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similar words 0.002479696
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selecting words 0.0023609200000000003
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words 0.00211864
semantic distance 0.0021051439999999998
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semantic clustering 0.0019387620000000001
semantic networks 0.0019328470000000001
semantic connections 0.001923518
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semantic properties 0.001862996
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semantic connec 0.001826806
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context methods 0.0016135
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mixture model 0.0014996340000000001
extended model 0.0014996340000000001
rational model 0.0014996340000000001
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model 0.00126289
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input data 0.001195893
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language acquisition 0.001182671
categorization models 0.001171252
computational models 0.001170768
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random graph 0.0011438070000000002
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incremental network 0.001102804
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probability distribution 0.001052685
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large corpus 0.001042649
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ing categories 0.001028579
