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pytensor
Commits
5e77a3c5
提交
5e77a3c5
authored
6月 09, 2014
作者:
Tanjay94
浏览文件
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电子邮件补丁
差异文件
Isolated Scipy dependent function in slinalg.py.
上级
921b6c2b
显示空白字符变更
内嵌
并排
正在显示
2 个修改的文件
包含
408 行增加
和
0 行删除
+408
-0
ops.py
theano/sandbox/linalg/ops.py
+13
-0
slinalg.py
theano/tensor/slinalg.py
+395
-0
没有找到文件。
theano/sandbox/linalg/ops.py
浏览文件 @
5e77a3c5
...
@@ -14,6 +14,7 @@ from theano.tensor.opt import (register_stabilize,
...
@@ -14,6 +14,7 @@ from theano.tensor.opt import (register_stabilize,
from
theano.gof
import
local_optimizer
from
theano.gof
import
local_optimizer
from
theano.gof.opt
import
Optimizer
from
theano.gof.opt
import
Optimizer
from
theano.gradient
import
DisconnectedType
from
theano.gradient
import
DisconnectedType
from
theano.tensor.nlinalg
import
(
MatrixInverse
,
from
theano.tensor.nlinalg
import
(
MatrixInverse
,
matrix_inverse
,
matrix_inverse
,
AllocDiag
,
AllocDiag
,
...
@@ -33,6 +34,18 @@ from theano.tensor.nlinalg import ( MatrixInverse,
...
@@ -33,6 +34,18 @@ from theano.tensor.nlinalg import ( MatrixInverse,
_zero_disconnected
_zero_disconnected
)
)
from
theano.tensor.slinalg
import
(
Cholesky
,
cholesky
,
CholeskyGrad
,
MatrixPinv
,
pinv
,
Solve
,
solve
,
Eigvalsh
,
EigvalshGrad
,
eigvalsh
)
try
:
try
:
import
scipy.linalg
import
scipy.linalg
imported_scipy
=
True
imported_scipy
=
True
...
...
theano/tensor/slinalg.py
0 → 100644
浏览文件 @
5e77a3c5
import
logging
logger
=
logging
.
getLogger
(
__name__
)
import
numpy
from
theano.gof
import
Op
,
Apply
from
theano.tensor
import
as_tensor_variable
,
dot
,
DimShuffle
,
Dot
from
theano.tensor.blas
import
Dot22
from
theano
import
tensor
import
theano.tensor
from
theano.tensor.opt
import
(
register_stabilize
,
register_specialize
,
register_canonicalize
)
from
theano.gof
import
local_optimizer
from
theano.gof.opt
import
Optimizer
from
theano.gradient
import
DisconnectedType
try
:
import
scipy.linalg
imported_scipy
=
True
except
ImportError
:
# some ops (e.g. Cholesky, Solve, A_Xinv_b) won't work
imported_scipy
=
False
MATRIX_STRUCTURES
=
(
'general'
,
'symmetric'
,
'lower_triangular'
,
'upper_triangular'
,
'hermitian'
,
'banded'
,
'diagonal'
,
'toeplitz'
,
)
class
Cholesky
(
Op
):
"""
Return a triangular matrix square root of positive semi-definite `x`
L = cholesky(X, lower=True) implies dot(L, L.T) == X
"""
#TODO: inplace
#TODO: for specific dtypes
#TODO: LAPACK wrapper with in-place behavior, for solve also
def
__init__
(
self
,
lower
=
True
):
self
.
lower
=
lower
self
.
destructive
=
False
def
props
(
self
):
return
(
self
.
lower
,
self
.
destructive
)
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
())
def
infer_shape
(
self
,
node
,
shapes
):
return
[
shapes
[
0
]]
def
__str__
(
self
):
if
self
.
lower
:
lu
=
'lower'
else
:
lu
=
'upper'
if
self
.
destructive
:
destr
=
'destructive'
else
:
destr
=
'non-destructive'
return
'Cholesky{
%
s,
%
s}'
%
(
lu
,
destr
)
def
make_node
(
self
,
x
):
assert
imported_scipy
,
(
"Scipy not available. Scipy is needed for the Cholesky op"
)
x
=
as_tensor_variable
(
x
)
assert
x
.
ndim
==
2
return
Apply
(
self
,
[
x
],
[
x
.
