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topic labeling 0.003375327
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topic sprinkling 0.0033684870000000003
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word position 0.0017515270000000001
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semantic space 0.001018526
labeling documents 0.0010090169999999999
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class labels 9.988739999999999E-4
sprinkled lda 9.85568E-4
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text classification 9.541630000000001E-4
semantic structure 9.49083E-4
same performance 9.25029E-4
classification learning 9.203530000000001E-4
dirichlet allocation 8.85519E-4
generative process 8.76475E-4
information doctor 8.686519999999999E-4
classification performance 8.64931E-4
classification algorithms 8.63775E-4
symmetric dirichlet 8.54998E-4
posterior inference 8.539400000000001E-4
