Please use this identifier to cite or link to this item: https://evnuir.vnu.edu.ua/handle/123456789/30568
Title: A computational analysis of emotionally manipulative content in media coverage of the Russia-Ukraine war
Authors: Ovsianko, Olena
Prokopenko, Antonina
Zinchenko, Anna
Affiliation: Sumy State University, Ukraine
Bibliographic description (Ukraine): Ovsianko, O. ., Prokopenko, A., & Zinchenko, A. (2025). A computational analysis of emotionally manipulative content in media coverage of the Russia-Ukraine war. East European Journal of Psycholinguistics , 12(2), 309-337. https://doi.org/10.29038/ovs
Journal/Collection: East European Journal of Psycholinguistics
Issue Date: Dec-2025
Date of entry: 2-Mar-2026
Publisher: Lesya Ukrainka Volyn National University
Country (code): UA
Place of the edition/event: Lesya Ukrainka Volyn National University
DOI: https://doi.org/10.29038/ovs
Keywords: media discourse
Russia-Ukraine war coverage
natural language processing
transformer-based models
emotion detection
emotionally manipulative tactics
Page range: 309-337
Abstract: This paper comprehensively examines emotional patterns and manipulative tactics in English-language digital news coverage of the Russia-Ukraine war. The research examines the use of emotions across English-language media outlets, explaining their rhetorical functions and their potential for ideological influence. Using a purpose-built corpus of 488 full-length news articles published between February 2022 and early 2025, we utilise the Emotion English DistilRoBERTa-base model, fine-tuned for effective classification. This model assigns Ekman’s (1992) six basic emotions (anger, disgust, fear, enjoyment, sadness, surprise), plus a neutral class, and enables analysis of their distribution across 14 thematic categories and four media domains: the US, the UK, the EU, and global. We investigate the relationship between dominant emotions and 18 manually coded emotionally manipulative tactics. The main findings of the research indicate that negative emotions, most notably fear and anger, predominate in the corpus, functioning as discursive tools for mobilisation, blame, and perception shaping. Sadness and disgust are primarily associated with humanitarian reporting, while enjoyment and surprise remain marginal. Although neutral tone is less emotionally charged, it plays a rhetorical role in diplomatic and strategic reporting, framing neutrality as a deliberate perspective rather than emotional engagement. The research reveals that emotionally manipulative tactics, such as fear-based mobilisation, emphasis on the scale of tragedy, and victim-aggressor contrast, are widely employed across all media outlets, yet differ in frequency and function depending on media origin. The findings obtained emphasise the pivotal role of emotional framing in shaping audience engagement and moral alignment. This paper deepens understanding of digital war reporting, offering insights into how automated emotion detection, alongside discourse analysis, can expose the latent ideological functions of emotion in English-language news coverage. The study contributes to media discourse analysis and highlights the methodological value of computational methods in detecting emotional manipulation in news coverage.
URI: https://evnuir.vnu.edu.ua/handle/123456789/30568
Copyright owner: © East European Journal of Psycholinguistics, 2025
Content type: Article
Appears in Collections:East European Journal of Psycholinguistics, 2025, Volume 12, Number 2

Files in This Item:
File Description SizeFormat 
eejpl_12_2_2025_Ovsianko_etal.pdf483,75 kBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.