Back to Search Start Over

Publishing Community-Preserving Attributed Social Graphs with a Differential Privacy Guarantee

Authors :
Chen, Xihui
Mauw, Sjouke
Ramírez-Cruz, Yunior
Source :
Proceedings on Privacy Enhancing Technologies 2020(4):131-152, 2020
Publication Year :
2019

Abstract

We present a novel method for publishing differentially private synthetic attributed graphs. Unlike preceding approaches, our method is able to preserve the community structure of the original graph without sacrificing the ability to capture global structural properties. Our proposal relies on C-AGM, a new community-preserving generative model for attributed graphs. We equip C-AGM with efficient methods for attributed graph sampling and parameter estimation. For the latter, we introduce differentially private computation methods, which allow us to release community-preserving synthetic attributed social graphs with a strong formal privacy guarantee. Through comprehensive experiments, we show that our new model outperforms its most relevant counterparts in synthesising differentially private attributed social graphs that preserve the community structure of the original graph, as well as degree sequences and clustering coefficients.

Details

Database :
arXiv
Journal :
Proceedings on Privacy Enhancing Technologies 2020(4):131-152, 2020
Publication Type :
Report
Accession number :
edsarx.1909.00280
Document Type :
Working Paper
Full Text :
https://doi.org/10.2478/popets-2020-0066