t-Closeness: Privacy Beyond k-Anonymity and l-Diversity
Purdue University West Lafayette · AT&T (United States)
Abstract
The k-anonymity privacy requirement for publishing microdata requires that each equivalence class (i.e., a set of records that are indistinguishable from each other with respect to certain "identifying" attributes) contains at least k records. Recently, several authors have recognized that k-anonymity cannot prevent attribute disclosure. The notion of l-diversity has been proposed to address this; l-diversity requires that each equivalence class has at least l well-represented values for each sensitive attribute. In this paper we show that l-diversity has a number of limitations. In particular, it is neither necessary nor sufficient to prevent attribute disclosure. We propose a novel privacy notion called…
Citation impact
- FWCI
- 170.90
- Percentile
- 100%
- References
- 25
Authors
3Topics & keywords
- Closeness
- Microdata (statistics)
- Computer science
- k-anonymity
- Equivalence (formal languages)
- Equivalence class (music)
- Anonymity
- Class (philosophy)