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arxiv: 1812.02890 · v1 · pith:UHYAWGQXnew · submitted 2018-12-07 · 📊 stat.ML · cs.LG

Three Tools for Practical Differential Privacy

classification 📊 stat.ML cs.LG
keywords privacylearningprivatedatadifferentiallymachinemodelpractical
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Differentially private learning on real-world data poses challenges for standard machine learning practice: privacy guarantees are difficult to interpret, hyperparameter tuning on private data reduces the privacy budget, and ad-hoc privacy attacks are often required to test model privacy. We introduce three tools to make differentially private machine learning more practical: (1) simple sanity checks which can be carried out in a centralized manner before training, (2) an adaptive clipping bound to reduce the effective number of tuneable privacy parameters, and (3) we show that large-batch training improves model performance.

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