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Statistics and Its Interface
Volume 15 (2022)
Number 3
Asymptotic in a class of network models with a difference private degree sequence
Pages: 383 – 397
DOI: https://dx.doi.org/10.4310/21-SII702
Authors
Abstract
The asymptotic properties of parameter estimators with a difference private degree sequence have been derived in $\beta$‑model with common binary values, but the general asymptotic properties in network models are lacking. Therefore, we will establish the unified asymptotic result including the consistency and asymptotical normality of the parameter estimator in a class of network models with a difference private degree sequence. Simulations are provided to illustrate asymptotic results.
Keywords
asymptotic normality, consistency, network data, degree, differential privacy
2010 Mathematics Subject Classification
Primary 62E20. Secondary 62F12.
Luo is partially supported by the National Natural Science Foundation of China (no. 11801576).
Qin is partially supported by the National Natural Science Foundation of China (no. 11871237).
Received 12 January 2021
Accepted 26 August 2021
Published 14 February 2022