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Detection of Fake News in Romanian: LLM-Based Approaches to COVID-19 Misinformation
by
Dima, Alexandru
, Dascalu, Mihai
, Ilis, Ecaterina
, Florea, Diana
in
Analysis
/ Artificial intelligence
/ Classification
/ Conspiracy theories
/ COVID-19 dataset
/ Credibility
/ Datasets
/ detection of fake news
/ Disinformation
/ Epidemics
/ False information
/ false information detection
/ International relations
/ Large language models
/ Learning strategies
/ Machine learning
/ natural language processing
/ News
/ Public health
/ Real time
/ Romania
/ Semi-supervised learning
/ Social media
/ Social networks
2025
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Detection of Fake News in Romanian: LLM-Based Approaches to COVID-19 Misinformation
by
Dima, Alexandru
, Dascalu, Mihai
, Ilis, Ecaterina
, Florea, Diana
in
Analysis
/ Artificial intelligence
/ Classification
/ Conspiracy theories
/ COVID-19 dataset
/ Credibility
/ Datasets
/ detection of fake news
/ Disinformation
/ Epidemics
/ False information
/ false information detection
/ International relations
/ Large language models
/ Learning strategies
/ Machine learning
/ natural language processing
/ News
/ Public health
/ Real time
/ Romania
/ Semi-supervised learning
/ Social media
/ Social networks
2025
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Do you wish to request the book?
Detection of Fake News in Romanian: LLM-Based Approaches to COVID-19 Misinformation
by
Dima, Alexandru
, Dascalu, Mihai
, Ilis, Ecaterina
, Florea, Diana
in
Analysis
/ Artificial intelligence
/ Classification
/ Conspiracy theories
/ COVID-19 dataset
/ Credibility
/ Datasets
/ detection of fake news
/ Disinformation
/ Epidemics
/ False information
/ false information detection
/ International relations
/ Large language models
/ Learning strategies
/ Machine learning
/ natural language processing
/ News
/ Public health
/ Real time
/ Romania
/ Semi-supervised learning
/ Social media
/ Social networks
2025
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Detection of Fake News in Romanian: LLM-Based Approaches to COVID-19 Misinformation
Journal Article
Detection of Fake News in Romanian: LLM-Based Approaches to COVID-19 Misinformation
2025
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Overview
The spread of misinformation during the COVID-19 pandemic raised widespread concerns about public health communication and media reliability. In this study, we focus on these issues as they manifested in Romanian-language media and employ Large Language Models (LLMs) to classify misinformation, with a particular focus on super-narratives—broad thematic categories that capture recurring patterns and ideological framings commonly found in pandemic-related fake news, such as anti-vaccination discourse, conspiracy theories, or geopolitical blame. While some of the categories reflect global trends, others are shaped by the Romanian cultural and political context. We introduce a novel dataset of fake news centered on COVID-19 misinformation in the Romanian geopolitical context, comprising both annotated and unannotated articles. We experimented with multiple LLMs using zero-shot, few-shot, supervised, and semi-supervised learning strategies, achieving the best results with an LLaMA 3.1 8B model and semi-supervised learning, which yielded an F1-score of 78.81%. Experimental evaluations compared this approach to traditional Machine Learning classifiers augmented with morphosyntactic features. Results show that semi-supervised learning substantially improved classification results in both binary and multi-class settings. Our findings highlight the effectiveness of semi-supervised adaptation in low-resource, domain-specific contexts, as well as the necessity of enabling real-time misinformation tracking and enhancing transparency through claim-level explainability and fact-based counterarguments.
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