Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs.
Information processing is a major aspect of the evolution of animal behavior. In foraging, responsiveness to local feeding opportunities can generate patterns of behavior which reflect or "recognize patterns" in the environment beyond the perception of individuals. Theory on the evolution...
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2011-10-01
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doaj-527a2a2719414e399d65394a0a27d7d02020-11-25T01:11:55ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582011-10-01710e100218610.1371/journal.pcbi.1002186Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs.Daniel J van der PostDirk SemmannInformation processing is a major aspect of the evolution of animal behavior. In foraging, responsiveness to local feeding opportunities can generate patterns of behavior which reflect or "recognize patterns" in the environment beyond the perception of individuals. Theory on the evolution of behavior generally neglects such opportunity-based adaptation. Using a spatial individual-based model we study the role of opportunity-based adaptation in the evolution of foraging, and how it depends on local decision making. We compare two model variants which differ in the individual decision making that can evolve (restricted and extended model), and study the evolution of simple foraging behavior in environments where food is distributed either uniformly or in patches. We find that opportunity-based adaptation and the pattern recognition it generates, plays an important role in foraging success, particularly in patchy environments where one of the main challenges is "staying in patches". In the restricted model this is achieved by genetic adaptation of move and search behavior, in light of a trade-off on within- and between-patch behavior. In the extended model this trade-off does not arise because decision making capabilities allow for differentiated behavioral patterns. As a consequence, it becomes possible for properties of movement to be specialized for detection of patches with more food, a larger scale information processing not present in the restricted model. Our results show that changes in decision making abilities can alter what kinds of pattern recognition are possible, eliminate an evolutionary trade-off and change the adaptive landscape.http://europepmc.org/articles/PMC3188503?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniel J van der Post Dirk Semmann |
spellingShingle |
Daniel J van der Post Dirk Semmann Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. PLoS Computational Biology |
author_facet |
Daniel J van der Post Dirk Semmann |
author_sort |
Daniel J van der Post |
title |
Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
title_short |
Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
title_full |
Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
title_fullStr |
Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
title_full_unstemmed |
Local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
title_sort |
local orientation and the evolution of foraging: changes in decision making can eliminate evolutionary trade-offs. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2011-10-01 |
description |
Information processing is a major aspect of the evolution of animal behavior. In foraging, responsiveness to local feeding opportunities can generate patterns of behavior which reflect or "recognize patterns" in the environment beyond the perception of individuals. Theory on the evolution of behavior generally neglects such opportunity-based adaptation. Using a spatial individual-based model we study the role of opportunity-based adaptation in the evolution of foraging, and how it depends on local decision making. We compare two model variants which differ in the individual decision making that can evolve (restricted and extended model), and study the evolution of simple foraging behavior in environments where food is distributed either uniformly or in patches. We find that opportunity-based adaptation and the pattern recognition it generates, plays an important role in foraging success, particularly in patchy environments where one of the main challenges is "staying in patches". In the restricted model this is achieved by genetic adaptation of move and search behavior, in light of a trade-off on within- and between-patch behavior. In the extended model this trade-off does not arise because decision making capabilities allow for differentiated behavioral patterns. As a consequence, it becomes possible for properties of movement to be specialized for detection of patches with more food, a larger scale information processing not present in the restricted model. Our results show that changes in decision making abilities can alter what kinds of pattern recognition are possible, eliminate an evolutionary trade-off and change the adaptive landscape. |
url |
http://europepmc.org/articles/PMC3188503?pdf=render |
work_keys_str_mv |
AT danieljvanderpost localorientationandtheevolutionofforagingchangesindecisionmakingcaneliminateevolutionarytradeoffs AT dirksemmann localorientationandtheevolutionofforagingchangesindecisionmakingcaneliminateevolutionarytradeoffs |
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