4.1 Article

Sentiment analysis for measuring hope and fear from Reddit posts during the 2022 Russo-Ukrainian conflict

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FRONTIERS MEDIA SA
DOI: 10.3389/frai.2023.1163577

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text mining (TM); social media; sentiment (SEN) analysis; hope; fear

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This article proposes a novel lexicon-based unsupervised sentiment analysis method to measure the hope and fear for the 2022 Ukrainian-Russian Conflict. Reddit data is collected and analyzed to create a new dataset, and the analysis shows that hope strongly decreases after symbolic and strategic losses. Surprisingly, spikes in hope/fear are observed not only after important battles but also after non-military events.
This article proposes a novel lexicon-based unsupervised sentiment analysis method to measure the hope and fear for the 2022 Ukrainian-Russian Conflict. is utilized as the main source of human reactions to daily events during nearly the first 3 months of the conflict. The top 50 hot posts of six different subreddits about Ukraine and news (Ukraine, worldnews, Ukraina, UkrainianConflict, UkraineWarVideoReport, and UkraineWarReports) along with their relative comments are scraped every day between 10th of May and 28th of July, and a novel data set is created. On this corpus, multiple analyzes, such as (1) public interest, (2) Hope/Fear score, and (3) stock price interaction, are employed. We use a dictionary approach, which scores the hopefulness of every submitted user post. The Latent Dirichlet Allocation (LDA) algorithm of topic modeling is also utilized to understand the main issues raised by users and what are the key talking points. Experimental analysis shows that the hope strongly decreases after the symbolic and strategic losses of Azovstal (Mariupol) and Severodonetsk. Spikes in hope/fear, both positives and negatives, are present not only after important battles, but also after some non-military events, such as Eurovision and football games.

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