2022
DOI: 10.48550/arxiv.2205.08886
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GeoPointGAN: Synthetic Spatial Data with Local Label Differential Privacy

Abstract: Synthetic data generation is a fundamental task for many data management and data science applications. Spatial data is of particular interest, and its sensitive nature often leads to privacy concerns. We introduce GeoPointGAN, a novel GAN-based solution for generating synthetic spatial point datasets with high utility and strong individual level privacy guarantees. GeoPointGAN's architecture includes a novel point transformation generator that learns to project randomly generated point co-ordinates into meani… Show more

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