VertiMRF: Differentially Private Vertical Federated Data Synthesis
Fangyuan Zhao, Zitao Li, Xuebin Ren, Bolin Ding, Shusen Yang, Yaliang, Li

TL;DR
VertiMRF is a novel differentially private algorithm for generating synthetic data in vertical federated settings, effectively preserving data correlations and privacy across distributed attributes.
Contribution
The paper introduces VertiMRF, a new method combining local differential privacy encoding with global Markov Random Field reconstruction for vertical federated data synthesis.
Findings
VertiMRF outperforms existing methods in privacy and utility on real datasets.
The proposed techniques effectively handle large attribute domains.
Ablation studies confirm the importance of each component.
Abstract
Data synthesis is a promising solution to share data for various downstream analytic tasks without exposing raw data. However, without a theoretical privacy guarantee, a synthetic dataset would still leak some sensitive information. Differential privacy is thus widely adopted to safeguard data synthesis by strictly limiting the released information. This technique is advantageous yet presents significant challenges in the vertical federated setting, where data attributes are distributed among different data parties. The main challenge lies in maintaining privacy while efficiently and precisely reconstructing the correlation among cross-party attributes. In this paper, we propose a novel algorithm called VertiMRF, designed explicitly for generating synthetic data in the vertical setting and providing differential privacy protection for all information shared from data parties. We…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Data Quality and Management
