Species distribution models are generic empirical techniques that have a number of applications. One of these applications is to determine which environmental conditions are most important for a species. The calculation of this variable importance depends on a number of assumptions, including that the observations that are used to estimate the models are independent of each other. Spatial autocorrelation, which is a common feature most environmental factors confounds this assumption. Besides, many species distribution models are trained using a number of explanatory variables that have different levels of spatial autocorrelation. In this study we quantified the effects of differences in spatial autocorrelation in explanatory variables and t...
Aim To investigate the impact of positional uncertainty in species occurrences on the predictions of...
1. Species distribution models are increasingly used to address conservation questions, so their pre...
Neglect of ecological knowledge is a limiting factor in the use of statistical modelling to predict ...
Species distribution models are generic empirical techniques that have a number of applications. One...
Species distributional or trait data based on range map (extent-of-occurrence) or atlas survey data ...
Models of species’ distributions and niches are frequently used to infer the importance of range‐ an...
Species distribution models (SDMs) are frequently used to understand the influence of site propertie...
Ecological theory and current evidence support the validity of various species response curves accor...
Species distribution models (SDMs) have become a common tool in studies of species-environment relat...
Issues of residual spatial autocorrelation (RSA) and spatial scale are critical to the study of spec...
Funding: IP was funded by a Marie Skłodowska-Curie Research Fellowship (GAP-847014).Species Distribu...
1) Species distribution models (SDMs) are currently the main tools to derive species niche estimates...
The reproduction was (partially) successful. The authors provided the source code via a link to a sh...
When modeling species distributions, a common problem is a lack of independence in sampling values o...
Macroecologists and biogeographers continue to predict the distribution of species across space base...
Aim To investigate the impact of positional uncertainty in species occurrences on the predictions of...
1. Species distribution models are increasingly used to address conservation questions, so their pre...
Neglect of ecological knowledge is a limiting factor in the use of statistical modelling to predict ...
Species distribution models are generic empirical techniques that have a number of applications. One...
Species distributional or trait data based on range map (extent-of-occurrence) or atlas survey data ...
Models of species’ distributions and niches are frequently used to infer the importance of range‐ an...
Species distribution models (SDMs) are frequently used to understand the influence of site propertie...
Ecological theory and current evidence support the validity of various species response curves accor...
Species distribution models (SDMs) have become a common tool in studies of species-environment relat...
Issues of residual spatial autocorrelation (RSA) and spatial scale are critical to the study of spec...
Funding: IP was funded by a Marie Skłodowska-Curie Research Fellowship (GAP-847014).Species Distribu...
1) Species distribution models (SDMs) are currently the main tools to derive species niche estimates...
The reproduction was (partially) successful. The authors provided the source code via a link to a sh...
When modeling species distributions, a common problem is a lack of independence in sampling values o...
Macroecologists and biogeographers continue to predict the distribution of species across space base...
Aim To investigate the impact of positional uncertainty in species occurrences on the predictions of...
1. Species distribution models are increasingly used to address conservation questions, so their pre...
Neglect of ecological knowledge is a limiting factor in the use of statistical modelling to predict ...