2017
Journal article  Open Access

A data mining approach to assess privacy risk in human mobility data

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

Privacy  Artificial Intelligence  Theoretical Computer Science  Data mining  Human mobility 

Human mobility data are an important proxy to understand human mobility dynamics, develop analytical services, and design mathematical models for simulation and what-if analysis. Unfortunately mobility data are very sensitive since they may enable the re-identification of individuals in a database. Existing frameworks for privacy risk assessment provide data providers with tools to control and mitigate privacy risks, but they suffer two main shortcomings: (i) they have a high computational complexity; (ii) the privacy risk must be recomputed every time new data records become available and for every selection of individuals, geographic areas, or time windows. In this article, we propose a fast and flexible approach to estimate privacy risk in human mobility data. The idea is to train classifiers to capture the relation between individual mobility patterns and the level of privacy risk of individuals. We show the effectiveness of our approach by an extensive experiment on real-world GPS data in two urban areas and investigate the relations between human mobility patterns and the privacy risk of individuals.

Source: ACM transactions on intelligent systems and technology (Print) 9 (2017): 31:1–31:27. doi:10.1145/3106774

Publisher: Association for Computing Machinery, New York, NY , Stati Uniti d'America


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BibTeX entry
@article{oai:it.cnr:prodotti:385730,
	title = {A data mining approach to assess privacy risk in human mobility data},
	author = {Pellungrini R. and Pappalardo L. and Pratesi F. and Monreale A.},
	publisher = {Association for Computing Machinery, New York, NY  , Stati Uniti d'America},
	doi = {10.1145/3106774},
	journal = {ACM transactions on intelligent systems and technology (Print)},
	volume = {9},
	pages = {31},
	year = {2017}
}

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