Measuring Diffusion Over a Large Network

Author:

He Xiaoqi1,Song Kyungchul2

Affiliation:

1. Central University of Finance and Economics , China

2. University of British Columbia , Canada

Abstract

Abstract This article introduces a measure of the diffusion of binary outcomes over a large, sparse network, when the diffusion is observed in two time periods. The measure captures the aggregated spillover effect of the state-switches in the initial period on their neighbours’ outcomes in the second period. This article introduces a causal network that captures the causal connections among the cross-sectional units over the two periods. It shows that when the researcher’s observed network contains the causal network as a subgraph, the measure of diffusion is identified as a simple, spatio-temporal dependence measure of observed outcomes. When the observed network does not satisfy this condition, but the spillover effect is non-negative, the spatio-temporal dependence measure serves as a lower bound for diffusion. Using this, a lower confidence bound for diffusion is proposed, and its asymptotic validity is established. The Monte Carlo simulation studies demonstrate the finite sample stability of the inference across a range of network configurations. The article applies the method to data on Indian villages to measure the diffusion of microfinancing decisions over households’ social networks.

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics

Reference56 articles.

1. Distinguishing Influence-Based Contagion from Homophily-Driven Diffusion in Dynamic Networks;Aral;Proceedings of the National Academy of Sciences of the United States of America,2009

2. Estimating Average Causal Effects under General Interference, with Application to a Social Network Experiment;Aronow;Annals of Applied Statistics,2017

3. Exact P-Values for Network Interference;Athey;Journal of the American Statistical Association,2018

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