NeurIPS2022

Differentially Private Covariance Revisited

Wei Dong, Yuting Liang, Ke Yi

被引用 20 次

摘要

In this paper, we present two new algorithms for covariance estimation under concentrated differential privacy (zCDP). The first algorithm achieves a Frobenius error of O~(d1/4tr/n+d/n)\tilde{O}(d^{1/4}\sqrt{\mathrm{tr}}/\sqrt{n} + \sqrt{d}/n), where tr\mathrm{tr} is the trace of the covariance matrix. By taking tr=1\mathrm{tr}=1, this also implies a worst-case error bound of O~(d1/4/n)\tilde{O}(d^{1/4}/\sqrt{n}), which improves the standard Gaussian mechanism's O~(d/n)\tilde{O}(d/n) for the regime d>Ω~(n2/3)d>\widetilde{\Omega}(n^{2/3}). Our second algorithm offers a tail-sensitive bound that could be much better on skewed data. The corresponding algorithms are also simple and efficient. Experimental results show that they offer significant improvements over prior work.