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simple classifier 0.0016912479999999998
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target word 0.0016249860000000001
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expressive classifier 0.0015396399999999999
unknown words 0.001538356
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capitalized classifier 0.00153038
training corpus 0.001526586
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training data 0.001513969
word selection 0.0015082440000000002
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word choice 0.001471038
language model 0.0014690859999999999
potential words 0.001467916
surrounding words 0.0014677120000000001
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word lemma 0.001433833
intended word 0.001429401
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training time 0.001144285
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other cases 0.0010017910000000001
candidate set 0.001000508
classification models 9.97579E-4
performance advantages 9.94393E-4
accurate classifiers 9.93081E-4
