Litcius/Paper detail

Towards Locally Differentially Private Generic Graph Metric Estimation

Qingqing Ye, Haibo Hu, Man Ho Au, Xiaofeng Meng, Xiaokui Xiao

202045 citationsDOI

Abstract

Local differential privacy (LDP) is an emerging technique for privacy-preserving data collection without a trusted collector. Despite its strong privacy guarantee, LDP cannot be easily applied to real-world graph analysis tasks such as community detection and centrality analysis due to its high implementation complexity and low data utility. In this paper, we address these two issues by presenting LF-GDPR, the first LDP-enabled graph metric estimation framework for graph analysis. It collects two atomic graph metrics - the adjacency bit vector and node degree - from each node locally. LF-GDPR simplifies the job of implementing LDP-related steps (e.g., local perturbation, aggregation and calibration) for a graph metric estimation task by providing either a complete or a parameterized algorithm for each step.

Topics & Concepts

Differential privacyComputer scienceCentralityGraphAdjacency matrixTheoretical computer sciencePower graph analysisAdjacency listParameterized complexityData miningAlgorithmMathematicsCombinatoricsPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingInternet Traffic Analysis and Secure E-voting