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tokens form 9.728240000000001E-4
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input queue 9.64733E-4
single optimization 9.60908E-4
training 9.59183E-4
input attributes 9.47142E-4
multilingual track 9.395650000000001E-4
labeled attachment 9.21797E-4
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root node 9.1094E-4
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vector machines 8.952879999999999E-4
ment score 8.927340000000001E-4
algorithm 8.91478E-4
languages 8.91254E-4
port vector 8.842399999999999E-4
artificial root 8.69449E-4
single malt 8.66359E-4
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linear time 8.45508E-4
second stage 8.42963E-4
single instance 8.408560000000001E-4
unattached tokens 8.33418E-4
unique label 8.166E-4
previous experiments 8.10402E-4
quadratic kernel 8.08003E-4
system 8.04863E-4
optimization criterion 8.03486E-4
right dependents 7.98899E-4
second pass 7.9838E-4
available maltparser 7.98227E-4
