Abstract

Location privacy-preserving mechanisms (LPPMs) have been extensively studied for protecting users' location privacy by releasing a perturbed location to third parties such as location-based service providers. However, when a user's perturbed locations are released continuously, existing LPPMs may not protect the sensitive information about the user's real-world activities, such as “visited hospital in the last week” or “regularly commuting between location A and location B every weekday” (it is easy to infer that location A and location B may be home and office), which we call it spatiotemporal event. In this paper, we first formally define spatiotemporal event as Boolean expressions between location and time predicates, and then we define ε-spatiotemporal event privacy by extending the notion of differential privacy. Second, to understand how much spatiotemporal event privacy that existing LPPMs can provide, we design computationally efficient algorithms to quantify the spatiotemporal event privacy leakage of state-of-the-art LPPMs. It turns out that the existing LPPMs may not adequately protect spatiotemporal event privacy. Third, we propose a framework, PriSTE, to transform an existing LPPM into one protecting spatiotemporal event privacy by calibrating the LPPM's privacy budgets. Our experiments on real-life and synthetic data verified that the proposed method is effective and efficient.

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