Paper 2024/1471

Communication Efficient Secure and Private Multi-Party Deep Learning

Sankha Das, Microsoft Research (India)
Sayak Ray Chowdhury, Microsoft Research (India)
Nishanth Chandran, Microsoft Research (India)
Divya Gupta, Microsoft Research (India)
Satya Lokam, Microsoft Research (India)
Rahul Sharma, Microsoft Research (India)
Abstract

Distributed training that enables multiple parties to jointly train a model on their respective datasets is a promising approach to address the challenges of large volumes of diverse data for training modern machine learning models. However, this approach immedi- ately raises security and privacy concerns; both about each party wishing to protect its data from other parties during training and preventing leakage of private information from the model after training through various inference attacks. In this paper, we ad- dress both these concerns simultaneously by designing efficient Differentially Private, secure Multiparty Computation (DP-MPC) protocols for jointly training a model on data distributed among multiple parties. Our DP-MPC protocol in the two-party setting is 56-794× more communication-efficient and 16-182× faster than previous such protocols. Conceptually, our work simplifies and improves on previous attempts to combine techniques from secure multiparty computation and differential privacy, especially in the context of ML training.

Metadata
Available format(s)
PDF
Category
Applications
Publication info
Published elsewhere. Proceedings of Privacy Enhancing Technologies Symposium (PoPETS) 2025
Keywords
Differential PrivacySecure Multi-Party ComputationSecure and Private Deep LearningDiscrete Gaussian Mechanism
Contact author(s)
t-sankhadas @ microsoft com
sayak261090 @ gmail com
nichandr @ microsoft com
divya gupta @ microsoft com
satya lokam @ microsoft com
rahsha @ microsoft com
History
2024-09-21: approved
2024-09-20: received
See all versions
Short URL
https://ia.cr/2024/1471
License
Creative Commons Attribution
CC BY

BibTeX

@misc{cryptoeprint:2024/1471,
      author = {Sankha Das and Sayak Ray Chowdhury and Nishanth Chandran and Divya Gupta and Satya Lokam and Rahul Sharma},
      title = {Communication Efficient Secure and Private Multi-Party Deep Learning},
      howpublished = {Cryptology {ePrint} Archive, Paper 2024/1471},
      year = {2024},
      url = {https://eprint.iacr.org/2024/1471}
}
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