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Without quality presence–absence data, discrimination metrics such as <scp>TSS</scp> can be misleading measures of model performance

Boris LeroyUniversité de Caen NormandieRobin DelsolEcologie, Systématique &amp; Evolution UMR CNRS 8079 Univ. Paris‐Sud Orsay Cedex FranceBernard HuguenyLaboratoire Évolution &amp; Diversité Biologique (EDB UMR 5174) Université de Toulouse Midi‐Pyrénées CNRS, IRD, UPS Toulouse Cedex 9 FranceChristine N. MeynardCBGP INRA CIRAD IRD Montpellier SupAgro Univ Montpellier Montpellier FranceChéïma BarhoumiEcologie, Systématique &amp; Evolution UMR CNRS 8079 Univ. Paris‐Sud Orsay Cedex FranceMorgane Barbet‐MassinEcologie, Systématique &amp; Evolution UMR CNRS 8079 Univ. Paris‐Sud Orsay Cedex FranceCéline BellardDepartment of Genetics, Evolution and Environment Center for Biodiversity and Environment Research University College of London London UK
2018en
ABI

Аннотация

Abstract The discriminating capacity (i.e. ability to correctly classify presences and absences) of species distribution models ( SDM s) is commonly evaluated with metrics such as the area under the receiving operating characteristic curve ( AUC ), the Kappa statistic and the true skill statistic ( TSS ). AUC and Kappa have been repeatedly criticized, but TSS has fared relatively well since its introduction, mainly because it has been considered as independent of prevalence. In addition, discrimination metrics have been contested because they should be calculated on presence–absence data, but are often used on presence‐only or presence‐background data. Here, we investigate TSS and an alternative set of metrics—similarity indices, also known as F ‐measures. We first show that even in ideal conditions (i.e. perfectly random presence–absence sampling), TSS can be misleading because of its dependence on prevalence, whereas similarity/ F ‐measures provide adequate estimations of model discrimination capacity. Second, we show that in real‐world situations where sample prevalence is different from true species prevalence (i.e. biased sampling or presence‐pseudoabsence), no discrimination capacity metric provides adequate estimation of model discrimination capacity, including metrics specifically designed for modelling with presence‐pseudoabsence data. Our conclusions are twofold. First, they unequivocally impel SDM users to understand the potential shortcomings of discrimination metrics when quality presence–absence data are lacking, and we recommend obtaining such data. Second, in the specific case of virtual species, which are increasingly used to develop and test SDM methodologies, we strongly recommend the use of similarity/ F ‐measures, which were not biased by prevalence, contrary to TSS .

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