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predominant sense 0.0031623899999999997
correct sense 0.0031491469999999997
sense induction 0.003144663
word senses 0.003134385
different word 0.0030804099999999996
dominant sense 0.0030703749999999998
frequent sense 0.003062686
sense label 0.003057083
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sense inventory 0.0030476519999999997
sense distinctions 0.003038608
sense induc 0.0030373619999999996
sense inven 0.0030343429999999997
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word vector 0.0029725909999999997
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sense 0.00277396
word space 0.0027630679999999996
target word 0.0026871729999999997
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word instances 0.0025066069999999997
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next word 0.002488072
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word triplets 0.002418833
semantic similarity 0.00237366
context vector 0.0022276509999999998
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same context 0.002107735
noun model 0.002034111
target words 0.001997813
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disambiguation model 0.0019075610000000001
different senses 0.0019021749999999999
factorization model 0.0018520060000000002
different models 0.001848292
context window 0.0018329789999999998
semantic space 0.001827468
nmf model 0.0017653310000000002
semantic probability 0.001762845
context yields 0.001761658
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small context 0.001756328
content words 0.001742063
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stop words 0.001729435
induction model 0.001691893
svd model 0.001669574
semantic dimensions 0.001652381
our model 0.0016489260000000002
unified model 0.001634248
semantic processing 0.0015722540000000001
distributional similarity 0.001557786
space models 0.00153095
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matrix factorization 0.001520961
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semantic content 0.001495823
training data 0.0014933770000000002
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semantic fingerprint 0.0014821160000000001
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topical similarity 0.001469456
words 0.00146695
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certain similarity 0.001449028
standard senses 0.001447073
random senses 0.0014358139999999999
similarity calculations 0.00143268
vector space 0.001423039
candidate senses 0.001412052
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second matrix 0.001392496
possible senses 0.0013678319999999998
probability vector 0.0013584159999999999
evaluation method 0.001358049
same number 0.001353153
document matrix 0.001342471
evaluation set 0.001332595
model 0.00132119
annotated data 0.001307826
third matrix 0.0012697350000000001
complete data 0.001267527
frequent senses 0.001266801
data points 0.001264914
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particular corpus 0.001262109
