Observational Learning in Large Anonymous Games

Theoretical Economics, (2019) 14. pp. 403-435.

45 Pages Posted: 6 Oct 2017 Last revised: 11 Jun 2019

See all articles by Ignacio Monzón

Ignacio Monzón

University of Turin - Collegio Carlo Alberto

Date Written: November 30, 2018

Abstract

I present a model of observational learning with payoff interdependence. Agents, ordered in a sequence, receive private signals about an uncertain state of the world and sample previous actions. Unlike in standard models of observational learning, an agent's payoff depends both on the state and on the actions of others. Agents want both to learn the state and to anticipate others' play. As the sample of previous actions provides information on both dimensions, standard informational externalities are confounded with payoff externalities. I show that in spite of these confounding factors, when signals are of unbounded strength there is learning in a strong sense: agents' actions are ex-post optimal given both the state of the world and others' actions. With bounded signals, actions approach ex-post optimality as the signal structure becomes more informative.

Keywords: Observational Learning, Payoff Interdependence, Information Aggregation, Position Uncertainty

JEL Classification: C72, D83, D85

Suggested Citation

Monzón, Ignacio, Observational Learning in Large Anonymous Games (November 30, 2018). Theoretical Economics, (2019) 14. pp. 403-435., Available at SSRN: https://ssrn.com/abstract=3048282 or http://dx.doi.org/10.2139/ssrn.3048282

Ignacio Monzón (Contact Author)

University of Turin - Collegio Carlo Alberto ( email )

Piazza Vincenzo Arbarello, 8
Torino, 10122
Italy

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