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Evolutionary games of multiplayer cooperation on graphs

View ORCID ProfileJorge Peña, Bin Wu, Jordi Arranz, Arne Traulsen
doi: https://doi.org/10.1101/038505
Jorge Peña
Max Planck Institute for Evolutionary Biology;
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  • For correspondence: pena@evolbio.mpg.de
Bin Wu
School of Sciences, Beijing University of Posts and Telecommunications
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Jordi Arranz
Max Planck Institute for Evolutionary Biology;
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Arne Traulsen
Max Planck Institute for Evolutionary Biology;
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Abstract

There has been much interest in studying evolutionary games in structured populations, often modelled as graphs. However, most analytical results so far have only been obtained for two-player or linear games, while the study of more complex multiplayer games has been usually tackled by computer simulations. Here we investigate evolutionary multiplayer games on graphs updated with a Moran death-Birth process. For cycles, we obtain an exact analytical condition for cooperation to be favored by natural selection, given in terms of the payoffs of the game and a set of structure coefficients. For regular graphs of degree three and larger, we estimate this condition using a combination of pair approximation and diffusion approximation. For a large class of cooperation games, our approximations suggest that graph-structured populations are stronger promoters of cooperation than populations lacking spatial structure. Computer simulations validate our analytical approximations for random regular graphs and cycles, but show systematic differences for graphs with many loops such as lattices. In particular, our simulation results show that these kinds of graphs can even lead to more stringent conditions for the evolution of cooperation than well-mixed populations. Overall, we provide evidence suggesting that the complexity arising from many-player interactions and spatial structure can be captured by pair approximation in the case of random graphs, but that it need to be handled with care for graphs with high clustering.

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The copyright holder for this preprint is the author/funder. It is made available under a CC-BY-NC-ND 4.0 International license.
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  • Posted July 21, 2016.

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Evolutionary games of multiplayer cooperation on graphs
Jorge Peña, Bin Wu, Jordi Arranz, Arne Traulsen
bioRxiv 038505; doi: https://doi.org/10.1101/038505
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Evolutionary games of multiplayer cooperation on graphs
Jorge Peña, Bin Wu, Jordi Arranz, Arne Traulsen
bioRxiv 038505; doi: https://doi.org/10.1101/038505

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