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word probabilities 0.004223687
word length 0.004218004
content word 0.004190822
word frequency 0.004183858
word types 0.0041800330000000005
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word list 0.004096986
next word 0.0040773580000000005
word classes 0.0040643020000000005
word sur 0.004051327
word predictability 0.004049135000000001
subjective word 0.004043812
word presentation 0.004043518
subsequent word 0.0040407640000000005
word tokens 0.004024284
word onset 0.0040235900000000005
word predictabil 0.0040222140000000005
secutive word 0.0040222140000000005
word onsets 0.0040222140000000005
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model types 0.002445153
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model type 0.002381387
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model comparison 0.002345135
unigram model 0.00234231
markov model 0.002336528
guage model 0.0023357589999999998
psg model 0.002320782
rnn model 0.0023170359999999997
trained model 0.002307971
model order 0.002305867
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function words 0.002090701
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language models 0.0019038739999999998
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predictable words 0.00189067
corpus data 0.001798258
different language 0.00173114
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words 0.00165548
training data 0.001567615
training corpus 0.001494243
sentence reading 0.001422488
erp data 0.001330354
human language 0.001327743
data analysis 0.001323061
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probabilistic language 0.001307334
sentence position 0.001261101
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eeg data 0.001248194
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psg models 0.0012350619999999999
rnn models 0.0012313159999999999
trained models 0.001222251
language comprehension 0.001217926
surprisal value 0.001216995
language statistics 0.001210758
language mod 0.0012068
data points 0.001204959
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sentence comprehension 0.0011919839999999999
different erp 0.0011885350000000001
psychological data 0.001175509
data collection 0.001174809
bnc data 0.001174591
sentence stimuli 0.001147103
national corpus 0.001137834
ucl corpus 0.0011203089999999999
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syntactic processing 0.001118851
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surprisal effect 0.001100925
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many information 0.0010742870000000002
surprisal estimates 0.001060182
surprisal values 0.001058608
different group 0.001031181
cognitive processing 9.89607E-4
component time 9.77392E-4
large number 9.750430000000001E-4
models 9.6673E-4
same sentences 9.63911E-4
surprisal esti 9.52594E-4
surprisal val 9.51775E-4
language 9.37144E-4
ratio test 9.223549999999999E-4
experimental sentences 9.19682E-4
