1 research outputs found
Modeling and Performance Comparison of Privacy Approaches for Location Based Services
In pervasive computing environment, Location Based Services (LBSs) are
getting popularity among users because of their usefulness in day-to-day life.
LBSs are information services that use geospatial data of mobile device and
smart phone users to provide information, entertainment and security in real
time. A key concern in such pervasive computing environment is the need to
reveal the user's exact location which may allow an adversary to infer private
information about the user. To address the privacy concerns of LBS users, a
large number of security approaches have been proposed based on the concept of
k-anonymity. The central idea in location k-anonymity is to find a set of k-1
users confined in a given geographical area of the actual user, such that the
location of these k users are indistinguishable from one another, thus
protecting the identity of the user. Although a number of performance
parameters like success rate, amount of privacy achieved are used to measure
the performance of the k-anonymity approaches, they make the implicit,
unrealistic assumption that the k-1 users are readily available. As such these
approaches ignore the turnaround time to process a user request, which is
crucial for a real-time application like LBS. In this work, we model the
k-anonymity approaches using queuing theory to compute the average sojourn time
of users and queue length of the system. To demonstrate that queuing theory can
be used to model all k-anonymity approaches, we consider graph-based
k-anonymity approaches. The proposed analytical model is further validated with
experimental results.Comment: 18 pages and 11 figure