Spectral estimators have been broadly applied to statistical network analysis but they do not incorporate the likelihood information of the network sampling model. This paper proposes a novel surrogate likelihood function for statistical inference of a class of popular network models referred to as random dot product graphs. In contrast to the structurally complicated exact likelihood function, the surrogate likelihood function has a separable structure and is log-concave yet approximates the exact likelihood function well. From the frequentist perspective, we study the maximum surrogate likelihood estimator and establish the accompanying theory. We show its existence, uniqueness, large sample properties, and that it improves upon the baseline spectral estimator with a smaller sum of squared errors. A computationally convenient stochastic gradient descent algorithm is designed for finding the maximum surrogate likelihood estimator in practice. From the Bayesian perspective, we establish the Bernstein--von Mises theorem of the posterior distribution with the surrogate likelihood function and show that the resulting credible sets have the correct frequentist coverage. The empirical performance of the proposed surrogate-likelihood-based methods is validated through the analyses of simulation examples and a real-world Wikipedia graph dataset. An R package implementing the proposed computation algorithms is publicly available at https://fangzheng-xie.github.io./materials/lgraph_0.1.0.tar.gz.
翻译:在统计网络分析中广泛应用了随机点产品图,但并不包含网络取样模型的可能性信息。本文件建议对被称为随机点产品图的一类流行网络模型进行统计推断,使用新的替代概率功能。与结构复杂确切可能性功能相比,代位概率功能有一个分离结构,并且是对比方,但与确切可能性功能相近。从经常者的角度,我们研究最大代位概率估计器,并确立相应的理论。我们展示其存在性、独特性、大样本属性,并改进基准光谱估计器,其平方值相加差数较小。计算上方便的随机梯度下行算算算算算算法是为了在实际中找到最大代位可能性估计器。从Bayesian的角度看,我们建立了Bernstein-von Mises theorestior分布的Bernstein-vmission Mises orem, 并同时设置了替代概率功能。我们展示了由此产生的可靠数据集具有正确的经常性覆盖性。拟议的假设性模型模型模拟模型/Rafgiusimalalal imalal assimal eximal exal exal exal exal exupal exal extravelopmental supal ex violviewmental view view view viewsal viewal view view views