Departamento Fundamentos Análisis Económico I
Universidad del País Vasco
Av. Lehendakari Aguirre 83
Institutional Affiliation: University of the Basque Country
NBER Working Papers and Publications
|November 2018||Non-Randomly Sampled Networks: Biases and Corrections|
with , , : w25270
This paper analyzes statistical issues arising from networks based on non-representative samples of the population. We first characterize the biases in both network statistics and estimates of network effects under non-random sampling theoretically and numerically. Sampled network data systematically bias the properties of observed networks and suffer from non-classical measurement-error problems when applied as regressors. Apart from the sampling rate and the elicitation procedure, these biases depend in a non-trivial way on which subpopulations are missing with higher probability. We propose a methodology, adapting post-stratification weighting approaches to networked contexts, which enables researchers to recover several network-level statistics and reduce the biases in the estimated ne...