@article{a9a5ce317a49486784f6106af851bfdf,
title = "New approaches for delineating n-dimensional hypervolumes",
abstract = "Hutchinson's n-dimensional hypervolume concept underlies many applications in contemporary ecology and evolutionary biology. Estimating hypervolumes from sampled data has been an ongoing challenge due to conceptual and computational issues. We present new algorithms for delineating the boundaries and probability density within n-dimensional hypervolumes. The methods produce smooth boundaries that can fit data either more loosely (Gaussian kernel density estimation) or more tightly (one-classification via support vector machine). Further, the algorithms can accept abundance-weighted data, and the resulting hypervolumes can be given a probabilistic interpretation and projected into geographic space. We demonstrate the properties of these methods on a large dataset that characterises the functional traits and geographic distribution of thousands of plants. The methods are available in version ≥2.0.7 of the hypervolume r package. These new algorithms provide: (i) a more robust approach for delineating the shape and density of n-dimensional hypervolumes; (ii) more efficient performance on large and high-dimensional datasets; and (iii) improved measures of functional diversity and environmental niche breadth.",
keywords = "functional diversity, functional space, hypervolume, kernel density estimation, niche, niche modelling, support vector machine",
author = "Benjamin Blonder and Morrow, {Cecina Babich} and Brian Maitner and Harris, {David J.} and Christine Lamanna and Cyrille Violle and Enquist, {Brian J.} and Kerkhoff, {Andrew J.}",
note = "Funding Information: B.B. was supported by a UK Natural Environment Research Council independent research fellowship (NE/M019160/1). A.J.K. and C.B.M. were supported by a collaborative research grant from the US National Science Foundation (DEB-1556651), and by the Kenyon College Summer Science programme. B.J.E. was supported by National Science Foundation award DEB-1457812 and Macrosystems-1065861. C.V. was supported by the European Research Council (ERC) Starting Grant Project “Ecophysiological and biophysical constraints on domestication of crop plants” (Grant ERC-StG-2014-639706-CONSTRAINTS) and by the French Foundation for Research on Biodiversity (FRB; www.fondationbiodiversite.fr) in the context of the CESAB project “Causes and conse?uences of functional rarity from local to global scales” (FREE). Funding Information: UK Natural Environment Research Council, Grant/Award Number: NE/M019160/1; US National Science Foundation, Grant/ Award Number: DEB-1556651; Kenyon College Summer Science; National Science Foundation, Grant/Award Number: DEB-1457812 and Macrosystems-1065861; European Research Council (ERC), Grant/ Award Number: ERC-StG-2014-639706-CONSTRAINTS; French Foundation for Research on Biodiversity Publisher Copyright: {\textcopyright} 2017 The Authors. Methods in Ecology and Evolution {\textcopyright} 2017 British Ecological Society",
year = "2018",
month = feb,
day = "1",
doi = "10.1111/2041-210X.12865",
language = "English (US)",
volume = "9",
pages = "305--319",
journal = "Methods in Ecology and Evolution",
issn = "2041-210X",
publisher = "John Wiley and Sons Inc.",
number = "2",
}