training language 0.00258622
morphological model 0.002475751
word set 0.0023238900000000003
feature function 0.002279206
same feature 0.002262229
target feature 0.002205365
feature values 0.002163679
standard feature 0.002157975
supervised model 0.002135991
unsupervised model 0.002125651
language analysis 0.002119673
universal feature 0.0020778100000000002
feature space 0.002046401
our model 0.002039312
perceptron model 0.002028294
feature point 0.0020250710000000002
average feature 0.002015231
logical feature 0.0019880410000000003
independent model 0.00198783
bayesian model 0.001979125
binary feature 0.001976145
model linguistica 0.001972362
model supervisednearest 0.001942369
feature vectors 0.0019407
training set 0.00193663
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simple language 0.00192873
feature templates 0.001920838
versal feature 0.0019180680000000002
language pair 0.001901207
morphological features 0.001880241
test language 0.001873749
training languages 0.001866818
similar language 0.0018575150000000001
unique word 0.001840335
input language 0.001837817
language processing 0.001814197
word english 0.0018089710000000001
annotated language 0.0018072420000000001
language pairs 0.0017907490000000001
word classes 0.001764719
word types 0.0017458760000000002
nominal word 0.001738546
distinct word 0.0017323770000000002
word forms 0.00172945
language abbreviations 0.001729084
ural language 0.001729084
model 0.00171371
feature 0.00169358
word utiskom 0.001691467
word typew 0.001691467
target training 0.001591945
morphological tag 0.001544024
data set 0.0015404400000000001
possible training 0.001532791
language 0.00150606
features space 0.0014710209999999999
entropy features 0.001456579
training sets 0.001452994
training lan 0.0014439799999999999
large set 0.001441851
training sequence 0.001410557
particular training 0.0013987829999999998
single training 0.001396364
morphological analysis 0.001375654
training example 0.001358724
dimensional features 0.001351388
counting features 0.001342499
different languages 0.001340486
training examples 0.0013282939999999998
tween training 0.001307726
other languages 0.001263388
noun tags 0.001255934
next set 0.001182462
test languages 0.001154347
various languages 0.001151881
similar languages 0.001138113
features 0.0011182
parallel data 0.001106793
labeled languages 0.001098204
minimal set 0.001096393
multilingual analysis 0.001087964
morphological induction 0.001083168
morphological analyses 0.0010806589999999999
training 0.00108016
logical tag 0.001076444
morphological structure 0.0010682019999999999
additional languages 0.001063782
noun lexicon 0.001058077
rich languages 0.001043229
prediction task 0.001042677
other words 0.0010292580000000001
search algorithm 0.001015632
uralic languages 0.001015192
morphological analy 0.0010083969999999999
accuracy distance 9.95611E-4
distance accuracy 9.95611E-4
distinct noun 9.89092E-4
morphological induc 9.88734E-4
morphological groups 9.86175E-4
