估计员
数学
推论
参数统计
经验似然
凸性
趋同(经济学)
收敛速度
三角洲法
数学优化
统计推断
应用数学
统计
计算机科学
人工智能
经济增长
金融经济学
频道(广播)
经济
计算机网络
作者
Marco Avella-Medina,Casey Bradshaw,Po‐Ling Loh
摘要
We propose a general optimization-based framework for computing differentially private M-estimators and a new method for constructing differentially private confidence regions. First, we show that robust statistics can be used in conjunction with noisy gradient descent or noisy Newton methods in order to obtain optimal private estimators with global linear or quadratic convergence, respectively. We establish local and global convergence guarantees, under both local strong convexity and self-concordance, showing that our private estimators converge with high probability to a small neighborhood of the nonprivate M-estimators. Second, we tackle the problem of parametric inference by constructing differentially private estimators of the asymptotic variance of our private M-estimators. This naturally leads to approximate pivotal statistics for constructing confidence regions and conducting hypothesis testing. We demonstrate the effectiveness of a bias correction that leads to enhanced small-sample empirical performance in simulations. We illustrate the benefits of our methods in several numerical examples.
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