Membership Inference Attacks against Synthetic Data through Overfitting Detection

02/24/2023
by   Boris van Breugel, et al.
3

Data is the foundation of most science. Unfortunately, sharing data can be obstructed by the risk of violating data privacy, impeding research in fields like healthcare. Synthetic data is a potential solution. It aims to generate data that has the same distribution as the original data, but that does not disclose information about individuals. Membership Inference Attacks (MIAs) are a common privacy attack, in which the attacker attempts to determine whether a particular real sample was used for training of the model. Previous works that propose MIAs against generative models either display low performance – giving the false impression that data is highly private – or need to assume access to internal generative model parameters – a relatively low-risk scenario, as the data publisher often only releases synthetic data, not the model. In this work we argue for a realistic MIA setting that assumes the attacker has some knowledge of the underlying data distribution. We propose DOMIAS, a density-based MIA model that aims to infer membership by targeting local overfitting of the generative model. Experimentally we show that DOMIAS is significantly more successful at MIA than previous work, especially at attacking uncommon samples. The latter is disconcerting since these samples may correspond to underrepresented groups. We also demonstrate how DOMIAS' MIA performance score provides an interpretable metric for privacy, giving data publishers a new tool for achieving the desired privacy-utility trade-off in their synthetic data.

READ FULL TEXT

page 6

page 8

page 13

page 15

research
07/04/2023

Synthetic is all you need: removing the auxiliary data assumption for membership inference attacks against synthetic data

Synthetic data is emerging as the most promising solution to share indiv...
research
02/11/2022

Privacy-preserving Generative Framework Against Membership Inference Attacks

Artificial intelligence and machine learning have been integrated into a...
research
06/03/2016

Using Neural Generative Models to Release Synthetic Twitter Corpora with Reduced Stylometric Identifiability of Users

We present a method for generating synthetic versions of Twitter data us...
research
09/11/2020

MACE: A Flexible Framework for Membership Privacy Estimation in Generative Models

Generative models are widely used for publishing synthetic datasets. Des...
research
02/05/2021

Measuring Utility and Privacy of Synthetic Genomic Data

Genomic data provides researchers with an invaluable source of informati...
research
06/13/2022

Assessing Privacy Leakage in Synthetic 3-D PET Imaging using Transversal GAN

Training computer-vision related algorithms on medical images for diseas...
research
05/27/2022

Benign Overparameterization in Membership Inference with Early Stopping

Does a neural network's privacy have to be at odds with its accuracy? In...

Please sign up or login with your details

Forgot password? Click here to reset