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The Structure of Mutations and the Evolution of Cooperation
Author(s) -
Julián García,
Arne Traulsen
Publication year - 2012
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0035287
Subject(s) - public goods game , mutation , evolutionary dynamics , evolutionary game theory , mutation rate , population , prisoner's dilemma , evolutionary biology , reciprocal , strong reciprocity , biology , game theory , replicator equation , human evolutionary genetics , genetics , mathematical economics , repeated game , public good , economics , microeconomics , gene , phylogenetics , linguistics , philosophy , demography , sociology
Evolutionary game dynamics in finite populations assumes that all mutations are equally likely, i.e., if there arestrategies a single mutation can result in any strategy with probability. However, in biological systems it seems natural that not all mutations can arise from a given state. Certain mutations may be far away, or even be unreachable given the current composition of an evolving population. These distances between strategies (or genotypes) define a topology of mutations that so far has been neglected in evolutionary game theory. In this paper we re-evaluate classic results in the evolution of cooperation departing from the assumption of uniform mutations. We examine two cases: the evolution of reciprocal strategies in a repeated prisoner's dilemma, and the evolution of altruistic punishment in a public goods game. In both cases, alternative but reasonable mutation kernels shift known results in the direction of less cooperation. We therefore show that assuming uniform mutations has a substantial impact on the fate of an evolving population. Our results call for a reassessment of the “model-less” approach to mutations in evolutionary dynamics.

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