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Research Project
The role of spatial structure in the process of mate-choice copying
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Social learning by mate‐choice copying increases dispersal and reduces local adaptation
Publication . Sapage, Manuel; Varela, Susana.A.M.; Kokko, Hanna
Abstract
1. In heterogeneous environments, dispersal may be hampered not only by direct
costs, but also because immigrants may be locally maladapted. While maladaptation
affects both sexes, this cost may be modulated in females if they express
mate preferences that are either adaptive or maladaptive in the new local
population.
2. Dispersal costs under local adaptation may be mitigated if it is possible to switch
to expressing traits of locally adapted residents. In a sexual selection context, immigrant
females may learn to mate with locally favoured males. Mate-choice copying
is a type of social learning, where individuals, usually females, update their
mating preferences after observing others mate. If it allows immigrant females to
switch from maladapted to locally adapted preferences, their dispersal costs are
mitigated as mate choice helps them create locally adapted offspring.
3. To study if copying can promote the evolution of dispersal, we created an individual-
based model to simulate the coevolution of four traits: copying, dispersal,
a trait relevant for local adaptation, and female preference. We contrast two scenarios
with copying—either unconditional or conditional such that only dispersers
copy—with a control scenario that lacks any copying.
4. We show copying to lead to higher dispersal, especially if copying is conditionally
expressed. This leads to an increase in gene flow between patches and, consequently,
a decrease in local adaptation and trait-preference correlations.
5. While our study is phrased with female preference as the learned trait, one may
generally expect social learning to mitigate dispersal costs, with consequent feedback
effects on the spatial dynamics of adaptation.
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Fundação para a Ciência e a Tecnologia
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Funding Award Number
PD/BD/128349/2017