PrivLBS: Local Differential Privacy for Location-Based Services with Staircase Randomized Response

Abstract

Location-based services (LBS) have been significantly developed and widely deployed in mobile devices. It is also well-known that LBS applications may result in severe privacy concerns by collecting sensitive locations. A strong privacy model ‘’local differential privacy’’ (LDP) has been recently deployed in many different applications (e.g., Google RAPPOR, iOS, and Microsoft Telemetry) but not effective for LBS applications due to the low utility of existing LDP mechanisms. To address such deficiency, we propose the first LDP framework for a variety of location-based services (namely ‘‘L-SRR’’), which privately collects and analyzes user locations with high utility. Specifically, we design a novel randomization mechanism ‘‘Staircase Randomized Response’’ (SRR) and extend the empirical estimation to significantly boost the utility for SRR in different LBS applications (e.g., traffic density estimation, and k-nearest neighbors). We have conducted extensive experiments on four real LBS datasets by benchmarking with other LDP schemes in practical applications. The experimental results demonstrate that L-SRR significantly outperforms them.

Publication
In ACM Conference on Computer and Communications Security (CCS)
Hanbin Hong
Hanbin Hong
Ph.D. student

My research interests lie on security and privacy issues in machine learning.