This paper deals with the estimation of exogeneous peer effects for partially observed networks under the new inferential paradigm of design identification, which characterizes the missing data challenge arising with sampled networks with the central idea that two full data versions which are topologically compatible with the observed data may give rise to two different probability distributions. We show that peer effects cannot be identified by design when network links between sampled and unsampled units are not observed. Under realistic modeling conditions, and under the assumption that sampled units report on the size of their network of contacts, the asymptotic bias arising from estimating peer effects with incomplete network data is characterized, and a bias-corrected estimator is proposed. The finite sample performance of our methodology is investigated via simulations.
翻译:本文论述根据设计识别的新的推论模式对部分观测的网络的外生同侪影响所作的估计,这种估计是抽样网络所缺少的数据挑战的特点,其中心思想是,在结构上与所观测的数据相容的两个完整的数据版本可能会产生两种不同的概率分布。我们表明,当抽样和未取样的单位之间的网络联系没有得到遵守时,无法通过设计确定同侪影响。在现实的模型条件下,并假设抽样单位报告其联系网络的规模,对估计网络数据不完整的同行影响所产生的无症状偏差作了定性,并提议了一种偏差校正的估测器。我们的方法的有限抽样表现是通过模拟来调查的。