Artificial Impostors for Location Privacy Preservation
Cheng Wang, Zhiyang Xie

TL;DR
This paper introduces a scalable location privacy preservation method that synthesizes artificial impostors with similar semantic features to actual traces, achieving high privacy protection with low computational cost.
Contribution
It proposes a novel counterfeiting-based LPP approach using artificial impostors and two techniques, enhancing privacy and efficiency over existing methods.
Findings
Achieves over 97% privacy preservation efficacy.
Builds generators in under 4 minutes on real datasets.
Demonstrates high scalability and practical effectiveness.
Abstract
The progress of location-based services has led to serious concerns on location privacy leakage. For effective and efficient location privacy preservation (LPP), existing methods are still not fully competent. They are often vulnerable under the identification attack with side information, or hard to be implemented due to the high computational complexity. In this paper, we pursue the high protection efficacy and low computational complexity simultaneously. We propose a scalable LPP method based on the paradigm of counterfeiting locations. To make fake locations extremely plausible, we forge them through synthesizing artificial impostors (AIs). The AIs refer to the synthesized traces which have similar semantic features to the actual traces, and do not contain any target location. Two dedicated techniques are devised: the sampling-based synthesis method and population-level semantic…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Human Mobility and Location-Based Analysis · Automated Road and Building Extraction
