Correctly modelling bivariate relationships between geological variables is vital in mineral resource estimation. Often these relationships are complex and more simplistic methods of modelling such as Monte-Carlo Simulations (MCS), a bigaussian distribution or linear regression are not suitable. MCS where correlation coefficients are specified are inherently problematic because they can only reproduce the marginal distribution and a specified rank correlation coefficient, they cannot reproduce complex dependency structures. Bigaussian modelling is only appropriate if the data is indeed bigaussian (which is essentially never the case for grade variables). Elementary linear regression models can only model linear relationships and are often u...
Title: A study of applying copulas in data mining Author: Martin Ščavnický Department: Department of...
Australian agriculture is at serious risk from drought, and water resource infrastructure and manage...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...
The most important aspect of modelling a geological variable, such as metal grade, is the spatial co...
The mining and minerals industry is confronted with several challenges that were not common some dec...
A real-world mining application of pair-copulas is presented to model the spatial distribution of me...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
This case study is a based on measurements made approximately at 20cm lengths along a down-the-hole ...
bilistic models and its effect on geotechnical reliability. First, the copula theory is briefly Gumb...
A key step in valuing petroleum investment opportunities is to construct a model that portrays the u...
An important issue in multivariate statistical modeling is the choice of the appropriate dependence ...
Probability distributions of multivariate random variables are generally more complex compared to th...
International audienceProbability distributions of multivariate random variables are generally more ...
Practically every well installation process nowadays relies on some sort of risk assessment study, g...
In many applications of geostatistical methods, the dependence structure of the investigated paramet...
Title: A study of applying copulas in data mining Author: Martin Ščavnický Department: Department of...
Australian agriculture is at serious risk from drought, and water resource infrastructure and manage...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...
The most important aspect of modelling a geological variable, such as metal grade, is the spatial co...
The mining and minerals industry is confronted with several challenges that were not common some dec...
A real-world mining application of pair-copulas is presented to model the spatial distribution of me...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
This case study is a based on measurements made approximately at 20cm lengths along a down-the-hole ...
bilistic models and its effect on geotechnical reliability. First, the copula theory is briefly Gumb...
A key step in valuing petroleum investment opportunities is to construct a model that portrays the u...
An important issue in multivariate statistical modeling is the choice of the appropriate dependence ...
Probability distributions of multivariate random variables are generally more complex compared to th...
International audienceProbability distributions of multivariate random variables are generally more ...
Practically every well installation process nowadays relies on some sort of risk assessment study, g...
In many applications of geostatistical methods, the dependence structure of the investigated paramet...
Title: A study of applying copulas in data mining Author: Martin Ščavnický Department: Department of...
Australian agriculture is at serious risk from drought, and water resource infrastructure and manage...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...