The Podium Mechanism: Improving on the Laplace and Staircase Mechanisms
The Podium mechanism guarantees ($\epsilon, 0$)-differential privacy by sampling noise from a \emph{finite} mixture of three uniform distributions. By carefully constructing such a mixture distribution, we trivially guarantee privacy properties, while minimizing the variance of the noise added to ou...
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Zusammenfassung: | The Podium mechanism guarantees ($\epsilon, 0$)-differential privacy by
sampling noise from a \emph{finite} mixture of three uniform distributions. By
carefully constructing such a mixture distribution, we trivially guarantee
privacy properties, while minimizing the variance of the noise added to our
continuous outcome. Our gains in variance control are due to the "truncated"
nature of the Podium mechanism where support for the noise distribution is
maintained as close as possible to the sensitivity of our data collection,
unlike the \emph{infinite} support that characterizes both the Laplace and
Staircase mechanisms. In a high-privacy regime ($\epsilon < 1$), the Podium
mechanism outperforms the other two by 50-70\% in terms of the noise variance
reduction, while in a low privacy regime ($\epsilon \to \infty$), it
asymptotically approaches the Staircase mechanism. |
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DOI: | 10.48550/arxiv.1905.00191 |