Scale-MIA: A Scalable Model Inversion Attack against Secure Federated Learning via Latent Space Reconstruction
Shanghao Shi, Ning Wang, Yang Xiao, Chaoyu Zhang, Yi Shi, Y.Thomas, Hou, Wenjing Lou

TL;DR
Scale-MIA introduces an efficient, scalable model inversion attack that reconstructs individual data samples from federated learning model updates by exploiting latent space representations, outperforming existing methods in accuracy and efficiency.
Contribution
The paper presents a novel two-step attack method that reconstructs local training data from aggregated updates without extensive computation or detectable modifications.
Findings
Achieves high reconstruction accuracy across datasets
Outperforms state-of-the-art MIAs in efficiency and scale
Effective even with secure aggregation protocols
Abstract
Federated learning is known for its capability to safeguard the participants' data privacy. However, recently emerged model inversion attacks (MIAs) have shown that a malicious parameter server can reconstruct individual users' local data samples from model updates. The state-of-the-art attacks either rely on computation-intensive iterative optimization methods to reconstruct each input batch, making scaling difficult, or involve the malicious parameter server adding extra modules before the global model architecture, rendering the attacks too conspicuous and easily detectable. To overcome these limitations, we propose Scale-MIA, a novel MIA capable of efficiently and accurately reconstructing local training samples from the aggregated model updates, even when the system is protected by a robust secure aggregation (SA) protocol. Scale-MIA utilizes the inner architecture of models and…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Geophysical Methods and Applications · Privacy-Preserving Technologies in Data
