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Privacy-Preserving Adversarial Networks

Information Theory 2019-06-13 v3 Cryptography and Security Computer Science and Game Theory Machine Learning math.IT Machine Learning

Abstract

We propose a data-driven framework for optimizing privacy-preserving data release mechanisms to attain the information-theoretically optimal tradeoff between minimizing distortion of useful data and concealing specific sensitive information. Our approach employs adversarially-trained neural networks to implement randomized mechanisms and to perform a variational approximation of mutual information privacy. We validate our Privacy-Preserving Adversarial Networks (PPAN) framework via proof-of-concept experiments on discrete and continuous synthetic data, as well as the MNIST handwritten digits dataset. For synthetic data, our model-agnostic PPAN approach achieves tradeoff points very close to the optimal tradeoffs that are analytically-derived from model knowledge. In experiments with the MNIST data, we visually demonstrate a learned tradeoff between minimizing the pixel-level distortion versus concealing the written digit.

Keywords

Cite

@article{arxiv.1712.07008,
  title  = {Privacy-Preserving Adversarial Networks},
  author = {Ardhendu Tripathy and Ye Wang and Prakash Ishwar},
  journal= {arXiv preprint arXiv:1712.07008},
  year   = {2019}
}

Comments

16 pages

R2 v1 2026-06-22T23:23:12.357Z