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name translation 0.00306172
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standard english 0.003008752
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english corpus 0.002934341
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language model 0.00272076
language information 0.00268226
chinese name 0.00263801
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entity translation 0.002311157
name transliteration 0.0022759629999999998
source language 0.002216292
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language tagger 0.0021538
machine translation 0.002119414
name entity 0.002102157
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reference translation 0.00208488
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language tagging 0.001999921
language analysis 0.0019937460000000002
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name types 0.001875077
name type 0.001863939
name pairs 0.001847841
person name 0.001833191
name list 0.001824203
name recognition 0.001811495
name tagging 0.001798421
name tag 0.001783281
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training data 0.001771781
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chinese gpe 0.001738546
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name contexts 0.001728767
bad name 0.0017247669999999999
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name identification 0.001718379
chinese sentence 0.001714957
name boundaries 0.0017062499999999999
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translation 0.00163536
language 0.00162786
evaluation data 0.00162464
such names 0.001613165
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word alignments 0.0016094960000000002
target information 0.001607015
word order 0.0015863890000000001
traditional word 0.0015798180000000002
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function word 0.0015275890000000002
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chinese expression 0.0015108720000000001
data set 0.001503342
sequence information 0.001497887
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global information 0.00145131
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tag information 0.001411321
markov model 0.001409387
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ner system 0.0013265640000000001
foreign names 0.001312928
reference text 0.001278825
