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Multimodal signalling in the North American barn swallow: a phenotype network approach
Author(s) -
Matthew R. Wilkins,
Daizaburo Shizuka,
Maxwell B. Joseph,
Joanna K. Hubbard,
Rebecca J. Safran
Publication year - 2015
Publication title -
proceedings of the royal society b biological sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.342
H-Index - 253
eISSN - 1471-2954
pISSN - 0962-8452
DOI - 10.1098/rspb.2015.1574
Subject(s) - hirundo , trait , biology , context (archaeology) , competition (biology) , evolutionary biology , barn owl , mate choice , barn , phenotype , tyto , animal communication , ecology , genetics , computer science , geography , predation , paleontology , archaeology , mating , gene , programming language
Complex signals, involving multiple components within and across modalities, are common in animal communication. However, decomposing complex signals into traits and their interactions remains a fundamental challenge for studies of phenotype evolution. We apply a novel phenotype network approach for studying complex signal evolution in the North American barn swallow (Hirundo rustica erythrogaster). We integrate model testing with correlation-based phenotype networks to infer the contributions of female mate choice and male–male competition to the evolution of barn swallow communication. Overall, the best predictors of mate choice were distinct from those for competition, while moderate functional overlap suggests males and females use some of the same traits to assess potential mates and rivals. We interpret model results in the context of a network of traits, and suggest this approach allows researchers a more nuanced view of trait clustering patterns that informs new hypotheses about the evolution of communication systems.

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