AbstractBy the Choquet theorem, distributions of random closed sets can be characterized by a certain class of set functions called capacity functionals. In this paper a generalization to the multivariate case is presented, that is, it is proved that the joint distribution of finitely many random sets can be characterized by a multivariate set function being completely alternating in each component, or alternatively, by a capacity functional defined on complements of cylindrical sets. For the special case of finite spaces a multivariate version of the Moebius inversion formula is derived. Furthermore, we use this result to formulate an existence theorem for set-valued stochastic processes
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
The concepts of entropy and the mutual information between two random variables as given, e.g., in (...
AbstractThe Choquet capacity T of a random closed set X on a metric space E is regarded as or relate...
The book concerns limit theorems and laws of large numbers for scaled unionsof independent identical...
In this bachelor thesis we are concerned with basic knowledge in random set theory. We define here s...
The first section of this chapter starts with the Buffon problem, which is one of the oldest in stoc...
In this paper we extend Choquet's result to obtain a recursive procedure for the computation of the ...
AbstractWe address the problem of constructing and identifying a valid joint probability density fun...
For any multivariate distribution with finite moments we can ask, as in the univariate case, whether...
AbstractMotivated by the problem of modeling of coarse data in statistics, we investigate in this pa...
We address the problem of constructing and identifying a valid joint probability density function fr...
AbstractWe address the problem of constructing and identifying a valid joint probability density fun...
The scope of this paper is to offer an overview of the main results obtained by the authors in recen...
The scope of this paper is to offer an overview of the main results obtained by the authors in recen...
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
The concepts of entropy and the mutual information between two random variables as given, e.g., in (...
AbstractThe Choquet capacity T of a random closed set X on a metric space E is regarded as or relate...
The book concerns limit theorems and laws of large numbers for scaled unionsof independent identical...
In this bachelor thesis we are concerned with basic knowledge in random set theory. We define here s...
The first section of this chapter starts with the Buffon problem, which is one of the oldest in stoc...
In this paper we extend Choquet's result to obtain a recursive procedure for the computation of the ...
AbstractWe address the problem of constructing and identifying a valid joint probability density fun...
For any multivariate distribution with finite moments we can ask, as in the univariate case, whether...
AbstractMotivated by the problem of modeling of coarse data in statistics, we investigate in this pa...
We address the problem of constructing and identifying a valid joint probability density function fr...
AbstractWe address the problem of constructing and identifying a valid joint probability density fun...
The scope of this paper is to offer an overview of the main results obtained by the authors in recen...
The scope of this paper is to offer an overview of the main results obtained by the authors in recen...
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
We consider a d-dimensional Boolean model Z = (Z_1+X_1) cup (Z_2+X_2) cup ... generated by a Poisson...
The concepts of entropy and the mutual information between two random variables as given, e.g., in (...