Environmental data may be "large" due to number of records, number of covariates, or both. Random forests has a reputation for good predictive performance when using many covariates with nonlinear relationships, whereas spatial regression, when using reduced rank methods, has a reputation for good predictive performance when using many records that are spatially autocorrelated. In this study, we compare these two techniques using a data set containing the macroinvertebrate multimetric index (MMI) at 1859 stream sites with over 200 landscape covariates. A primary application is mapping MMI predictions and prediction errors at 1.1 million perennial stream reaches across the conterminous United States. For the spatial regression model, we deve...
This study was designed to compare the performance - in terms of bias and accuracy - of four differe...
Streams and rivers host a significant portion of Earth's biodiversity and provide important ecosyste...
International audienceMapping aboveground forest biomass is central for assessing the global carbon ...
Spatial statistical stream-network models are useful for modelling physicochemical data, but to-date...
We developed independent predictive disturbance models for a full regional data set and four individ...
This is the published version of an article published by the Ecological Society of America.The linea...
A major focus of geographical ecology and macroecology is to understand the causes of spatially stru...
Aim: This study used data from temperate forest communities to assess: (1) five different stepwise s...
Assessing geographic patterns of species richness is essential to develop biological conservation as...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
Streams and rivers host a significant portion of Earth’s biodiversity and pro-vide important ecosyst...
Mixed, moving average (MMA) approaches to geostatistical modelling on stream networks are still in t...
Assessing geographic patterns of species richness is essential to develop biological conservation as...
In forestry, many fundamental spatial processes cannot be measured directly and data on spatial patt...
Multivariate analysis was used to build macroinvertebrate predictive models for stream assessment in...
This study was designed to compare the performance - in terms of bias and accuracy - of four differe...
Streams and rivers host a significant portion of Earth's biodiversity and provide important ecosyste...
International audienceMapping aboveground forest biomass is central for assessing the global carbon ...
Spatial statistical stream-network models are useful for modelling physicochemical data, but to-date...
We developed independent predictive disturbance models for a full regional data set and four individ...
This is the published version of an article published by the Ecological Society of America.The linea...
A major focus of geographical ecology and macroecology is to understand the causes of spatially stru...
Aim: This study used data from temperate forest communities to assess: (1) five different stepwise s...
Assessing geographic patterns of species richness is essential to develop biological conservation as...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
Streams and rivers host a significant portion of Earth’s biodiversity and pro-vide important ecosyst...
Mixed, moving average (MMA) approaches to geostatistical modelling on stream networks are still in t...
Assessing geographic patterns of species richness is essential to develop biological conservation as...
In forestry, many fundamental spatial processes cannot be measured directly and data on spatial patt...
Multivariate analysis was used to build macroinvertebrate predictive models for stream assessment in...
This study was designed to compare the performance - in terms of bias and accuracy - of four differe...
Streams and rivers host a significant portion of Earth's biodiversity and provide important ecosyste...
International audienceMapping aboveground forest biomass is central for assessing the global carbon ...