CT-ISG: Collaborative Research: A Context-Aware Approach to the Design
and Evaluation of Privacy Preservation Techniques in Location-Based
Services
Sponsored by NSF Cybertrust Program
CNS-0716567
Sushil Jajodia <jajodia@gmu.edu> and Claudio Bettini
George Mason University
CNS-0716575
Xiaoyang Wang <Sean.Wang@uvm.edu>
University of Vermont
Abstract
Privacy protection challenges arising from location-based services
(LBS) are critical to users as well as service providers. This project
concentrates on designing and evaluating privacy protection techniques
in LBS. The important departure of this project from the existing
research is in its emphasis of the role of request contexts. A context
refers to the external information/knowledge that the attacker may use,
together with the requests themselves, to gain user private
information. For example, with the external knowledge of a user’s
approximate location at a particular time, the attacker may single out
the user of a particular LBS request and thus link the private
information in the request to the user. By its nature, context changes
from requests to requests and different contexts may call for different
privacy protection techniques. The technical objectives of the project
are therefore to (1) systematically categorize privacy contexts, (2)
analyze existing defense strategies, and (3) design and evaluate new
defense strategies. From an educational perspective, the project
will (1) involve graduate students and expose them to leading-edge
researches, and (2) incorporate research results into classrooms. In
addition, the project will provide a platform for active collaborations
among a broader set of researchers of the two institutions. The results
from this project will have a positive impact on protecting user
privacy and on people's willingness to adopt LBS in enhancing their
living and working conditions. Research results will be disseminated
through technical reports, publications at conferences and journals,
and the website at http://www.csis.gmu.edu/NSFLBSprivacy and http://www.cs.uvm.edu/~xywang/NSFLBSprivacy.