Safe disassociation of set-valued datasets

作者:Nancy Awad, Bechara Al Bouna, Jean-Francois Couchot, Laurent Philippe

摘要

Disassociation is a bucketization based anonymization technique that divides a set-valued dataset into several clusters to hide the link between individuals and their complete set of items. It increases the utility of the anonymized dataset, but on the other side, it raises many privacy concerns, one in particular, is when the items are tightly coupled to form what is called, a cover problem. In this paper, we present safe disassociation, a technique that relies on partial suppression, to overcome the aforementioned privacy breach encountered when disassociating set-valued datasets. Safe disassociation allows the km-anonymity privacy constraint to be extended to a bucketized dataset and copes with the cover problem. We describe our algorithm that achieves the safe disassociation and we provide a set of experiments to demonstrate its efficiency.

论文关键词:Disassociation, Cover problem, Data privacy, Set-valued, Privacy preserving

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10844-019-00568-7