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advanced model 0.002433964
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discourse structure 0.001770984
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single discourse 0.001639565
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classification task 9.90425E-4
new segment 9.6794E-4
error analysis 9.58347E-4
same segment 9.434339999999999E-4
first constraints 9.24875E-4
labelling task 9.21594E-4
label types 9.12848E-4
main label 8.96797E-4
tation task 8.95428E-4
other sequence 8.85017E-4
baseline approach 8.7823E-4
further performance 8.69428E-4
other speakers 8.67383E-4
negotiation label 8.56286E-4
other factors 8.55231E-4
multiple evaluation 8.470020000000001E-4
segmentation 8.38752E-4
different field 8.33017E-4
new framework 8.28605E-4
classification label 8.254390000000001E-4
other dimension 8.25002E-4
segment boundaries 8.184469999999999E-4
correct label 8.18267E-4
automatic label 8.16037E-4
feature 8.15766E-4
performance gains 8.143429999999999E-4
classification results 8.089569999999999E-4
possible label 8.03256E-4
new segments 7.96947E-4
label sequence 7.91618E-4
final evaluation 7.91221E-4
baseline bag 7.84765E-4
set con 7.80263E-4
current segment 7.70993E-4
same move 7.69554E-4
learning classification 7.60996E-4
next segment 7.574789999999999E-4
human analyses 7.56825E-4
accuracy kappa 7.52597E-4
language technologies 7.51807E-4
contextual features 7.47613E-4
evaluation metrics 7.45564E-4
entire segment 7.396239999999999E-4
preliminary evaluation 7.380090000000001E-4
objective function 7.32848E-4
last set 7.292850000000001E-4
many dialogue 7.266320000000001E-4
label options 7.23433E-4
negotiation framework 7.21761E-4
inate label 7.205530000000001E-4
supervised learning 7.16621E-4
human coders 7.1535E-4
computational work 7.13622E-4
analysis frames 7.11424E-4
surface level 7.07834E-4
linear programming 7.06652E-4
versation analysis 7.06189E-4
human judg 7.04274E-4
human annotators 7.04274E-4
human judgements 7.04274E-4
