unicode): |
| |
| >>> M.charpoly().as_expr() |
| lambda**2 - lambda - 6 |
| |
| And if ``x`` clashes with an existing symbol, underscores will |
| be prepended to the name to make it unique: |
| |
| >>> M = Matrix([[1, 2], [x, 0]]) |
| >>> M.charpoly(x).as_expr() |
| _x**2 - _x - 2*x |
| |
| Whether you pass a symbol or not, the generator can be obtained |
| with the gen attribute since it may not be the same as the symbol |
| that was passed: |
| |
| >>> M.charpoly(x).gen |
| _x |
| >>> M.charpoly(x).gen == x |
| False |
| |
| Notes |
| ===== |
| |
| The Samuelson-Berkowitz algorithm is used to compute |
| the characteristic polynomial efficiently and without any |
| division operations. Thus the characteristic polynomial over any |
| commutative ring without zero divisors can be computed. |
| |
| If the determinant det(x*I - M) can be found out easily as |
| in the case of an upper or a lower triangular matrix, then |
| instead of Samuelson-Berkowitz algorithm, eigenvalues are computed |
| and the characteristic polynomial with their help. |
| |
| See Also |
| ======== |
| |
| det |
| """ |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| dM = M.to_DM() |
|
|
| K = dM.domain |
|
|
| cp = dM.charpoly() |
|
|
| x = uniquely_named_symbol(x, [M], modify=lambda s: '_' + s) |
|
|
| if K.is_EXRAW or simplify is not _simplify: |
| |
| |
| |
| |
| |
| berk_vector = [K.to_sympy(c) for c in cp] |
| berk_vector = [simplify(a) for a in berk_vector] |
| p = PurePoly(berk_vector, x) |
|
|
| else: |
| |
| p = PurePoly(cp, x, domain=K) |
|
|
| return p |
|
|
|
|
| def _cofactor(M, i, j, method="berkowitz"): |
| """Calculate the cofactor of an element. |
| |
| Parameters |
| ========== |
| |
| method : string, optional |
| Method to use to find the cofactors, can be "bareiss", "berkowitz", |
| "bird", "laplace" or "lu". |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2], [3, 4]]) |
| >>> M.cofactor(0, 1) |
| -3 |
| |
| See Also |
| ======== |
| |
| cofactor_matrix |
| minor |
| minor_submatrix |
| """ |
|
|
| if not M.is_square or M.rows < 1: |
| raise NonSquareMatrixError() |
|
|
| return S.NegativeOne**((i + j) % 2) * M.minor(i, j, method) |
|
|
|
|
| def _cofactor_matrix(M, method="berkowitz"): |
| """Return a matrix containing the cofactor of each element. |
| |
| Parameters |
| ========== |
| |
| method : string, optional |
| Method to use to find the cofactors, can be "bareiss", "berkowitz", |
| "bird", "laplace" or "lu". |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2], [3, 4]]) |
| >>> M.cofactor_matrix() |
| Matrix([ |
| [ 4, -3], |
| [-2, 1]]) |
| |
| See Also |
| ======== |
| |
| cofactor |
| minor |
| minor_submatrix |
| """ |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| return M._new(M.rows, M.cols, |
| lambda i, j: M.cofactor(i, j, method)) |
|
|
| def _per(M): |
| """Returns the permanent of a matrix. Unlike determinant, |
| permanent is defined for both square and non-square matrices. |
| |
| For an m x n matrix, with m less than or equal to n, |
| it is given as the sum over the permutations s of size |
| less than or equal to m on [1, 2, . . . n] of the product |
| from i = 1 to m of M[i, s[i]]. Taking the transpose will |
| not affect the value of the permanent. |
| |
| In the case of a square matrix, this is the same as the permutation |
