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generative model 0.001787385
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hdp model 0.0017289480000000001
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clc model 0.001711696
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web text 9.97265E-4
label ind 9.84941E-4
time table 9.83567E-4
ambiguous label 9.82171E-4
other methods 9.77408E-4
different combinations 9.7731E-4
different subsets 9.73202E-4
label extraction 9.71991E-4
input label 9.71176E-4
label lexicons 9.69031E-4
syntactic information 9.67801E-4
label productions 9.65766E-4
different samples 9.64921E-4
label coverage 9.635479999999999E-4
isa label 9.62304E-4
label pcfg 9.617149999999999E-4
