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arxiv: 2403.07797 · v1 · pith:HVNBZQW5 · submitted 2024-03-12 · cs.LG · cs.AI

Joint Selection: Adaptively Incorporating Public Information for Private Synthetic Data

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classification cs.LG cs.AI
keywords datapublicsyntheticprivateassistedgeneratingjam-pgmmechanism
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Mechanisms for generating differentially private synthetic data based on marginals and graphical models have been successful in a wide range of settings. However, one limitation of these methods is their inability to incorporate public data. Initializing a data generating model by pre-training on public data has shown to improve the quality of synthetic data, but this technique is not applicable when model structure is not determined a priori. We develop the mechanism jam-pgm, which expands the adaptive measurements framework to jointly select between measuring public data and private data. This technique allows for public data to be included in a graphical-model-based mechanism. We show that jam-pgm is able to outperform both publicly assisted and non publicly assisted synthetic data generation mechanisms even when the public data distribution is biased.

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