| definition of the determinant, but it does not take the sign of the |
| permutation into account. Computing the permanent with this definition |
| is quite inefficient, so here the Ryser formula is used. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) |
| >>> M.per() |
| 450 |
| >>> M = Matrix([1, 5, 7]) |
| >>> M.per() |
| 13 |
| |
| References |
| ========== |
| |
| .. [1] Prof. Frank Ben's notes: https://math.berkeley.edu/~bernd/ban275.pdf |
| .. [2] Wikipedia article on Permanent: https://en.wikipedia.org/wiki/Permanent_%28mathematics%29 |
| .. [3] https://reference.wolfram.com/language/ref/Permanent.html |
| .. [4] Permanent of a rectangular matrix : https://arxiv.org/pdf/0904.3251.pdf |
| """ |
| import itertools |
|
|
| m, n = M.shape |
| if m > n: |
| M = M.T |
| m, n = n, m |
| s = list(range(n)) |
|
|
| subsets = [] |
| for i in range(1, m + 1): |
| subsets += list(map(list, itertools.combinations(s, i))) |
|
|
| perm = 0 |
| for subset in subsets: |
| prod = 1 |
| sub_len = len(subset) |
| for i in range(m): |
| prod *= sum(M[i, j] for j in subset) |
| perm += prod * S.NegativeOne**sub_len * nC(n - sub_len, m - sub_len) |
| perm *= S.NegativeOne**m |
| return perm.simplify() |
|
|
| def _det_DOM(M): |
| DOM = DomainMatrix.from_Matrix(M, field=True, extension=True) |
| K = DOM.domain |
| return K.to_sympy(DOM.det()) |
|
|
| |
| def _det(M, method="bareiss", iszerofunc=None): |
| """Computes the determinant of a matrix if ``M`` is a concrete matrix object |
| otherwise return an expressions ``Determinant(M)`` if ``M`` is a |
| ``MatrixSymbol`` or other expression. |
| |
| Parameters |
| ========== |
| |
| method : string, optional |
| Specifies the algorithm used for computing the matrix determinant. |
| |
| If the matrix is at most 3x3, a hard-coded formula is used and the |
| specified method is ignored. Otherwise, it defaults to |
| ``'bareiss'``. |
| |
| Also, if the matrix is an upper or a lower triangular matrix, determinant |
| is computed by simple multiplication of diagonal elements, and the |
| specified method is ignored. |
| |
| If it is set to ``'domain-ge'``, then Gaussian elimination method will |
| be used via using DomainMatrix. |
| |
| If it is set to ``'bareiss'``, Bareiss' fraction-free algorithm will |
| be used. |
| |
| If it is set to ``'berkowitz'``, Berkowitz' algorithm will be used. |
| |
| If it is set to ``'bird'``, Bird's algorithm will be used [1]_. |
| |
| If it is set to ``'laplace'``, Laplace's algorithm will be used. |
| |
| Otherwise, if it is set to ``'lu'``, LU decomposition will be used. |
| |
| .. note:: |
| For backward compatibility, legacy keys like "bareis" and |
| "det_lu" can still be used to indicate the corresponding |
| methods. |
| And the keys are also case-insensitive for now. However, it is |
| suggested to use the precise keys for specifying the method. |
| |
| iszerofunc : FunctionType or None, optional |
| If it is set to ``None``, it will be defaulted to ``_iszero`` if the |
| method is set to ``'bareiss'``, and ``_is_zero_after_expand_mul`` if |
| the method is set to ``'lu'``. |
| |
| It can also accept any user-specified zero testing function, if it |
| is formatted as a function which accepts a single symbolic argument |
| and returns ``True`` if it is tested as zero and ``False`` if it |
