TL;DR
This paper introduces a novel augmentation method for federated learning poisoning attacks, making them more stealthy and effective against existing defenses by exploiting model parameter redundancy.
Contribution
It proposes a generic, attack-agnostic approach that constructs, generates, and injects poisons into a tiny subnet, exposing flaws in current defenses.
Findings
Enhanced attacks bypass popular defenses
Up to 7x increase in error rate
More than 2x average error rate increase
Abstract
Without direct access to the client's data, federated learning (FL) is well-known for its unique strength in data privacy protection among existing distributed machine learning techniques. However, its distributive and iterative nature makes FL inherently vulnerable to various poisoning attacks. To counteract these threats, extensive defenses have been proposed to filter out malicious clients, using various detection metrics. Based on our analysis of existing attacks and defenses, we find that there is a lack of attention to model redundancy. In neural networks, various model parameters contribute differently to the model's performance. However, existing attacks in FL manipulate all the model update parameters with the same strategy, making them easily detectable by common defenses. Meanwhile, the defenses also tend to analyze the overall statistical features of the entire model…
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