Please use this identifier to cite or link to this item: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/3413
Title: The Use of Supervised Learning Algorithms in Political Communication and Media Studies: Locating Frames in the Press
Other Titles: Communication & Society
Authors: García-Marín, Javier
Calatrava, Adolfo
Keywords: framing
press
Spain
Issue Date: 2018
Publisher: Communication & Society
Citation: García-Marín, J. and Calatrava, A. (2018). The Use of Supervised Learning Algorithms in Political Communication and Media Studies: Locating Frames in the Press. Communication & Society31(3), 175-188. https://doi.org/10.15581/003.31.35695
Abstract: To locate media frames is one of the biggest challenges facing academics in Political Communication disciplines. The traditional approach to the problem is the use of different coders and their subsequent comparison, either through statistical analysis, or through agreements between them. In both cases, problems arise due to the difficulty of defining exactly where the frame is as well as its meaning and implications. And, above all, it is a complex process that makes it very difficult to work with large data sets. The authors, however, propose the use of information cataloging algorithms as a way to solve these problems. These algorithms (Support Vector Machines, Random Forest, CNN, etc.) come from disciplines linked to neural networks and have become an industry standard devoted to the treatment of non-numerical information and natural language processing. In addition, when supervised, they can be trained to find the information that the researcher considers pertinent. The authors present one case study, the media framing of the refugee crisis in Europe (in 2015) as an example. In that regard, SVM shows a lot of potential, being able to locate frames successfully albeit with some limitations.
URI: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/3413
ISSN: 2386-7876
Appears in Collections:Documentos internacionales sobre libertad de expresión y derechos conexos

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