Title :
Using Generalization Patterns for Fingerprinting Sets of Partially Anonymized Microdata in the Course of Disasters
Author :
Schrittwieser, Sebastian ; Kieseberg, Peter ; Echizen, Isao ; Wohlgemuth, Sven ; Sonehara, Noboru
Author_Institution :
SBA-Res., Vienna, Austria
Abstract :
In the event of large natural and artificial disasters, it is of vital importance to provide all sorts of data to the relief organizations (fire department, red cross,...) to enhance their effectivity. Still, some of this data (e.g. regarding personal information on health status) may be considered private. k-anonymity can be utilized to mitigate the risks resulting from disclosure of such data, however, sometimes it is not possible to achieve a suitable size for k in order to completely anonymize the data without interfering with rescue operations. Still, this data will be sensitive after the disaster recovery is finished. Thus we aim at protecting the data by devising an intrinsic fingerprinting-scheme that allows to detect the source of eventually disclosed information afterwards. Our approach uses the properties directly derived from the anonymization process to generate unique fingerprints for every data set.
Keywords :
data handling; data privacy; disasters; emergency services; risk management; security of data; Red Cross; artificial disasters; data disclosure; data privacy; data protection; data set fingerprinting; disaster recovery; fire department; generalization pattern; health status; intrinsic fingerprinting; k-anonymity; natural disasters; partially anonymized microdata; personal information; relief organizations; rescue operation; risk mitigation; Delta modulation; Diabetes; Lattices; Measurement; Organizations; Privacy; Robustness; fingerprinting; generalization; k-anonymity;
Conference_Titel :
Availability, Reliability and Security (ARES), 2011 Sixth International Conference on
Conference_Location :
Vienna
Print_ISBN :
978-1-4577-0979-1
Electronic_ISBN :
978-0-7695-4485-4
DOI :
10.1109/ARES.2011.101