View source on GitHub
|
LinearOperator acting like a block circulant matrix.
Inherits From: LinearOperator, Module
tf.linalg.LinearOperatorCirculant2D(
spectrum: tf.Tensor,
input_output_dtype=tf.dtypes.complex64,
is_non_singular: bool = None,
is_self_adjoint: bool = None,
is_positive_definite: bool = None,
is_square: bool = True,
name='LinearOperatorCirculant2D'
)
This operator acts like a block circulant matrix A with
shape [B1,...,Bb, N, N] for some b >= 0. The first b indices index a
batch member. For every batch index (i1,...,ib), A[i1,...,ib, : :] is
an N x N matrix. This matrix A is not materialized, but for
purposes of broadcasting this shape will be relevant.
Description in terms of block circulant matrices
If A is block circulant, with block sizes N0, N1 (N0 * N1 = N):
A has a block circulant structure, composed of N0 x N0 blocks, with each
block an N1 x N1 circulant matrix.
For example, with W, X, Y, Z each circulant,
A = |W Z Y X|
|X W Z Y|
|Y X W Z|
|Z Y X W|
Note that A itself will not in general be circulant.
Description in terms of the frequency spectrum
There is an equivalent description in terms of the [batch] spectrum H and
Fourier transforms. Here we consider A.shape = [N, N] and ignore batch
dimensions.
If H.shape = [N0, N1], (N0 * N1 = N):
Loosely speaking, matrix multiplication is equal to the action of a
Fourier multiplier: A u = IDFT2[ H DFT2[u] ].
Precisely speaking, given [N, R] matrix u, let DFT2[u] be the
[N0, N1, R] Tensor defined by re-shaping u to [N0, N1, R] and taking
a two dimensional DFT across the first two dimensions. Let IDFT2 be the
inverse of DFT2. Matrix multiplication may be expressed columnwise:
(A u)_r = IDFT2[ H * (DFT2[u])_r ]
Operator properties deduced from the spectrum.
- This operator is positive definite if and only if
Real{H} > 0.
A general property of Fourier transforms is the correspondence between Hermitian functions and real valued transforms.
Suppose H.shape = [B1,...,Bb, N0, N1], we say that H is a Hermitian
spectrum if, with % indicating modulus division,
H[..., n0 % N0, n1 % N1] = ComplexConjugate[ H[..., (-n0) % N0, (-n1) % N1 ].
- This operator corresponds to a real matrix if and only if
His Hermitian. - This operator is self-adjoint if and only if
His real.
See e.g. "Discrete-Time Signal Processing", Oppenheim and Schafer.
Example of a self-adjoint positive definite operator
# spectrum is real ==> operator is self-adjoint
# spectrum is positive ==> operator is positive definite
spectrum = [[1., 2., 3.],
[4., 5., 6.],
[7., 8., 9.]]
operator = LinearOperatorCirculant2D(spectrum)
# IFFT[spectrum]
operator.convolution_kernel()
==> [[5.0+0.0j, -0.5-.3j, -0.5+.3j],
[-1.5-.9j, 0, 0],
[-1.5+.9j, 0, 0]]
operator.to_dense()
==> Complex self adjoint 9 x 9 matrix.
Example of defining in terms of a real convolution kernel,
# convolution_kernel is real ==> spectrum is Hermitian.
convolution_kernel = [[1., 2., 1.], [5., -1., 1.]]
spectrum = tf.signal.fft2d(tf.cast(convolution_kernel, tf.complex64))
# spectrum is shape [2, 3] ==> operator is shape [6, 6]
# spectrum is Hermitian ==> operator is real.
operator = LinearOperatorCirculant2D(spectrum, input_output_dtype=tf.float32)
Performance
Suppose operator is a LinearOperatorCirculant of shape [N, N],
and x.shape = [N, R]. Then
operator.matmul(x)isO(R*N*Log[N])operator.solve(x)isO(R*N*Log[N])operator.determinant()involves a sizeNreduce_prod.
If instead operator and x have shape [B1,...,Bb, N, N] and
[B1,...,Bb, N, R], every operation increases in complexity by B1*...*Bb.
Matrix property hints
This LinearOperator is initialized with boolean flags of the form is_X,
for X = non_singular, self_adjoint, positive_definite, square.
