AbstractIn this paper we present a recursive algorithm that produces estimators of an unknown parameter that occurs in the intensity of a counting process. The estimators can be considered as approximations of the maximum likelihood estimator. We prove consistency of the estimators and derive their asymptotic distribution by using Lyapunov functions and weak convergence for martingales. The conditions that we impose in order to prove our results are similar to those in papers on (quasi) least squares estimation
We consider a new recursive algorithm for parameter estimation from an independent incomplete data s...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
AbstractRobust estimation of parameters may be obtained via stochastic approximation algorithms. Thi...
In this paper we present a recursive algorithm that produces estimators of an unknown parameter that...
AbstractHidden Markov models (HMMs) have during the last decade become a widespread tool for modelli...
AbstractMany generalizations of the Robbins-Monro process have been proposed for the purpose of recu...
We consider a hidden Markov model (HMM) with multidimensional observations, and where the coefficien...
International audienceWe consider a hidden Markov model (HMM) with multidimensional observations, an...
The consistency and asymptotic linearity of recursive maximum likelihood estimator is proved under s...
Abstract- This paper proposes a high-level language consti-tuted of a small number of primitives and...
The recursive estimation problem of a one-dimensional parameter for statistical models associated wi...
AbstractRecursive parameter estimation in diffusion processes is considered. First, stability and as...
A recursive maximum-likelihood algorithm (RML) is proposed that can be used when both the observatio...
AbstractThe consistency and asymptotic linearity of recursive maximum likelihood estimator is proved...
Abstract This paper deals with the problem of estimating the unknown parameters in a long-memory pro...
We consider a new recursive algorithm for parameter estimation from an independent incomplete data s...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
AbstractRobust estimation of parameters may be obtained via stochastic approximation algorithms. Thi...
In this paper we present a recursive algorithm that produces estimators of an unknown parameter that...
AbstractHidden Markov models (HMMs) have during the last decade become a widespread tool for modelli...
AbstractMany generalizations of the Robbins-Monro process have been proposed for the purpose of recu...
We consider a hidden Markov model (HMM) with multidimensional observations, and where the coefficien...
International audienceWe consider a hidden Markov model (HMM) with multidimensional observations, an...
The consistency and asymptotic linearity of recursive maximum likelihood estimator is proved under s...
Abstract- This paper proposes a high-level language consti-tuted of a small number of primitives and...
The recursive estimation problem of a one-dimensional parameter for statistical models associated wi...
AbstractRecursive parameter estimation in diffusion processes is considered. First, stability and as...
A recursive maximum-likelihood algorithm (RML) is proposed that can be used when both the observatio...
AbstractThe consistency and asymptotic linearity of recursive maximum likelihood estimator is proved...
Abstract This paper deals with the problem of estimating the unknown parameters in a long-memory pro...
We consider a new recursive algorithm for parameter estimation from an independent incomplete data s...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
AbstractRobust estimation of parameters may be obtained via stochastic approximation algorithms. Thi...