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Published November 6, 2017 | Submitted + Updated
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Principles of network development and evolution: An experimental study

Abstract

This paper reports on an experimental investigation of the evolution of networks and the individual decision making processes that guide it. Since there is no history of experimental work on network formation, part of the paper is devoted to the formulation of problems that can be examined experimentally. The results are that networks, composed of decentralized decision makers, are capable of overcoming complex coordination and learning problems and converge to stationary configurations. While stationarity is frequently observed, such an achievement is not guaranteed and when it doesn't occur significant and persistent inefficiencies can result. The models of equilibration based on the principle of Nash equilibrium are more reliable than models based on the alternative principles of efficiency seeking or focalness of the network configuration. However, individual decision making within networks is not in accordance with the simple decision rule of Nash best response. Instead we observe complicated strategies that appear to trade short term profits in order to signal to, and teach, other agents the strategies required for long term profit maximization.

Additional Information

Revised. Originally dated to July 2002. The financial support of the Laboratory of Experimental Economics and Political Science at Caltech is gratefully acknowledged. Published as Steven Callander, Charles R. Plott, Principles of network development and evolution: an experimental study, Journal of Public Economics, Volume 89, Issue 8, August 2005, Pages 1469-1495

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