Network Autocorrelation Models with Egocentric Data
Daniel K. Sewell

TL;DR
This paper develops a Bayesian method to model network autocorrelation using egocentric data, enabling estimation of social influence effects without full network information.
Contribution
It adapts network autocorrelation models for egocentric data, capturing complex dependence structures and estimating network effects efficiently.
Findings
Effective estimation of network effects from egocentric data.
Simulation study demonstrates good estimation performance.
Application shows potential influence of network on psychological well-being.
Abstract
Network autocorrelation models have been widely used for decades to model the joint distribution of the attributes of a network's actors. This class of models can estimate both the effect of individual characteristics as well as the network effect, or social influence, on some actor attribute of interest. Collecting data on the entire network, however, is very often infeasible or impossible if the network boundary is unknown or difficult to define. Obtaining egocentric network data overcomes these obstacles, but as of yet there has been no clear way to model this type of data and still appropriately capture the network effect on the actor attributes in a way that is compatible with a joint distribution on the full network data. This paper adapts the class of network autocorrelation models to handle egocentric data. The proposed methods thus incorporate the complex dependence structure…
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