FAILED
首站-论文投稿智能助手
典型文献
PrivBV:Distance-Aware Encoding for Distributed Data with Local Differential Privacy
文献摘要:
Recently,local differential privacy(LDP)has been used as the de facto standard for data sharing and analyzing with high-level privacy guarantees.Existing LDP-based mechanisms mainly focus on learning statistical information about the entire population from sensitive data.For the first time in the literature,we use LDP for distance estimation between distributed data to support more complicated data analysis.Specifically,we propose PrivBV—a locally differentially private bit vector mechanism with a distance-aware property in the anonymized space.We also present an optimization strategy for reducing privacy leakage in the high-dimensional space.The distance-aware property of PrivBV brings new insights into complicated data analysis in distributed environments.As study cases,we show the feasibility of applying PrivBV to privacy-preserving record linkage and non-interactive clustering.Theoretical analysis and experimental results demonstrate the effectiveness of the proposed scheme.
文献关键词:
作者姓名:
Lin Sun;Guolou Ping;Xiaojun Ye
作者机构:
School of Software,Tsinghua University,Beijing 100084,China
引用格式:
[1]Lin Sun;Guolou Ping;Xiaojun Ye-.PrivBV:Distance-Aware Encoding for Distributed Data with Local Differential Privacy)[J].清华大学学报自然科学版(英文版),2022(02):412-421
A类:
PrivBV
B类:
Distance,Aware,Encoding,Distributed,Data,Local,Differential,Privacy,Recently,privacy,LDP,has,been,used,facto,standard,data,sharing,analyzing,high,level,guarantees,Existing,mechanisms,mainly,focus,learning,statistical,information,about,entire,population,from,sensitive,For,first,literature,distance,estimation,between,distributed,support,more,complicated,analysis,Specifically,locally,differentially,private,bit,vector,aware,property,anonymized,space,We,also,present,optimization,strategy,reducing,leakage,dimensional,brings,new,insights,into,environments,study,cases,show,feasibility,applying,preserving,record,linkage,interactive,clustering,Theoretical,experimental,results,demonstrate,effectiveness,proposed,scheme
AB值:
0.616603
相似文献
机标中图分类号,由域田数据科技根据网络公开资料自动分析生成,仅供学习研究参考。