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Weighted directed networks with a differentially private bi-degree sequence

21 March 2020
Qiuping Wang
Xiao Zhang
Jing Luo
Ouyang Yang
Qian Wang
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Abstract

The p0p_0p0​ model is an exponential random graph model for directed networks with the bi-degree sequence as the exclusively sufficient statistic. It captures the network feature of degree heterogeneity. The consistency and asymptotic normality of a differentially private estimator of the parameter in the private p0p_0p0​ model has been established. However, the p0p_0p0​ model only focuses on binary edges. In many realistic networks, edges could be weighted, taking a set of finite discrete values. In this paper, we further show that the moment estimators of the parameters based on the differentially private bi-degree sequence in the weighted p0p_0p0​ model are consistent and asymptotically normal. Numerical studies demonstrate our theoretical findings.

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