Effects of sample size on the performance of species distribution models

dc.contributor.authorWisz, M.S.
dc.contributor.authorHijmans, R.J.
dc.contributor.authorLi, J.
dc.contributor.authorPeterson, A. Townsend
dc.contributor.authorGraham, C.H.
dc.contributor.authorGuisan, Antoine
dc.contributor.authorElith, J
dc.contributor.authorDudik, M.
dc.contributor.authorFerrier, S.
dc.contributor.authorHuettmann, F.
dc.contributor.authorLeathwick, John
dc.contributor.authorLohmann, Lucia G.
dc.contributor.authorLoiselle, Bette A.
dc.contributor.authorPhillips, Steven J.
dc.contributor.authorWilliams, Stephen E.
dc.contributor.authorZimmermann, Niklaus
dc.contributor.authorMoritz, Craig
dc.date.accessioned2015-12-13T22:54:43Z
dc.date.issued2008
dc.date.updated2015-12-11T11:05:41Z
dc.description.abstractA wide range of modelling algorithms is used by ecologists, conservation practitioners, and others to predict species ranges from point locality data. Unfortunately, the amount of data available is limited for many taxa and regions, making it essential to quantify the sensitivity of these algorithms to sample size. This is the first study to address this need by rigorously evaluating a broad suite of algorithms with independent presence-absence data from multiple species and regions. We evaluated predictions from 12 algorithms for 46 species (from six different regions of the world) at three sample sizes (100, 30, and 10 records). We used data from natural history collections to run the models, and evaluated the quality of model predictions with area under the receiver operating characteristic curve (AUC). With decreasing sample size, model accuracy decreased and variability increased across species and between models. Novel modelling methods that incorporate both interactions between predictor variables and complex response shapes (i.e. GBM, MARS-INT, BRUTO) performed better than most methods at large sample sizes but not at the smallest sample sizes. Other algorithms were much less sensitive to sample size, including an algorithm based on maximum entropy (MAXENT) that had among the best predictive power across all sample sizes. Relative to other algorithms, a distance metric algorithm (DOMAIN) and a genetic algorithm (OM-GARP) had intermediate performance at the largest sample size and among the best performance at the lowest sample size. No algorithm predicted consistently well with small sample size (n < 30) and this should encourage highly conservative use of predictions based on small sample size and restrict their use to exploratory modelling.
dc.identifier.issn1366-9516
dc.identifier.urihttp://hdl.handle.net/1885/82216
dc.publisherBlackwell Publishing Ltd
dc.sourceDiversity and Distributions
dc.subjectKeywords: algorithm; conservation management; ecological approach; ecological modeling; population distribution Ecological niche model; MAXENT; Model comparison; OM-GARP; Sample size; Species distribution model
dc.titleEffects of sample size on the performance of species distribution models
dc.typeJournal article
local.bibliographicCitation.issue5
local.bibliographicCitation.lastpage773
local.bibliographicCitation.startpage763
local.contributor.affiliationWisz, M.S., University of Aarhus
local.contributor.affiliationHijmans, R.J., International Rice Research Institute
local.contributor.affiliationLi, J., Geoscience
local.contributor.affiliationPeterson, A. Townsend, University of Kansas
local.contributor.affiliationGraham, C.H., Stony Brook University
local.contributor.affiliationGuisan, Antoine, University of Lausanne
local.contributor.affiliationElith, J, University of Melbourne
local.contributor.affiliationDudik, M., Princeton University
local.contributor.affiliationFerrier, S., Department of Environmental and Climate Change
local.contributor.affiliationHuettmann, F., University of Alaska
local.contributor.affiliationLeathwick, John, Unknown
local.contributor.affiliationMoritz, Craig, College of Medicine, Biology and Environment, ANU
local.contributor.affiliationLohmann, Lucia G., Universidade de Sao Paulo
local.contributor.affiliationLoiselle, Bette A., University of Missouri
local.contributor.affiliationMoritz, Craig, University of California
local.contributor.affiliationPhillips, Steven J., AT&T Labs-Research
local.contributor.affiliationWilliams, Stephen E., James Cook University
local.contributor.affiliationZimmermann, Niklaus , Swiss Federal Research Institute WSL
local.contributor.authoruidMoritz, Craig, u1572787
local.description.embargo2037-12-31
local.description.notesImported from ARIES
local.identifier.absfor060302 - Biogeography and Phylogeography
local.identifier.absseo970106 - Expanding Knowledge in the Biological Sciences
local.identifier.ariespublicationf5625xPUB10490
local.identifier.citationvolume14
local.identifier.doi10.1111/j.1472-4642.2008.00482.x
local.identifier.scopusID2-s2.0-49249098476
local.identifier.thomsonID000258376800005
local.type.statusPublished Version

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