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Exploring and mapping the universe of evolutionary graphs

MPG-Autoren
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Hindersin,  Laura
Department Evolutionary Theory, Max Planck Institute for Evolutionary Biology, Max Planck Society;

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Traulsen,  Arne
Department Evolutionary Theory, Max Planck Institute for Evolutionary Biology, Max Planck Society;

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Zitation

Möller, M., Hindersin, L., & Traulsen, A. (2018). Exploring and mapping the universe of evolutionary graphs. arXiv, 1-19.


Zusammenfassung
Population structure can be modelled by evolutionary graphs, which can have a
substantial, but very subtle influence on the fate of the arising mutants. Individuals
are located on the nodes of these graphs, competing with each other to eventually
take over the graph via the links. Many applications for this framework can be
envisioned, from the ecology of river systems and cancer initiation in colonic crypts
to biotechnological search for optimal mutations. In all these applications, it is not
only important where and when novel variants arise and how likely it is that they
ultimately take over, but also how long this process takes. More concretely, how is
the probability to take over the population related to the associated time? We study
this problem for all possible undirected and unweighted graphs up to a certain size.
To move beyond the graph size where an exhaustive search is possible, we devise
a genetic algorithm to find graphs with either high or low fixation probability and
either short or long fixation time and study their structure in detail searching for
common themes. Our work unravels structural properties that maximize or minimize
fixation probability and time, which allows us to contribute to a first map of the
universe of evolutionary graphs.