The article discusses the instance-specific error bounds achievable through the clipping mechanism in the shuffle model of differential privacy. It introduces a protocol that partitions the domain to estimate sums efficiently, achieving optimal error rates without splitting privacy budgets. The protocol ensures (ε, δ)-DP and minimizes communication complexity while maintaining accuracy.
The authors propose a one-round solution for high-dimensional sum estimation, improving upon existing two-round protocols. By leveraging domain partitioning and parallel composition, they achieve optimal error bounds with practical implementation.
Overall, the article presents innovative approaches to enhance privacy-preserving sum estimation under differential privacy constraints.
Naar een andere taal
vanuit de broninhoud
arxiv.org
Belangrijkste Inzichten Gedestilleerd Uit
by Wei Dong,Qiy... om arxiv.org 03-18-2024
https://arxiv.org/pdf/2403.10116.pdfDiepere vragen