Species distribution models (SDMs) are statistical tools to identify potentially suitable habitats for species. For SDMs in river ecosystems, species occurrences and predictor data are often aggregated across subcatchments that serve as modeling units. The level of aggregation (i.e., model resolution) influences the statistical relationships between species occurrences and environmental predictors a phenomenon known as the modifiable area unit problem (MAUP), making model outputs directly contingent on the model resolution. Here, we test how model performance, predictor importance, and the spatial congruence of species predictions depend on the model resolution (i.e., average subcatchment size) of SDMs. We modeled the potential habitat suit...
Riverine species have adapted to their environment, particularly to the hydrological regime. Hydrolo...
Statistical species distribution models (SDMs) are widely used to quantify how taxa respond to envir...
Modeling species distributions is in most instances, we believe, better if perceived as an exercise ...
Species distribution models (SDMs) are statistical tools to identify potentially suitable habitats f...
Species distribution models are increasingly applied to freshwater ecosystems. Most applications use...
Niche-based species distribution models (SDMs) play a central role in studying species response to e...
Niche-based species distribution models (SDMs) play a central role in studying species response to e...
Niche-based species distribution models (SDMs) have become an essential tool in conservation and res...
The dendritic structure of river networks is commonly argued against use of species atlas data for m...
<div><p>The dendritic structure of river networks is commonly argued against use of species atlas da...
<div><p>Habitat suitability and the distinct mobility of species depict fundamental keys for explain...
Habitat suitability and the distinct mobility of species depict fundamental keys for explaining and ...
Species distribution models (SDMs) are extensively used to project habitat suitability of species in...
The species-area relationship (SAR) has over a 150-year-long history in ecology, but how its shape a...
In riverine ecosystems the species distribution, determined primarily by their environment often sho...
Riverine species have adapted to their environment, particularly to the hydrological regime. Hydrolo...
Statistical species distribution models (SDMs) are widely used to quantify how taxa respond to envir...
Modeling species distributions is in most instances, we believe, better if perceived as an exercise ...
Species distribution models (SDMs) are statistical tools to identify potentially suitable habitats f...
Species distribution models are increasingly applied to freshwater ecosystems. Most applications use...
Niche-based species distribution models (SDMs) play a central role in studying species response to e...
Niche-based species distribution models (SDMs) play a central role in studying species response to e...
Niche-based species distribution models (SDMs) have become an essential tool in conservation and res...
The dendritic structure of river networks is commonly argued against use of species atlas data for m...
<div><p>The dendritic structure of river networks is commonly argued against use of species atlas da...
<div><p>Habitat suitability and the distinct mobility of species depict fundamental keys for explain...
Habitat suitability and the distinct mobility of species depict fundamental keys for explaining and ...
Species distribution models (SDMs) are extensively used to project habitat suitability of species in...
The species-area relationship (SAR) has over a 150-year-long history in ecology, but how its shape a...
In riverine ecosystems the species distribution, determined primarily by their environment often sho...
Riverine species have adapted to their environment, particularly to the hydrological regime. Hydrolo...
Statistical species distribution models (SDMs) are widely used to quantify how taxa respond to envir...
Modeling species distributions is in most instances, we believe, better if perceived as an exercise ...