We establish a simple connection between robust and differentially-private algorithms: private mechanisms which perform well with very high probability are automatically robust in the sense that they retain accuracy even if a constant fraction of the samples they receive are adversarially corrupted. Since optimal mechanisms typically achieve these high success probabilities, our results imply that optimal private mechanisms for many basic statistics problems are robust. We investigate the consequences of this observation for both algorithms and computational complexity across different statistical problems. Assuming the Brennan-Bresler secret-leakage planted clique conjecture, we demonstrate a fundamental tradeoff between computational efficiency, privacy leakage, and success probability for sparse mean estimation. Private algorithms which match this tradeoff are not yet known -- we achieve that (up to polylogarithmic factors) in a polynomially-large range of parameters via the Sum-of-Squares method. To establish an information-computation gap for private sparse mean estimation, we also design new (exponential-time) mechanisms using fewer samples than efficient algorithms must use. Finally, we give evidence for privacy-induced information-computation gaps for several other statistics and learning problems, including PAC learning parity functions and estimation of the mean of a multivariate Gaussian.
翻译:我们建立了强势和差别私人算法之间的简单联系:运行良好且概率很高的私人机制是自动稳健的,因为即使它们所收到的样本中固定部分的样本存在对抗性腐蚀,它们也会保持准确性。由于最佳机制通常能够实现这些高成功概率,我们的结果意味着许多基本统计问题的最佳私人机制是稳健的。我们调查这一观察对不同统计问题的各种算法和计算复杂性的影响。假设布伦南-布雷斯勒秘密泄漏所栽培的俱乐部预测,我们展示了计算效率、隐私渗漏和稀散平均估计成功概率之间的基本权衡。最后,我们为与这一权衡相匹配的私人算法提供了证据,我们通过Sum-squarres方法在多组范围广泛的参数中实现了这一点(达到多元系数 ) 。为了为私人稀薄的中值估计建立一个信息计算差距,我们还设计了比有效算法必须使用的新的(极端时间)机制。最后,我们为隐私诱发的信息均匀估计提供了证据,包括若干统计和高位变等数据学习问题。