Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4955446 | Computers & Security | 2017 | 21 Pages |
Abstract
Most of the existing statistical disclosure control (SDC) standards, such as k-anonymity or l-diversity, were initially designed for static data. Therefore, they cannot be directly applied to stream data which is continuous, transient, and usually unbounded. Moreover, in streaming applications, there is a need to offer strong guarantees on the maximum allowed delay between incoming data and its corresponding anonymous output. In order to full-fill with these requirements, in this paper, we present a set of modifications to the most standard SDC methods, efficiently implemented within the Massive Online Analysis (MOA) stream mining framework. Besides, we have also developed a set of performance metrics to evaluate Information Loss and Disclosure Risk values continuously. Finally, we also show the efficiency of our new methods with a large set of experiments.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Networks and Communications
Authors
David MartÃnez RodrÃguez, Jordi Nin, Miguel Nuñez-del-Prado,