Paper 2025/460

Achieving Data Reconstruction Hardness and Efficient Computation in Multiparty Minimax Training

Truong Son Nguyen, Arizona State University
Yi Ren, Arizona State University
Guangyu Nie, Arizona State University
Ni Trieu, Arizona State University
Abstract

Generative models have achieved remarkable success in a wide range of applications. Training such models using proprietary data from multiple parties has been studied in the realm of federated learning. Yet recent studies showed that reconstruction of authentic training data can be achieved in such settings. On the other hand, multiparty computation (MPC) guarantees standard data privacy, yet scales poorly for training generative models. In this paper, we focus on improving reconstruction hardness during Generative Adversarial Network (GAN) training while keeping the training cost tractable. To this end, we explore two training protocols that use a public generator and an MPC discriminator: Protocol 1 (P1) uses a fully private discriminator, while Protocol 2 (P2) privatizes the first three discriminator layers. We prove reconstruction hardness for P1 and P2 by showing that (1) a public generator does not allow recovery of authentic training data, as long as the first two layers of the discriminator are private; and through an existing approximation hardness result on ReLU networks, (2) a discriminator with at least three private layers does not allow authentic data reconstruction with algorithms polynomial in network depth and size. We show empirically that compared with fully MPC training, P1 reduces the training time by and P2 further by .

Metadata
Available format(s)
PDF
Category
Applications
Publication info
Published elsewhere. The 25th Privacy Enhancing Technologies Symposium, PETS 2025
Keywords
secure machine learningminimax trainingmultiparty computationgenerative adversarial neural network
Contact author(s)
snguye63 @ asu edu
yiren @ asu edu
gnie1 @ asu edu
ntrieu1 @ asu edu
History
2025-03-12: approved
2025-03-11: received
See all versions
Short URL
https://ia.cr/2025/460
License
Creative Commons Attribution
CC BY

BibTeX

@misc{cryptoeprint:2025/460,
      author = {Truong Son Nguyen and Yi Ren and Guangyu Nie and Ni Trieu},
      title = {Achieving Data Reconstruction Hardness and Efficient Computation in Multiparty Minimax Training},
      howpublished = {Cryptology {ePrint} Archive, Paper 2025/460},
      year = {2025},
      url = {https://eprint.iacr.org/2025/460}
}
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