| tested as non-zero, and also ``None`` if it is undecidable. |
| |
| Returns |
| ======= |
| |
| det : Basic |
| Result of determinant. |
| |
| Raises |
| ====== |
| |
| ValueError |
| If unrecognized keys are given for ``method`` or ``iszerofunc``. |
| |
| NonSquareMatrixError |
| If attempted to calculate determinant from a non-square matrix. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix, eye, det |
| >>> I3 = eye(3) |
| >>> det(I3) |
| 1 |
| >>> M = Matrix([[1, 2], [3, 4]]) |
| >>> det(M) |
| -2 |
| >>> det(M) == M.det() |
| True |
| >>> M.det(method="domain-ge") |
| -2 |
| |
| References |
| ========== |
| |
| .. [1] Bird, R. S. (2011). A simple division-free algorithm for computing |
| determinants. Inf. Process. Lett., 111(21), 1072-1074. doi: |
| 10.1016/j.ipl.2011.08.006 |
| """ |
|
|
| |
| method = method.lower() |
|
|
| if method == "bareis": |
| method = "bareiss" |
| elif method == "det_lu": |
| method = "lu" |
|
|
| if method not in ("bareiss", "berkowitz", "lu", "domain-ge", "bird", |
| "laplace"): |
| raise ValueError("Determinant method '%s' unrecognized" % method) |
|
|
| if iszerofunc is None: |
| if method == "bareiss": |
| iszerofunc = _is_zero_after_expand_mul |
| elif method == "lu": |
| iszerofunc = _iszero |
|
|
| elif not isinstance(iszerofunc, FunctionType): |
| raise ValueError("Zero testing method '%s' unrecognized" % iszerofunc) |
|
|
| n = M.rows |
|
|
| if n == M.cols: |
| if n == 0: |
| return M.one |
| elif n == 1: |
| return M[0, 0] |
| elif n == 2: |
| m = M[0, 0] * M[1, 1] - M[0, 1] * M[1, 0] |
| return _get_intermediate_simp(_dotprodsimp)(m) |
| elif n == 3: |
| m = (M[0, 0] * M[1, 1] * M[2, 2] |
| + M[0, 1] * M[1, 2] * M[2, 0] |
| + M[0, 2] * M[1, 0] * M[2, 1] |
| - M[0, 2] * M[1, 1] * M[2, 0] |
| - M[0, 0] * M[1, 2] * M[2, 1] |
| - M[0, 1] * M[1, 0] * M[2, 2]) |
| return _get_intermediate_simp(_dotprodsimp)(m) |
|
|
| dets = [] |
| for b in M.strongly_connected_components(): |
| if method == "domain-ge": |
| det = _det_DOM(M[b, b]) |
| elif method == "bareiss": |
| det = M[b, b]._eval_det_bareiss(iszerofunc=iszerofunc) |
| elif method == "berkowitz": |
| det = M[b, b]._eval_det_berkowitz() |
| elif method == "lu": |
| det = M[b, b]._eval_det_lu(iszerofunc=iszerofunc) |
| elif method == "bird": |
| det = M[b, b]._eval_det_bird() |
| elif method == "laplace": |
| det = M[b, b]._eval_det_laplace() |
| dets.append(det) |
| return Mul(*dets) |
|
|
|
|
| |
| def _det_bareiss(M, iszerofunc=_is_zero_after_expand_mul): |
| """Compute matrix determinant using Bareiss' fraction-free |
| algorithm which is an extension of the well known Gaussian |
| elimination method. This approach is best suited for dense |
| symbolic matrices and will result in a determinant with |
| minimal number of fractions. It means that less term |
| rewriting is needed on resulting formulae. |
| |
| Parameters |
| ========== |
| |
| iszerofunc : function, optional |
| The function to use to determine zeros when doing an LU decomposition. |
| Defaults to ``lambda x: x.is_zero``. |
| |
| TODO: Implement algorithm for sparse matrices (SFF), |
| http://www.eecis.udel.edu/~saunders/papers/sffge/it5.ps. |
| """ |
|
|
| |
| |
| def bareiss(mat, cumm=1): |
| if mat.rows == 0: |
| return mat.one |
| elif mat.rows == 1: |
| return mat[0, 0] |
|
