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Main Authors: Li, Xiaochen, Gao, Fengyu, Wei, Xizixiang, Wang, Tianhao, Shen, Cong, Yang, Jing
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.08832
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author Li, Xiaochen
Gao, Fengyu
Wei, Xizixiang
Wang, Tianhao
Shen, Cong
Yang, Jing
author_facet Li, Xiaochen
Gao, Fengyu
Wei, Xizixiang
Wang, Tianhao
Shen, Cong
Yang, Jing
contents Traditional Differential Privacy (DP) mechanisms are typically tailored to specific analysis tasks, which limits the reusability of protected data. DP tabular data synthesis overcomes this by generating synthetic datasets that can be shared for arbitrary downstream tasks. However, existing synthesis methods predominantly assume centralized or local settings and overlook the more practical horizontal federated scenario. Naively synthesizing data locally or perturbing individual records either produces biased mixtures or introduces excessive noise, especially under heterogeneous data distributions across participants. We propose HeteroFedSyn, the first DP tabular data synthesis framework designed specifically for the horizontal federated setting. Built upon the PrivSyn paradigm of 2-way marginal-based synthesis, HeteroFedSyn introduces three key innovations for distributed marginal selection: (i) an L2-based dependency metric with random projection for noise-efficient correlation measurement, (ii) an unbiased estimator to correct multiplicative noise, and (iii) an adaptive selection strategy that dynamically updates dependency scores to avoid redundancy. Extensive experiments on range queries, Wasserstein fidelity, and machine learning tasks show that, despite the increased noise inherent to federated execution, HeteroFedSyn achieves utility comparable to centralized synthesis. Our code is open-sourced via the link.
format Preprint
id arxiv_https___arxiv_org_abs_2603_08832
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle HeteroFedSyn: Differentially Private Tabular Data Synthesis for Heterogeneous Federated Settings
Li, Xiaochen
Gao, Fengyu
Wei, Xizixiang
Wang, Tianhao
Shen, Cong
Yang, Jing
Cryptography and Security
Traditional Differential Privacy (DP) mechanisms are typically tailored to specific analysis tasks, which limits the reusability of protected data. DP tabular data synthesis overcomes this by generating synthetic datasets that can be shared for arbitrary downstream tasks. However, existing synthesis methods predominantly assume centralized or local settings and overlook the more practical horizontal federated scenario. Naively synthesizing data locally or perturbing individual records either produces biased mixtures or introduces excessive noise, especially under heterogeneous data distributions across participants. We propose HeteroFedSyn, the first DP tabular data synthesis framework designed specifically for the horizontal federated setting. Built upon the PrivSyn paradigm of 2-way marginal-based synthesis, HeteroFedSyn introduces three key innovations for distributed marginal selection: (i) an L2-based dependency metric with random projection for noise-efficient correlation measurement, (ii) an unbiased estimator to correct multiplicative noise, and (iii) an adaptive selection strategy that dynamically updates dependency scores to avoid redundancy. Extensive experiments on range queries, Wasserstein fidelity, and machine learning tasks show that, despite the increased noise inherent to federated execution, HeteroFedSyn achieves utility comparable to centralized synthesis. Our code is open-sourced via the link.
title HeteroFedSyn: Differentially Private Tabular Data Synthesis for Heterogeneous Federated Settings
topic Cryptography and Security
url https://arxiv.org/abs/2603.08832