Differentially Private Gradient Flow based on the Sliced Wasserstein Distance for Non-Parametric Generative Modeling
Sebag, Ilana, PYDI, Muni Sreenivas, Franceschi, Jean-Yves, Rakotomamonjy, Alain, Gartrell, Mike, Atif, Jamal, Allauzen, Alexandre
Safeguarding privacy in sensitive training data is paramount, particularly in the context of generative modeling. This is done through either differentially private stochastic gradient descent, or with a differentially private metric for training models or generators. In this paper, we introduce a novel differentially private generative modeling approach based on parameter-free gradient flows in the space of probability measures. The proposed algorithm is a new discretized flow which operates through a particle scheme, utilizing drift derived from the sliced Wasserstein distance and computed in a private manner. Our experiments show that compared to a generator-based model, our proposed model can generate higher-fidelity data at a low privacy budget, offering a viable alternative to generator-based approaches.
Dec-13-2023
- Country:
- North America > United States (0.28)
- Genre:
- Research Report (0.82)
- Industry:
- Health & Medicine (0.67)
- Information Technology > Security & Privacy (1.00)
- Technology: