LGCRMar 18

ARES: Scalable and Practical Gradient Inversion Attack in Federated Learning through Activation Recovery

arXiv:2603.1762341.7h-index: 5
Predicted impact top 60% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses privacy risks for users in federated learning by revealing vulnerabilities in intermediate activations, though it is incremental as it builds on existing gradient inversion attacks.

The paper tackles the problem of gradient inversion attacks in federated learning by introducing ARES, an attack that reconstructs training samples from large batches without architectural modifications, achieving high-fidelity reconstruction and outperforming prior methods in experiments.

Federated Learning (FL) enables collaborative model training by sharing model updates instead of raw data, aiming to protect user privacy. However, recent studies reveal that these shared updates can inadvertently leak sensitive training data through gradient inversion attacks (GIAs). Among them, active GIAs are particularly powerful, enabling high-fidelity reconstruction of individual samples even under large batch sizes. Nevertheless, existing approaches often require architectural modifications, which limit their practical applicability. In this work, we bridge this gap by introducing the Activation REcovery via Sparse inversion (ARES) attack, an active GIA designed to reconstruct training samples from large training batches without requiring architectural modifications. Specifically, we formulate the recovery problem as a noisy sparse recovery task and solve it using the generalized Least Absolute Shrinkage and Selection Operator (Lasso). To extend the attack to multi-sample recovery, ARES incorporates the imprint method to disentangle activations, enabling scalable per-sample reconstruction. We further establish the expected recovery rate and derive an upper bound on the reconstruction error, providing theoretical guarantees for the ARES attack. Extensive experiments on CNNs and MLPs demonstrate that ARES achieves high-fidelity reconstruction across diverse datasets, significantly outperforming prior GIAs under large batch sizes and realistic FL settings. Our results highlight that intermediate activations pose a serious and underestimated privacy risk in FL, underscoring the urgent need for stronger defenses.

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