Geostatistical analysis of spatial random functions frequently uses sample variograms computed from increments of samples of a regionalized random variable. This paper addresses the theory of computing variograms not from increments but from spatial variances. The objective is to extract information about the point support space from the average or larger support data. The variance is understood as a parametric and second moment average feature of a population. However, it is well known that when the population is for a stationary random function, spatial variance within a region is a function of the size and geometry of the region and not a function of location. Spatial variance is conceptualized as an estimation variance between two physi...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Vita.In this dissertation, an approach to representing the covariance structure of spatial random va...
The variogram is essential for local estimation and mapping of any variable by kriging. The variogra...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
A new method for analysing spatial patterns was designed based on the variance of moving window aver...
The variance-based cross-variogram between two spatial processes, Z1(.) and Z 2 (-) , is var (Z1(u)-...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
In the context of spatial statistics, the classical variogram estimator proposed by Matheron is not ...
Assessment of the sampling variance of the experimental variogram is an important topic in geostatis...
A new concept of dispersion (cross) covariance has been introduced for the modeling of spatial scale...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...
Vita.In this dissertation, an approach to representing the covariance structure of spatial random va...
The variogram is essential for local estimation and mapping of any variable by kriging. The variogra...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
A new method for analysing spatial patterns was designed based on the variance of moving window aver...
The variance-based cross-variogram between two spatial processes, Z1(.) and Z 2 (-) , is var (Z1(u)-...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
In the context of spatial statistics, the classical variogram estimator proposed by Matheron is not ...
Assessment of the sampling variance of the experimental variogram is an important topic in geostatis...
A new concept of dispersion (cross) covariance has been introduced for the modeling of spatial scale...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Spatial statistics are useful in subjects as diverse as climatology, ecology, economics, environment...