lr,34-1-I05-2021,bq |
We present the first known
<term>
empirical test
</term>
of an increasingly common speculative claim , by evaluating a representative
<term>
Chinese-to-English SMT model
</term>
directly on
<term>
word sense disambiguation performance
</term>
, using standard
<term>
WSD evaluation methodology
</term>
and
<term>
datasets
</term>
from the
<term>
Senseval-3 Chinese lexical sample task
</term>
.
|
#7820
We present the first known empirical test of an increasingly common speculative claim, by evaluating a representative Chinese-to-English SMT model directly on word sense disambiguation performance, using standard WSD evaluation methodology anddatasets from the Senseval-3 Chinese lexical sample task. |
tech,21-3-I05-2021,bq |
At the same time , the recent improvements in the
<term>
BLEU scores
</term>
of
<term>
statistical machine translation ( SMT )
</term>
suggests that
<term>
SMT models
</term>
are good at predicting the right
<term>
translation
</term>
of the
<term>
words
</term>
in
<term>
source language sentences
</term>
.
|
#7877
At the same time, the recent improvements in the BLEU scores of statistical machine translation (SMT) suggests thatSMT models are good at predicting the right translation of the words in source language sentences. |
other,29-3-I05-2021,bq |
At the same time , the recent improvements in the
<term>
BLEU scores
</term>
of
<term>
statistical machine translation ( SMT )
</term>
suggests that
<term>
SMT models
</term>
are good at predicting the right
<term>
translation
</term>
of the
<term>
words
</term>
in
<term>
source language sentences
</term>
.
|
#7885
At the same time, the recent improvements in the BLEU scores of statistical machine translation (SMT) suggests that SMT models are good at predicting the righttranslation of the words in source language sentences. |
measure(ment),5-4-I05-2021,bq |
Surprisingly however , the
<term>
WSD
</term><term>
accuracy
</term>
of
<term>
SMT models
</term>
has never been evaluated and compared with that of the dedicated
<term>
WSD models
</term>
.
|
#7899
Surprisingly however, the WSDaccuracy of SMT models has never been evaluated and compared with that of the dedicated WSD models. |
tech,30-6-I05-2021,bq |
This tends to support the view that despite recent speculative claims to the contrary , current
<term>
SMT models
</term>
do have limitations in comparison with dedicated
<term>
WSD models
</term>
, and that
<term>
SMT
</term>
should benefit from the better predictions made by the
<term>
WSD models
</term>
.
|
#7974
This tends to support the view that despite recent speculative claims to the contrary, current SMT models do have limitations in comparison with dedicated WSD models, and thatSMT should benefit from the better predictions made by the WSD models. |
tech,7-4-I05-2021,bq |
Surprisingly however , the
<term>
WSD
</term><term>
accuracy
</term>
of
<term>
SMT models
</term>
has never been evaluated and compared with that of the dedicated
<term>
WSD models
</term>
.
|
#7901
Surprisingly however, the WSD accuracy ofSMT models has never been evaluated and compared with that of the dedicated WSD models. |
tech,20-4-I05-2021,bq |
Surprisingly however , the
<term>
WSD
</term><term>
accuracy
</term>
of
<term>
SMT models
</term>
has never been evaluated and compared with that of the dedicated
<term>
WSD models
</term>
.
|
#7914
Surprisingly however, the WSD accuracy of SMT models has never been evaluated and compared with that of the dedicatedWSD models. |
model,18-1-I05-2021,bq |
We present the first known
<term>
empirical test
</term>
of an increasingly common speculative claim , by evaluating a representative
<term>
Chinese-to-English SMT model
</term>
directly on
<term>
word sense disambiguation performance
</term>
, using standard
<term>
WSD evaluation methodology
</term>
and
<term>
datasets
</term>
from the
<term>
Senseval-3 Chinese lexical sample task
</term>
.
|
#7804
We present the first known empirical test of an increasingly common speculative claim, by evaluating a representativeChinese-to-English SMT model directly on word sense disambiguation performance, using standard WSD evaluation methodology and datasets from the Senseval-3 Chinese lexical sample task. |
tech,10-2-I05-2021,bq |
Much effort has been put in designing and evaluating dedicated
<term>
word sense disambiguation ( WSD ) models
</term>
, in particular with the
<term>
Senseval
</term>
series of workshops .
|
#7839
Much effort has been put in designing and evaluating dedicatedword sense disambiguation ( WSD ) models, in particular with the Senseval series of workshops. |
tech,13-3-I05-2021,bq |
At the same time , the recent improvements in the
<term>
BLEU scores
</term>
of
<term>
statistical machine translation ( SMT )
</term>
suggests that
<term>
SMT models
</term>
are good at predicting the right
<term>
translation
</term>
of the
<term>
words
</term>
in
<term>
source language sentences
</term>
.
|
#7869
At the same time, the recent improvements in the BLEU scores ofstatistical machine translation ( SMT ) suggests that SMT models are good at predicting the right translation of the words in source language sentences. |
measure(ment),30-1-I05-2021,bq |
We present the first known
<term>
empirical test
</term>
of an increasingly common speculative claim , by evaluating a representative
<term>
Chinese-to-English SMT model
</term>
directly on
<term>
word sense disambiguation performance
</term>
, using standard
<term>
WSD evaluation methodology
</term>
and
<term>
datasets
</term>
from the
<term>
Senseval-3 Chinese lexical sample task
</term>
.
