Effects of multiple gene control on the spread of altruism by group selection
T. Kulich, J. Flegr

TL;DR
This paper demonstrates through numerical modeling that multiple gene control can enable the stable spread of altruism in populations, overcoming limitations faced by single-gene models under realistic mutation and migration conditions.
Contribution
It confirms that multiple substitutable genes controlling altruism promote its stable coexistence with selfishness in structured populations, extending previous theoretical models.
Findings
Multiple gene control enhances altruism stability.
Altruism persists under high mutation and migration rates.
Single-gene altruism is outcompeted in similar conditions.
Abstract
The origin of altruistic behavior, i.e. the behavior that is useful for a population or a species but goes at the expense of an altruistic individual, has long been a challenge for students of evolutionary biology. The populations with altruistic individuals thrive better than those without altruists; however, the altruists within a population thrive worse than the non-altruists and their prevalence in the population decreases due to individual selection. Under certain conditions, the strength of group selection, i.e. the competition between populations, can surpass the strength of individual selection; however, such conditions are rarely achieved in practice. It was suggested recently that chances for altruistic behavior to spread highly increase when it is controlled not by a single gene but by multiple independent genes substitutable in their effects on the phenotype of the…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Evolution and Genetic Dynamics · Mathematical and Theoretical Epidemiology and Ecology Models
