TL;DR
FLARE introduces an adaptive, multi-dimensional reputation system for federated learning that enhances robustness against malicious clients and adaptive attacks, maintaining high accuracy and convergence speed.
Contribution
It presents a novel reputation framework with adaptive thresholds, soft exclusion, and privacy-preserving scoring, improving robustness over static, binary methods.
Findings
FLARE maintains high accuracy under diverse attacks.
It improves robustness by up to 16%.
It converges within 30% of the non-attacked baseline.
Abstract
Federated learning (FL) enables collaborative model training while preserving data privacy. However, it remains vulnerable to malicious clients who compromise model integrity through Byzantine attacks, data poisoning, or adaptive adversarial behaviors. Existing defense mechanisms rely on static thresholds and binary classification, failing to adapt to evolving client behaviors in real-world deployments. We propose FLARE, an adaptive reputation-based framework that transforms client reliability assessment from binary decisions to a continuous, multi-dimensional trust evaluation. FLARE integrates: (i) a multi-dimensional reputation score capturing performance consistency, statistical anomaly indicators, and temporal behavior, (ii) a self-calibrating adaptive threshold mechanism that adjusts security strictness based on model convergence and recent attack intensity, (iii)…
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