Aim A key assumption in species distribution modelling is that both species and environmental data layers contain no positional errors, yet this will rarely be true.This study assesses the effect of introduced positional errors on the performance and interpretation of species distribution models.Location Baixo Alentejo region of Portugal.MethodsData on steppe bird occurrence were collected using a random stratified sampling design on a 1-km2 pixel grid. Environmental data were sourced from satellite imagery and digital maps. Error was deliberately introduced into the species data as shifts in a random direction of 0–1, 2–3, 4–5 and 0–5 pixels. Whole habitat layers were shifted by 1 pixel to cause mis-registration, and the cumulative effect ...
Spatial records of species are commonly misidentified, which can change the predicted distribution o...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
1. Species distribution models (SDMs) for presence-only data depend on accurate and precise measurem...
The performance of species distribution models is known to be affected by the analysis grain and the...
1. Species distribution modelling is used increasingly in both applied and theoretical research to p...
Species data held in museum and herbaria, survey data and opportunistically observed data are a subs...
1. Species distribution modelling is used increasingly in both applied and theoretical research to p...
Species distribution models (SDMs) are an important tool in biogeography and ecology and are widely ...
Species distribution models (SDMs) have become a common tool in studies of species-environment relat...
Species occurrences inherently include positional error. Such error can be problematic for species d...
This study examines how robust habitat distribution models are to uncertainty in the position of spe...
1. Species distribution models (SDMs) for presence-only data depend on accurate and precise measurem...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
Spatial records of species are commonly misidentified, which can change the predicted distribution o...
Aim To investigate the impact of positional uncertainty in species occurrences on the predictions of...
Spatial records of species are commonly misidentified, which can change the predicted distribution o...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
1. Species distribution models (SDMs) for presence-only data depend on accurate and precise measurem...
The performance of species distribution models is known to be affected by the analysis grain and the...
1. Species distribution modelling is used increasingly in both applied and theoretical research to p...
Species data held in museum and herbaria, survey data and opportunistically observed data are a subs...
1. Species distribution modelling is used increasingly in both applied and theoretical research to p...
Species distribution models (SDMs) are an important tool in biogeography and ecology and are widely ...
Species distribution models (SDMs) have become a common tool in studies of species-environment relat...
Species occurrences inherently include positional error. Such error can be problematic for species d...
This study examines how robust habitat distribution models are to uncertainty in the position of spe...
1. Species distribution models (SDMs) for presence-only data depend on accurate and precise measurem...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
Spatial records of species are commonly misidentified, which can change the predicted distribution o...
Aim To investigate the impact of positional uncertainty in species occurrences on the predictions of...
Spatial records of species are commonly misidentified, which can change the predicted distribution o...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
1. Species distribution models (SDMs) for presence-only data depend on accurate and precise measurem...