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| dc.contributor.author |
Echikr, Abdelghafour |
|
| dc.contributor.author |
Madani, Amina. (Promotrice) |
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| dc.date.accessioned |
2025-12-17T12:18:34Z |
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| dc.date.available |
2025-12-17T12:18:34Z |
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| dc.date.issued |
2025 |
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| dc.identifier.uri |
https://di.univ-blida.dz/jspui/handle/123456789/41194 |
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| dc.description |
ill.,Bibliogr.cote:MA-004-1096 |
fr_FR |
| dc.description.abstract |
The spread of health misinformation on social networks has become a critical public health concern, undermining trust in medical advice, promoting harmful behaviors, and weakening responses to global crises like the COVID-19 pandemic. Unlike general misin- formation, health-related falsehoods often exploit scientific language, emotional appeal, and evolving medical knowledge, making them harder to detect and regulate. Social plat- forms, with their rapid content sharing and echo chambers, further amplify misleading narratives before fact-checkers can respond.
Manual moderation and traditional detection systems struggle to keep pace with the volume and complexity of content, especially when misinformation is subtle, context- dependent, or shared with misleading intent. The dynamic and informal nature of so- cial media language presents additional challenges for rule-based or keyword-driven ap- proaches.
To address these issues, this thesis explores a deep learning-based solution using a Mod- ernBERT architecture. By fine-tuning the model on labeled health misinformation data from social platforms, we demonstrate its ability to capture contextual and linguistic patterns that distinguish false claims from factual ones, providing a foundation for more scalable, automated detection tools.
Keywords: health misinformation, social media, BERT, ModernBERT, deep learning, natural language processing, misinformation detection, public health, transformer models, contextual embeddings. |
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| dc.language.iso |
en |
fr_FR |
| dc.publisher |
Université Blida 1 |
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| dc.subject |
health misinformation |
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| dc.subject |
social media |
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| dc.subject |
BERT |
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| dc.subject |
ModernBERT |
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| dc.subject |
deep learning |
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| dc.subject |
natural language processing |
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| dc.subject |
misinformation detection |
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| dc.subject |
public health |
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| dc.subject |
contextual embeddings |
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| dc.subject |
transformer models |
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| dc.title |
Health Misinformation Detection on Social Networks |
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| dc.type |
Thesis |
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