Species Distribution Models (SDMs) are widely used to predict the occurrence of species. Because SDMs generally use presence-only data, validation of the predicted distribution and assessing model accuracy is challenging. Model performance depends on both sample size and species’ prevalence, being the fraction of the study area occupied by the species. Here, we present a novel method using simulated species to identify the minimum number of records required to generate accurate SDMs for taxa of different pre-defined prevalence classes. We quantified model performance as a function of sample size and prevalence and found model performance to increase with increasing sample size under constant prevalence, and to decrease with increasing preva...
Prediction of species' distributions is central to diverse applications in ecology, evolution and co...
A large array of species distribution model (SDM) approaches has been developed for explaining and p...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
Species Distribution Models (SDMs) are widely used to predict the occurrence of species. Because SDM...
Species Distribution Models (SDMs) are widely used to predict the occurrence of species. Because SDM...
A wide range of modelling algorithms is used by ecologists, conservation practitioners, and others t...
Aim The proportion of sampled sites where a species is present is known as prevalence. Empirical stu...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
Abstract: Species distribution models (SDMs) are empirical models relating species occurrence to env...
For species distribution models, species frequency is termed prevalence and prevalence in samples sh...
Prevalence (the presence/absence ratio in the training data) is commonly thought to influence the re...
Prediction of species' distributions is central to diverse applications in ecology, evolution and co...
A large array of species distribution model (SDM) approaches has been developed for explaining and p...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
Species Distribution Models (SDMs) are widely used to predict the occurrence of species. Because SDM...
Species Distribution Models (SDMs) are widely used to predict the occurrence of species. Because SDM...
A wide range of modelling algorithms is used by ecologists, conservation practitioners, and others t...
Aim The proportion of sampled sites where a species is present is known as prevalence. Empirical stu...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
Abstract: Species distribution models (SDMs) are empirical models relating species occurrence to env...
For species distribution models, species frequency is termed prevalence and prevalence in samples sh...
Prevalence (the presence/absence ratio in the training data) is commonly thought to influence the re...
Prediction of species' distributions is central to diverse applications in ecology, evolution and co...
A large array of species distribution model (SDM) approaches has been developed for explaining and p...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...