A Randomized Approach for Tight Privacy Accounting
Wang, Jiachen T., Mahloujifar, Saeed, Wu, Tong, Jia, Ruoxi, Mittal, Prateek
–arXiv.org Artificial Intelligence
Bounding privacy leakage over compositions, i.e., privacy accounting, is a key challenge in differential privacy (DP). The privacy parameter ($\eps$ or $\delta$) is often easy to estimate but hard to bound. In this paper, we propose a new differential privacy paradigm called estimate-verify-release (EVR), which addresses the challenges of providing a strict upper bound for privacy parameter in DP compositions by converting an estimate of privacy parameter into a formal guarantee. The EVR paradigm first estimates the privacy parameter of a mechanism, then verifies whether it meets this guarantee, and finally releases the query output based on the verification result. The core component of the EVR is privacy verification. We develop a randomized privacy verifier using Monte Carlo (MC) technique. Furthermore, we propose an MC-based DP accountant that outperforms existing DP accounting techniques in terms of accuracy and efficiency. Our empirical evaluation shows the newly proposed EVR paradigm improves the utility-privacy tradeoff for privacy-preserving machine learning.
arXiv.org Artificial Intelligence
Nov-20-2023
- Country:
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- Research Report (0.81)
- Industry:
- Information Technology > Security & Privacy (1.00)
- Technology:
- Information Technology
- Artificial Intelligence
- Machine Learning
- Neural Networks (0.46)
- Performance Analysis > Accuracy (0.71)
- Statistical Learning (0.46)
- Representation & Reasoning (1.00)
- Machine Learning
- Data Science (1.00)
- Security & Privacy (1.00)
- Artificial Intelligence
- Information Technology