6 results found

Nurahmed Ali Yassin

Federated learning (FL) has emerged as a paradigm-shifting approach to distributed machine learning, enabling multiple participants to collaboratively train models without exposing raw data. However, ...

Research Square 2026-04-23 rs-9491795
federated learning differential privacy homomorphic encryption secure multi-party computation Byzantine fault tolerance zero-knowledge proofs distributed machine learning privacy-preserving AI adversarial robustness gradient privacy

Du Nguyen Duy, Ramin Nikzad-Langerodi, Josef Scharinger, Michael Affenzeller

In modern manufacturing value chains, achieving optimal product quality and sustainability necessitates collaboration across interconnected stakeholders. Conventional Latent Variable Model Inversion (...

Discover Artificial Intelligence 2026-04-23 rs-9243934
Cross-organizational Process Optimization Partial Least Squares Cooperative Coevolution Genetic Algorithm Vertical Federated Learning Latent Variable Model Inversion

Surendiran Muthukumar, Deepalakshmi Kumar, Ranjit Panigrahi, Paolo Barsocchi, Akash Kumar Bhoi

Data heterogeneity remains one of the most significant challenges in federated learning (FL), impacting model performance, convergence, and scalability. This issue is especially critical in healthcare...

Journal of Big Data 2026-04-22 rs-8191856
Federated Learning Data Heterogeneity Clustering Personalized Models Healthcare Informatics Non-IID Data Privacy Preservation

Yongcai Li, Yuexia Zhou, Xiangyu Liu, Kai Chen, Jinpeng Chen, Chang'an Yi

Federated test-time adaptation (FTTA) enables privacy-preserving model adaptation to unlabeled target data during inference, yet it struggles with dynamic source client availability and uncertain test...

Research Square 2026-04-21 rs-9453712
Image classification federated learning test-time adaptation class-wise pseudo-label distribution shift

Rahul Nayak, Aditya Prasoon

Federated learning has emerged as the dominant paradigm for privacy-preserving intrusion detection across distributed networks, yet its vulnerability to adversarial manipulation of the training proces...

The Journal of Supercomputing 2026-04-21 rs-9275643
Federated learning Intrusion detection Non-IID heterogeneity Byzantine resilience Adversarial machine learning Multi-agent systems Non-stationary distribution attack

Gabriel Gomes de Oliveira, Suja A. Alex, J. Renees, Abdullah Ayub Khan, Vania V. Estrela, Shilpa Mahajan, Asif A. Laghari, Asiya Khan

The growing prevalence of diabetes highlights the need for scalable, accurate, and privacy-conscious testing technologies. To train models, traditional machine learning (ML) techniques often rely on c...

Discover Artificial Intelligence 2026-04-21 rs-9182048
Federated Learning Edge Computing Decentralized Intelligence Deep Neural Network Diabetes Prediction Healthcare
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