网络形成的半参数分析

Semiparametric Analysis of Network Formation

Journal of Business & Economic Statistics · 2017
被引 48
人大 AABS 4

中文导读

研究了有向网络形成模型,通过充分统计量分离同质性参数与节点固定效应的估计,解决了联合估计带来的偏差问题,适用于稠密和稀疏网络。

Abstract

We consider a statistical model for directed network formation that features both node-specific parameters that capture degree heterogeneity and common parameters that reflect homophily among nodes. The goal is to perform statistical inference on the homophily parameters while treating the node-specific parameters as fixed effects. Jointly estimating all parameters leads to incidental-parameter bias and incorrect inference. As an alternative, we develop an approach based on a sufficient statistic that separates inference on the homophily parameters from estimation of the fixed effects. The estimator is easy to compute and can be applied to both dense and sparse networks, and is shown to have desirable asymptotic properties under sequences of growing networks. We illustrate the improvements of this estimator over maximum likelihood and bias-corrected estimation in a series of numerical experiments. The technique is applied to explain the import and export patterns in a dense network of countries and to estimate a more sparse advice network among attorneys in a corporate law firm.

有向网络形成半参数推断同质性参数节点固定效应