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Published July 2006 | public
Journal Article

Learning dynamics for mechanism design: An experimental comparison of public goods mechanisms

Healy, Paul J.

Abstract

In a repeated-interaction public goods economy, incomplete information and dynamic behavior may affect the realized outcomes of mechanisms known to be efficient in a complete information oneshot game. An experimental test of five public goods mechanisms indicates that subjects with private information appear to best respond to recent observations. This provides predictions about which mechanisms will generate convergence to their efficient equilibrium allocations. These predictions match the experimental result that globally stable efficient mechanisms realize the highest efficiency in practice. The simplicity of the suggested best response model makes it useful in predicting stability of mechanisms not yet tested.

Additional Information

© 2005 Elsevier Inc. All rights reserved. Received 5 December 2003; final version received 17 March 2005; Available online 13 May 2005 Formerly SSWP 1182.

Additional details

Created:
August 22, 2023
Modified:
October 17, 2023