Locally private nonparametric confidence intervals and sequences
This work derives methods for performing nonparametric, nonasymptotic statistical inference for population parameters under the constraint of local differential privacy (LDP). Given observations (X_1, …, X_n) with mean μ^⋆ that are privatized into (Z_1, …, Z_n), we introduce confidence intervals (CI) and time-uniform confidence sequences (CS) for μ^⋆∈ℝ when only given access to the privatized data. We introduce a nonparametric and sequentially interactive generalization of Warner's famous "randomized response" mechanism, satisfying LDP for arbitrary bounded random variables, and then provide CIs and CSs for their means given access to the resulting privatized observations. We extend these CSs to capture time-varying (non-stationary) means, and conclude by illustrating how these methods can be used to conduct private online A/B tests.
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