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Changes in Policy Preferences in German Tweets During the COVID Pandemic

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Social Informatics (SocInfo 2022)

Part of the book series: Lecture Notes in Computer Science ((LNCS,volume 13618))

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Abstract

Online social media have become an important forum for exchanging political opinions. In response to COVID measures citizens expressed their policy preferences directly on these platforms. Quantifying political preferences in online social media remains challenging: The vast amount of content requires scalable automated extraction of political preferences – however fine grained political preference extraction is difficult with current machine learning (ML) technology, due to the lack of data sets. Here we present a novel data set of tweets with fine grained political preference annotations. A text classification model trained on this data is used to extract policy preferences in a German Twitter corpus ranging from 2019 to 2022. Our results indicate that in response to the COVID pandemic, expression of political opinions increased. Using a well established taxonomy of policy preferences we analyse fine grained political views and highlight changes in distinct political categories. These analyses suggest that the increase in policy preference expression is dominated by the categories pro-welfare, pro-education and pro-governmental administration efficiency. All training data and code used in this study are made publicly available to encourage other researchers to further improve automated policy preference extraction methods. We hope that our findings contribute to a better understanding of political statements in online social media and to a better assessment of how COVID measures impact political preferences.

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Acknowledgements

We thank Jonas Bauer for conceptualizing, implementing and maintaining the first data annotation setup, Teo Chiaburu for setting up labelstudio, Marvin Müller and Maren Krumbein for annotating tweets, Pola Lehmann for training the annotators and valuable feedback on the analyses, Johannes Hoster for analyses and Philipp Staab for valuable discussions on sociological aspects.

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Correspondence to Felix Biessmann .

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Biessmann, F. (2022). Changes in Policy Preferences in German Tweets During the COVID Pandemic. In: Hopfgartner, F., Jaidka, K., Mayr, P., Jose, J., Breitsohl, J. (eds) Social Informatics. SocInfo 2022. Lecture Notes in Computer Science, vol 13618. Springer, Cham. https://doi.org/10.1007/978-3-031-19097-1_29

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  • DOI: https://doi.org/10.1007/978-3-031-19097-1_29

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