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corpus tagger 0.0019884530000000003
test data 0.001945412
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test corpus 0.001869683
phosyntactic tag 0.0018666400000000001
tagger error 0.0018024030000000002
test set 0.0017560800000000001
same corpus 0.00175465
tagger performance 0.001740866
training data 0.001736108
same information 0.001705754
tagger output 0.001682689
pos tagger 0.0016745520000000002
training corpus 0.001660379
language model 0.001593555
same error 0.0015686
wrong word 0.0015119550000000002
certain tagger 0.001505355
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same errors 0.0014887300000000002
tagger evaluation 0.001466721
tagger performances 0.0014351630000000002
tagger accuracies 0.0014317940000000001
tagger eval 0.0014259910000000002
corpus errors 0.001425026
test experiments 0.00139407
test sets 0.001379959
test corpora 0.001377322
small test 0.0013768769999999999
test cor 0.001356304
noisy test 0.001351272
possible parameter 0.001345739
rigorous test 0.001324106
test experimentation 0.001317089
ing corpus 0.001314081
reference test 0.001296508
parameter values 0.001294367
tical test 0.001294044
dent test 0.001292213
biguated test 0.001292213
many words 0.001288868
pos tagging 0.0012808379999999999
different sources 0.001238952
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different val 0.001215316
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pos taggers 0.001207154
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same characteristics 0.001179651
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training corpora 0.001168018
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training procedure 0.0011223259999999999
machine learning 0.001109669
unambiguous words 0.0011036140000000002
ous words 0.001101222
performance value 0.001099208
learning techniques 0.001098912
overall accuracy 0.001097462
biguous words 0.001096166
other sentences 0.001047502
error rate 0.0010470990000000001
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real performance 0.00104305
reference tagging 0.001021564
learning perspective 0.001016832
accuracy intervals 0.001001118
new system 0.001001021
taggers evaluation 9.993229999999999E-4
model 9.96409E-4
following examples 9.86722E-4
performance rate 9.85562E-4
current pos 9.847599999999999E-4
adequate context 9.74651E-4
correct ones 9.651260000000001E-4
reasonable accuracy 9.63964E-4
ofalternative taggers 9.60231E-4
error rates 9.56343E-4
evaluation method 9.47549E-4
real value 9.464860000000001E-4
successful taggers 9.447839999999999E-4
small number 9.44676E-4
performance level 9.433989999999999E-4
correct analysis 9.427600000000001E-4
correct answers 9.245740000000001E-4
possible cases 9.16351E-4
pos disambiguation 9.05827E-4
current systems 9.0427E-4
correct disambigua 9.004400000000001E-4
statistical tests 8.932580000000001E-4
similar constraints 8.78407E-4
noun chains 8.708629999999999E-4
right pos 8.69749E-4
