Please use this identifier to cite or link to this item: http://172.22.28.37:8080/xmlui/handle/1/428
Title: Privacy Preserving for spatio-temporal data Publishing Ensuring Location Diversity using k-anonymity Technique
Authors: Avaghade, Sachin Balaso
Keywords: Privacy
Spatial data
Anonymization
Issue Date: 2015
Publisher: Rajarambapu Institute of Technology, Rajaramnagar
Abstract: The rises of mobile technologies are in lead to leverage large amount of personal location information. From knowledge discovery in different point of view, these data are usable, but that personal information is the privacy concerns. There exist many algorithms in the literature namely, perturbing, suppression, generalizing their data to satisfy privacy, required by individuals. Current techniques try to ensure distinguishability between trajectories in real dataset. K-anonymity used for real dataset works on lack of diversity in sensitive regions. The propose a privacy of confidentiality that ensures location diversity by limiting probability of user visiting a sensitive location or probabilistic analysis based on adversary knowledge. Anonymizing trajectory with underlying map, that is interest of point create confusion areas around sensitive locations. Then use map anonymization as a anonymize trajectories and probabilistic methods to improve diversified trajectory and location to be satisfied diversification effectively.
Description: Under the Guidance of Prof. S. S. Patil
URI: http://localhost:8080/xmlui/handle/1/428
Appears in Collections:M.Tech Computer Science & Engineering



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