4.5 Article

Null models reveal preferential sampling, spatial autocorrelation and overfitting in habitat suitability modelling

期刊

ECOLOGICAL MODELLING
卷 222, 期 3, 页码 588-597

出版社

ELSEVIER
DOI: 10.1016/j.ecolmodel.2010.11.016

关键词

MaxEnt; Null models; Preferential sampling; Spatial autocorrelation; Overfitting; Nematoda

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资金

  1. Flemish Government [FWO07/ASP/174]
  2. European Community [GOCE-CT-2003-505446]
  3. GENT-BOF [01GZ0705]

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Nowadays, species are driven to extinction at a high rate. To reduce this rate it is important to delineate suitable habitats for these species in such a way that these areas can be suggested as conservation areas. The use of habitat suitability models (HSMs) can be of great importance for the delineation of such areas. In this study MaxEnt, a presence-only modelling technique, is used to develop HSMs for 223 nematode species of the Southern Bight of the North Sea. However, it is essential that these models are beyond discussion and they should be checked for potential errors. In this study we focused on two categories (1) errors which can be attributed to the database such as preferential sampling and spatial autocorrelation and (2) errors induced by the modelling technique such as overfitting, In order to quantify these adverse effects thousands of nulls models were created. The effect of preferential sampling (i.e. some areas where visited more frequenty than others) was investigated by comparing model outcomes based from null models sampling the actual sampling stations and null models sampling the entire mapping area (Raes and ter Steege, 2007). Overfitting is exposed by a fivefold cross-validation and the influence of spatial autocorrelation is assessed by separating test and training sets in space. Our results clearly show that all these effects are present: preferential sampling has a strong effect on the selection of non-random species models. Crossvalidation seems to have less influence on the model selection and spatial autocorrelation is also strongly present. It is clear from this study that predefined thresholds are not readily applicable to all datasets and additional tests are needed in model selection. (C) 2010 Elsevier B.V. All rights reserved.

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