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Privately Learning Smooth Distributions on the Hypercube by Projections

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  • Lalanne, Clément
  • Gadat, Sébastien

Abstract

Fueled by the ever-increasing need for statistics that guarantee the privacy of their training sets, this article studies the centrally-private estimation of Sobolev-smooth densities of probability over the hypercube in dimension d. The contributions of this article are two-fold : firstly, it generalizes the one-dimensional results of (Lalanne et al., 2023b) to non-integer levels of smoothness and to a high-dimensional setting, which is important for two reasons : it is more suited for modern learning tasks, and it allows understanding the relations between privacy, dimensionality and smoothness, which is a central question with differential privacy. Secondly, this article presents a private strategy of estimation that is data-driven (usually referred to as adaptive in Statistics) in order to privately choose an estimator that achieves a good bias-variance trade-off among a finite family of private projection estimators without prior knowledge of the ground-truth smoothness β. This is achieved by adapting the Lepskii method for private selection, by adding a new penalization term that makes the estimation privacy-aware.

Suggested Citation

  • Lalanne, Clément & Gadat, Sébastien, 2024. "Privately Learning Smooth Distributions on the Hypercube by Projections," TSE Working Papers 24-1505, Toulouse School of Economics (TSE).
  • Handle: RePEc:tse:wpaper:129117
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    References listed on IDEAS

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    1. László Györfi & Martin Kroll, 2023. "Multivariate density estimation from privatised data: universal consistency and minimax rates," Journal of Nonparametric Statistics, Taylor & Francis Journals, vol. 35(3), pages 491-513, July.
    2. Wasserman, Larry & Zhou, Shuheng, 2010. "A Statistical Framework for Differential Privacy," Journal of the American Statistical Association, American Statistical Association, vol. 105(489), pages 375-389.
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