Quantifying Membership Disclosure Risk for Tabular Synthetic Data Using Kernel Density Estimators
作者
Authors
Rajdeep Pathak|Sayantee Jana
期刊
Journal
暂无期刊信息
年份
Year
2026
分类
Category
国家
Country
中国China
📝 摘要
Abstract
The use of synthetic data has become increasingly popular as a privacy-preserving alternative to sharing real datasets, especially in sensitive domains such as healthcare, finance, and demography. However, the privacy assurances of synthetic data are not absolute, and remain susceptible to membership inference attacks (MIAs), where adversaries aim to determine whether a specific individual was present in the dataset used to train the generator. In this work, we propose a practical and effective method to quantify membership disclosure risk in tabular synthetic datasets using kernel density estimators (KDEs). Our KDE-based approach models the distribution of nearest-neighbour distances between synthetic data and the training records, allowing probabilistic inference of membership and enabling robust evaluation via ROC curves. We propose two attack models: a 'True Distribution Attack', which assumes privileged access to training data, and a more realistic, implementable 'Realistic Attack' that uses auxiliary data without true membership labels. Empirical evaluations across four real-world datasets and six synthetic data generators demonstrate that our method consistently achieves higher F1 scores and sharper risk characterization than a prior baseline approach, without requiring computationally expensive shadow models. The proposed method provides a practical framework and metric for quantifying membership disclosure risk in synthetic data, which enables data custodians to conduct a post-generation risk assessment prior to releasing their synthetic datasets for downstream use. The datasets and codes for this study are available at https://github.com/PyCoder913/MIA-KDE.
📊 文章统计
Article Statistics
基础数据
Basic Stats
192
浏览
Views
0
下载
Downloads
43
引用
Citations
引用趋势
Citation Trend
阅读国家分布
Country Distribution
阅读机构分布
Institution Distribution
月度浏览趋势
Monthly Views