Transforming data to satisfy privacy constraints
IBM Research - Thomas J. Watson Research Center
Abstract
Data on individuals and entities are being collected widely. These data can contain information that explicitly identifies the individual (e.g., social security number). Data can also contain other kinds of personal information (e.g., date of birth, zip code, gender) that are potentially identifying when linked with other available data sets. Data are often shared for business or legal reasons. This paper addresses the important issue of preserving the anonymity of the individuals or entities during the data dissemination process. We explore preserving the anonymity by the use of generalizations and suppressions on the potentially identifying portions of the data. We extend earlier works in this area along…
Citation impact
- FWCI
- 11.09
- Percentile
- 100%
- References
- 20
Authors
1Topics & keywords
- Computer science
- Anonymity
- Context (archaeology)
- Process (computing)
- Information privacy
- Data anonymization
- Data transformation
- Data mining
- Gender equality