We first make a review of prior distributions neutral to the right, and then we get the Bayes rule for the survival function S(t) = 1 - F(t), with quadratic loss, with these prior distributions. We give, after that, the estimator with a special kind of processes neutral to the right, the homogeneous processes. We get in point four the linear Bayes rule and we give there an interpretation of the parameters. We finish with a Bayesian generalization of the Kolmogorov-Smirnov goodness of fit test
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
summary:In this work, a parametric sequential estimation method of survival functions is proposed in...
Bayesian nonparametric marginal methods are very popular since they lead to fairly easy implementati...
AbstractBerk and Jones (Z. Wahrsch. Verw. Gebiete 47 (1979) 47) described a nonparametric likelihood...
Goodness of fit test, two-sample nonparametric test, Bayesian model, smoothing prior, nonparametric ...
Tests for parametric nonhomogeneous and homogeneous Markov processes are given. Asymptotic distribut...
Testing the difference between two data samples is of a particular interest in statis-tics. Precisel...
The Bayesian nonparametric inference requires the construction of priors on infinite dimensional spa...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
In the first part of this work, a Survival function is considered which is supposed to be an Exponen...
In the first part of this work, a Survival function is considered which is supposed to be an Exponen...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
this paper, this assessment is paramount given that we are concerned with a goodness of fit perspect...
The paper proposes a new nonparametric prior for two–dimensional vectors of survival functions (S1, ...
In the Bayes paradigm and for a given loss function, we propose the construction of a new type of po...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
summary:In this work, a parametric sequential estimation method of survival functions is proposed in...
Bayesian nonparametric marginal methods are very popular since they lead to fairly easy implementati...
AbstractBerk and Jones (Z. Wahrsch. Verw. Gebiete 47 (1979) 47) described a nonparametric likelihood...
Goodness of fit test, two-sample nonparametric test, Bayesian model, smoothing prior, nonparametric ...
Tests for parametric nonhomogeneous and homogeneous Markov processes are given. Asymptotic distribut...
Testing the difference between two data samples is of a particular interest in statis-tics. Precisel...
The Bayesian nonparametric inference requires the construction of priors on infinite dimensional spa...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
In the first part of this work, a Survival function is considered which is supposed to be an Exponen...
In the first part of this work, a Survival function is considered which is supposed to be an Exponen...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
this paper, this assessment is paramount given that we are concerned with a goodness of fit perspect...
The paper proposes a new nonparametric prior for two–dimensional vectors of survival functions (S1, ...
In the Bayes paradigm and for a given loss function, we propose the construction of a new type of po...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
summary:In this work, a parametric sequential estimation method of survival functions is proposed in...
Bayesian nonparametric marginal methods are very popular since they lead to fairly easy implementati...