A hierarchical sequential Gaussian cosimulation method is applied in this study for modeling the variables with an inequality constraint in the bivariate relationship. An algorithm is improved by embedding an inverse transform sampling technique in the second simulation to reproduce bivariate complexity and accelerate the process of cosimulation. A heterotopic simple cokriging (SCK) is also proposed, which introduces two moving neighborhoods: single and multiple searching strategies in both steps of the hierarchical process. The proposed algorithm is tested over a real case study from an iron deposit where iron and aluminum oxide shows a strong bivariate dependency as well as a sharp inequality constraint. The results showed that the propos...
International audienceRecently, a cosparse analysis model was introduced as an alternative to the st...
We address an approximation method for Gaussian process (GP) regression, where we approximate covari...
Standard practice in analyzing data from different types of ex-periments is to treat data from each ...
A hierarchical sequential Gaussian cosimulation method is applied in this study for modeling the var...
This work addresses the problem of the cosimulation of cross-correlated variables with inequality co...
Cokriging allows predicting coregionalized variables from sampling information, by considering their...
Hypothesis testing for high-dimensional mean vectors has gained increasing attentions and stimulated...
Artículo de publicación ISIStochastic simulation is increasingly used to map the spatial variability...
Hierarchical data analysis is crucial in various fields for making discoveries. The linear mixed mod...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
This paper is devoted to the problem of sampling Gaussian distributions in high dimension. Solutions...
Modeling multivariate variables with complexity in a cross-correlation structure is always applicabl...
Homogeneity analysis, or multiple correspondence analysis, is usually applied tok separate variables...
Homogeneity analysis combines the idea of maximizing the correlations between vari-ables of a multiv...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
International audienceRecently, a cosparse analysis model was introduced as an alternative to the st...
We address an approximation method for Gaussian process (GP) regression, where we approximate covari...
Standard practice in analyzing data from different types of ex-periments is to treat data from each ...
A hierarchical sequential Gaussian cosimulation method is applied in this study for modeling the var...
This work addresses the problem of the cosimulation of cross-correlated variables with inequality co...
Cokriging allows predicting coregionalized variables from sampling information, by considering their...
Hypothesis testing for high-dimensional mean vectors has gained increasing attentions and stimulated...
Artículo de publicación ISIStochastic simulation is increasingly used to map the spatial variability...
Hierarchical data analysis is crucial in various fields for making discoveries. The linear mixed mod...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
This paper is devoted to the problem of sampling Gaussian distributions in high dimension. Solutions...
Modeling multivariate variables with complexity in a cross-correlation structure is always applicabl...
Homogeneity analysis, or multiple correspondence analysis, is usually applied tok separate variables...
Homogeneity analysis combines the idea of maximizing the correlations between vari-ables of a multiv...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
International audienceRecently, a cosparse analysis model was introduced as an alternative to the st...
We address an approximation method for Gaussian process (GP) regression, where we approximate covari...
Standard practice in analyzing data from different types of ex-periments is to treat data from each ...