Traktor/myenv/Lib/site-packages/sympy/matrices/expressions/hadamard.py

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2024-05-26 05:12:46 +02:00
from collections import Counter
from sympy.core import Mul, sympify
from sympy.core.add import Add
from sympy.core.expr import ExprBuilder
from sympy.core.sorting import default_sort_key
from sympy.functions.elementary.exponential import log
from sympy.matrices.expressions.matexpr import MatrixExpr
from sympy.matrices.expressions._shape import validate_matadd_integer as validate
from sympy.matrices.expressions.special import ZeroMatrix, OneMatrix
from sympy.strategies import (
unpack, flatten, condition, exhaust, rm_id, sort
)
from sympy.utilities.exceptions import sympy_deprecation_warning
def hadamard_product(*matrices):
"""
Return the elementwise (aka Hadamard) product of matrices.
Examples
========
>>> from sympy import hadamard_product, MatrixSymbol
>>> A = MatrixSymbol('A', 2, 3)
>>> B = MatrixSymbol('B', 2, 3)
>>> hadamard_product(A)
A
>>> hadamard_product(A, B)
HadamardProduct(A, B)
>>> hadamard_product(A, B)[0, 1]
A[0, 1]*B[0, 1]
"""
if not matrices:
raise TypeError("Empty Hadamard product is undefined")
if len(matrices) == 1:
return matrices[0]
return HadamardProduct(*matrices).doit()
class HadamardProduct(MatrixExpr):
"""
Elementwise product of matrix expressions
Examples
========
Hadamard product for matrix symbols:
>>> from sympy import hadamard_product, HadamardProduct, MatrixSymbol
>>> A = MatrixSymbol('A', 5, 5)
>>> B = MatrixSymbol('B', 5, 5)
>>> isinstance(hadamard_product(A, B), HadamardProduct)
True
Notes
=====
This is a symbolic object that simply stores its argument without
evaluating it. To actually compute the product, use the function
``hadamard_product()`` or ``HadamardProduct.doit``
"""
is_HadamardProduct = True
def __new__(cls, *args, evaluate=False, check=None):
args = list(map(sympify, args))
if len(args) == 0:
# We currently don't have a way to support one-matrices of generic dimensions:
raise ValueError("HadamardProduct needs at least one argument")
if not all(isinstance(arg, MatrixExpr) for arg in args):
raise TypeError("Mix of Matrix and Scalar symbols")
if check is not None:
sympy_deprecation_warning(
"Passing check to HadamardProduct is deprecated and the check argument will be removed in a future version.",
deprecated_since_version="1.11",
active_deprecations_target='remove-check-argument-from-matrix-operations')
if check is not False:
validate(*args)
obj = super().__new__(cls, *args)
if evaluate:
obj = obj.doit(deep=False)
return obj
@property
def shape(self):
return self.args[0].shape
def _entry(self, i, j, **kwargs):
return Mul(*[arg._entry(i, j, **kwargs) for arg in self.args])
def _eval_transpose(self):
from sympy.matrices.expressions.transpose import transpose
return HadamardProduct(*list(map(transpose, self.args)))
def doit(self, **hints):
expr = self.func(*(i.doit(**hints) for i in self.args))
# Check for explicit matrices:
from sympy.matrices.matrices import MatrixBase
from sympy.matrices.immutable import ImmutableMatrix
explicit = [i for i in expr.args if isinstance(i, MatrixBase)]
if explicit:
remainder = [i for i in expr.args if i not in explicit]
expl_mat = ImmutableMatrix([
Mul.fromiter(i) for i in zip(*explicit)
]).reshape(*self.shape)
expr = HadamardProduct(*([expl_mat] + remainder))
return canonicalize(expr)
def _eval_derivative(self, x):
terms = []
args = list(self.args)
for i in range(len(args)):
factors = args[:i] + [args[i].diff(x)] + args[i+1:]
terms.append(hadamard_product(*factors))
return Add.fromiter(terms)
def _eval_derivative_matrix_lines(self, x):
from sympy.tensor.array.expressions.array_expressions import ArrayDiagonal
from sympy.tensor.array.expressions.array_expressions import ArrayTensorProduct
from sympy.matrices.expressions.matexpr import _make_matrix
with_x_ind = [i for i, arg in enumerate(self.args) if arg.has(x)]
lines = []
for ind in with_x_ind:
left_args = self.args[:ind]
right_args = self.args[ind+1:]
d = self.args[ind]._eval_derivative_matrix_lines(x)
hadam = hadamard_product(*(right_args + left_args))
diagonal = [(0, 2), (3, 4)]
diagonal = [e for j, e in enumerate(diagonal) if self.shape[j] != 1]
for i in d:
l1 = i._lines[i._first_line_index]
l2 = i._lines[i._second_line_index]
subexpr = ExprBuilder(
ArrayDiagonal,
[
ExprBuilder(
ArrayTensorProduct,
[
ExprBuilder(_make_matrix, [l1]),
hadam,
ExprBuilder(_make_matrix, [l2]),
]
),
*diagonal],
)
i._first_pointer_parent = subexpr.args[0].args[0].args
i._first_pointer_index = 0
i._second_pointer_parent = subexpr.args[0].args[2].args
i._second_pointer_index = 0
i._lines = [subexpr]
lines.append(i)
