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simple model 0.0027303020000000004
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training data 0.002061815
different models 0.0016713119999999999
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labeled data 0.0015262269999999998
google data 0.001499495
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pos tag 0.0013803090000000001
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machine learning 0.0010424100000000001
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common pos 9.80788E-4
other ways 9.75429E-4
language problem 9.626350000000001E-4
pos tags 9.62312E-4
other functions 9.57189E-4
natural language 9.55333E-4
common words 9.51482E-4
such jokes 9.343660000000001E-4
joint probability 9.328100000000001E-4
same formula 9.00143E-4
available pos 8.93183E-4
training 8.86465E-4
first approximation 8.79781E-4
inference methods 8.5925E-4
models 8.57513E-4
large corpus 8.50609E-4
supervised approach 8.20248E-4
generation system 8.19237E-4
particular type 7.87061E-4
pos taggers 7.86002E-4
first humor 7.85729E-4
many attributes 7.7922E-4
factor graph 7.72502E-4
exact inference 7.70953E-4
noun similarity 7.64252E-4
main evaluation 7.53457E-4
large quantities 7.46541E-4
large amounts 7.452489999999999E-4
function 7.35844E-4
development set 7.32836E-4
example jokes 7.321599999999999E-4
learning 7.31223E-4
shallow information 7.22649E-4
similar nouns 7.22484E-4
joke score 7.21581E-4
noun vectors 7.09916E-4
sentence identification 7.094590000000001E-4
sarcastic sentence 7.094590000000001E-4
large quanti 7.0714E-4
random variables 7.03349E-4
future work 7.01459E-4
possible jokes 6.96897E-4
second metric 6.965280000000001E-4
jokes human 6.96385E-4
human jokes 6.96385E-4
surprisal factor 6.93925E-4
previous work 6.924279999999999E-4
new ones 6.90208E-4
human evaluation 6.839050000000001E-4
labeled examples 6.834499999999999E-4
weighted frequency 6.82446E-4
unsupervised joke 6.79109E-4
selection problem 6.68253E-4
related work 6.62138E-4
main challenge 6.6176E-4
supervised classifier 6.61537E-4
whole phrase 6.59253E-4
sign test 6.57959E-4
specific value 6.56117E-4
main assumptions 6.519399999999999E-4
automatic evaluation 6.51248E-4
funny jokes 6.50511E-4
noun dissimilarity 6.44146E-4
second col 6.41285E-4
local approximation 6.39003E-4
small amount 6.32578E-4
unsupervised humor 6.298090000000001E-4
bad jokes 6.28697E-4
gibbs sampling 6.28597E-4
main contribution 6.2829E-4
probable jokes 6.26068E-4
external corpus 6.23863E-4
content selection 6.23619E-4
tor noun 6.234389999999999E-4
