International audienceWe focus on the parametric estimation of the distribution of a Markov environment from the observation of a single trajectory of a one-dimensional nearest-neighbor path evolving in this random environment. In the ballistic case, as the length of the path increases, we prove consistency, asymptotic normality and efficiency of the maximum likelihood estimator. Our contribution is two-fold: we cast the problem into the one of parameter estimation in a hidden Markov model (HMM) and establish that the bivariate Markov chain underlying this HMM is positive Harris recurrent. We provide different examples of setups in which our results apply, in particular that of DNA unzipping model, and we give a simple synthetic experiment ...
The huge popularity of Hidden Markov models in pattern recognition is due to the ability to 'learn' ...
In this paper we study random walks with branching (BRW), and two examples of countable Markov chain...
During my PhD, I have been interested in theoretical properties of nonparametric hidden Markov model...
International audienceWe focus on the parametric estimation of the distribution of a Markov environm...
International audienceWe consider a one dimensional ballistic random walk evolving in an i.i.d. para...
We consider a one-dimensional recurrent random walk in random environment (RWRE) when the environmen...
International audienceWe consider a one dimensional ballistic random walk evolving in an i.i.d. para...
We consider a one dimensional sub-ballistic random walk evolving in a parametric i.i.d. random envir...
We consider a one dimensional ballistic random walk evolving in a parametric independent and identic...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
AbstractHidden Markov models assume a sequence of random variables to be conditionally independent g...
Introduced in the 1960s, the model of random walk in i.i.d. environment on integers (or RWRE) raised...
This document is dedicated to inference problems in hidden Markov models. The first part is devoted ...
The huge popularity of Hidden Markov models in pattern recognition is due to the ability to 'learn' ...
In this paper we study random walks with branching (BRW), and two examples of countable Markov chain...
During my PhD, I have been interested in theoretical properties of nonparametric hidden Markov model...
International audienceWe focus on the parametric estimation of the distribution of a Markov environm...
International audienceWe consider a one dimensional ballistic random walk evolving in an i.i.d. para...
We consider a one-dimensional recurrent random walk in random environment (RWRE) when the environmen...
International audienceWe consider a one dimensional ballistic random walk evolving in an i.i.d. para...
We consider a one dimensional sub-ballistic random walk evolving in a parametric i.i.d. random envir...
We consider a one dimensional ballistic random walk evolving in a parametric independent and identic...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
AbstractHidden Markov models assume a sequence of random variables to be conditionally independent g...
Introduced in the 1960s, the model of random walk in i.i.d. environment on integers (or RWRE) raised...
This document is dedicated to inference problems in hidden Markov models. The first part is devoted ...
The huge popularity of Hidden Markov models in pattern recognition is due to the ability to 'learn' ...
In this paper we study random walks with branching (BRW), and two examples of countable Markov chain...
During my PhD, I have been interested in theoretical properties of nonparametric hidden Markov model...