In this thesis we consider the modelling of the joint distribution of order statistics, i.e. random vectors with almost surely ordered components. The first part is dedicated to the probabilistic modelling of order statistics of maximal entropy with marginal constraints. Given the marginal constraints, the characterization of the joint distribution can be given by the associated copula. Chapter 2 presents an auxiliary result giving the maximum entropy copula with a fixed diagonal section. We give a necessary and sufficient condition for its existence, and derive an explicit formula for its density and entropy. Chapter 3 provides the solution for the maximum entropy problem for order statistics with marginal constraints by identifying the co...
In many areas of application of statistics one has a relevent parametric family of densities and wis...
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
Abstract: Copulas are a general way of describing dependence between two or more random variables. W...
In this thesis we consider the modelling of the joint distribution of order statistics, i.e. random ...
Dans cette thèse, on considère la modélisation de la loi jointe des statistiques d'ordre, c.à.d. des...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
Copulas are a general way of describing dependence between two or more random variables. When we onl...
A new nonparametric model of maximum-entropy (MaxEnt) copula density function is proposed, which off...
This paper extends maximum entropy estimation of discrete probability distributions to the continuou...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
The new estimates of the conditional Shannon entropy are introduced in the framework of the model de...
In density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
In many practical situations, we have only partial information about the probabilities. In some case...
We give a characterization of Maximum Entropy/Minimum Relative Entropy inference by providing two ‘s...
In many areas of application of statistics one has a relevent parametric family of densities and wis...
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
Abstract: Copulas are a general way of describing dependence between two or more random variables. W...
In this thesis we consider the modelling of the joint distribution of order statistics, i.e. random ...
Dans cette thèse, on considère la modélisation de la loi jointe des statistiques d'ordre, c.à.d. des...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
Copulas are a general way of describing dependence between two or more random variables. When we onl...
A new nonparametric model of maximum-entropy (MaxEnt) copula density function is proposed, which off...
This paper extends maximum entropy estimation of discrete probability distributions to the continuou...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
The new estimates of the conditional Shannon entropy are introduced in the framework of the model de...
In density estimation task, Maximum Entropy (Maxent) model can effectively use reliable prior inform...
In many practical situations, we have only partial information about the probabilities. In some case...
We give a characterization of Maximum Entropy/Minimum Relative Entropy inference by providing two ‘s...
In many areas of application of statistics one has a relevent parametric family of densities and wis...
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
Abstract: Copulas are a general way of describing dependence between two or more random variables. W...