2009
Conference article  Restricted

Anonymous sequences from trajectory data

Pensa Rg, Monreale A, Pinelli F, Pedreschi D

Privacy  Sequential Pattern mining  Public Policy Issues. Privacy 

The increasing availability of personal data of a sequential nature, such as time-stamped transaction or location data, enables increasingly sophisticated sequential pattern mining techniques. However, privacy is at risk if it is possible to reconstruct the identity of individuals from sequential data. Therefore, it is important to develop privacy-preserving techniques that support publishing of really anonymous data, without altering the analysis results significantly. First, we introduce a k-anonymity framework for sequence data, by defining the sequence linking attack model and its associated countermeasure, a k-anonymity notion for sequence datasets, which provides a formal protection against the attack. Second, we instantiate this framework and provide a specific method for constructing the k-anonymous version of a sequence dataset, which preserves the results of sequential pattern mining. A comprehensive experimental study on realistic GPS data is carried out, which empirically shows how the protection of privacy meets analytical utility.

Publisher: Seneca Edizioni



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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:388642,
	title = {Anonymous sequences from trajectory data},
	author = {Pensa Rg and Monreale A and Pinelli F and Pedreschi D},
	publisher = {Seneca Edizioni},
	year = {2009}
}