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Learning in Networks: An Experiment on Large Networks with Real-World Features
Journal article   Peer reviewed

Learning in Networks: An Experiment on Large Networks with Real-World Features

Syngjoo Choi, Sanjeev Goyal, Frederic Moisan and Yu Yang Tony To
Management Science, Vol.69(5), pp.2778-2787
01/05/2023

Abstract

social learning social networks experimental social science
"Subjects observe a private signal and make an initial guess; they then observe their neighbors’ guesses, update their own guess, and so forth. We study learning dynamics in three large-scale networks capturing features of real-world social networks: Erdös–Rényi, Stochastic Block (reflecting network homophily), and Royal Family (that accommodates both highly connected celebrities and local interactions). We find that the Royal Family network is more likely to sustain incorrect consensus and that the Stochastic Block network is more likely to persist with diverse beliefs. These patterns are consistent with the predictions of DeGroot updating. It lends support to the notion that the use of simple heuristics in information aggregation is prevalent in large and complex networks."
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UN Sustainable Development Goals (SDGs)

Contributed to the advancement of the following goal(s):

#10 Reduced Inequalities

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
6 Social Sciences
6.122 Economic Theory
6.122.437 Cooperation Dynamics
Web of Science research areas
Management
Operations Research & Management Science
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