type
()])
def
perform
(
self
,
node
,
inputs
,
outputs
):
x
=
inputs
[
0
]
z
=
outputs
[
0
]
z
[
0
]
=
scipy
.
linalg
.
cholesky
(
x
,
lower
=
self
.
lower
)
.
astype
(
x
.
dtype
)
def
grad
(
self
,
inputs
,
gradients
):
return
[
CholeskyGrad
(
self
.
lower
)(
inputs
[
0
],
self
(
inputs
[
0
]),
gradients
[
0
])]
cholesky
=
Cholesky
()
class
CholeskyGrad
(
Op
):
"""
"""
def
__init__
(
self
,
lower
=
True
):
self
.
lower
=
lower
self
.
destructive
=
False
def
props
(
self
):
return
(
self
.
lower
,
self
.
destructive
)
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
())
def
__str__
(
self
):
if
self
.
lower
:
lu
=
'lower'
else
:
lu
=
'upper'
if
self
.
destructive
:
destr
=
'destructive'
else
:
destr
=
'non-destructive'
return
'CholeskyGrad{
%
s,
%
s}'
%
(
lu
,
destr
)
def
make_node
(
self
,
x
,
l
,
dz
):
x
=
as_tensor_variable
(
x
)
l
=
as_tensor_variable
(
l
)
dz
=
as_tensor_variable
(
dz
)
assert
x
.
ndim
==
2
assert
l
.
ndim
==
2
assert
dz
.
ndim
==
2
assert
l
.
owner
.
op
.
lower
==
self
.
lower
,
(
"lower/upper mismatch between Cholesky op and CholeskyGrad op"
)
return
Apply
(
self
,
[
x
,
l
,
dz
],
[
x
.
type
()])
def
perform
(
self
,
node
,
inputs
,
outputs
):
"""Implements the "reverse-mode" gradient [1]_ for the
Cholesky factorization of a positive-definite matrix.
.. [1] S. P. Smith. "Differentiation of the Cholesky Algorithm".
Journal of Computational and Graphical Statistics,
Vol. 4, No. 2 (Jun.,1995), pp. 134-147
http://www.jstor.org/stable/1390762
"""
x
=
inputs
[
0
]
L
=
inputs
[
1
]
dz
=
inputs
[
2
]
dx
=
outputs
[
0
]
N
=
x
.
shape
[
0
]
if
self
.
lower
:
F
=
numpy
.
tril
(
dz
)
for
k
in
xrange
(
N
-
1
,
-
1
,
-
1
):
for
j
in
xrange
(
k
+
1
,
N
):
for
i
in
xrange
(
j
,
N
):
F
[
i
,
k
]
-=
F
[
i
,
j
]
*
L
[
j
,
k
]
F
[
j
,
k
]
-=
F
[
i
,
j
]
*
L
[
i
,
k
]
for
j
in
xrange
(
k
+
1
,
N
):
F
[
j
,
k
]
/=
L
[
k
,
k
]
F
[
k
,
k
]
-=
L
[
j
,
k
]
*
F
[
j
,
k
]
F
[
k
,
k
]
/=
(
2
*
L
[
k
,
k
])
else
:
F
=
numpy
.
triu
(
dz
)
M
=
N
-
1
for
k
in
xrange
(
N
-
1
,
-
1
,
-
1
):
for
j
in
xrange
(
k
+
1
,
N
):
for
i
in
xrange
(
j
,
N
):
F
[
k
,
i
]
-=
F
[
j
,
i
]
*
L
[
k
,
j
]
F
[
k
,
j
]
-=
F
[
j
,
i
]
*
L
[
k
,
i
]
for
j
in
xrange
(
k
+
1
,
N
):
F
[
k
,
j
]
/=
L
[
k
,
k
]
F
[
k
,
k
]
-=
L
[
k
,
j
]
*
F
[
k
,
j
]
F
[
k
,
k
]
/=
(
2
*
L
[
k
,
k
])
dx
[
0
]
=
F
def
infer_shape
(
self
,
node
,
shapes
):
return
[
shapes
[
0
]]
class
MatrixPinv
(
Op
):
"""Computes the pseudo-inverse of a matrix :math:`A`.