These have the following meaning
- If
is_X == True, callers should expect the operator to have the propertyX. This is a promise that should be fulfilled, but is not a runtime assert. For example, finite floating point precision may result in these promises being violated. - If
is_X == False, callers should expect the operator to not haveX. - If
is_X == None(the default), callers should have no expectation either way.
Methods
add_to_tensor
add_to_tensor(
x, name='add_to_tensor'
)
Add matrix represented by this operator to x. Equivalent to A + x.
| Args | |
|---|---|
x
|
Tensor with same dtype and shape broadcastable to self.shape.
|
name
|
A name to give this Op.
|
| Returns | |
|---|---|
A Tensor with broadcast shape and same dtype as self.
|
adjoint
adjoint(
name: str = 'adjoint'
) -> 'LinearOperator'
Returns the adjoint of the current LinearOperator.
Given A representing this LinearOperator, return A*.
Note that calling self.adjoint() and self.H are equivalent.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
LinearOperator which represents the adjoint of this LinearOperator.
|
assert_hermitian_spectrum
assert_hermitian_spectrum(
name='assert_hermitian_spectrum'
)
Returns an Op that asserts this operator has Hermitian spectrum.
This operator corresponds to a real-valued matrix if and only if its spectrum is Hermitian.
| Args | |
|---|---|
name
|
A name to give this Op.
|
| Returns | |
|---|---|
An Op that asserts this operator has Hermitian spectrum.
|
assert_non_singular
assert_non_singular(
name='assert_non_singular'
)
Returns an Op that asserts this operator is non singular.
This operator is considered non-singular if
ConditionNumber < max{100, range_dimension, domain_dimension} * eps,
eps := np.finfo(self.dtype.as_numpy_dtype).eps
| Args | |
|---|---|
name
|
A string name to prepend to created ops. |
| Returns | |
|---|---|
An Assert Op, that, when run, will raise an InvalidArgumentError if
the operator is singular.
|
assert_positive_definite
assert_positive_definite(
name='assert_positive_definite'
)
Returns an Op that asserts this operator is positive definite.
Here, positive definite means that the quadratic form x^H A x has positive
real part for all nonzero x. Note that we do not require the operator to
be self-adjoint to be positive definite.
| Args | |
|---|---|
name
|
A name to give this Op.
|
| Returns | |
|---|---|
An Assert Op, that, when run, will raise an InvalidArgumentError if
the operator is not positive definite.
|
assert_self_adjoint
assert_self_adjoint(
name='assert_self_adjoint'
)
Returns an Op that asserts this operator is self-adjoint.
Here we check that this operator is exactly equal to its hermitian transpose.
| Args | |
|---|---|
name
|
A string name to prepend to created ops. |
| Returns | |
|---|---|
An Assert Op, that, when run, will raise an InvalidArgumentError if
the operator is not self-adjoint.
|
batch_shape_tensor
batch_shape_tensor(
name='batch_shape_tensor'
)
Shape of batch dimensions of this operator, determined at runtime.
If this operator acts like the batch matrix A with
A.shape = [B1,...,Bb, M, N], then this returns a Tensor holding
[B1,...,Bb].
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
int32 Tensor
|
block_shape_tensor
block_shape_tensor()
Shape of the block dimensions of self.spectrum.
cholesky
cholesky(
name: str = 'cholesky'
) -> 'LinearOperator'
Returns a Cholesky factor as a LinearOperator.
Given A representing this LinearOperator, if A is positive definite
self-adjoint, return L, where A = L L^T, i.e. the cholesky
decomposition.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
LinearOperator which represents the lower triangular matrix
in the Cholesky decomposition.
|
| Raises | |
|---|---|
ValueError
|
When the LinearOperator is not hinted to be positive
definite and self adjoint.
|
cond
cond(
name='cond'
)
Returns the condition number of this linear operator.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
Shape [B1,...,Bb] Tensor of same dtype as self.
|
convolution_kernel
convolution_kernel(
name='convolution_kernel'
)
Convolution kernel corresponding to self.spectrum.
