Title
Game Theory Based Correlated Privacy Preserving Analysis in Big Data
Abstract
Privacy preservation is one of the greatest concerns in big data. As one of extensive applications in big data, privacy preserving data publication (PPDP) has been an important research field. One of the fundamental challenges in PPDP is the trade-off problem between privacy and utility of the single and independent data set. However, recent research has shown that the advanced privacy mechanism, i.e., differential privacy, is vulnerable when multiple data sets are correlated. In this case, the trade-off problem between privacy and utility is evolved into a game problem, in which payoff of each player is dependent on his and his neighbors' privacy parameters. In this paper, we first present the definition of correlated differential privacy to evaluate the real privacy level of a single data set influenced by the other data sets. Then, we construct a game model of multiple players, in which each publishes data set sanitized by differential privacy. Next, we analyze the existence and uniqueness of the pure Nash Equilibrium. We refer to a notion, i.e., the price of anarchy, to evaluate efficiency of the pure Nash Equilibrium. Finally, we show the correctness of our game analysis via simulation experiments.
Year
DOI
Venue
2021
10.1109/TBDATA.2017.2701817
IEEE Transactions on Big Data
Keywords
DocType
Volume
Differential privacy,privacy preservation,game theory,big data
Journal
7
Issue
ISSN
Citations 
4
2332-7790
4
PageRank 
References 
Authors
0.42
30
5
Name
Order
Citations
PageRank
Xiaotong Wu171.97
Tao-Tao Wu2113.06
Maqbool Khan3182.84
Qiang Ni425927.49
Wanchun Dou587896.01