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pytensor
Commits
b7a4f4cd
提交
b7a4f4cd
authored
3月 27, 2009
作者:
James Bergstra
浏览文件
操作
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电子邮件补丁
差异文件
removed use of InstanceType from test_naacl
上级
2de5c21a
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
41 行增加
和
47 行删除
+41
-47
test_naacl09.py
theano/tensor/tests/test_naacl09.py
+41
-47
没有找到文件。
theano/tensor/tests/test_naacl09.py
浏览文件 @
b7a4f4cd
...
@@ -255,8 +255,8 @@ class Loss01(object):
...
@@ -255,8 +255,8 @@ class Loss01(object):
def
loss_01
(
self
,
x
,
targ
):
def
loss_01
(
self
,
x
,
targ
):
return
N
.
mean
(
self
.
classify
(
x
)
!=
targ
)
return
N
.
mean
(
self
.
classify
(
x
)
!=
targ
)
class
LogRegInstanceType
(
module
.
FancyModuleInstanc
e
):
class
Module_Nclass
(
module
.
FancyModul
e
):
def
initialize
(
self
,
n_in
,
n_out
,
lr
,
seed
):
def
_instance_initialize
(
mod_self
,
self
,
n_in
,
n_out
,
lr
,
seed
):
#self.component is the LogisticRegressionTemplate instance that built this guy.
#self.component is the LogisticRegressionTemplate instance that built this guy.
"""
"""
@todo: Remove seed. Used only to keep Stacker happy.
@todo: Remove seed. Used only to keep Stacker happy.
...
@@ -269,9 +269,6 @@ class LogRegInstanceType(module.FancyModuleInstance):
...
@@ -269,9 +269,6 @@ class LogRegInstanceType(module.FancyModuleInstance):
self
.
input_dimension
=
n_in
self
.
input_dimension
=
n_in
self
.
output_dimension
=
n_out
self
.
output_dimension
=
n_out
class
Module_Nclass
(
module
.
FancyModule
):
InstanceType
=
LogRegInstanceType
def
__init__
(
self
,
x
=
None
,
targ
=
None
,
w
=
None
,
b
=
None
,
lr
=
None
,
regularize
=
False
):
def
__init__
(
self
,
x
=
None
,
targ
=
None
,
w
=
None
,
b
=
None
,
lr
=
None
,
regularize
=
False
):
super
(
Module_Nclass
,
self
)
.
__init__
()
#boilerplate
super
(
Module_Nclass
,
self
)
.
__init__
()
#boilerplate
...
@@ -324,49 +321,7 @@ class Module_Nclass(module.FancyModule):
...
@@ -324,49 +321,7 @@ class Module_Nclass(module.FancyModule):
#self.update = module.Method([self.input, self.targ], sum_xent,
#self.update = module.Method([self.input, self.targ], sum_xent,
#updates = dict((p, p - self.lr * g) for p, g in zip(self.params, gparams)))
#updates = dict((p, p - self.lr * g) for p, g in zip(self.params, gparams)))
class
ConvolutionalMLPInstance
(
module
.
FancyModuleInstance
,
Loss01
):
#initialize is called by Module.make
def
initialize
(
self
,
input_size
,
input_representation_size
,
hidden_representation_size
,
output_size
,
lr
,
seed
,
noise_level
,
qfilter_relscale
):
R
=
N
.
random
.
RandomState
(
unittest_tools
.
fetch_seed
(
seed
))
self
.
input_size
=
input_size
self
.
input_representation_size
=
input_representation_size
self
.
hidden_representation_size
=
hidden_representation_size
self
.
output_size
=
output_size
self
.
lr
=
lr
# for layer in obj.layers:
# if layer.lr is None:
# layer.lr = lr
assert
self
.
input_representations
[
-
1
]
is
not
self
.
input_representations
[
0
]
assert
self
.
input_representations
[
-
1
]
.
w1
is
self
.
input_representations
[
0
]
.
w1
for
i
in
self
.
input_representations
:
# i.initialize(input_size=self.input_size, hidden_size=self.input_representation_size, seed=R.random_integers(2**30), noise_level=noise_level, qfilter_relscale=qfilter_relscale)
i
.
initialize
(
input_size
=
self
.
input_size
,
hidden_size
=
self
.
input_representation_size
,
noise_level
=
noise_level
,
seed
=
int
(
R
.
random_integers
(
2
**
30
)),
lr
=
lr
,
qfilter_relscale
=
qfilter_relscale
)
print
type
(
i
.
w1
)
assert
isinstance
(
i
.
w1
,
N
.
ndarray
)
for
i
in
self
.
input_representations
[
1
:]:
print
type
(
i
.
w1
)
assert
isinstance
(
i
.
w1
,
N
.
ndarray
)
assert
(
i
.
w1
==
self
.
input_representations
[
0
]
.
w1
)
.
all
()
assert
(
i
.
w2
==
self
.
input_representations
[
0
]
.
w2
)
.
all
()
assert
(
i
.