The D dimensional DFT of this kernel is the frequency domain spectrum of
this operator.
| Args | |
|---|---|
name
|
A name to give this Op.
|
| Returns | |
|---|---|
Tensor with dtype self.dtype.
|
determinant
determinant(
name='det'
)
Determinant for every batch member.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
Tensor with shape self.batch_shape and same dtype as self.
|
| Raises | |
|---|---|
NotImplementedError
|
If self.is_square is False.
|
diag_part
diag_part(
name='diag_part'
)
Efficiently get the [batch] diagonal part of this operator.
If this operator has shape [B1,...,Bb, M, N], this returns a
Tensor diagonal, of shape [B1,...,Bb, min(M, N)], where
diagonal[b1,...,bb, i] = self.to_dense()[b1,...,bb, i, i].
my_operator = LinearOperatorDiag([1., 2.])
# Efficiently get the diagonal
my_operator.diag_part()
==> [1., 2.]
# Equivalent, but inefficient method
tf.linalg.diag_part(my_operator.to_dense())
==> [1., 2.]
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
diag_part
|
A Tensor of same dtype as self.
|
domain_dimension_tensor
domain_dimension_tensor(
name='domain_dimension_tensor'
)
Dimension (in the sense of vector spaces) of the domain of this operator.
Determined at runtime.
If this operator acts like the batch matrix A with
A.shape = [B1,...,Bb, M, N], then this returns N.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
int32 Tensor
|
eigvals
eigvals(
name='eigvals'
)
Returns the eigenvalues of this linear operator.
If the operator is marked as self-adjoint (via is_self_adjoint)
this computation can be more efficient.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
Shape [B1,...,Bb, N] Tensor of same dtype as self.
|
inverse
inverse(
name: str = 'inverse'
) -> 'LinearOperator'
Returns the Inverse of this LinearOperator.
Given A representing this LinearOperator, return a LinearOperator
representing A^-1.
| Args | |
|---|---|
name
|
A name scope to use for ops added by this method. |
| Returns | |
|---|---|
LinearOperator representing inverse of this matrix.
|
| Raises | |
|---|---|
ValueError
|
When the LinearOperator is not hinted to be non_singular.
|
log_abs_determinant
log_abs_determinant(
name='log_abs_det'
)
Log absolute value of determinant for every batch member.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
Tensor with shape self.batch_shape and same dtype as self.
|
| Raises | |
|---|---|
NotImplementedError
|
If self.is_square is False.
|
matmul
matmul(
x, adjoint=False, adjoint_arg=False, name='matmul'
)
Transform [batch] matrix x with left multiplication: x --> Ax.
# Make an operator acting like batch matrix A. Assume A.shape = [..., M, N]
operator = LinearOperator(...)
operator.shape = [..., M, N]
X = ... # shape [..., N, R], batch matrix, R > 0.
Y = operator.matmul(X)
Y.shape
==> [..., M, R]
Y[..., :, r] = sum_j A[..., :, j] X[j, r]
| Args | |
|---|---|
x
|
LinearOperator or Tensor with compatible shape and same dtype as
self. See class docstring for definition of compatibility.
|
adjoint
|
Python bool. If True, left multiply by the adjoint: A^H x.
|
adjoint_arg
|
Python bool. If True, compute A x^H where x^H is
the hermitian transpose (transposition and complex conjugation).
|
name
|
A name for this Op.
|
| Returns | |
|---|---|
A LinearOperator or Tensor with shape [..., M, R] and same dtype
as self.
|
matvec
matvec(
x, adjoint=False, name='matvec'
)
Transform [batch] vector x with left multiplication: x --> Ax.
# Make an operator acting like batch matrix A. Assume A.shape = [..., M, N]
operator = LinearOperator(...)
X = ... # shape [..., N], batch vector
Y = operator.matvec(X)
Y.shape
==> [..., M]
Y[..., :] = sum_j A[..., :, j] X[..., j]
| Args | |
|---|---|
x
|
Tensor with compatible shape and same dtype as self.
x is treated as a [batch] vector meaning for every set of leading
dimensions, the last dimension defines a vector.
See class docstring for definition of compatibility.
|
adjoint
|
Python bool. If True, left multiply by the adjoint: A^H x.
|
name
|
A name for this Op.
|
| Returns | |
|---|---|
A Tensor with shape [..., M] and same dtype as self.
|
range_dimension_tensor
range_dimension_tensor(
name='range_dimension_tensor'
)
Dimension (in the sense of vector spaces) of the range of this operator.
