Computational vs. qualitative: analyzing different approaches in identifying networked frames during the Covid-19 crisis

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Kermani, H.; Makou, A.B.; Tafreshi, A.; Ghodsi, A.M.; Atashzar, A. et al.: Computational vs. qualitative: analyzing different approaches in identifying networked frames during the Covid-19 crisis. In: International Journal of Social Research Methodology (2023), online first. DOI: https://doi.org/10.1080/13645579.2023.2186566

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Sum total of downloads: 41




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Abstract: 
Despite the increasing adaption of automated text analysis in communication studies, its strengths and weaknesses in framing analysis are so far unknown. Fewer efforts have been made to automatic detection of networked frames. Drawing on the recent developments in this field, we harness a comparative exploration, using Latent Dirichlet Allocation (LDA) and a human-driven qualitative coding process on three different samples. Samples were comprised of a dataset of 4,165,177 million tweets collected from Iranian Twittersphere during the Coronavirus crisis, from 21 January, 2020 to 29 April, 2020. Findings showed that while LDA is reliable in identifying the most prominent networked frames, it misses to detects less dominant frames. Our investigation also confirmed that LDA works better on larger datasets and lexical semantics. Finally, we argued that LDA could give us some primary intuitions, but qualitative interpretations are indispensable for understanding the deeper layers of meaning.
License of this version: CC BY-NC-ND 4.0 Unported
Document Type: Article
Publishing status: publishedVersion
Issue Date: 2023
Appears in Collections:Fakultät für Elektrotechnik und Informatik

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pos. country downloads
total perc.
1 image of flag of Germany Germany 23 56.10%
2 image of flag of United States United States 6 14.63%
3 image of flag of Indonesia Indonesia 4 9.76%
4 image of flag of South Africa South Africa 1 2.44%
5 image of flag of Taiwan Taiwan 1 2.44%
6 image of flag of Tunisia Tunisia 1 2.44%
7 image of flag of Netherlands Netherlands 1 2.44%
8 image of flag of Malaysia Malaysia 1 2.44%
9 image of flag of China China 1 2.44%
10 image of flag of Austria Austria 1 2.44%
    other countries 1 2.44%

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