Species distribution models that only require presence data provide potentially inaccurate results due to sampling bias and presence data scarcity. Methods have been proposed in the literature to minimize the effects of sampling bias, but without explicitly considering the issue of sample size. A new method developed to better take into account environmental biases in a context of data scarcity is proposed here. It is compared to other sampling bias correction methods primarily used in the literature by analyzing their absolute and relative impacts on model performances. Results showed that the number of presence sites is critical for selecting the applicable method. The method proposed was regularly placed in the first or second rank and t...
1. New methods for species distribution models (SDMs) utilise presence‐absence (PA) data to correct ...
Aim: Accounting for sampling bias is the greatest challenge facing presence-only and presence-backgr...
Species occurrence data from public repositories are widely used in biogeography, and conservation r...
International audienceSpecies distribution models that only require presence data provide potentiall...
Species distribution models (SDMs) are often calibrated using presence-only datasets plagued with en...
1. Open-source biodiversity databases contain a large number of species occurrence records but are o...
MAXENT is now a common species distribution modeling (SDM) tool used by conservation practitioners f...
Aim: Large databases of species records such as those generated through citizen science projects, ar...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
<div><p>Species distribution models (SDMs) trained on presence-only data are frequently used in ecol...
MAXENT is now a common species distribution modeling (SDM) tool used by conservation practitioners f...
Sampling bias contained in data of biological surveys is very common. Bias is clearly a function of ...
Sets of presence records used to model species’ distributions typically consist of observations coll...
1. New methods for species distribution models (SDMs) utilise presence‐absence (PA) data to correct ...
Aim: Accounting for sampling bias is the greatest challenge facing presence-only and presence-backgr...
Species occurrence data from public repositories are widely used in biogeography, and conservation r...
International audienceSpecies distribution models that only require presence data provide potentiall...
Species distribution models (SDMs) are often calibrated using presence-only datasets plagued with en...
1. Open-source biodiversity databases contain a large number of species occurrence records but are o...
MAXENT is now a common species distribution modeling (SDM) tool used by conservation practitioners f...
Aim: Large databases of species records such as those generated through citizen science projects, ar...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
<div><p>Species distribution models (SDMs) trained on presence-only data are frequently used in ecol...
MAXENT is now a common species distribution modeling (SDM) tool used by conservation practitioners f...
Sampling bias contained in data of biological surveys is very common. Bias is clearly a function of ...
Sets of presence records used to model species’ distributions typically consist of observations coll...
1. New methods for species distribution models (SDMs) utilise presence‐absence (PA) data to correct ...
Aim: Accounting for sampling bias is the greatest challenge facing presence-only and presence-backgr...
Species occurrence data from public repositories are widely used in biogeography, and conservation r...