DocumentCode :
592137
Title :
On Learning Cluster Coefficient of Private Networks
Author :
Yue Wang ; Xintao Wu ; Jun Zhu ; Yang Xiang
Author_Institution :
Dept. of Software & Inf. Syst., Univ. of North Carolina at Charlotte, Charlotte, NC, USA
fYear :
2012
fDate :
26-29 Aug. 2012
Firstpage :
395
Lastpage :
402
Abstract :
Enabling accurate analysis of social network data while preserving differential privacy has been challenging since graph features such as clustering coefficient or modularity often have high sensitivity, which is different from traditional aggregate functions (e.g., count and sum) on tabular data. In this paper, we treat a graph statistics as a function f and develop a divide and conquer approach to enforce differential privacy. The basic procedure of this approach is to first decompose the target computation f into several less complex unit computations f1, · · · , fm connected by basic mathematical operations (e.g., addition, subtraction, multiplication, division), then perturb the output of each fi with Laplace noise derived from its own sensitivity value and the distributed privacy threshold ϵi, and finally combine those perturbed fi as the perturbed output of computation f. We examine how various operations affect the accuracy of complex computations. When unit computations have large global sensitivity values, we enforce the differential privacy by calibrating noise based on the smooth sensitivity, rather than the global sensitivity. By doing this, we achieve the strict differential privacy guarantee with smaller magnitude noise. We illustrate our approach by using clustering coefficient, which is a popular statistics used in social network analysis. Empirical evaluations show the developed divide and conquer approach outperforms the direct approach.
Keywords :
data privacy; divide and conquer methods; graph theory; pattern clustering; social networking (online); statistical analysis; clustering coefficient; differential privacy; distributed privacy threshold; divide and conquer approach; global sensitivity values; graph features; graph statistics; learning cluster coefficient; mathematical operations; private networks; social network data; tabular data; Data privacy; Frequency modulation; Noise; Privacy; Sensitivity; Social network services; Cluster Coefficient; Differential Privacy; Social Networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Advances in Social Networks Analysis and Mining (ASONAM), 2012 IEEE/ACM International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-1-4673-2497-7
Type :
conf
DOI :
10.1109/ASONAM.2012.71
Filename :
6425733
Link To Document :
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