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DELAYED‐RESPONSE PHYLOGENETIC CORRELATION: AN OPTIMIZATION‐BASED METHOD TO TEST COVARIATION OF CONTINUOUS CHARACTERS
Author(s) -
Giannini Norberto P.,
Goloboff Pablo A.
Publication year - 2010
Publication title -
evolution
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.84
H-Index - 199
eISSN - 1558-5646
pISSN - 0014-3820
DOI - 10.1111/j.1558-5646.2010.00956.x
Subject(s) - phylogenetic tree , weighting , tree (set theory) , mathematics , statistics , statistic , range (aeronautics) , type i and type ii errors , matching (statistics) , character (mathematics) , biology , phylogenetic comparative methods , algorithm , combinatorics , genetics , medicine , materials science , geometry , radiology , gene , composite material
A new phylogenetic comparative method is proposed, based on mapping two continuous characters on a tree to generate data pairs for regression or correlation analysis, which resolves problems of multiple character reconstructions, phylogenetic dependence, and asynchronous responses (evolutionary lags). Data pairs are formed in two ways (tree‐down and tree‐up) by matching corresponding changes, Δ x and Δ y . Delayed responses (Δ y occurring later in the tree than Δ x ) are penalized by weighting pairs using nodal or branch‐length distance between Δ x and Δ y ; immediate (same‐node) responses are given maximum weight. All combinations of character reconstructions (or a random sample thereof) are used to find the observed range of the weighted coefficient of correlation r (or weighted slope b ). This range is used as test statistic, and the null distribution is generated by randomly reallocating changes (Δ x and Δ y ) in the topology. Unlike randomization of terminal values, this procedure complies with Generalized Monte Carlo requirements while saving considerable computation time. Phylogenetic dependence is avoided by randomization without data transformations, yielding acceptable type‐I error rates and statistical power. We show that ignoring delayed responses can lead to falsely nonsignificant results. Issues that arise from considering delayed responses based on optimization are discussed.