2014
Conference article  Open Access

A privacy risk model for trajectory data

Basu A., Monreale A., Corena J. C., Giannotti F., Pedreschi D., Kiyomoto S., Miyake Y., Yanagihara T., Trasarti R.

Sequential data  Anonymisation  [ INFO ] Computer Science [cs]  Risk  privacy  utility  anonymisation  Privacy  Utility  sequential data  Model  risk  model 

Time sequence data relating to users, such as medical histories and mobility data, are good candidates for data mining, but often contain highly sensitive information. Different methods in privacypreserving data publishing are utilised to release such private data so that individual records in the released data cannot be re-linked to specific users with a high degree of certainty. These methods provide theoretical worst-case privacy risks as measures of the privacy protection that they offer. However, often with many real-world data the worstcase scenario is too pessimistic and does not provide a realistic view of the privacy risks: the real probability of re-identification is often much lower than the theoretical worst-case risk. In this paper we propose a novel empirical risk model for privacy which, in relation to the cost of privacy attacks, demonstrates better the practical risks associated with a privacy preserving data release. We show detailed evaluation of the proposed risk model by using k-anonymised real-world mobility data.

Source: Trust Management VIII. 8th IFIP WG 11.11 International Conference (IFIPTM 2014), pp. 125–140, Singapore, 07-10/07/2014

Publisher: Springer, Berlin, Germania


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:347562,
	title = {A privacy risk model for trajectory data},
	author = {Basu A. and Monreale A. and Corena J. C. and Giannotti F. and Pedreschi D. and Kiyomoto S. and Miyake Y. and Yanagihara T. and Trasarti R.},
	publisher = {Springer, Berlin, Germania},
	doi = {10.1007/978-3-662-43813-8_9},
	booktitle = {Trust Management VIII. 8th IFIP WG 11.11 International Conference (IFIPTM 2014), pp. 125–140, Singapore, 07-10/07/2014},
	year = {2014}
}