Determined at runtime.
If this operator acts like the batch matrix A with
A.shape = [B1,...,Bb, M, N], then this returns M.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
int32 Tensor
|
shape_tensor
shape_tensor(
name='shape_tensor'
)
Shape of this LinearOperator, determined at runtime.
If this operator acts like the batch matrix A with
A.shape = [B1,...,Bb, M, N], then this returns a Tensor holding
[B1,...,Bb, M, N], equivalent to tf.shape(A).
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
int32 Tensor
|
solve
solve(
rhs, adjoint=False, adjoint_arg=False, name='solve'
)
Solve (exact or approx) R (batch) systems of equations: A X = rhs.
The returned Tensor will be close to an exact solution if A is well
conditioned. Otherwise closeness will vary. See class docstring for details.
Examples:
# Make an operator acting like batch matrix A. Assume A.shape = [..., M, N]
operator = LinearOperator(...)
operator.shape = [..., M, N]
# Solve R > 0 linear systems for every member of the batch.
RHS = ... # shape [..., M, R]
X = operator.solve(RHS)
# X[..., :, r] is the solution to the r'th linear system
# sum_j A[..., :, j] X[..., j, r] = RHS[..., :, r]
operator.matmul(X)
==> RHS
| Args | |
|---|---|
rhs
|
Tensor with same dtype as this operator and compatible shape.
rhs is treated like a [batch] matrix meaning for every set of leading
dimensions, the last two dimensions defines a matrix.
See class docstring for definition of compatibility.
|
adjoint
|
Python bool. If True, solve the system involving the adjoint
of this LinearOperator: A^H X = rhs.
|
adjoint_arg
|
Python bool. If True, solve A X = rhs^H where rhs^H
is the hermitian transpose (transposition and complex conjugation).
|
name
|
A name scope to use for ops added by this method. |
| Returns | |
|---|---|
Tensor with shape [...,N, R] and same dtype as rhs.
|
| Raises | |
|---|---|
NotImplementedError
|
If self.is_non_singular or is_square is False.
|
solvevec
solvevec(
rhs, adjoint=False, name='solve'
)
Solve single equation with best effort: A X = rhs.
The returned Tensor will be close to an exact solution if A is well
conditioned. Otherwise closeness will vary. See class docstring for details.
Examples:
# Make an operator acting like batch matrix A. Assume A.shape = [..., M, N]
operator = LinearOperator(...)
operator.shape = [..., M, N]
# Solve one linear system for every member of the batch.
RHS = ... # shape [..., M]
X = operator.solvevec(RHS)
# X is the solution to the linear system
# sum_j A[..., :, j] X[..., j] = RHS[..., :]
operator.matvec(X)
==> RHS
| Args | |
|---|---|
rhs
|
Tensor with same dtype as this operator.
rhs is treated like a [batch] vector meaning for every set of leading
dimensions, the last dimension defines a vector. See class docstring
for definition of compatibility regarding batch dimensions.
|
adjoint
|
Python bool. If True, solve the system involving the adjoint
of this LinearOperator: A^H X = rhs.
|
name
|
A name scope to use for ops added by this method. |
| Returns | |
|---|---|
Tensor with shape [...,N] and same dtype as rhs.
|
| Raises | |
|---|---|
NotImplementedError
|
If self.is_non_singular or is_square is False.
|
tensor_rank_tensor
tensor_rank_tensor(
name='tensor_rank_tensor'
)
Rank (in the sense of tensors) of matrix corresponding to this operator.
If this operator acts like the batch matrix A with
A.shape = [B1,...,Bb, M, N], then this returns b + 2.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
int32 Tensor, determined at runtime.
|
to_dense
to_dense(
name='to_dense'
)
Return a dense (batch) matrix representing this operator.
trace
trace(
name='trace'
)
Trace of the linear operator, equal to sum of self.diag_part().
If the operator is square, this is also the sum of the eigenvalues.
| Args | |
|---|---|
name
|
A name for this Op.
|
| Returns | |
|---|---|
Shape [B1,...,Bb] Tensor of same dtype as self.
|
__getitem__
__getitem__(
slices
)
__matmul__
__matmul__(
other
)
View source on GitHub