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Automatic Analysis of Political Debates and Manifestos : Successes and Challenges
Ceron, Tanise; Barić, Ana; Blessing, André; u. a. (2024): Automatic Analysis of Political Debates and Manifestos : Successes and Challenges, in: Philipp Cimiano, Anette Frank, Michael Kohlhase, u. a. (Hrsg.), Robust argumentation machines : first international conference, RATIO 2024, Bielefeld, Germany, June 5-7, 2024 : proceedings, Cham, Switzerland: Springer Nature, S. 71–88, doi: 10.1007/978-3-031-63536-6_5.
Faculty/Chair:
Title of the compilation:
Robust argumentation machines : first international conference, RATIO 2024, Bielefeld, Germany, June 5-7, 2024 : proceedings
Editors:
Cimiano, Philipp
Frank, Anette
Kohlhase, Michael
Stein, Benno
Conference:
Robust Argumentation Machines (RATIO 2024) ; Bielefeld, Germany
Publisher Information:
Year of publication:
2024
Pages:
ISBN:
978-3-031-63536-6
Language:
English
Abstract:
The opinions of political actors (e.g., politicians, parties, organizations) expressed through claims are the core elements of political debates and decision-making. Political actors communicate through different channels: parties publish manifestos for major elections, while individual actors make statements on a day-to-day basis as reflected in the media. These two channels offer different approaches for analysis: Manifestos, on the one hand, are useful to characterize the parties’ positions at a global ideological level over time. In contrast, individual statements can be collected to analyze debates in particular policy domains on a fine-grained level, in terms of individual actors and claims. In this article, we summarize a series of studies we have carried out. We apply NLP-driven (semi-)automatic analyses on these two channels and compare their potentials and challenges. The fine-grained analysis yields rich insights into the communication but comes at the cost of three challenges: (a) a substantial hunger for manual annotation, introducing practical hurdles for analysis both within and across languages; (b) difficulties in claim classification arising from the uneven frequency distribution over the theory-based annotation schemas; (c) the need to map actor mentions onto canonical versions. Manifesto-based analysis avoids these challenges to a substantial extent when a more coarse-grained analysis of party positions is sufficient. We highlight the benefits and challenges of both approaches, and conclude by outlining perspectives for addressing the challenges in future research.
Keywords: ; ; ;
Claim identification
discourse network analysis
party positioning
argument mining
Type:
Conferenceobject
Activation date:
May 28, 2026
Versioning
Question on publication
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https://fis.uni-bamberg.de/handle/uniba/115294