Open AccessProceedings Article
PATE-GAN: Generating Synthetic Data with Differential Privacy Guarantees
James Jordon,Jinsung Yoon,Mihaela van der Schaar +2 more
- 27 Sep 2018
TL;DR: This paper investigates a method for ensuring (differential) privacy of the generator of the Generative Adversarial Nets (GAN) framework, and modifies the Private Aggregation of Teacher Ensembles (PATE) framework and applies it to GANs.
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Abstract: Machine learning has the potential to assist many communities in using the large datasets that are becoming more and more available. Unfortunately, much of that potential is not being realized because it would require sharing data in a way that compromises privacy. In this paper, we investigate a method for ensuring (differential) privacy of the generator of the Generative Adversarial Nets (GAN) framework. The resulting model can be used for generating synthetic data on which algorithms can be trained and validated, and on which competitions can be conducted, without compromising the privacy of the original dataset. Our method modifies the Private Aggregation of Teacher Ensembles (PATE) framework and applies it to GANs. Our modified framework (which we call PATE-GAN) allows us to tightly bound the influence of any individual sample on the model, resulting in tight differential privacy guarantees and thus an improved performance over models with the same guarantees. We also look at measuring the quality of synthetic data from a new angle; we assert that for the synthetic data to be useful for machine learning researchers, the relative performance of two algorithms (trained and tested) on the synthetic dataset should be the same as their relative performance (when trained and tested) on the original dataset. Our experiments, on various datasets, demonstrate that PATE-GAN consistently outperforms the stateof-the-art method with respect to this and other notions of synthetic data quality.
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Citations
A New Global Measure to Simultaneously Evaluate Data Utility and Privacy Risk
TL;DR: In this article , the authors proposed a new measure that can evaluate both data utility and privacy, a well-known trade-off relationship in data synthesis, by employing the notion of relative distance between the synthetic and original datasets at the dataset level.
Differentially Private Synthetic Mixed-Type Data Generation For Unsupervised Learning
Uthaipon Tantipongpipat,Chris Waites,Digvijay Boob,Amaresh Ankit Siva,Rachel Cummings +4 more
- 12 Jul 2021
TL;DR: The DP-auto-GAN framework as discussed by the authors combines the low dimensional representation of autoencoders with the flexibility of Generative Adversarial Networks (GANs) for synthetic data generation.
Archimedes Meets Privacy: On Privately Estimating Quantiles in High Dimensions Under Minimal Assumptions
Omri Ben-Eliezer,Dan Mikulincer,Ilias Zadik +2 more
- 15 Aug 2022
TL;DR: This work shows how one can privately, and with polynomially many samples, output an approximate interior point of the FB, and produce an approximate uniform sample from the FB by constructing a private noisy projection oracle, all working under very mild distributional assumptions.
PGAN-KD:Member Privacy Protection of GANs Based on Knowledge Distillation
Tianhan Zhang,Juan Yu,Jianmin Han,Hao Peng,Sheng Qiu +4 more
- 15 Dec 2023
TL;DR: A novel GAN framework PGAN-KD (member Privacy protection of GANs based on Knowledge Distillation), which adopts an extra teacher discriminator to distilling knowledge and then transfer it to a student discriminator, and thereby isolating the attacker from indirectly obtaining private information through the generator.
Differentially Private Language Models for Secure Data Sharing
Justus Mattern,Zhijing Jin,Benjamin Weggenmann,Bernhard Schoelkopf,Mrinmaya Sachan +4 more
- 01 Jan 2022
TL;DR: This paper introduces a novel approach for differentially private language models that generate high-quality synthetic text datasets while preserving privacy.
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