|
| |
| |
| |
| |
| pivot_pos, pivot_val, _, _ = _find_reasonable_pivot(mat[:, 0], iszerofunc=iszerofunc) |
| if pivot_pos is None: |
| return mat.zero |
|
|
| |
| |
| sign = (-1) ** (pivot_pos % 2) |
|
|
| |
| rows = [i for i in range(mat.rows) if i != pivot_pos] |
| cols = list(range(mat.cols)) |
| tmp_mat = mat.extract(rows, cols) |
|
|
| def entry(i, j): |
| ret = (pivot_val*tmp_mat[i, j + 1] - mat[pivot_pos, j + 1]*tmp_mat[i, 0]) / cumm |
| if _get_intermediate_simp_bool(True): |
| return _dotprodsimp(ret) |
| elif not ret.is_Atom: |
| return cancel(ret) |
| return ret |
|
|
| return sign*bareiss(M._new(mat.rows - 1, mat.cols - 1, entry), pivot_val) |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| if M.rows == 0: |
| return M.one |
| |
| |
| |
|
|
| return bareiss(M) |
|
|
|
|
| def _det_berkowitz(M): |
| """ Use the Berkowitz algorithm to compute the determinant.""" |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| if M.rows == 0: |
| return M.one |
| |
| |
| |
|
|
| berk_vector = _berkowitz_vector(M) |
| return (-1)**(len(berk_vector) - 1) * berk_vector[-1] |
|
|
|
|
| |
| def _det_LU(M, iszerofunc=_iszero, simpfunc=None): |
| """ Computes the determinant of a matrix from its LU decomposition. |
| This function uses the LU decomposition computed by |
| LUDecomposition_Simple(). |
| |
| The keyword arguments iszerofunc and simpfunc are passed to |
| LUDecomposition_Simple(). |
| iszerofunc is a callable that returns a boolean indicating if its |
| input is zero, or None if it cannot make the determination. |
| simpfunc is a callable that simplifies its input. |
| The default is simpfunc=None, which indicate that the pivot search |
| algorithm should not attempt to simplify any candidate pivots. |
| If simpfunc fails to simplify its input, then it must return its input |
| instead of a copy. |
| |
| Parameters |
| ========== |
| |
| iszerofunc : function, optional |
| The function to use to determine zeros when doing an LU decomposition. |
| Defaults to ``lambda x: x.is_zero``. |
| |
| simpfunc : function, optional |
| The simplification function to use when looking for zeros for pivots. |
| """ |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| if M.rows == 0: |
| return M.one |
| |
| |
| |
|
|
| lu, row_swaps = M.LUdecomposition_Simple(iszerofunc=iszerofunc, |
| simpfunc=simpfunc) |
| |
| |
| |
| |
| |
|
|
| |
| |
| |
| |
| if iszerofunc(lu[lu.rows-1, lu.rows-1]): |
| return M.zero |
|
|
| |
| det = -M.one if len(row_swaps)%2 else M.one |
|
|
| |
| |
| |
| for k in range(lu.rows): |
| det *= lu[k, k] |
|
|
| |
| return det |
|
|
|
|
| @cacheit |
| def __det_laplace(M): |
| """Compute the determinant of a matrix using Laplace expansion. |
| |
| This is a recursive function, and it should not be called directly. |
| Use _det_laplace() instead. The reason for splitting this function |
| into two is to allow caching of determinants of submatrices. While |
| one could also define this function inside _det_laplace(), that |
| would remove the advantage of using caching in Cramer Solve. |
| """ |
| n = M.shape[0] |
| if n == 1: |
| return M[0] |
| elif n == 2: |
| return M[0, 0] * M[1, 1] - M[0, 1] * M[1, 0] |
| else: |
| return sum((-1) ** i * M[0, i] * |
| __det_laplace(M.minor_submatrix(0, i)) for i in range(n)) |
|
|
|
|
| def _det_laplace(M): |
