Abstract
Abstract
In a complex information environment, Russia’s invasion of Ukraine presents a major challenge to the communication of political leaders throughout the world. The objective of this article is to analyse the frames and sentiments used by German chancellor Olaf Scholz, employing a novel data set of his Twitter communication (N = 612) during the Russian invasion of Ukraine between 24 February 2022 and 24 February 2023. A combination of computational text analysis approaches with natural language processing (NLP) techniques was used, including the Valence Aware Dictionary and the sentiment Reasoner (VADER) model for sentiment analysis and Latent Dirichlet Allocation (LDA) for topic modelling. This research investigates the prevalent frames and emotions in the chancellor’s communication, providing valuable insights into the German government’s stance and strategic communication during this critical geopolitical event. The results of the study revealed that the chancellor used the frames ‘effects of the Ukraine invasion’, ‘climate & environment’, ‘solidarity’ and ‘Russian aggression’ and communicated with positive sentiments. By examining the chancellor’s Twitter communication, this study contributes to the understanding of political communication in the digital era, particularly in the context of international crises, and offers implications for policymakers, scholars and the broader public.
Subject
Political Science and International Relations,Sociology and Political Science
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