Sharp Composition Bounds for Gaussian Differential Privacy via Edgeworth Expansion

ICML 2020 Qinqing ZhengJinshuo DongQi LongWeijie J. Su

Datasets containing sensitive information are often sequentially analyzed by many algorithms. This raises a fundamental question in differential privacy regarding how the overall privacy bound degrades under composition... (read more)

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