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Privacy without Noisy Gradients: Slicing Mechanism for Generative Model Training

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Training generative models with differential privacy (DP) typically involves injecting noise into gradient updates or adapting the discriminator's training procedure. As a result, such approaches often struggle with hyper-parameter tuning and convergence. We consider the slicing privacy mechanism that injects noise into random low-dimensional projections of the private data, and provide strong privacy guarantees for it. These noisy projections are used for training generative models. To enable optimizing generative models using this DP approach, we introduce the smoothed-sliced $f$-divergence and show it enjoys statistical consistency. Moreover, we present a kernel-based estimator for this divergence, circumventing the need for adversarial training. Extensive numerical experiments demonstrate that our approach can generate synthetic data of higher quality compared with baselines. Beyond performance improvement, our method, by sidestepping the need for noisy gradients, offers data scientists the flexibility to adjust generator architecture and hyper-parameters, run the optimization over any number of epochs, and even restart the optimization process -- all without incurring additional privacy costs.

Kristjan Greenewald, Yuancheng Yu, Hao Wang, Kai Xu• 2024

Related benchmarks

TaskDatasetResultRank
Synthetic Tabular Data GenerationACS California (TravelTime) Folktables 2018
KSComp0.49
10
Synthetic Tabular Data GenerationACS California (Income) Folktables 2018
KSComp0.4
10
Synthetic Data GenerationCoverage
KSComp0.72
5
Synthetic Tabular Data GenerationACS California Coverage Folktables 2018
KSComp0.74
5
Synthetic Data GenerationMobility
KS Comp0.71
5
Synthetic Tabular Data GenerationACS California Employment Folktables 2018
KSComp0.77
5
Synthetic Data GenerationEmployment
KSComp0.67
5
Synthetic Data GenerationIncome
KSComp0.4
5
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