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6aece506
编写于
11月 23, 2016
作者:
Y
Yu Yang
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36 addition
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44 deletion
+36
-44
doc_cn/algorithm/rnn/hrnn_rnn_api_compare.rst
doc_cn/algorithm/rnn/hrnn_rnn_api_compare.rst
+6
-5
paddle/gserver/tests/sequence_nest_rnn_multi_unequalength_inputs.py
...rver/tests/sequence_nest_rnn_multi_unequalength_inputs.py
+30
-39
未找到文件。
doc_cn/algorithm/rnn/hrnn_rnn_api_compare.rst
浏览文件 @
6aece506
...
...
@@ -139,20 +139,21 @@
本例中的配置,使用了单层\ :ref:`glossary_RNN`\ 和\ :ref:`glossary_双层RNN`\ 使用一个\ :code:`recurrent_group`\ 将两个序列同时过完全连接的\ :ref:`glossary_RNN`\ 。对于单层\ :ref:`glossary_RNN`\ 的code如下。
.. literalinclude:: ../../../paddle/gserver/tests/sequence_rnn_multi_unequalength_inputs.
conf
.. literalinclude:: ../../../paddle/gserver/tests/sequence_rnn_multi_unequalength_inputs.
py
:language: python
:lines: 4
1-58
:lines: 4
2-59
:linenos:
- 双层序列\:
- 双层RNN中,对输入的两个特征分别求时序上的连续全连接(`inner_step1`和`inner_step2`分别处理fea1和fea2),其功能与示例2中`sequence_nest_rnn.conf`的`outer_step`函数完全相同。不同之处是,此时输入`[SubsequenceInput(emb1), SubsequenceInput(emb2)]`在各时刻并不等长。
- 函数`outer_step`中可以分别处理这两个特征,但我们需要用
<font color=red>targetInlink</font>
指定recurrent_group的输出的格式(各子句长度)只能和其中一个保持一致,如这里选择了和emb2的长度一致。
- 函数`outer_step`中可以分别处理这两个特征,但我们需要用
\ :red:`targetInlink`\
指定recurrent_group的输出的格式(各子句长度)只能和其中一个保持一致,如这里选择了和emb2的长度一致。
- 最后,依然是取encoder1_rep的最后一个时刻和encoder2_rep的所有时刻分别相加得到context。
.. literalinclude:: ../../../paddle/gserver/tests/sequence_nest_rnn_multi_unequalength_inputs.
conf
.. literalinclude:: ../../../paddle/gserver/tests/sequence_nest_rnn_multi_unequalength_inputs.
py
:language: python
:lines: 41-89
:lines: 42-75, 82-89
:linenos:
示例4:beam_search的生成
========================
...
...
paddle/gserver/tests/sequence_nest_rnn_multi_unequalength_inputs.py
浏览文件 @
6aece506
#edit-mode: -*- python -*-
#
edit-mode: -*- python -*-
# Copyright (c) 2016 Baidu, Inc. All Rights Reserved
#
# Licensed under the Apache License, Version 2.0 (the "License");
...
...
@@ -35,46 +35,37 @@ speaker2 = data_layer(name="word2", size=dict_dim)
emb1
=
embedding_layer
(
input
=
speaker1
,
size
=
word_dim
)
emb2
=
embedding_layer
(
input
=
speaker2
,
size
=
word_dim
)
# This hierachical RNN is designed to be equivalent to the simple RNN in
# sequence_rnn_multi_unequalength_inputs.conf
# This hierarchical RNN is designed to be equivalent to the simple RNN in
# sequence_rnn_multi_unequalength_inputs.conf
def
outer_step
(
x1
,
x2
):
outer_mem1
=
memory
(
name
=
"outer_rnn_state1"
,
size
=
hidden_dim
)
outer_mem2
=
memory
(
name
=
"outer_rnn_state2"
,
size
=
hidden_dim
)
def
inner_step1
(
y
):
inner_mem
=
memory
(
name
=
'inner_rnn_state_'
+
y
.
name
,
size
=
hidden_dim
,
boot_layer
=
outer_mem1
)
out
=
fc_layer
(
input
=
[
y
,
inner_mem
],
size
=
hidden_dim
,
act
=
TanhActivation
(),
bias_attr
=
True
,
name
=
'inner_rnn_state_'
+
y
.
name
)
return
out
def
inner_step2
(
y
):
inner_mem
=
memory
(
name
=
'inner_rnn_state_'
+
y
.
name
,
size
=
hidden_dim
,
boot_layer
=
outer_mem2
)
out
=
fc_layer
(
input
=
[
y
,
inner_mem
],
size
=
hidden_dim
,
act
=
TanhActivation
(),
bias_attr
=
True
,
name
=
'inner_rnn_state_'
+
y
.
name
)
return
out
encoder1
=
recurrent_group
(
step
=
inner_step1
,
name
=
'inner1'
,
input
=
x1
)
encoder2
=
recurrent_group
(
step
=
inner_step2
,
name
=
'inner2'
,
input
=
x2
)
sentence_last_state1
=
last_seq
(
input
=
encoder1
,
name
=
'outer_rnn_state1'
)
sentence_last_state2_
=
last_seq
(
input
=
encoder2
,
name
=
'outer_rnn_state2'
)
index
=
[
0
]
def
inner_step
(
ipt
):
index
[
0
]
+=
1
i
=
index
[
0
]
outer_mem
=
memory
(
name
=
"outer_rnn_state_%d"
%
i
,
size
=
hidden_dim
)
def
inner_step_impl
(
y
):
inner_mem
=
memory
(
name
=
"inner_rnn_state_"
+
y
.
name
,
size
=
hidden_dim
,
boot_layer
=
outer_mem
)
out
=
fc_layer
(
input
=
[
y
,
inner_mem
],
size
=
hidden_dim
,
act
=
TanhActivation
(),
bias_attr
=
True
,
name
=
'inner_rnn_state_'
+
y
.
name
)
return
out
encoder
=
recurrent_group
(
step
=
inner_step_impl
,
name
=
'inner_%d'
%
i
,
input
=
ipt
)
last
=
last_seq
(
name
=
"outer_rnn_state_%d"
%
i
,
input
=
encoder
)
return
encoder
,
last
_
,
sentence_last_state1
=
inner_step
(
ipt
=
x1
)
encoder2
,
_
=
inner_step
(
ipt
=
x2
)
encoder1_expand
=
expand_layer
(
input
=
sentence_last_state1
,
expand_as
=
encoder2
)
...
...
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