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sentence sentiment 0.002574176
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stanford sentiment 0.0024764879999999998
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correct sentiment 0.002440316
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random word 0.0018749740000000002
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word matrices 0.001746989
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experiments model 0.001670696
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word spaces 0.0016371410000000002
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word repre 0.001635065
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vector representations 0.001525237
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model 0.00135483
words representations 0.0013477530000000001
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vector sizes 0.001280603
vector spaces 0.001276061
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vector representa 0.001258169
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recursive neural 0.001241716
single words 0.001234191
few words 0.001206329
work models 0.0011955949999999998
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negative phrases 0.001132323
words annotation 0.001121218
different values 0.001098161
words classifiers 0.001095101
classification matrix 0.001076221
compositional matrix 0.0010760689999999998
actual words 0.00107603
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vector 0.00106052
positional models 0.001057545
