Local, Private, Efficient Protocols for Succinct Histograms 论文
2015引用 299
Privacy-Preserving Technologies in DataCryptography and Data SecurityInternet Traffic Analysis and Secure E-voting
摘要
We give efficient protocols and matching accuracy lower bounds for frequency estimation in the local model for differential privacy. In this model, individual users randomize their data themselves, sending differentially private reports to an untrusted server that aggregates them. We study protocols that produce a succinct histogram representation of the data. A succinct histogram is a list of the most frequent items in the data (often called "heavy hitters") along with estimates of their frequencies; the frequency of all other items is implicitly estimated as 0.
作者
暂无数据
相关技术
暂无数据
相关事件
暂无数据
相关文章
暂无数据