|
#7816
We present the first known empirical test of an increasingly common speculative claim, by evaluating a representative Chinese-to-English SMT model directly on word sense disambiguation performance, using standardWSD evaluation methodology and datasets from the Senseval-3 Chinese lexical sample task. |
tech,16-6-I05-2021,bq |
This tends to support the view that despite recent speculative claims to the contrary , current
<term>
SMT models
</term>
do have limitations in comparison with dedicated
<term>
WSD models
</term>
, and that
<term>
SMT
</term>
should benefit from the better predictions made by the
<term>
WSD models
</term>
.
|
#7960
This tends to support the view that despite recent speculative claims to the contrary, currentSMT models do have limitations in comparison with dedicated WSD models, and that SMT should benefit from the better predictions made by the WSD models. |
measure(ment),7-5-I05-2021,bq |
We present controlled experiments showing the
<term>
WSD
</term><term>
accuracy
</term>
of current typical
<term>
SMT models
</term>
to be significantly lower than that of all the dedicated
<term>
WSD models
</term>
considered .
|
#7924
We present controlled experiments showing the WSDaccuracy of current typical SMT models to be significantly lower than that of all the dedicated WSD models considered. |
measure(ment),23-1-I05-2021,bq |
We present the first known
<term>
empirical test
</term>
of an increasingly common speculative claim , by evaluating a representative
<term>
Chinese-to-English SMT model
</term>
directly on
<term>
word sense disambiguation performance
</term>
, using standard
<term>
WSD evaluation methodology
</term>
and
<term>
datasets
</term>
from the
<term>
Senseval-3 Chinese lexical sample task
</term>
.
|
#7809
We present the first known empirical test of an increasingly common speculative claim, by evaluating a representative Chinese-to-English SMT model directly onword sense disambiguation performance, using standard WSD evaluation methodology and datasets from the Senseval-3 Chinese lexical sample task. |
measure(ment),5-1-I05-2021,bq |
We present the first known
<term>
empirical test
</term>
of an increasingly common speculative claim , by evaluating a representative
<term>
Chinese-to-English SMT model
</term>
directly on
<term>
word sense disambiguation performance
</term>
, using standard
<term>
WSD evaluation methodology
</term>
and
<term>
datasets
</term>
from the
<term>
Senseval-3 Chinese lexical sample task
</term>
.
|
#7791
We present the first knownempirical test of an increasingly common speculative claim, by evaluating a representative Chinese-to-English SMT model directly on word sense disambiguation performance, using standard WSD evaluation methodology and datasets from the Senseval-3 Chinese lexical sample task. |
tech,25-6-I05-2021,bq |
This tends to support the view that despite recent speculative claims to the contrary , current
<term>
SMT models
</term>
do have limitations in comparison with dedicated
<term>
WSD models
</term>
, and that
<term>
SMT
</term>
should benefit from the better predictions made by the
<term>
WSD models
</term>
.
|
#7969
This tends to support the view that despite recent speculative claims to the contrary, current SMT models do have limitations in comparison with dedicatedWSD models, and that SMT should benefit from the better predictions made by the WSD models. |
tech,40-6-I05-2021,bq |
This tends to support the view that despite recent speculative claims to the contrary , current
<term>
SMT models
</term>
do have limitations in comparison with dedicated
<term>
WSD models
</term>
, and that
<term>
SMT
</term>
should benefit from the better predictions made by the
<term>
WSD models
</term>
.
|
#7984
This tends to support the view that despite recent speculative claims to the contrary, current SMT models do have limitations in comparison with dedicated WSD models, and that SMT should benefit from the better predictions made by theWSD models. |
tech,6-5-I05-2021,bq |
We present controlled experiments showing the
<term>
WSD
</term><term>
accuracy
</term>
of current typical
<term>
SMT models
</term>
to be significantly lower than that of all the dedicated
<term>
WSD models
</term>
considered .
|
#7923
We present controlled experiments showing theWSD accuracy of current typical SMT models to be significantly lower than that of all the dedicated WSD models considered. |
other,34-3-I05-2021,bq |
At the same time , the recent improvements in the
<term>
BLEU scores
</term>
of
<term>
statistical machine translation ( SMT )
</term>
suggests that
<term>
SMT models
</term>
are good at predicting the right
<term>
translation
</term>
of the
<term>
words
</term>
in
<term>
source language sentences
</term>
.
|
#7890
At the same time, the recent improvements in the BLEU scores of statistical machine translation (SMT) suggests that SMT models are good at predicting the right translation of the words insource language sentences. |
measure(ment),10-3-I05-2021,bq |
At the same time , the recent improvements in the
<term>
BLEU scores
</term>
of
<term>
statistical machine translation ( SMT )
</term>
suggests that
<term>
SMT models
</term>
are good at predicting the right
<term>
translation
</term>
of the
<term>
words
</term>
in
<term>
source language sentences
</term>
.
|
#7866
At the same time, the recent improvements in theBLEU scores of statistical machine translation (SMT) suggests that SMT models are good at predicting the right translation of the words in source language sentences. |