2017
Conference article  Restricted

Fast estimation of privacy risk in human mobility data

Pellungrini R., Pappalardo L., Pratesi F., Monreale A.

Privacy  Data mining  Human mobility 

Mobility data are an important proxy to understand the patterns of human movements, develop analytical services and design models for simulation and prediction of human dynamics. Unfortunately mobility data are also very sensitive, since they may contain personal information about the individuals involved. Existing frameworks for privacy risk assessment enable the data providers to quantify and mitigate privacy risks, but they suffer two main limitations: (i) they have a high computational complexity; (ii) the privacy risk must be re-computed for each new set of individuals, geographic areas or time windows. In this paper we explore a fast and flexible solution to estimate privacy risk in human mobility data, using predictive models to capture the relation between an individual's mobility patterns and her privacy risk. We show the effectiveness of our approach by experimentation on a real-world GPS dataset and provide a comparison with traditional methods.

Source: SAFECOMP 2017 - International Conference on Computer Safety, Reliability, and Security, pp. 415–426, Trento, Italy, 12 September 2017


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:385735,
	title = {Fast estimation of privacy risk in human mobility data},
	author = {Pellungrini R. and Pappalardo L. and Pratesi F. and Monreale A.},
	doi = {10.1007/978-3-319-66284-8_35},
	booktitle = {SAFECOMP 2017 - International Conference on Computer Safety, Reliability, and Security, pp. 415–426, Trento, Italy, 12 September 2017},
	year = {2017}
}

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