
arXiv: 2004.00010
A key tool for building differentially private systems is adding Gaussian noise to the output of a function evaluated on a sensitive dataset. Unfortunately, using a continuous distribution presents several practical challenges. First and foremost, finite computers cannot exactly represent samples from continuous distributions, and previous work has demonstrated that seemingly innocuous numerical errors can entirely destroy privacy. Moreover, when the underlying data is itself discrete (e.g., population counts), adding continuous noise makes the result less interpretable. With these shortcomings in mind, we introduce and analyze the discrete Gaussian in the context of differential privacy. Specifically, we theoretically and experimentally show that adding discrete Gaussian noise provides essentially the same privacy and accuracy guarantees as the addition of continuous Gaussian noise. We also present an simple and efficient algorithm for exact sampling from this distribution. This demonstrates its applicability for privately answering counting queries, or more generally, low-sensitivity integer-valued queries.
FOS: Computer and information sciences, Technology, Computer Science - Cryptography and Security, T, privacy mechanisms, Social Sciences, Machine Learning (stat.ML), algorithms, H, Statistics - Machine Learning, differential privacy, Computer Science - Data Structures and Algorithms, Data Structures and Algorithms (cs.DS), Cryptography and Security (cs.CR)
FOS: Computer and information sciences, Technology, Computer Science - Cryptography and Security, T, privacy mechanisms, Social Sciences, Machine Learning (stat.ML), algorithms, H, Statistics - Machine Learning, differential privacy, Computer Science - Data Structures and Algorithms, Data Structures and Algorithms (cs.DS), Cryptography and Security (cs.CR)
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