Nonparametric spectral density estimation using interactive mechanisms under local differential privacy

We address the problem of nonparametric estimation of the spectral density for a centered stationary Gaussian time series under local differential privacy constraints. Specifically, we propose new interactive privacy mechanisms for three tasks: estimating a single covariance coefficient, estimating the spectral density at a fixed frequency, and estimating the entire spectral density function. Our approach achieves faster rates through a two-stage process: we apply first the Laplace mechanism to the truncated value and then use the former privatized sample to gain knowledge on the dependence mechanism in the time series. For spectral densities belonging to Hölder and Sobolev smoothness classes, we demonstrate that our estimators improve upon the non-interactive mechanism of Kroll (2024) for small privacy parameter , since the pointwise rates depend on instead of . Moreover, we show that the rate is optimal for estimating a covariance coefficient with non-interactive mechanisms. However, the rate of our interactive estimator is slower than the pointwise rate. We show how to use these estimators to provide a bona-fide locally differentially private covariance matrix estimator.
View on arXiv@article{butucea2025_2504.00919, title={ Nonparametric spectral density estimation using interactive mechanisms under local differential privacy }, author={ Cristina Butucea and Karolina Klockmann and Tatyana Krivobokova }, journal={arXiv preprint arXiv:2504.00919}, year={ 2025 } }