DocumentCode :
37396
Title :
Differentially private multidimensional data publication
Author :
Zhang Ji ; Dong Xin ; Yu Jiadi ; Luo Yuan ; Li Minglu ; Wu Bin
Author_Institution :
Sch. of Math. Sci., Fudan Univ., Shanghai, China
Volume :
11
Issue :
13
fYear :
2014
fDate :
Supplement 2014
Firstpage :
79
Lastpage :
85
Abstract :
Multidimensional data provides enormous opportunities in a variety of applications. Recent research has indicated the failure of existing sanitization techniques (e.g., k-anonymity) to provide rigorous privacy guarantees. Privacy-preserving multidimensional data publishing currently lacks a solid theoretical foundation. It is urgent to develop new techniques with provable privacy guarantees. ∈-Differential privacy is the only method that can provide such guarantees. In this paper, we propose a multidimensional data publishing scheme that ensures ∈-differential privacy while providing accurate results for query processing. The proposed solution applies nonstandard wavelet transforms on the raw multidimensional data and adds noise to guarantee ∈-differential privacy. Then, the scheme processes arbitrarily queries directly in the noisy wavelet-coefficient synopses of relational tables and expands the noisy wavelet coefficients back into noisy relational tuples until the end result of the query. Moreover, experimental results demonstrate the high accuracy and effectiveness of our approach.
Keywords :
data privacy; query processing; wavelet transforms; ε-differential privacy; differentially private multidimensional data publication; noisy relational tuples; noisy wavelet coefficient synopses; nonstandard wavelet transforms; query processing; relational tables; Arrays; Data privacy; Noise; Noise measurement; Privacy; Wavelet coefficients; data publication; data utility; differential privacy;
fLanguage :
English
Journal_Title :
Communications, China
Publisher :
ieee
ISSN :
1673-5447
Type :
jour
DOI :
10.1109/CC.2014.7022529
Filename :
7022529
Link To Document :
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