Spatial predictive methods are increasingly being used to generate predictions across various disciplines in environmental sciences. Accuracy of the predictions is critical as they form the basis for environmental management and conservation. Therefore, improving the accuracy by selecting an appropriate method and then developing the most accurate predictive model(s) is essential. However, it is challenging to select an appropriate method and find the most accurate predictive model for a given dataset due to many aspects and multiple factors involved in the modeling process. Many previous studies considered only a portion of these aspects and factors, often leading to sub-optimal or even misleading predictive models. This study evaluates a ...
Spatial Regression Models illustrates the use of spatial analysis in the social sciences. The text i...
In this work we perform predictions of annual precipitation and runoff by spatial interpolation. For...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
This study introduces a hybrid spatial modelling framework, which accounts for spatial non-stationar...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
Abstract. This paper is an introduction to a Special Issue on ‘regression models for spatial predict...
In this article, we review and compare a number of methods of spatial prediction, where each method ...
Remote sensing technology for the study of Earth and its environment has led to Big Data that, par...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Predictive Soil Mapping (PSM) is based on applying statistical and/or machine learning techniques to...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
Predictive modelling is a set of techniques, used since the 1970s, to predict the location of archae...
Spatial Regression Models illustrates the use of spatial analysis in the social sciences. The text i...
In this work we perform predictions of annual precipitation and runoff by spatial interpolation. For...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
Random forest and similar Machine Learning techniques are already used to generate spatial predictio...
This study introduces a hybrid spatial modelling framework, which accounts for spatial non-stationar...
The paper presents some contemporary approaches to spatial environmental data analysis. The main top...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
We present generalized regression analysis and spatial prediction (GRASP) conceptually as a method f...
Abstract. This paper is an introduction to a Special Issue on ‘regression models for spatial predict...
In this article, we review and compare a number of methods of spatial prediction, where each method ...
Remote sensing technology for the study of Earth and its environment has led to Big Data that, par...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Predictive Soil Mapping (PSM) is based on applying statistical and/or machine learning techniques to...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
Predictive modelling is a set of techniques, used since the 1970s, to predict the location of archae...
Spatial Regression Models illustrates the use of spatial analysis in the social sciences. The text i...
In this work we perform predictions of annual precipitation and runoff by spatial interpolation. For...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...