Please use this identifier to cite or link to this item: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/6961
Title: Bayesian Multilevel Modeling and Its Application in Comparative Journalism Studies
Other Titles: International Journal of Communication
Authors: Chang, Chung H.
Rauchfleisch, Adrian
Keywords: model reserch
journalism
Issue Date: 2023
Publisher: International Journal of Communication
Citation: Chan, C.,and Rauchfleisch, A. (2023). Bayesian Multilevel Modeling and Its Application in Comparative Journalism Studies. International Journal Of Communication, 17, 22. Retrieved from https://ijoc.org/index.php/ijoc/article/view/19570/4196
Abstract: Comparative approaches are frequently used in communication research, especially journalism studies. The purpose of this article is to argue that Bayesian multilevel regression is the most justifiable option for analyzing comparative data. We argue that it is the only approach that can simultaneously account for the non-atomicity (nested nature) and non-stochasticity (nonrandom sampling) of comparative data. Using the openly available Worlds of Journalism Study and useNews data sets, we demonstrate how to apply the Bayesian approach for the analysis of comparative data. We address the common challenges when using the Bayesian approach and highlight the advantages of posterior predictive checks for modeling checking.
URI: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/6961
ISSN: 1932-8036
Appears in Collections:Documentos internacionales sobre libertad de expresión y derechos conexos

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