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2289c141
编写于
9月 26, 2016
作者:
L
liuyuan
提交者:
qingqing01
9月 26, 2016
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差异文件
Refine comment for CRF related headers. (#117)
上级
332194c8
变更
2
隐藏空白更改
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Showing
2 changed file
with
25 addition
and
25 deletion
+25
-25
paddle/gserver/layers/CRFLayer.h
paddle/gserver/layers/CRFLayer.h
+1
-1
paddle/gserver/layers/LinearChainCRF.h
paddle/gserver/layers/LinearChainCRF.h
+24
-24
未找到文件。
paddle/gserver/layers/CRFLayer.h
浏览文件 @
2289c141
...
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@@ -25,7 +25,7 @@ namespace paddle {
/**
* A layer for calculating the cost of sequential conditional random field
* model.
* See
LinearChainCRF.h
for the detail of the CRF formulation.
* See
class LinearChainCRF
for the detail of the CRF formulation.
*/
class
CRFLayer
:
public
Layer
{
public:
...
...
paddle/gserver/layers/LinearChainCRF.h
浏览文件 @
2289c141
...
...
@@ -21,39 +21,39 @@ namespace paddle {
class
LinearChainCRF
{
public:
/*
The size of para and grad must be (numClasses + 2) * numClasses
.
The first numClasses values of para are for starting weights (a
).
The next numClasses values of para are for ending weights (b
),
The remaning values are for transition weights (w
).
The probability of a state sequence s of length L
is defined as:
P(s) = (1/Z) exp(a_{s_1} + b_{s_L}
+ \sum_{l=1}^L x_{s_l}
+ \sum_{l=2}^L w_{s_{l-1},s_l})
where Z is a normalization value so that the sum of P(s)
over all possible
sequences is 1, and x
is the input feature to the CRF.
/*
*
* The size of para and grad must be \f$(numClasses + 2) * numClasses\f$
.
* The first numClasses values of para are for starting weights (\f$a\f$
).
* The next numClasses values of para are for ending weights (\f$b\f$
),
* The remaning values are for transition weights (\f$w\f$
).
*
* The probability of a state sequence s of length \f$L\f$
is defined as:
* \f$
P(s) = (1/Z) exp(a_{s_1} + b_{s_L}
*
+ \sum_{l=1}^L x_{s_l}
* + \sum_{l=2}^L w_{s_{l-1},s_l})\f$
* where \f$Z\f$ is a normalization value so that the sum of \f$P(s)\f$
over all possible
* sequences is \f$1\f$, and \f$x\f$
is the input feature to the CRF.
*/
LinearChainCRF
(
int
numClasses
,
real
*
para
,
real
*
grad
);
/*
Calculate the negative log likelihood of s given x.
The size of x must be length * numClasses. Each consecutive numClasses
values are the features for one time step.
/*
*
*
Calculate the negative log likelihood of s given x.
*
The size of x must be length * numClasses. Each consecutive numClasses
*
values are the features for one time step.
*/
real
forward
(
real
*
x
,
int
*
s
,
int
length
);
/*
Calculate the gradient with respect to x, a, b, and w.
The gradient of x will be stored in dx.
backward() can only be called after a corresponding call to forward() with
the same x, s and length.
NOTE:
The gradient is added to dx and grad (provided at constructor).
/*
*
*
Calculate the gradient with respect to x, a, b, and w.
*
The gradient of x will be stored in dx.
*
backward() can only be called after a corresponding call to forward() with
*
the same x, s and length.
* @note
The gradient is added to dx and grad (provided at constructor).
*/
void
backward
(
real
*
x
,
real
*
dx
,
int
*
s
,
int
length
);
/*
Find the most probable sequence given x. The result will be stored in s.
/*
*
*
Find the most probable sequence given x. The result will be stored in s.
*/
void
decode
(
real
*
x
,
int
*
s
,
int
length
);
...
...
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