AbstractUsing the limit theorem for stochastic integral obtained by Jakubowski et al. (Probab. Theory Related Fields 81 (1989) 111–137), we introduce in this paper a new method for proving weak convergence results of empirical processes by a martingale method which allows discontinuities for the underlying distribution. This is applied to Nelson–Aalen and Kaplan–Meier processes. We also prove that the same conclusion can be drawn for Hjort's nonparametric Bayes estimators of the cumulative distribution function and cumulative hazard rate
In this article, we obtain some sufficient conditions for weak convergence of a sequence of processe...
This paper generalizes the univariate results of Chan and Tran (1989, Econometric Theory 5, 354–362)...
AbstractWeak convergence of probability measures on function spaces has been active area of research...
AbstractUsing the limit theorem for stochastic integral obtained by Jakubowski et al. (Probab. Theor...
This paper establishes the weak convergence of a class of marked empirical processes of possibly non...
The purpose of this course was to present results on weak convergence and invariance principle with ...
For forward and reverse martingale processes, weak convergence to appropriate stochastic (but, not n...
AbstractThis paper establishes the weak convergence of a class of marked empirical processes of poss...
Limit theory involving stochastic integrals is now widespread in time series econometrics and relies...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
Abstract: In this paper we present and investigate a new class of nonparamet-ric priors for modellin...
Weak convergence of partial sums and multilinear forms in independent random variables and linear pr...
Weak convergence of probability measures on function spaces has been active area of research in rece...
A popular Bayesian nonparametric approach to survival analysis consists in modeling hazard rates as ...
5.~r’ A convenient method ~ ~ prov ing weak convergence of a sequence of non-Markovian processes X r...
In this article, we obtain some sufficient conditions for weak convergence of a sequence of processe...
This paper generalizes the univariate results of Chan and Tran (1989, Econometric Theory 5, 354–362)...
AbstractWeak convergence of probability measures on function spaces has been active area of research...
AbstractUsing the limit theorem for stochastic integral obtained by Jakubowski et al. (Probab. Theor...
This paper establishes the weak convergence of a class of marked empirical processes of possibly non...
The purpose of this course was to present results on weak convergence and invariance principle with ...
For forward and reverse martingale processes, weak convergence to appropriate stochastic (but, not n...
AbstractThis paper establishes the weak convergence of a class of marked empirical processes of poss...
Limit theory involving stochastic integrals is now widespread in time series econometrics and relies...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
Abstract: In this paper we present and investigate a new class of nonparamet-ric priors for modellin...
Weak convergence of partial sums and multilinear forms in independent random variables and linear pr...
Weak convergence of probability measures on function spaces has been active area of research in rece...
A popular Bayesian nonparametric approach to survival analysis consists in modeling hazard rates as ...
5.~r’ A convenient method ~ ~ prov ing weak convergence of a sequence of non-Markovian processes X r...
In this article, we obtain some sufficient conditions for weak convergence of a sequence of processe...
This paper generalizes the univariate results of Chan and Tran (1989, Econometric Theory 5, 354–362)...
AbstractWeak convergence of probability measures on function spaces has been active area of research...