return lines
# TODO Implement algorithm for rewriting Hadamard product as diagonal matrix
# if matmul identy matrix is multiplied.
def canonicalize(x):
"""Canonicalize the Hadamard product ``x`` with mathematical properties.
Examples
========
>>> from sympy import MatrixSymbol, HadamardProduct
>>> from sympy import OneMatrix, ZeroMatrix
>>> from sympy.matrices.expressions.hadamard import canonicalize
>>> from sympy import init_printing
>>> init_printing(use_unicode=False)
>>> A = MatrixSymbol('A', 2, 2)
>>> B = MatrixSymbol('B', 2, 2)
>>> C = MatrixSymbol('C', 2, 2)
Hadamard product associativity:
>>> X = HadamardProduct(A, HadamardProduct(B, C))
>>> X
A.*(B.*C)
>>> canonicalize(X)
A.*B.*C
Hadamard product commutativity:
>>> X = HadamardProduct(A, B)
>>> Y = HadamardProduct(B, A)
>>> X
A.*B
>>> Y
B.*A
>>> canonicalize(X)
A.*B
>>> canonicalize(Y)
A.*B
Hadamard product identity:
>>> X = HadamardProduct(A, OneMatrix(2, 2))
>>> X
A.*1
>>> canonicalize(X)
A
Absorbing element of Hadamard product:
>>> X = HadamardProduct(A, ZeroMatrix(2, 2))
>>> X
A.*0
>>> canonicalize(X)
0
Rewriting to Hadamard Power
>>> X = HadamardProduct(A, A, A)
>>> X
A.*A.*A
>>> canonicalize(X)
.3
A
Notes
=====
As the Hadamard product is associative, nested products can be flattened.
The Hadamard product is commutative so that factors can be sorted for
canonical form.
A matrix of only ones is an identity for Hadamard product,
so every matrices of only ones can be removed.
Any zero matrix will make the whole product a zero matrix.
Duplicate elements can be collected and rewritten as HadamardPower
References
==========
.. [1] https://en.wikipedia.org/wiki/Hadamard_product_(matrices)
"""
# Associativity
rule = condition(
lambda x: isinstance(x, HadamardProduct),
flatten
)
fun = exhaust(rule)
x = fun(x)
# Identity
fun = condition(
lambda x: isinstance(x, HadamardProduct),
rm_id(lambda x: isinstance(x, OneMatrix))
)
x = fun(x)
# Absorbing by Zero Matrix
def absorb(x):
if any(isinstance(c, ZeroMatrix) for c in x.args):
return ZeroMatrix(*x.shape)
else:
return x
fun = condition(
lambda x: isinstance(x, HadamardProduct),
absorb
)
x = fun(x)
# Rewriting with HadamardPower
if isinstance(x, HadamardProduct):
tally = Counter(x.args)
new_arg = []
for base, exp in tally.items():
if exp == 1:
new_arg.append(base)
else:
new_arg.append(HadamardPower(base, exp))
x = HadamardProduct(*new_arg)
# Commutativity
fun = condition(
lambda x: isinstance(x, HadamardProduct),
sort(default_sort_key)
)
x = fun(x)
# Unpacking
x = unpack(x)
return x
def hadamard_power(base, exp):
base = sympify(base)
exp = sympify(exp)
if exp == 1:
return base
if not base.is_Matrix:
return base**exp
if exp.is_Matrix:
raise ValueError("cannot raise expression to a matrix")
return HadamardPower(base, exp)
class HadamardPower(MatrixExpr):
r"""
Elementwise power of matrix expressions
Parameters
==========
base : scalar or matrix
exp : scalar or matrix
Notes
=====
There are four definitions for the hadamard power which can be used.
Let's consider `A, B` as `(m, n)` matrices, and `a, b` as scalars.
