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Novel three-step pseudo-absence selection technique for improving species distribution modelling
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Date
2013-08
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Journal Article
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Abstract
Pseudo-absence selection for spatial distribution models (SDMs) is the subject of ongoing investigation. Numerous
techniques continue to be developed, and reports of their effectiveness vary. Because the quality of presence and absence
data is key for acceptable accuracy of correlative SDM predictions, determining an appropriate method to characterise
pseudo-absences for SDM’s is vital. The main methods that are currently used to generate pseudo-absence points are: 1)
randomly generated pseudo-absence locations from background data; 2) pseudo-absence locations generated within a
delimited geographical distance from recorded presence points; and 3) pseudo-absence locations selected in areas that are
environmentally dissimilar from presence points. There is a need for a method that considers both geographical extent and
environmental requirements to produce pseudo-absence points that are spatially and ecologically balanced. We use a novel
three-step approach that satisfies both spatial and ecological reasons why the target species is likely to find a particular geolocation
unsuitable. Step 1 comprises establishing a geographical extent around species presence points from which
pseudo-absence points are selected based on analyses of environmental variable importance at different distances. This
step gives an ecologically meaningful explanation to the spatial range of background data, as opposed to using an arbitrary
radius. Step 2 determines locations that are environmentally dissimilar to the presence points within the distance specified
in step one. Step 3 performs K-means clustering to reduce the number of potential pseudo-absences to the desired set by
taking the centroids of clusters in the most environmentally dissimilar class identified in step 2. By considering spatial,
ecological and environmental aspects, the three-step method identifies appropriate pseudo-absence points for correlative
SDMs. We illustrate this method by predicting the New Zealand potential distribution of the Asian tiger mosquito (Aedes
albopictus) and the Western corn rootworm (Diabrotica virgifera virgifera).
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© 2013 Senay et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits
unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
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