数学
估计员
一致性(知识库)
渐近分布
邻接表
核(代数)
应用数学
对比度(视觉)
邻接矩阵
集合(抽象数据类型)
算法
组合数学
离散数学
统计
计算机科学
人工智能
图形
程序设计语言
作者
Yuqing Du,Lianqiang Qu,Ting Yan,Yuan Zhang
摘要
We extend the well-known $\beta$-model for directed graphs to dynamic network setting, where we observe snapshots of adjacency matrices at different time points. We propose a kernel-smoothed likelihood approach for estimating $2n$ time-varying parameters in a network with $n$ nodes, from $N$ snapshots. We establish consistency and asymptotic normality properties of our kernel-smoothed estimators as either $n$ or $N$ diverges. Our results contrast their counterparts in single-network analyses, where $n\to\infty$ is invariantly required in asymptotic studies. We conduct comprehensive simulation studies that confirm our theory's prediction and illustrate the performance of our method from various angles. We apply our method to an email data set and obtain meaningful results.
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