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Poster
in
Workshop: Privacy Regulation and Protection in Machine Learning

PRIVACY-PRESERVING DATA RELEASE LEVERAGING OPTIMAL TRANSPORT AND PARTICLE GRADIENT DESCENT

Konstantin Donhauser · Javier Abad · Neha Hulkund · Fanny Yang


Abstract:

We present a novel approach for differentially private data synthesis of protected tabular datasets, a relevant task in highly sensitive domains such as healthcare and government. Current state-of-the-art methods predominantly use marginal-based approaches, where a dataset is generated from private estimates of the marginals. In this paper, we introduce PrivPGD, a new generation method for marginal-based private data synthesis, leveraging tools from optimal transport and particle gradient descent. Our algorithm outperforms existing methods on a large range of datasets while being highly scalable and offering the flexibility to incorporate additional domain-specific constraints.

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