b1
==
self
.
input_representations
[
0
]
.
b1
)
.
all
()
assert
(
i
.
b2
==
self
.
input_representations
[
0
]
.
b2
)
.
all
()
assert
all
((
a
==
b
)
.
all
()
for
a
,
b
in
zip
(
i
.
qfilters
,
self
.
input_representations
[
0
]
.
qfilters
))
self
.
hidden
.
initialize
(
input_size
=
(
len
(
self
.
inputs
)
*
self
.
input_representation_size
),
hidden_size
=
self
.
hidden_representation_size
,
noise_level
=
noise_level
,
seed
=
int
(
R
.
random_integers
(
2
**
30
)),
lr
=
lr
,
qfilter_relscale
=
qfilter_relscale
)
self
.
output
.
initialize
(
n_in
=
self
.
hidden_representation_size
,
n_out
=
self
.
output_size
,
lr
=
lr
,
seed
=
R
.
random_integers
(
2
**
30
))
class
ConvolutionalMLP
(
module
.
FancyModule
):
class
ConvolutionalMLP
(
module
.
FancyModule
):
InstanceType
=
ConvolutionalMLPInstance
def
__init__
(
self
,
def
__init__
(
self
,
window_size
,
window_size
,
n_quadratic_filters
,
n_quadratic_filters
,
...
@@ -459,6 +414,45 @@ class ConvolutionalMLP(module.FancyModule):
...
@@ -459,6 +414,45 @@ class ConvolutionalMLP(module.FancyModule):
#self.validate = module.Method(self.inputs + [self.targ], [self.output.cost, self.output.argmax, self.output.max_pr])
#self.validate = module.Method(self.inputs + [self.targ], [self.output.cost, self.output.argmax, self.output.max_pr])
#self.softmax_output = module.Method(self.inputs, self.output.softmax_unsupervised)
#self.softmax_output = module.Method(self.inputs, self.output.softmax_unsupervised)
def
_instance_initialize
(
mod_self
,
self
,
input_size
,
input_representation_size
,
hidden_representation_size
,
output_size
,
lr
,
seed
,
noise_level
,
qfilter_relscale
):
R
=
N
.
random
.
RandomState
(
unittest_tools
.
fetch_seed
(
seed
))
self
.
input_size
=
input_size
self
.
input_representation_size
=
input_representation_size
self
.
hidden_representation_size
=
hidden_representation_size
self
.
output_size
=
output_size
self
.
lr
=
lr
# for layer in obj.layers:
# if layer.lr is None:
# layer.lr = lr
assert
self
.
input_representations
[
-
1
]
is
not
self
.
input_representations
[
0
]
assert
self
.
input_representations
[
-
1
]
.
w1
is
self
.
input_representations
[
0
]
.
w1
for
i
in
self
.
input_representations
:
# i.initialize(input_size=self.input_size, hidden_size=self.input_representation_size, seed=R.random_integers(2**30), noise_level=noise_level, qfilter_relscale=qfilter_relscale)
i
.
initialize
(
input_size
=
self
.
input_size
,
hidden_size
=
self
.
input_representation_size
,
noise_level
=
noise_level
,
seed
=
int
(
R
.
random_integers
(
2
**
30
)),
lr
=
lr
,
qfilter_relscale
=
qfilter_relscale
)
print
type
(
i
.
w1
)
assert
isinstance
(
i
.
w1
,
N
.
ndarray
)
for
i
in
self
.
input_representations
[
1
:]:
print
type
(
i
.
w1
)
assert
isinstance
(
i
.
w1
,
N
.
ndarray
)
assert
(
i
.
w1
==
self
.
input_representations
[
0
]
.
w1
)
.
all
()
assert
(
i
.
w2
==
self
.
input_representations
[
0
]
.
w2
)
.
all
()
assert
(
i
.
b1
==
self
.
input_representations
[
0
]
.
b1
)
.
all
()
assert
(
i
.
b2
==
self
.
input_representations
[
0
]
.
b2
)
.
all
()
assert
all
((
a
==
b
)
.
all
()
for
a
,
b
in
zip
(
i
.
qfilters
,
self
.
input_representations
[
0
]
.
qfilters
))
self
.
hidden
.
initialize
(
input_size
=
(
len
(
self
.
inputs
)
*
self
.
input_representation_size
),
hidden_size
=
self
.
hidden_representation_size
,
noise_level
=
noise_level
,
seed
=
int
(
R
.
random_integers
(
2
**
30
)),
lr
=
lr
,
qfilter_relscale
=
qfilter_relscale
)
self
.
output
.
initialize
(
n_in
=
self
.
hidden_representation_size
,
n_out
=
self
.
output_size
,
lr
=
lr
,
seed
=
R
.
random_integers
(
2
**
30
))
def
create
(
window_size
=
3
,
def
create
(
window_size
=
3
,
input_dimension
=
9
,
input_dimension
=
9
,
output_vocabsize
=
8
,
output_vocabsize
=
8
,
...
...
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