FAROS: Robust Federated Learning with Adaptive Scaling against Backdoor Attacks
- URL: http://arxiv.org/abs/2601.01833v1
- Date: Mon, 05 Jan 2026 06:55:35 GMT
- Title: FAROS: Robust Federated Learning with Adaptive Scaling against Backdoor Attacks
- Authors: Chenyu Hu, Qiming Hu, Sinan Chen, Nianyu Li, Mingyue Zhang, Jialong Li,
- Abstract summary: backdoor attacks pose a significant threat to Federated Learning (FL)<n>We propose FAROS, an enhanced FL framework that incorporates Adaptive Differential Scaling (ADS) and Robust Core-set Computing (RCC)<n>RCC effectively mitigates the risk of single-point failure by computing the centroid of a core set comprising clients with the highest confidence.
- Score: 9.466036066320946
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Federated Learning (FL) enables multiple clients to collaboratively train a shared model without exposing local data. However, backdoor attacks pose a significant threat to FL. These attacks aim to implant a stealthy trigger into the global model, causing it to mislead on inputs that possess a specific trigger while functioning normally on benign data. Although pre-aggregation detection is a main defense direction, existing state-of-the-art defenses often rely on fixed defense parameters. This reliance makes them vulnerable to single-point-of-failure risks, rendering them less effective against sophisticated attackers. To address these limitations, we propose FAROS, an enhanced FL framework that incorporates Adaptive Differential Scaling (ADS) and Robust Core-set Computing (RCC). The ADS mechanism adjusts the defense's sensitivity dynamically, based on the dispersion of uploaded gradients by clients in each round. This allows it to counter attackers who strategically shift between stealthiness and effectiveness. Furthermore, the RCC effectively mitigates the risk of single-point failure by computing the centroid of a core set comprising clients with the highest confidence. We conducted extensive experiments across various datasets, models, and attack scenarios. The results demonstrate that our method outperforms current defenses in both attack success rate and main task accuracy.
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