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Better Private Distribution Testing by Leveraging Unverified Auxiliary Data

Better Private Distribution Testing by Leveraging Unverified Auxiliary Data

来源:Arxiv_logoArxiv
英文摘要

We extend the framework of augmented distribution testing (Aliakbarpour, Indyk, Rubinfeld, and Silwal, NeurIPS 2024) to the differentially private setting. This captures scenarios where a data analyst must perform hypothesis testing tasks on sensitive data, but is able to leverage prior knowledge (public, but possibly erroneous or untrusted) about the data distribution. We design private algorithms in this augmented setting for three flagship distribution testing tasks, uniformity, identity, and closeness testing, whose sample complexity smoothly scales with the claimed quality of the auxiliary information. We complement our algorithms with information-theoretic lower bounds, showing that their sample complexity is optimal (up to logarithmic factors).

Maryam Aliakbarpour、Arnav Burudgunte、Clément Cannone、Ronitt Rubinfeld

计算技术、计算机技术

Maryam Aliakbarpour,Arnav Burudgunte,Clément Cannone,Ronitt Rubinfeld.Better Private Distribution Testing by Leveraging Unverified Auxiliary Data[EB/OL].(2025-03-18)[2025-06-06].https://arxiv.org/abs/2503.14709.点此复制

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