GlucoSynth: Generating Differentially-Private Synthetic Glucose Traces
Advances in Neural Information Processing Systems 36 (2023) We focus on the problem of generating high-quality, private synthetic glucose traces, a task generalizable to many other time series sources. Existing methods for time series data synthesis, such as those using Generative Adversarial Networ...
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Zusammenfassung: | Advances in Neural Information Processing Systems 36 (2023) We focus on the problem of generating high-quality, private synthetic glucose
traces, a task generalizable to many other time series sources. Existing
methods for time series data synthesis, such as those using Generative
Adversarial Networks (GANs), are not able to capture the innate characteristics
of glucose data and cannot provide any formal privacy guarantees without
severely degrading the utility of the synthetic data. In this paper we present
GlucoSynth, a novel privacy-preserving GAN framework to generate synthetic
glucose traces. The core intuition behind our approach is to conserve
relationships amongst motifs (glucose events) within the traces, in addition to
temporal dynamics. Our framework incorporates differential privacy mechanisms
to provide strong formal privacy guarantees. We provide a comprehensive
evaluation on the real-world utility of the data using 1.2 million glucose
traces; GlucoSynth outperforms all previous methods in its ability to generate
high-quality synthetic glucose traces with strong privacy guarantees. |
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DOI: | 10.48550/arxiv.2303.01621 |