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Phylogeny and the prediction of tree functional diversity across novel continental settings
Author(s) -
Swenson Nathan G.,
Weiser Michael D.,
Mao Lingfeng,
Araújo Miguel B.,
DinizFilho José Alexandre F.,
Kollmann Johannes,
NoguésBravo David,
Normand Signe,
Rodríguez Miguel A.,
GarcíaValdés Raúl,
Valladares Fernando,
Zavala Miguel A.,
Svenning JensChristian
Publication year - 2017
Publication title -
global ecology and biogeography
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.164
H-Index - 152
eISSN - 1466-8238
pISSN - 1466-822X
DOI - 10.1111/geb.12559
Subject(s) - trait , phylogenetic tree , biology , phylogenetic diversity , ecology , imputation (statistics) , phylogenetics , evolutionary biology , missing data , statistics , mathematics , computer science , genetics , gene , programming language
Aim Mapping the distribution and diversity of plant functional traits is critical for projecting future changes to vegetation under global change. Maps of plant functional traits, however, are scarce due very sparse global trait data matrices. A potential solution to this data limitation is to utilize the known levels of phylogenetic signal in trait data to predict missing values. Here we aim to test existing phylogenetic comparative methods for imputing missing trait data for the purpose of producing continental‐scale maps of plant functional traits. Location North America and Europe. Methods Phylogenetic imputation models and trait data from one continent were used to predict the trait values for tree species on the other continent and to produce trait maps. Predicted maps of trait means, variances and functional diversity were compared with known maps to quantify the degree to which predicted trait values could estimate spatial patterns of trait distributions and diversity. Results We show that the phylogenetic signal in plant functional trait data can be used to provide robust predictions of the geographical distribution of tree functional diversity. However, predictions for traits with little phylogenetic signal, such as maximum height, are error prone. Lastly, trait imputation methods based on phylogenetic generalized least squares tended to outperform those based on phylogenetic eigenvectors. Main conclusions It is possible to predict patterns of functional diversity across continental settings with novel species assemblages for most of the traits studied for which we have no direct trait information, thereby offering an effective method for overcoming a key data limitation in global change biology, macroecology and ecosystem modelling.