LGCRApr 6

Dynamic Free-Rider Detection in Federated Learning via Simulated Attack Patterns

arXiv:2604.046112.1
Predicted impact top 96% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses a security issue in federated learning for systems vulnerable to free-riding attacks, but it is incremental as it builds on prior detection methods.

The paper tackles the problem of detecting dynamic free-riders in federated learning who switch from honest to dishonest behavior during training, and proposes S2-WEF, a method that simulates attack patterns and uses clustering to achieve higher robustness, as demonstrated in experiments across three datasets and five attack types.

Federated learning (FL) enables multiple clients to collaboratively train a global model by aggregating local updates without sharing private data. However, FL often faces the challenge of free-riders, clients who submit fake model parameters without performing actual training to obtain the global model without contributing. Chen et al. proposed a free-rider detection method based on the weight evolving frequency (WEF) of model parameters. This detection approach is a leading candidate for practical free-rider detection methods, as it requires neither a proxy dataset nor pre-training. Nevertheless, it struggles to detect ``dynamic'' free-riders who behave honestly in early rounds and later switch to free-riding, particularly under global-model-mimicking attacks such as the delta weight attack and our newly proposed adaptive WEF-camouflage attack. In this paper, we propose a novel detection method S2-WEF that simulates the WEF patterns of potential global-model-based attacks on the server side using previously broadcasted global models, and identifies clients whose submitted WEF patterns resemble the simulated ones. To handle a variety of free-rider attack strategies, S2-WEF further combines this simulation-based similarity score with a deviation score computed from mutual comparisons among submitted WEFs, and separates benign and free-rider clients by two-dimensional clustering and per-score classification. This method enables dynamic detection of clients that transition into free-riders during training without proxy datasets or pre-training. We conduct extensive experiments across three datasets and five attack types, demonstrating that S2-WEF achieves higher robustness than existing approaches.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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