Mean estimation in the add-remove model of differential privacy

December 11, 2023 Β· Declared Dead Β· πŸ› International Conference on Machine Learning

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Authors Alex Kulesza, Ananda Theertha Suresh, Yuyan Wang arXiv ID 2312.06658 Category cs.DS: Data Structures & Algorithms Cross-listed cs.CR, cs.IT, stat.ML Citations 10 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
Differential privacy is often studied under two different models of neighboring datasets: the add-remove model and the swap model. While the swap model is frequently used in the academic literature to simplify analysis, many practical applications rely on the more conservative add-remove model, where obtaining tight results can be difficult. Here, we study the problem of one-dimensional mean estimation under the add-remove model. We propose a new algorithm and show that it is min-max optimal, achieving the best possible constant in the leading term of the mean squared error for all $Ξ΅$, and that this constant is the same as the optimal algorithm under the swap model. These results show that the add-remove and swap models give nearly identical errors for mean estimation, even though the add-remove model cannot treat the size of the dataset as public information. We also demonstrate empirically that our proposed algorithm yields at least a factor of two improvement in mean squared error over algorithms frequently used in practice. One of our main technical contributions is a new hour-glass mechanism, which might be of independent interest in other scenarios.
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