2010
Journal article  Restricted

Movement data anonymity through generalization

Monreale A., Andrienko G., Andrienko N., Giannotti F., Pedreschi D., Rinzivillo S., Wrobel S.

k-anonymity  Privacy  Spatio-temporal Clustering 

Wireless networks and mobile devices, such as mobile phones and GPS receivers, sense and track the movements of people and vehicles, producing society-wide mobility databases. This is a challenging scenario for data analysis and mining. On the one hand, exciting opportunities arise out of discovering new knowledge about human mobile behavior, and thus fuel intelligent info-mobility applications. On other hand, new privacy concerns arise when mobility data are published. The risk is particularly high for GPS trajectories, which represent movement of a very high precision and spatio-temporal resolution: the de-identification of such trajectories (i.e., forgetting the ID of their associated owners) is only a weak protection, as generally it is possible to re-identify a person by ob- serving her routine movements. In this paper we propose a method for achieving true anonymity in a dataset of published trajectories, by defining a transformation of the original GPS trajectories based on spatial generalization and k-anonymity. The proposed method offers a formal data protection safeguard, quantified as a theoretical upper bound to the probability of re-identification. We conduct a thorough study on a real-life GPS trajectory dataset, and provide strong empirical evidence that the proposed anonymity techniques achieve the conflicting goals of data utility and data privacy. In practice, the achieved anonymity protection is much stronger than the theoretical worst case, while the quality of the cluster analysis on the trajectory data is preserved.

Source: Transactions on data privacy 3 (2010): 91–121.

Publisher: Institut d'Investigació en Intel·ligència Artificial, [Barcelona] , Spagna



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BibTeX entry
@article{oai:it.cnr:prodotti:68463,
	title = {Movement data anonymity through generalization},
	author = {Monreale A. and Andrienko G. and Andrienko N. and Giannotti F. and Pedreschi D. and Rinzivillo S. and Wrobel S.},
	publisher = {Institut d'Investigació en Intel·ligència Artificial, [Barcelona] , Spagna},
	journal = {Transactions on data privacy},
	volume = {3},
	pages = {91–121},
	year = {2010}
}
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