Replicator Dynamics of Coevolving Networks
Galstyan, Aram (University of Southern California) | Kianercy, Ardeshir (University of Southern California) | Allahverdyan, Armen (Yerevan Physics Institute)
We propose a simple model of network co-evolution in a game-dynamical system of interacting agents that play repeated games with their neighbors, and adapt their behaviors and network links based on the outcome of those games. The adaptation is achieved through a simple reinforcement learning scheme. We show that the collective evolution of such a system can be described by appropriately defined replicator dynamics equations. In particular, we suggest an appropriate factorization of the agents strategies thats results in a coupled system of equations characterizing the evolution of both strategies and network structure, and illustrate the framework on two simple examples.
Nov-5-2010
- Country:
- North America > United States (0.69)
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- Leisure & Entertainment > Games (0.69)
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