Université Blida 1

Poisoning attacks detection in federated learning for healthcare applications

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dc.contributor.author Benkessiouer, Hind
dc.contributor.author Hakem, Yassine
dc.contributor.author Madani, Amina. (Promotrice)
dc.date.accessioned 2025-12-14T12:55:52Z
dc.date.available 2025-12-14T12:55:52Z
dc.date.issued 2025-07-02
dc.identifier.uri https://di.univ-blida.dz/jspui/handle/123456789/41164
dc.description ill.,Bibliogr.cote:MA-004-1058 fr_FR
dc.description.abstract Federated Learning (FL) in healthcare offers a clear approach to collaboratively train machine learning algorithms, all while ensuring patient confidentiality and adhering to regulatory standards. Nonetheless, this decentralized framework introduces fresh security challenges, especially in the form of poisoning attacks. In these scenarios, malicious clients intentionally modify data or alter model updates, aiming to undermine overall performance or introduce harmful activities. This thesis explores the challenges posed by poisoning attacks in healthcare-related feder- ated learning systems and introduces a new hybrid adaptive defense system that dynam- ically balances effectiveness and resilience in response to immediate threat assessments. Our approach combines various aggregation methods with anomaly detection to effec- tively address different attack scenarios while ensuring that system performance remains strong during regular operations. We conducted thorough experiments on the PathMNIST dataset, simulating different ad- versarial poisoning attacks that included label flipping, backdoor methods, and composite strategies. The findings indicate that the proposed enhancements significantly boost de- fense efficiency, particularly regarding accuracy, F1-score, and false negative rate, while maintaining a reasonable level of computational overhead. The hybrid system is designed to handle challenges gracefully and adjusts well to unexpected changes, which makes it a good fit for important healthcare settings. This work highlights the importance of flexi- ble security solutions in federated environments and lays a strong foundation for future advancements in trusted collaborative learning, especially in sensitive areas. Keywords: Federated Learning; Healthcare; Machine Learning; Poisoning Attacks; Hy- brid Adaptive Defense; Aggregation Methods; Anomaly Detection; PathMNIST. fr_FR
dc.language.iso en fr_FR
dc.publisher Université Blida 1 fr_FR
dc.subject Federated Learning fr_FR
dc.subject Healthcare fr_FR
dc.subject Machine Learning fr_FR
dc.subject Poisoning Attacks fr_FR
dc.subject Hy- brid Adaptive Defense fr_FR
dc.subject Aggregation Methods fr_FR
dc.subject Anomaly Detection fr_FR
dc.subject PathMNIST. fr_FR
dc.title Poisoning attacks detection in federated learning for healthcare applications fr_FR
dc.type Thesis fr_FR


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