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topic 0.00323912
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word tokens 0.002218757
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bayesian models 9.521880000000001E-4
model 9.29891E-4
small corpus 9.277E-4
language modeling 9.02659E-4
new distributions 8.932149999999999E-4
lda framework 8.74613E-4
nips corpus 8.670209999999999E-4
english language 8.61059E-4
standard english 8.52446E-4
first time 8.49286E-4
hierarchical dirichlet 8.41742E-4
prior distributions 8.404759999999999E-4
text mining 8.23339E-4
energy level 8.1028E-4
first table 8.09468E-4
second time 8.0689E-4
water air 8.06222E-4
new table 8.056949999999999E-4
