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arxiv: 1409.4696 · v2 · pith:YESI7IGMnew · submitted 2014-09-16 · 📊 stat.OT · cs.CR· stat.ME

Differentially Private Exponential Random Graphs

classification 📊 stat.OT cs.CRstat.ME
keywords privacytechniquesdifferentiallyergmsexponentialgraphgraphsinference
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We propose methods to release and analyze synthetic graphs in order to protect privacy of individual relationships captured by the social network. Proposed techniques aim at fitting and estimating a wide class of exponential random graph models (ERGMs) in a differentially private manner, and thus offer rigorous privacy guarantees. More specifically, we use the randomized response mechanism to release networks under $\epsilon$-edge differential privacy. To maintain utility for statistical inference, treating the original graph as missing, we propose a way to use likelihood based inference and Markov chain Monte Carlo (MCMC) techniques to fit ERGMs to the produced synthetic networks. We demonstrate the usefulness of the proposed techniques on a real data example.

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