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This content will become publicly available on June 1, 2023

Title: An Unsupervised Approach to Discover Media Frames
Media framing refers to highlighting certain aspect of an issue in the news to promote a particular interpretation to the audience. Supervised learning has often been used to recognize frames in news articles, requiring a known pool of frames for a particular issue, which must be identified by communication researchers through thorough manual content analysis. In this work, we devise an unsupervised learning approach to discover the frames in news articles automatically. Given a set of news articles for a given issue, e.g., gun violence, our method first extracts frame elements from these articles using related Wikipedia articles and the Wikipedia category system. It then uses a community detection approach to identify frames from these frame elements. We discuss the effectiveness of our approach by comparing the frames it generates in an unsupervised manner to the domain-expert-derived frames for the issue of gun violence, for which a supervised learning model for frame recognition exists.
Authors:
; ; ; ; ; ;
Award ID(s):
1838193
Publication Date:
NSF-PAR ID:
10347514
Journal Name:
Proceedings of The LREC 2022 workshop on Natural Language Processing for Political Sciences
Page Range or eLocation-ID:
22-31
Sponsoring Org:
National Science Foundation
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