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Yes, we can! Mining Arguments in 50 Years of US Presidential Campaign Debates
Haddadan, Shohreh; Villata, Serena; Cabrio, Elena
2019ACL 2019
 

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Abstract :
[en] Political debates offer a rare opportunity for citizens to compare the candidates’ positions on the most controversial topics of the campaign. Thus they represent a natural application scenario for Argument Mining. As existing research lacks solid empirical investigation of the typology of argument components in political debates, we fill this gap by proposing an Argument Mining approach to political debates. We address this task in an empirical manner by annotating 39 political debates from the last 50 years of US presidential campaigns, creating a new corpus of 29k argument components, labeled as premises and claims. We then propose two tasks: (1) identifying the argumentative components in such debates, and (2) classifying them as premises and claims. We show that feature-rich SVM learners and Neural Network architectures outperform standard baselines in Argument Mining over such complex data. We release the new corpus USElecDeb60To16 and the accompanying software under free licenses to the research community.
Research center :
- Luxembourg Centre for Contemporary and Digital History (C2DH) > Doctoral Training Unit (DTU)
Disciplines :
Computer science
Author, co-author :
Haddadan, Shohreh ;  University of Luxembourg > Faculty of Science, Technology and Communication (FSTC) > Computer Science and Communications Research Unit (CSC)
Villata, Serena
Cabrio, Elena
External co-authors :
yes
Language :
English
Title :
Yes, we can! Mining Arguments in 50 Years of US Presidential Campaign Debates
Publication date :
July 2019
Event name :
ACL 2019
Event date :
from 28-07-2019 to 2-08-2019
Focus Area :
Computational Sciences
Funders :
FNR - Fonds National de la Recherche [LU]
Available on ORBilu :
since 26 September 2019

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