word vector 0.00395586
word vectors 0.003599523
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word vec 0.003140693
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semantic model 0.00248025
model training 0.00226902
similarity model 0.00206604
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english words 0.001828295
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frequent words 0.00178849
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topic models 0.001745321
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larity model 0.001645067
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deep models 0.001554195
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vector size 0.0015198940000000001
various models 0.001516945
document pairs 0.001495316
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web document 0.001460867
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deep semantic 0.001447935
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words 0.00140001
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document structure 0.001354139
target documents 0.001323512
training set 0.001321971
semantic map 0.001319986
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document snippets 0.001292075
document snip 0.001292075
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models 0.00117457
interesting documents 0.001153133
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training examples 0.001102959
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structured documents 0.0010433320000000001
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plain text 0.00100358
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interaction data 9.974E-4
text span 9.9693E-4
validation data 9.93501E-4
text spans 9.93446E-4
tional layer 9.88915E-4
learning rate 9.87824E-4
estingness function 9.863769999999999E-4
