English

Differentially Private Inference for Longitudinal Linear Regression

Statistics Theory 2026-01-16 v1 Cryptography and Security Methodology Machine Learning Statistics Theory

Abstract

Differential Privacy (DP) provides a rigorous framework for releasing statistics while protecting individual information present in a dataset. Although substantial progress has been made on differentially private linear regression, existing methods almost exclusively address the item-level DP setting, where each user contributes a single observation. Many scientific and economic applications instead involve longitudinal or panel data, in which each user contributes multiple dependent observations. In these settings, item-level DP offers inadequate protection, and user-level DP - shielding an individual's entire trajectory - is the appropriate privacy notion. We develop a comprehensive framework for estimation and inference in longitudinal linear regression under user-level DP. We propose a user-level private regression estimator based on aggregating local regressions, and we establish finite-sample guarantees and asymptotic normality under short-range dependence. For inference, we develop a privatized, bias-corrected covariance estimator that is automatically heteroskedasticity- and autocorrelation-consistent. These results provide the first unified framework for practical user-level DP estimation and inference in longitudinal linear regression under dependence, with strong theoretical guarantees and promising empirical performance.

Keywords

Cite

@article{arxiv.2601.10626,
  title  = {Differentially Private Inference for Longitudinal Linear Regression},
  author = {Getoar Sopa and Marco Avella Medina and Cynthia Rush},
  journal= {arXiv preprint arXiv:2601.10626},
  year   = {2026}
}

Comments

68 pages, 3 figures

R2 v1 2026-07-01T09:06:21.182Z