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Journal ArticleOpen Access

The importance of correcting for sampling bias in MaxEnt species distribution models

Author Affiliations
Leibniz Institute for Zoo and Wildlife Research, University of Potsdam, Technical University of Munich, Montana State University, ...
Published InDiversity and Distributions
Year2013
Citations1,274

Abstract

Abstract Aim Advancement in ecological methods predicting species distributions is a crucial precondition for deriving sound management actions. Maximum entropy (MaxEnt) models are a popular tool to predict species distributions, as they are considered able to cope well with sparse, irregularly sampled data and minor location errors. Although a fundamental assumption of MaxEnt is that the entire area of interest has been systematically sampled, in practice, MaxEnt models are usually built from occurrence records that are spatially biased towards better‐surveyed areas. Two common, yet not compared, strategies to cope with uneven sampling effort are spatial filtering of occurrence data and background manipulation using environmental data with the same spatial bias as occurrence data. We tested these strategies using simulated data…
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