Abstract
We address the problem of non-parametric density estimation under the additional constraint that only privatised data are allowed to be published and available for inference. For this purpose, we adopt a recent generalisation of classical minimax theory to the framework of local α-differential privacy and provide a lower bound on the rate of convergence over Besov spaces Bpqs under mean integrated Lr-risk. This lower bound is deteriorated compared to the standard setup without privacy, and reveals a twofold elbow effect. In order to fulfill the privacy requirement, we suggest adding suitably scaled Laplace noise to empirical wavelet coefficients. Upper bounds within (at most) a logarithmic factor are derived under the assumption that α stays bounded as n increases: A linear but non-adaptive wavelet estimator is shown to attain the lower bound whenever p ≥ r but provides a slower rate of convergence otherwise. An adaptive non-linear wavelet estimator with appropriately chosen smoothing parameters and thresholding is shown to attain the lower bound within a logarithmic factor for all cases.
| Original language | English |
|---|---|
| Pages (from-to) | 1727-1764 |
| Number of pages | 38 |
| Journal | Bernoulli |
| Volume | 26 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - 1 Aug 2020 |
Keywords
- Adaptive estimation
- Besov classes of functions
- Density estimation
- Local differential privacy
- Lower bounds
- Minimax rates
- Wavelet thresholding
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