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Identification and Estimation of a Partially Linear Regression Model Using Network Data

Eric Auerbach

2022Econometrica45 citationsDOI

Abstract

I study a regression model in which one covariate is an unknown function of a latent driver of link formation in a network. Rather than specify and fit a parametric network formation model, I introduce a new method based on matching pairs of agents with similar columns of the squared adjacency matrix, the ij th entry of which contains the number of other agents linked to both agents i and j . The intuition behind this approach is that for a large class of network formation models the columns of the squared adjacency matrix characterize all of the identifiable information about individual linking behavior. In this paper, I describe the model, formalize this intuition, and provide consistent estimators for the parameters of the regression model.

Topics & Concepts

IntuitionEstimatorCovariateAdjacency matrixMathematicsRegression analysisRegressionLog-linear modelLinear regressionComputer scienceNonparametric regressionLinear modelStatisticsDiscrete mathematicsEpistemologyPhilosophyGraphComplex Network Analysis TechniquesSchool Choice and PerformanceOpinion Dynamics and Social Influence
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