LGCRJul 21, 2025

Optimizing Canaries for Privacy Auditing with Metagradient Descent

arXiv:2507.15836v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately auditing privacy in black-box settings for machine learning practitioners, though it is incremental as it builds on existing auditing methods.

The paper tackles the problem of improving privacy auditing for differentially private learning algorithms by optimizing the canary set used in membership inference attacks, resulting in over 2x improvement in empirical lower bounds for privacy parameters in certain cases.

In this work we study black-box privacy auditing, where the goal is to lower bound the privacy parameter of a differentially private learning algorithm using only the algorithm's outputs (i.e., final trained model). For DP-SGD (the most successful method for training differentially private deep learning models), the canonical approach auditing uses membership inference-an auditor comes with a small set of special "canary" examples, inserts a random subset of them into the training set, and then tries to discern which of their canaries were included in the training set (typically via a membership inference attack). The auditor's success rate then provides a lower bound on the privacy parameters of the learning algorithm. Our main contribution is a method for optimizing the auditor's canary set to improve privacy auditing, leveraging recent work on metagradient optimization. Our empirical evaluation demonstrates that by using such optimized canaries, we can improve empirical lower bounds for differentially private image classification models by over 2x in certain instances. Furthermore, we demonstrate that our method is transferable and efficient: canaries optimized for non-private SGD with a small model architecture remain effective when auditing larger models trained with DP-SGD.

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