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Private Evolution Converges

10 June 2025
Tomás González
Giulia Fanti
Aaditya Ramdas
ArXiv (abs)PDFHTML
Main:8 Pages
4 Figures
Bibliography:3 Pages
Appendix:16 Pages
Abstract

Private Evolution (PE) is a promising training-free method for differentially private (DP) synthetic data generation. While it achieves strong performance in some domains (e.g., images and text), its behavior in others (e.g., tabular data) is less consistent. To date, the only theoretical analysis of the convergence of PE depends on unrealistic assumptions about both the algorithm's behavior and the structure of the sensitive dataset. In this work, we develop a new theoretical framework to explain PE's practical behavior and identify sufficient conditions for its convergence. For ddd-dimensional sensitive datasets with nnn data points from a bounded domain, we prove that PE produces an (ϵ,δ)(\epsilon, \delta)(ϵ,δ)-DP synthetic dataset with expected 1-Wasserstein distance of order O~(d(nϵ)−1/d)\tilde{O}(d(n\epsilon)^{-1/d})O~(d(nϵ)−1/d) from the original, establishing worst-case convergence of the algorithm as n→∞n \to \inftyn→∞. Our analysis extends to general Banach spaces as well. We also connect PE to the Private Signed Measure Mechanism, a method for DP synthetic data generation that has thus far not seen much practical adoption. We demonstrate the practical relevance of our theoretical findings in simulations.

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@article{gonzález2025_2506.08312,
  title={ Private Evolution Converges },
  author={ Tomás González and Giulia Fanti and Aaditya Ramdas },
  journal={arXiv preprint arXiv:2506.08312},
  year={ 2025 }
}
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