| Literature DB >> 24482559 |
Zhanglong Ji1, Charles Elkan1.
Abstract
This paper analyzes a novel method for publishing data while still protecting privacy. The method is based on computing weights that make an existing dataset, for which there are no confidentiality issues, analogous to the dataset that must be kept private. The existing dataset may be genuine but public already, or it may be synthetic. The weights are importance sampling weights, but to protect privacy, they are regularized and have noise added. The weights allow statistical queries to be answered approximately while provably guaranteeing differential privacy. We derive an expression for the asymptotic variance of the approximate answers. Experiments show that the new mechanism performs well even when the privacy budget is small, and when the public and private datasets are drawn from different populations.Entities:
Keywords: Differential privacy; Importance weighting; Privacy
Year: 2013 PMID: 24482559 PMCID: PMC3904646 DOI: 10.1007/s10994-013-5396-x
Source DB: PubMed Journal: Mach Learn ISSN: 0885-6125 Impact factor: 2.940