| """Compute the determinant of a matrix using Laplace expansion. |
| |
| While Laplace expansion is not the most efficient method of computing |
| a determinant, it is a simple one, and it has the advantage of |
| being division free. To improve efficiency, this function uses |
| caching to avoid recomputing determinants of submatrices. |
| """ |
| if not M.is_square: |
| raise NonSquareMatrixError() |
| if M.shape[0] == 0: |
| return M.one |
| |
| |
| |
| return __det_laplace(M.as_immutable()) |
|
|
|
|
| def _det_bird(M): |
| r"""Compute the determinant of a matrix using Bird's algorithm. |
| |
| Bird's algorithm is a simple division-free algorithm for computing, which |
| is of lower order than the Laplace's algorithm. It is described in [1]_. |
| |
| References |
| ========== |
| |
| .. [1] Bird, R. S. (2011). A simple division-free algorithm for computing |
| determinants. Inf. Process. Lett., 111(21), 1072-1074. doi: |
| 10.1016/j.ipl.2011.08.006 |
| """ |
| def mu(X): |
| n = X.shape[0] |
| zero = X.domain.zero |
|
|
| total = zero |
| diag_sums = [zero] |
| for i in reversed(range(1, n)): |
| total -= X[i][i] |
| diag_sums.append(total) |
| diag_sums = diag_sums[::-1] |
|
|
| elems = [[zero] * i + [diag_sums[i]] + X_i[i + 1:] for i, X_i in |
| enumerate(X)] |
| return DDM(elems, X.shape, X.domain) |
|
|
| Mddm = M._rep.to_ddm() |
| n = M.shape[0] |
| if n == 0: |
| return M.one |
| |
| |
| |
| Fn1 = Mddm |
| for _ in range(n - 1): |
| Fn1 = mu(Fn1).matmul(Mddm) |
| detA = Fn1[0][0] |
| if n % 2 == 0: |
| detA = -detA |
|
|
| return Mddm.domain.to_sympy(detA) |
|
|
|
|
| def _minor(M, i, j, method="berkowitz"): |
| """Return the (i,j) minor of ``M``. That is, |
| return the determinant of the matrix obtained by deleting |
| the `i`th row and `j`th column from ``M``. |
| |
| Parameters |
| ========== |
| |
| i, j : int |
| The row and column to exclude to obtain the submatrix. |
| |
| method : string, optional |
| Method to use to find the determinant of the submatrix, can be |
| "bareiss", "berkowitz", "bird", "laplace" or "lu". |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) |
| >>> M.minor(1, 1) |
| -12 |
| |
| See Also |
| ======== |
| |
| minor_submatrix |
| cofactor |
| det |
| """ |
|
|
| if not M.is_square: |
| raise NonSquareMatrixError() |
|
|
| return M.minor_submatrix(i, j).det(method=method) |
|
|
|
|
| def _minor_submatrix(M, i, j): |
| """Return the submatrix obtained by removing the `i`th row |
| and `j`th column from ``M`` (works with Pythonic negative indices). |
| |
| Parameters |
| ========== |
| |
| i, j : int |
| The row and column to exclude to obtain the submatrix. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Matrix |
| >>> M = Matrix([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) |
| >>> M.minor_submatrix(1, 1) |
| Matrix([ |
| [1, 3], |
| [7, 9]]) |
| |
| See Also |
| ======== |
| |
| minor |
| cofactor |
| """ |
|
|
| if i < 0: |
| i += M.rows |
| if j < 0: |
| j += M.cols |
|
|
| if not 0 <= i < M.rows or not 0 <= j < M.cols: |
| raise ValueError("`i` and `j` must satisfy 0 <= i < ``M.rows`` " |
| "(%d)" % M.rows + "and 0 <= j < ``M.cols`` (%d)." % M.cols) |
|
|
| rows = [a for a in range(M.rows) if a != i] |
| cols = [a for a in range(M.cols) if a != j] |
|
|
| return M.extract(rows, cols) |
|
|