Low Complexity Byzantine-Resilient Federated Learning
<p dir="ltr">Federated learning (FL) has gained attention for enabling efficient distributed learning while maintaining data privacy. However, the data privacy constraint reduces the transparency in the agents’ model update making the learning process vulnerable to Byzantine attacks....
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| Main Author: | A. Gouissem (17541396) (author) |
|---|---|
| Other Authors: | S. Hassanein (21399926) (author), K. Abualsaud (17541399) (author), E. Yaacoub (17541402) (author), M. Mabrok (21399929) (author), M. Abdallah (812014) (author), T. Khattab (17541405) (author), M. Guizani (17541408) (author) |
| Published: |
2024
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| Subjects: | |
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