Federated Diffusion Modeling with Differential Privacy for Tabular Data Synthesis
Abstract
The increasing demand for privacy-preserving data analytics in various domains necessitates solutions for synthetic data generation that rigorously uphold privacy standards. We introduce the DP-FedTabDiff framework, a novel integration of Differential Privacy, Federated Learning and Denoising Diffusion Probabilistic Models designed to generate high-fidelity synthetic tabular data. This framework ensures compliance with privacy regulations while maintaining data utility. We demonstrate the effectiveness of DP-FedTabDiff on multiple real-world mixed-type tabular datasets, achieving significant improvements in privacy guarantees without compromising data quality. Our empirical evaluations reveal the optimal trade-offs between privacy budgets, client configurations, and federated optimization strategies. The results affirm the potential of DP-FedTabDiff to enable secure data sharing and analytics in highly regulated domains, paving the way for further advances in federated learning and privacy-preserving data synthesis.
Cite
@article{arxiv.2412.16083,
title = {Federated Diffusion Modeling with Differential Privacy for Tabular Data Synthesis},
author = {Timur Sattarov and Marco Schreyer and Damian Borth},
journal= {arXiv preprint arXiv:2412.16083},
year = {2025}
}
Comments
8 pages, 9 figures, preprint version