Title :
A Supermodularity-Based Differential Privacy Preserving Algorithm for Data Anonymization
Author :
Fouad, Mohamed R. ; Elbassioni, Khaled ; Bertino, Elisa
Author_Institution :
Purdue Univ., West Lafayette, IN, USA
Abstract :
Maximizing data usage and minimizing privacy risk are two conflicting goals. Organizations always apply a set of transformations on their data before releasing it. While determining the best set of transformations has been the focus of extensive work in the database community, most of this work suffered from one or both of the following major problems: scalability and privacy guarantee. Differential Privacy provides a theoretical formulation for privacy that ensures that the system essentially behaves the same way regardless of whether any individual is included in the database. In this paper, we address both scalability and privacy risk of data anonymization. We propose a scalable algorithm that meets differential privacy when applying a specific random sampling. The contribution of the paper is two-fold: 1) we propose a personalized anonymization technique based on an aggregate formulation and prove that it can be implemented in polynomial time; and 2) we show that combining the proposed aggregate formulation with specific sampling gives an anonymization algorithm that satisfies differential privacy. Our results rely heavily on exploring the supermodularity properties of the risk function, which allow us to employ techniques from convex optimization. Through experimental studies we compare our proposed algorithm with other anonymization schemes in terms of both time and privacy risk.
Keywords :
data privacy; optimisation; convex optimization; data anonymization; data usage maximization; database community; privacy risk; privacy risk minimization; random sampling; scalability risk; supermodularity-based differential privacy preserving algorithm; Aggregates; Communities; Data privacy; Databases; Privacy; Scalability; Security; Data; Data sharing; Database Management; Database design; Differential privacy; General; Information Storage and Retrieval; Information Technology and Systems; Knowledge and data engineering tools and techniques; Online Information Services; Security; and protection; anonymity; data sharing; data utility; integrity; modeling and management; risk management; scalability; security;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2013.107