Template:EvoLudo/Recent: Difference between revisions

From EvoLudo
No edit summary
 
Line 7: Line 7:
This summarizes recent research efforts:
This summarizes recent research efforts:
<div class="footnote" style="font-size:smaller">
<div class="footnote" style="font-size:smaller">
#Hauert, C., Saade, C. & McAvoy, A. (2018) ''J. theor. Biol.'' ''' ''' (in press) [https://doi.org/10.1016/j.jtbi.2018.11.019 doi: 10.1016/j.jtbi.2018.11.019]
#Hauert, C., Saade, C. & McAvoy, A. (2018) ''J. theor. Biol.'' '''462''' 347-360 [https://doi.org/10.1016/j.jtbi.2018.11.019 doi: 10.1016/j.jtbi.2018.11.019]
#McAvoy, A. & Hauert, C. (2015) ''PLoS Comp. Biol.'' '''11'''(8): e1004349 [https://doi.org/10.1371/journal.pcbi.1004349 doi: 10.1371/journal.pcbi.1004349]
#McAvoy, A. & Hauert, C. (2015) ''PLoS Comp. Biol.'' '''11'''(8): e1004349 [https://doi.org/10.1371/journal.pcbi.1004349 doi: 10.1371/journal.pcbi.1004349]
</div>
</div>
Line 13: Line 13:


[[Image:Superstar graph (N=484, B=21, k=6).svg|160px|left|link=Evolutionary graph theory]]
[[Image:Superstar graph (N=484, B=21, k=6).svg|160px|left|link=Evolutionary graph theory]]
=== [[Evolutionary graph theory]] ===
=== [[Evolutionary graph theory]] ===
New tutorial added on [[evolutionary graph theory]], which provides a formal approach to describe the spreading and fixation (or extinction) of a mutant type in structured populations. Interestingly, the fixation probabilities remain unaffected by the underlying structure for a [[Moran graphs|large class of graphs]]. However, some graphs may act either as [[Evolutionary amplifiers|amplifiers]] or [[Evolutionary suppressors|suppressors]] of selection by increasing or decreasing the fixation probabilities as compared to unstructured populations. In contrast, fixation and absorption times are very sensitive to changes in the graph structure and hence vary greatly even for graphs that leave fixation probabilities unchanged. Even though fixation times are, in general, not preserved between graphs, [[Graph symmetries|symmetries of a graph]] can at least ensure that fixation times do not depend on the initial location of the mutant. This summarizes research efforts that span over a decade, including:
New tutorial added on [[evolutionary graph theory]], which provides a formal approach to describe the spreading and fixation (or extinction) of a mutant type in structured populations. Interestingly, the fixation probabilities remain unaffected by the underlying structure for a [[Moran graphs|large class of graphs]]. However, some graphs may act either as [[Evolutionary amplifiers|amplifiers]] or [[Evolutionary suppressors|suppressors]] of selection by increasing or decreasing the fixation probabilities as compared to unstructured populations. In contrast, fixation and absorption times are very sensitive to changes in the graph structure and hence vary greatly even for graphs that leave fixation probabilities unchanged. Even though fixation times are, in general, not preserved between graphs, [[Graph symmetries|symmetries of a graph]] can at least ensure that fixation times do not depend on the initial location of the mutant. This summarizes research efforts that span over a decade, including:

Latest revision as of 14:11, 26 September 2023

Asymmetric evolutionary games

Upcoming: tutorial on asymmetric evolutionary games. In nature, asymmetric interactions are the norm rather than the exception, whereas for models in evolutionary game theory the opposite holds. Even individuals of the same species tend to differ in more ways than in just some strategic behaviour, and these differences inevitably result in asymmetries. For example, individuals may differ in body size, strength or agility, experience different developmental histories or availability and access to resources – all of which are likely to have some impact on the costs and benefits experienced by each individual in interactions. In general, such differences can be attributed either to the genetic makeup of an individual or its environmental conditions. Interestingly, asymmetry uncovers differences between genetic and cultural evolution that are not apparent when interactions are symmetric.

Environmental heterogeneities are modelled by considering patches of different qualities that are occupied by one individual each. The fitness of the occupant not only depends on interactions with others but also on the quality of its environment. In static heterogeneous environments, the long-term dynamics are the same as for symmetric interactions in an average, homogeneous environment. However, introducing environmental feedback between an individual's strategy and the quality of its patch results in rich eco-evolutionary dynamics. This enables individuals to act as ecosystem engineers. The nature of the feedback and the rate of ecological changes can relax or aggravate social dilemmas and promote persistent periodic oscillations of strategy abundance and environmental quality. This summarizes recent research efforts:

  1. Hauert, C., Saade, C. & McAvoy, A. (2018) J. theor. Biol. 462 347-360 doi: 10.1016/j.jtbi.2018.11.019
  2. McAvoy, A. & Hauert, C. (2015) PLoS Comp. Biol. 11(8): e1004349 doi: 10.1371/journal.pcbi.1004349


Evolutionary graph theory

New tutorial added on evolutionary graph theory, which provides a formal approach to describe the spreading and fixation (or extinction) of a mutant type in structured populations. Interestingly, the fixation probabilities remain unaffected by the underlying structure for a large class of graphs. However, some graphs may act either as amplifiers or suppressors of selection by increasing or decreasing the fixation probabilities as compared to unstructured populations. In contrast, fixation and absorption times are very sensitive to changes in the graph structure and hence vary greatly even for graphs that leave fixation probabilities unchanged. Even though fixation times are, in general, not preserved between graphs, symmetries of a graph can at least ensure that fixation times do not depend on the initial location of the mutant. This summarizes research efforts that span over a decade, including:

  1. McAvoy, A. & Hauert, C. (2015) J. R. Soc. Interface 12 20150420 doi: 10.1098/rsif.2015.0420
  2. Jamieson-Lane, A. & Hauert, C. (2015) J. Theor. Biol. 382 44-56 doi: 10.1016/j.jtbi.2015.06.029
  3. Lieberman, E., Hauert, C. & Nowak, M. (2005) Nature 433 312-316 doi: 10.1038/nature03204.