The pseudo-inverse of a matrix A, denoted :math:`A^+`, is
defined as: "the matrix that 'solves' [the least-squares problem]
:math:`Ax = b`," i.e., if :math:`
\\
bar{x}` is said solution, then
:math:`A^+` is that matrix such that :math:`
\\
bar{x} = A^+b`.
Note that :math:`Ax=AA^+b`, so :math:`AA^+` is close to the identity matrix.
This method is not faster then `matrix_inverse`. Its strength comes from
that it works for non-square matrices.
If you have a square matrix though, `matrix_inverse` can be both more
exact and faster to compute. Also this op does not get optimized into a
solve op.
"""
def
__init__
(
self
):
pass
def
props
(
self
):
"""Function exposing different properties of each instance of the
op.
For the ``MatrixPinv`` op, there are no properties to be exposed.
"""
return
()
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
())
def
make_node
(
self
,
x
):
x
=
as_tensor_variable
(
x
)
assert
x
.
ndim
==
2
return
Apply
(
self
,
[
x
],
[
x
.
type
()])
def
perform
(
self
,
node
,
(
x
,),
(
z
,
)):
try
:
if
imported_scipy
:
z
[
0
]
=
scipy
.
linalg
.
pinv
(
x
)
.
astype
(
x
.
dtype
)
else
:
z
[
0
]
=
numpy
.
linalg
.
pinv
(
x
)
.
astype
(
x
.
dtype
)
except
numpy
.
linalg
.
LinAlgError
:
logger
.
debug
(
'Failed to invert
%
s'
%
str
(
node
.
inputs
[
0
]))
raise
def
__str__
(
self
):
return
"MatrixPseudoInverse"
pinv
=
MatrixPinv
()
class
Solve
(
Op
):
"""Solve a system of linear equations"""
def
__init__
(
self
,
A_structure
=
'general'
,
lower
=
False
,
overwrite_A
=
False
,
overwrite_b
=
False
):
if
A_structure
not
in
MATRIX_STRUCTURES
:
raise
ValueError
(
'Invalid matrix structure argument'
,
A_structure
)
self
.
A_structure
=
A_structure
self
.
lower
=
lower
self
.
overwrite_A
=
overwrite_A
self
.
overwrite_b
=
overwrite_b
def
props
(
self
):
return
(
self
.
A_structure
,
self
.
lower
,
self
.
overwrite_A
,
self
.
overwrite_b
)
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
()
def
__repr__
(
self
):
return
'Solve{
%
s}'
%
str
(
self
.
props
())
def
make_node
(
self
,
A
,
b
):
assert
imported_scipy
,
(
"Scipy not available. Scipy is needed for the Solve op"
)
A
=
as_tensor_variable
(
A
)
b
=
as_tensor_variable
(
b
)
assert
A
.
ndim
==
2
assert
b
.
ndim
in
[
1
,
2
]
otype
=
tensor
.
tensor
(
broadcastable
=
b
.
broadcastable
,
dtype
=
(
A
*
b
)
.
dtype
)
return
Apply
(
self
,
[
A
,
b
],
[
otype
])
def
perform
(
self
,
node
,
inputs
,
output_storage
):
A
,
b
=
inputs
#TODO: use the A_structure to go faster
output_storage
[
0
][
0
]
=
scipy
.
linalg
.
solve
(
A
,
b
)
# computes shape of x where x = inv(A) * b
def
infer_shape
(
self
,
node
,
shapes
):
Ashape
,
Bshape
=
shapes
rows
=
Ashape
[
1
]
if
len
(
Bshape
)
==
1
:
# b is a Vector
return
[(
rows
,)]
else
:
cols
=
Bshape
[
1
]
# b is a Matrix
return
[(
rows
,
cols
)]
solve
=
Solve
()
# general solve
#TODO : SolveTriangular
#TODO: Optimizations to replace multiplication by matrix inverse
# with solve() Op (still unwritten)
class
Eigvalsh
(
Op
):
"""Generalized eigenvalues of a Hermetian positive definite eigensystem
"""
def
__init__
(
self
,
lower
=
True
):
assert
lower
in
[
True
,
False
]
self
.
lower
=
lower
def
props
(
self
):
return
(
self
.
lower
,)
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
())
def
make_node
(
self
,
a
,
b
):
assert
imported_scipy
,
(
"Scipy not available. Scipy is needed for the Eigvalsh op"
)
a
,
b
=
map
(
as_tensor_variable
,
(
a
,
b
))
assert
a
.
