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feature 0.00123966
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loss function 0.0012099279999999999
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plain sentence 0.0011502069999999999
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forum question 0.001015908
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extraction problem 9.9357E-4
multiple context 9.86803E-4
question annotation 9.85442E-4
data statistics 9.82886E-4
community question 9.81637E-4
system performance 9.75195E-4
search algorithm 9.72192E-4
multiple labels 9.641280000000001E-4
question post 9.58132E-4
question answering 9.561400000000001E-4
discriminant function 9.51228E-4
question detection 9.43068E-4
esis function 9.42303E-4
indicative function 9.42303E-4
question sen 9.41738E-4
ith question 9.409920000000001E-4
sic information 9.34796E-4
question interactions 9.341270000000001E-4
viterbi algorithm 9.33487E-4
