tech,11-1-J05-1003,bq |
This article considers approaches which rerank the output of an existing
<term>
probabilistic parser
</term>
.
|
#8660
This article considers approaches which rerank the output of an existingprobabilistic parser. |
other,16-2-J05-1003,bq |
The base
<term>
parser
</term>
produces a set of
<term>
candidate parses
</term>
for each input
<term>
sentence
</term>
, with associated
<term>
probabilities
</term>
that define an initial
<term>
ranking
</term>
of these
<term>
parses
</term>
.
|
#8679
The base parser produces a set of candidate parses for each input sentence, with associatedprobabilities that define an initial ranking of these parses. |
other,21-2-J05-1003,bq |
The base
<term>
parser
</term>
produces a set of
<term>
candidate parses
</term>
for each input
<term>
sentence
</term>
, with associated
<term>
probabilities
</term>
that define an initial
<term>
ranking
</term>
of these
<term>
parses
</term>
.
|
#8684
The base parser produces a set of candidate parses for each input sentence, with associated probabilities that define an initialranking of these parses. |
other,10-3-J05-1003,bq |
A second
<term>
model
</term>
then attempts to improve upon this initial
<term>
ranking
</term>
, using additional
<term>
features
</term>
of the
<term>
tree
</term>
as evidence .
|
#8699
A second model then attempts to improve upon this initialranking, using additional features of the tree as evidence. |
other,16-5-J05-1003,bq |
We introduce a new
<term>
method
</term>
for the
<term>
reranking task
</term>
, based on the
<term>
boosting approach
</term>
to
<term>
ranking problems
</term>
described in
<term>
Freund et al. ( 1998 )
</term>
.
|
#8775
We introduce a new method for the reranking task, based on the boosting approach toranking problems described in Freund et al. (1998). |
tech,30-12-J05-1003,bq |
Although the experiments in this article are on
<term>
natural language parsing ( NLP )
</term>
, the
<term>
approach
</term>
should be applicable to many other
<term>
NLP problems
</term>
which are naturally framed as
<term>
ranking tasks
</term>
, for example ,
<term>
speech recognition
</term>
,
<term>
machine translation
</term>
, or
<term>
natural language generation
</term>
.
|
#8966
Although the experiments in this article are on natural language parsing (NLP), the approach should be applicable to many other NLP problems which are naturally framed asranking tasks, for example, speech recognition, machine translation, or natural language generation. |
tech,7-5-J05-1003,bq |
We introduce a new
<term>
method
</term>
for the
<term>
reranking task
</term>
, based on the
<term>
boosting approach
</term>
to
<term>
ranking problems
</term>
described in
<term>
Freund et al. ( 1998 )
</term>
.
|
#8766
We introduce a new method for thereranking task, based on the boosting approach to ranking problems described in Freund et al. (1998). |
other,12-2-J05-1003,bq |
The base
<term>
parser
</term>
produces a set of
<term>
candidate parses
</term>
for each input
<term>
sentence
</term>
, with associated
<term>
probabilities
</term>
that define an initial
<term>
ranking
</term>
of these
<term>
parses
</term>
.
|
#8675
The base parser produces a set of candidate parses for each inputsentence, with associated probabilities that define an initial ranking of these parses. |
other,16-9-J05-1003,bq |
The article also introduces a new
<term>
algorithm
</term>
for the
<term>
boosting approach
</term>
which takes advantage of the
<term>
sparsity of the feature space
</term>
in the
<term>
parsing data
</term>
.
|
#8877
The article also introduces a new algorithm for the boosting approach which takes advantage of thesparsity of the feature space in the parsing data. |
tech,36-12-J05-1003,bq |
Although the experiments in this article are on
<term>
natural language parsing ( NLP )
</term>
, the
<term>
approach
</term>
should be applicable to many other
<term>
NLP problems
</term>
which are naturally framed as
<term>
ranking tasks
</term>
, for example ,
<term>
speech recognition
</term>
,
<term>
machine translation
</term>
, or
<term>
natural language generation
</term>
.
|
#8972
Although the experiments in this article are on natural language parsing (NLP), the approach should be applicable to many other NLP problems which are naturally framed as ranking tasks, for example,speech recognition, machine translation, or natural language generation. |
other,17-3-J05-1003,bq |
A second
<term>
model
</term>
then attempts to improve upon this initial
<term>
ranking
</term>
, using additional
<term>
features
</term>
of the
<term>
tree
</term>
as evidence .
|
#8706
A second model then attempts to improve upon this initial ranking, using additional features of thetree as evidence. |
other,10-4-J05-1003,bq |
The strength of our
<term>
approach
</term>
is that it allows a
<term>
tree
</term>
to be represented as an arbitrary set of
<term>
features
</term>
, without concerns about how these
<term>
features
</term>
interact or overlap and without the need to define a
<term>
derivation
</term>
or a
<term>
generative model
</term>
which takes these
<term>
features
</term>
into account .
|
#8720
The strength of our approach is that it allows atree to be represented as an arbitrary set of features, without concerns about how these features interact or overlap and without the need to define a derivation or a generative model which takes these features into account. |
lr-prod,8-6-J05-1003,bq |
We apply the
<term>
boosting method
</term>
to
<term>
parsing
</term>
the
<term>
Wall Street Journal treebank
</term>
.
|
#8794
We apply the boosting method to parsing theWall Street Journal treebank. |