ndim
==
2
assert
b
.
ndim
==
2
out_dtype
=
theano
.
scalar
.
upcast
(
a
.
dtype
,
b
.
dtype
)
w
=
theano
.
tensor
.
vector
(
dtype
=
out_dtype
)
return
Apply
(
self
,
[
a
,
b
],
[
w
])
def
perform
(
self
,
node
,
(
a
,
b
),
(
w
,)):
w
[
0
]
=
scipy
.
linalg
.
eigvalsh
(
a
=
a
,
b
=
b
,
lower
=
self
.
lower
)
def
grad
(
self
,
inputs
,
g_outputs
):
a
,
b
=
inputs
gw
,
=
g_outputs
return
EigvalshGrad
(
self
.
lower
)(
a
,
b
,
gw
)
def
infer_shape
(
self
,
node
,
shapes
):
n
=
shapes
[
0
][
0
]
return
[(
n
,)]
class
EigvalshGrad
(
Op
):
"""Gradient of generalized eigenvalues of a Hermetian positive definite
eigensystem
"""
# Note: This Op (EigvalshGrad), should be removed and replaced with a graph
# of theano ops that is constructed directly in Eigvalsh.grad.
# But this can only be done once scipy.linalg.eigh is available as an Op
# (currently the Eigh uses numpy.linalg.eigh, which doesn't let you
# pass the right-hand-side matrix for a generalized eigenproblem.) See the
# discussion on github at
# https://github.com/Theano/Theano/pull/1846#discussion-diff-12486764
def
__init__
(
self
,
lower
=
True
):
assert
lower
in
[
True
,
False
]
self
.
lower
=
lower
if
lower
:
self
.
tri0
=
numpy
.
tril
self
.
tri1
=
lambda
a
:
numpy
.
triu
(
a
,
1
)
else
:
self
.
tri0
=
numpy
.
triu
self
.
tri1
=
lambda
a
:
numpy
.
tril
(
a
,
-
1
)
def
props
(
self
):
return
(
self
.
lower
,)
def
__hash__
(
self
):
return
hash
((
type
(
self
),
self
.
props
()))
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
and
self
.
props
()
==
other
.
props
())
def
make_node
(
self
,
a
,
b
,
gw
):
assert
imported_scipy
,
(
"Scipy not available. Scipy is needed for the GEigvalsh op"
)
a
,
b
,
gw
=
map
(
as_tensor_variable
,
(
a
,
b
,
gw
))
assert
a
.
ndim
==
2
assert
b
.
ndim
==
2
assert
gw
.
ndim
==
1
out_dtype
=
theano
.
scalar
.
upcast
(
a
.
dtype
,
b
.
dtype
,
gw
.
dtype
)
out1
=
theano
.
tensor
.
matrix
(
dtype
=
out_dtype
)
out2
=
theano
.
tensor
.
matrix
(
dtype
=
out_dtype
)
return
Apply
(
self
,
[
a
,
b
,
gw
],
[
out1
,
out2
])
def
perform
(
self
,
node
,
(
a
,
b
,
gw
),
outputs
):
w
,
v
=
scipy
.
linalg
.
eigh
(
a
,
b
,
lower
=
self
.
lower
)
gA
=
v
.
dot
(
numpy
.
diag
(
gw
)
.
dot
(
v
.
T
))
gB
=
-
v
.
dot
(
numpy
.
diag
(
gw
*
w
)
.
dot
(
v
.
T
))
# See EighGrad comments for an explanation of these lines
out1
=
self
.
tri0
(
gA
)
+
self
.
tri1
(
gA
)
.
T
out2
=
self
.
tri0
(
gB
)
+
self
.
tri1
(
gB
)
.
T
outputs
[
0
][
0
]
=
numpy
.
asarray
(
out1
,
dtype
=
node
.
outputs
[
0
]
.
dtype
)
outputs
[
1
][
0
]
=
numpy
.
asarray
(
out2
,
dtype
=
node
.
outputs
[
1
]
.
dtype
)
def
infer_shape
(
self
,
node
,
shapes
):
return
[
shapes
[
0
],
shapes
[
1
]]
def
eigvalsh
(
a
,
b
,
lower
=
True
):
return
Eigvalsh
(
lower
)(
a
,
b
)
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