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Differentially Private Synthetic Data via Foundation Model APIs 1: Images

Authors :
Lin, Zinan
Gopi, Sivakanth
Kulkarni, Janardhan
Nori, Harsha
Yekhanin, Sergey
Publication Year :
2023

Abstract

Generating differentially private (DP) synthetic data that closely resembles the original private data without leaking sensitive user information is a scalable way to mitigate privacy concerns in the current data-driven world. In contrast to current practices that train customized models for this task, we aim to generate DP Synthetic Data via APIs (DPSDA), where we treat foundation models as blackboxes and only utilize their inference APIs. Such API-based, training-free approaches are easier to deploy as exemplified by the recent surge in the number of API-based apps. These approaches can also leverage the power of large foundation models which are accessible via their inference APIs while the model weights are unreleased. However, this comes with greater challenges due to strictly more restrictive model access and the additional need to protect privacy from the API provider. In this paper, we present a new framework called Private Evolution (PE) to solve this problem and show its initial promise on synthetic images. Surprisingly, PE can match or even outperform state-of-the-art (SOTA) methods without any model training. For example, on CIFAR10 (with ImageNet as the public data), we achieve FID<br />38 pages, 33 figures

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....20ae0e7690e0805960875fe9a0e1b4b0