Categorical variables such as water table status are often predicted using the indicator kriging (IK) formalism. However, this method is known to suffer from important limitations that are most frequently solved by ad hoc solutions and approximations. Recently, the Bayesian Maximum Entropy (BME) approach has proved its ability to predict categorical variables efficiently and in a flexible way. In this paper, we apply this approach to the Ooypolder data set for the prediction of the water table classes from a sample data set. BME is compared with IK using global as well as local criteria. The inconsistencies of the IK predictor are emphasized and it is shown how BME permits avoiding them
Entropy is a measure of heterogeneity widely used in applied sciences, often when data are collected...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
This paper presents a Bayesian spatial method for analysing the site index data from the Missouri Oz...
Categorical variables often comes naturally and play an important role in environmental studies. Tra...
Being a non-linear method based on a rigorous formalism and an efficient processing of various infor...
First developed to predict continuous variables, Bayesian Maximum Entropy (BME) has become a complet...
Categorical variables have always played an important role in a wide variety of statistical applicat...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
Soil properties play important roles in a lot of environmental issues like diffuse pollution, erosio...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Categorical data play an important role in a wide variety of spatial applications, while modeling an...
The Bayesian maximum entropy (BME) method is a valuable tool, with rigorous theoretical underpinning...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Thematic maps are one of the most common tools for representing the spatial variation of a variable....
Gathering very accurate spatially explicit data related to the distribution of mean annual precipita...
Entropy is a measure of heterogeneity widely used in applied sciences, often when data are collected...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
This paper presents a Bayesian spatial method for analysing the site index data from the Missouri Oz...
Categorical variables often comes naturally and play an important role in environmental studies. Tra...
Being a non-linear method based on a rigorous formalism and an efficient processing of various infor...
First developed to predict continuous variables, Bayesian Maximum Entropy (BME) has become a complet...
Categorical variables have always played an important role in a wide variety of statistical applicat...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
Soil properties play important roles in a lot of environmental issues like diffuse pollution, erosio...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Categorical data play an important role in a wide variety of spatial applications, while modeling an...
The Bayesian maximum entropy (BME) method is a valuable tool, with rigorous theoretical underpinning...
Bayesian Maximum Entropy was used to estimate the probabilities of occurrence of soil categories in ...
Thematic maps are one of the most common tools for representing the spatial variation of a variable....
Gathering very accurate spatially explicit data related to the distribution of mean annual precipita...
Entropy is a measure of heterogeneity widely used in applied sciences, often when data are collected...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
This paper presents a Bayesian spatial method for analysing the site index data from the Missouri Oz...