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Privacy-Utility Trade-offs in Neural Networks for Medical Population Graphs: Insights from Differential Privacy and Graph Structure

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arxiv 2307.06760 v1 pith:ZVKUVBSW submitted 2023-07-13 cs.LG cs.CR

Privacy-Utility Trade-offs in Neural Networks for Medical Population Graphs: Insights from Differential Privacy and Graph Structure

classification cs.LG cs.CR
keywords graphgraphsmedicalnetworksneuralpopulationpotentialprivacy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We initiate an empirical investigation into differentially private graph neural networks on population graphs from the medical domain by examining privacy-utility trade-offs at different privacy levels on both real-world and synthetic datasets and performing auditing through membership inference attacks. Our findings highlight the potential and the challenges of this specific DP application area. Moreover, we find evidence that the underlying graph structure constitutes a potential factor for larger performance gaps by showing a correlation between the degree of graph homophily and the accuracy of the trained model.

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