Network Structure and the Aggregation of Information: Theory and Evidence from Indonesia
Author(s)
Alatas, Vivi; Banerjee, Abhijit; Chandrasekhar, Arun Gautham; Hanna, Rema N.; Olken, Benjamin
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We use unique data from over 600 Indonesian communities on what individuals know about the poverty status of others to study how network structure influences information aggregation. We develop a model of semi-Bayesian learning on networks, which we structurally estimate using within-village data. The model generates qualitative predictions about how cross-village patterns of learning relate to network structure, which we show are borne out in the data. We apply our findings to a community-based targeting program, where citizens chose households to receive aid, and show that the networks that the model predicts to be more diffusive differentially benefit from community targeting.
Date issued
2016-07Department
Massachusetts Institute of Technology. Department of EconomicsJournal
American Economic Review
Publisher
American Economic Association
Citation
Alatas, Vivi; Banerjee, Abhijit; Chandrasekhar, Arun G.; Hanna, Rema and Olken, Benjamin A. “Network Structure and the Aggregation of Information: Theory and Evidence from Indonesia†.” American Economic Review 106, no. 7 (July 2016): 1663–1704. © 2016 American Economic Association
Version: Final published version
ISSN
0002-8282
1944-7981