Matrix raised to a scalar exponent:
.. math::
A^{\circ b} = \begin{bmatrix}
A_{0, 0}^b & A_{0, 1}^b & \cdots & A_{0, n-1}^b \\
A_{1, 0}^b & A_{1, 1}^b & \cdots & A_{1, n-1}^b \\
\vdots & \vdots & \ddots & \vdots \\
A_{m-1, 0}^b & A_{m-1, 1}^b & \cdots & A_{m-1, n-1}^b
\end{bmatrix}
Scalar raised to a matrix exponent:
.. math::
a^{\circ B} = \begin{bmatrix}
a^{B_{0, 0}} & a^{B_{0, 1}} & \cdots & a^{B_{0, n-1}} \\
a^{B_{1, 0}} & a^{B_{1, 1}} & \cdots & a^{B_{1, n-1}} \\
\vdots & \vdots & \ddots & \vdots \\
a^{B_{m-1, 0}} & a^{B_{m-1, 1}} & \cdots & a^{B_{m-1, n-1}}
\end{bmatrix}
Matrix raised to a matrix exponent:
.. math::
A^{\circ B} = \begin{bmatrix}
A_{0, 0}^{B_{0, 0}} & A_{0, 1}^{B_{0, 1}} &
\cdots & A_{0, n-1}^{B_{0, n-1}} \\
A_{1, 0}^{B_{1, 0}} & A_{1, 1}^{B_{1, 1}} &
\cdots & A_{1, n-1}^{B_{1, n-1}} \\
\vdots & \vdots &
\ddots & \vdots \\
A_{m-1, 0}^{B_{m-1, 0}} & A_{m-1, 1}^{B_{m-1, 1}} &
\cdots & A_{m-1, n-1}^{B_{m-1, n-1}}
\end{bmatrix}
Scalar raised to a scalar exponent:
.. math::
a^{\circ b} = a^b
"""
def __new__(cls, base, exp):
base = sympify(base)
exp = sympify(exp)
if base.is_scalar and exp.is_scalar:
return base ** exp
if isinstance(base, MatrixExpr) and isinstance(exp, MatrixExpr):
validate(base, exp)
obj = super().__new__(cls, base, exp)
return obj
@property
def base(self):
return self._args[0]
@property
def exp(self):
return self._args[1]
@property
def shape(self):
if self.base.is_Matrix:
return self.base.shape
return self.exp.shape
def _entry(self, i, j, **kwargs):
base = self.base
exp = self.exp
if base.is_Matrix:
a = base._entry(i, j, **kwargs)
elif base.is_scalar:
a = base
else:
raise ValueError(
'The base {} must be a scalar or a matrix.'.format(base))
if exp.is_Matrix:
b = exp._entry(i, j, **kwargs)
elif exp.is_scalar:
b = exp
else:
raise ValueError(
'The exponent {} must be a scalar or a matrix.'.format(exp))
return a ** b
def _eval_transpose(self):
from sympy.matrices.expressions.transpose import transpose
return HadamardPower(transpose(self.base), self.exp)
def _eval_derivative(self, x):
dexp = self.exp.diff(x)
logbase = self.base.applyfunc(log)
dlbase = logbase.diff(x)
return hadamard_product(
dexp*logbase + self.exp*dlbase,
self
)
def _eval_derivative_matrix_lines(self, x):
from sympy.tensor.array.expressions.array_expressions import ArrayTensorProduct
from sympy.tensor.array.expressions.array_expressions import ArrayDiagonal
from sympy.matrices.expressions.matexpr import _make_matrix
lr = self.base._eval_derivative_matrix_lines(x)
for i in lr:
diagonal = [(1, 2), (3, 4)]
diagonal = [e for j, e in enumerate(diagonal) if self.base.shape[j] != 1]
l1 = i._lines[i._first_line_index]
l2 = i._lines[i._second_line_index]
subexpr = ExprBuilder(
ArrayDiagonal,
[
ExprBuilder(
ArrayTensorProduct,
[
ExprBuilder(_make_matrix, [l1]),
self.exp*hadamard_power(self.base, self.exp-1),
ExprBuilder(_make_matrix, [l2]),
]
),
*diagonal],
validator=ArrayDiagonal._validate
)
i._first_pointer_parent = subexpr.args[0].args[0].args
i._first_pointer_index = 0
i._first_line_index = 0
i._second_pointer_parent = subexpr.args[0].args[2].args
i._second_pointer_index = 0
i._second_line_index = 0
i._lines = [subexpr]
return lr