We present the first $\varepsilon$-differentially private, computationally efficient algorithm that estimates the means of product distributions over $\{0,1\}^d$ accurately in total-variation distance, whilst attaining the optimal sample complexity to within polylogarithmic factors. The prior work had either solved this problem efficiently and optimally under weaker notions of privacy, or had solved it optimally while having exponential running times.
翻译:二元积分布的多项式时间、纯差分隐私估计器
新论文摘要:
我们提出了第一个 $\varepsilon$-差分隐私、计算上高效的算法,可以在总变分距离下准确地估计关于 $\{0,1\}^d$ 的积分分布均值,同时在多项式对数因子内达到了最佳的样本复杂度。 之前的研究要么以更弱的隐私概念高效解决了这个问题,要么在指数运行时间内最优地解决了它。