Mutual Information Optimally Local Private Discrete Distribution Estimation
Abstract
Consider statistical learning (e.g. discrete distribution estimation) with local -differential privacy, which preserves each data provider's privacy locally, we aim to optimize statistical data utility under the privacy constraints. Specifically, we study maximizing mutual information between a provider's data and its private view, and give the exact mutual information bound along with an attainable mechanism: -subset mechanism as results. The mutual information optimal mechanism randomly outputs a size subset of the original data domain with delicate probability assignment, where varies with the privacy level and the data domain size . After analysing the limitations of existing local private mechanisms from mutual information perspective, we propose an efficient implementation of the -subset mechanism for discrete distribution estimation, and show its optimality guarantees over existing approaches.
Cite
@article{arxiv.1607.08025,
title = {Mutual Information Optimally Local Private Discrete Distribution Estimation},
author = {Shaowei Wang and Liusheng Huang and Pengzhan Wang and Yiwen Nie and Hongli Xu and Wei Yang and Xiang-Yang Li and Chunming Qiao},
journal= {arXiv preprint arXiv:1607.08025},
year = {2016}
}
Comments
submitted to NIPS2016