Location-aware
smartphones support various location-based services (LBSs): users query the LBS
server and learn on the fly about their surroundings. However, such queries
give away private information, enabling the LBS to track users. We address this
problem by proposing a user-collaborative privacy-preserving approach for LBSs.
Our solution does not require changing the LBS server architecture and does not
assume third party servers; yet, it significantly improves users' location
privacy. The gain stems from the collaboration of mobile devices: they keep
their context information in a buffer and pass it to others seeking such
information. Thus, a user remains hidden from the server, unless all the
collaborative peers in the vicinity lack the sought information. We evaluate
our scheme against the Bayesian localization attacks that allow for strong
adversaries who can incorporate prior knowledge in their attacks. We develop a
novel epidemic model to capture the dynamics of information propagation among
users. Used in the Bayesian inference framework, this model helps analyze the
effects of various parameters, such as users' querying rates and the lifetime
of context information, on users' location-privacy. The results show that our
scheme hides a high fraction of location-based queries, thus significantly
enhancing users' location-privacy. Our simulations with real mobility traces
corroborate our model-based findings.
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