ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of soil environmental covariables could drive the accuracy of machine learning techniques. Thus, this study evaluated the ability of the Random Forest algorithm to predict soil classes from different training datasets and extrapolate such information to a similar area. The following training datasets were extracted from legacy data: a) point data composed of 53 soil samples; b) 30 m buffer around the soil samples, and soil map polygons excluding: c) 20 m; and d) 30 m from the boundaries of polygons. These four datasets were submitted to principal component analysis (PCA) to reduce multidimensionality. Each dataset derived a new one. Different comb...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
The soil–environmental relationship identified and standardised over the years has expedited the gro...
Different uses of soil legacy data such as training dataset as well as the selection of soil environ...
Machine learning models are now capable of delivering coveted digital soil mapping (DSM) benefits (e...
One of the core tasks in digital soil mapping (DSM) studies is the estimation of the spatial distrib...
Digital soil maps describe the spatial variation of soil and provide important information on spatia...
Spatial soil information is essential for informed decision-making in a wide range of fields. Digita...
Fine-resolution soil maps constitute important data for many different environmental studies. Digita...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
Digital soil mapping (DSM) involves the use of georeferenced information and statistical models to m...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Predicting taxonomic classes can be challenging with dataset subject to substantial irregularities d...
Tropical forests are significant carbon sinks and their soils' carbon storage potential is immense. ...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
The soil–environmental relationship identified and standardised over the years has expedited the gro...
Different uses of soil legacy data such as training dataset as well as the selection of soil environ...
Machine learning models are now capable of delivering coveted digital soil mapping (DSM) benefits (e...
One of the core tasks in digital soil mapping (DSM) studies is the estimation of the spatial distrib...
Digital soil maps describe the spatial variation of soil and provide important information on spatia...
Spatial soil information is essential for informed decision-making in a wide range of fields. Digita...
Fine-resolution soil maps constitute important data for many different environmental studies. Digita...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
Digital soil mapping (DSM) involves the use of georeferenced information and statistical models to m...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Predicting taxonomic classes can be challenging with dataset subject to substantial irregularities d...
Tropical forests are significant carbon sinks and their soils' carbon storage potential is immense. ...
Various approaches of differing mathematical complexities are being applied for spatial prediction o...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
The soil–environmental relationship identified and standardised over the years has expedited the gro...