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Main Authors: Frermann, Lea, Li, Jiatong, Khanehzar, Shima, Mikolajczak, Gosia
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2306.02052
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author Frermann, Lea
Li, Jiatong
Khanehzar, Shima
Mikolajczak, Gosia
author_facet Frermann, Lea
Li, Jiatong
Khanehzar, Shima
Mikolajczak, Gosia
contents Despite increasing interest in the automatic detection of media frames in NLP, the problem is typically simplified as single-label classification and adopts a topic-like view on frames, evading modelling the broader document-level narrative. In this work, we revisit a widely used conceptualization of framing from the communication sciences which explicitly captures elements of narratives, including conflict and its resolution, and integrate it with the narrative framing of key entities in the story as heroes, victims or villains. We adapt an effective annotation paradigm that breaks a complex annotation task into a series of simpler binary questions, and present an annotated data set of English news articles, and a case study on the framing of climate change in articles from news outlets across the political spectrum. Finally, we explore automatic multi-label prediction of our frames with supervised and semi-supervised approaches, and present a novel retrieval-based method which is both effective and transparent in its predictions. We conclude with a discussion of opportunities and challenges for future work on document-level models of narrative framing.
format Preprint
id arxiv_https___arxiv_org_abs_2306_02052
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Conflicts, Villains, Resolutions: Towards models of Narrative Media Framing
Frermann, Lea
Li, Jiatong
Khanehzar, Shima
Mikolajczak, Gosia
Computation and Language
Despite increasing interest in the automatic detection of media frames in NLP, the problem is typically simplified as single-label classification and adopts a topic-like view on frames, evading modelling the broader document-level narrative. In this work, we revisit a widely used conceptualization of framing from the communication sciences which explicitly captures elements of narratives, including conflict and its resolution, and integrate it with the narrative framing of key entities in the story as heroes, victims or villains. We adapt an effective annotation paradigm that breaks a complex annotation task into a series of simpler binary questions, and present an annotated data set of English news articles, and a case study on the framing of climate change in articles from news outlets across the political spectrum. Finally, we explore automatic multi-label prediction of our frames with supervised and semi-supervised approaches, and present a novel retrieval-based method which is both effective and transparent in its predictions. We conclude with a discussion of opportunities and challenges for future work on document-level models of narrative framing.
title Conflicts, Villains, Resolutions: Towards models of Narrative Media Framing
topic Computation and Language
url https://arxiv.org/abs/2306.02052