Efficient Peer Effects Estimators with Group Effects
Guido M. Kuersteiner, Ingmar R. Prucha, Ying Zeng

TL;DR
This paper introduces a class of GMM estimators for linear peer effects models with group effects, unifying existing estimators and addressing identification issues using variation in group size and random effects assumptions.
Contribution
It develops a general GMM framework that encompasses existing estimators and extends identification of peer effects through random group effects and group size variation.
Findings
GMM estimators are consistent and asymptotically normal.
Bias decreases with more groups and greater variation in group size.
The proposed estimators outperform existing methods in simulations.
Abstract
We study linear peer effects models where peers interact in groups, individual's outcomes are linear in the group mean outcome and characteristics, and group effects are random. Our specification is motivated by the moment conditions imposed in Graham 2008. We show that these moment conditions can be cast in terms of a linear random group effects model and lead to a class of GMM estimators that are generally identified as long as there is sufficient variation in group size. We also show that our class of GMM estimators contains a Quasi Maximum Likelihood estimator (QMLE) for the random group effects model, as well as the Wald estimator of Graham 2008 and the within estimator of Lee 2007 as special cases. Our identification results extend insights in Graham 2008 that show how assumptions about random group effects as well as variation in group size can be used to overcome the reflection…
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Taxonomy
TopicsMedia Influence and Politics · School Choice and Performance · Economic Policies and Impacts
