In this paper, we consider the filtering and smoothing recursions in nonparametric finite state space hidden Markov models (HMMs) when the parameters of the model are unknown and replaced by estimators. We provide an explicit and time uniform control of the filtering and smoothing errors in total variation norm as a function of the parameter estimation errors. We prove that the risk for the filtering and smoothing errors may be uniformly upper bounded by the risk of the estimators. It has been proved very recently that statistical inference for finite state space nonparametric HMMs is possible. We study how the recent spectral methods developed in the parametric setting may be extended to the nonparametric framework and we give explicit upp...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
International audienceThis paper develops a simple and computationally efficient parametric approach...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
Hidden Markov models (HMMs) are flexible time series models in which the distribu-tions of the obser...
Hidden Markov models (HMMs) are flexible time series models in which the observed process depends on...
In this note we introduce an estimate for the marginal likelihood associated to hidden Markov models...
In this paper, we address the problem of filtering and fixed-lag smoothing for discrete-time and dis...
During my PhD, I have been interested in theoretical properties of nonparametric hidden Markov model...
In this paper, we prove that finite state space non parametric hidden Markov models are identifiable...
We consider the filtering of continuous-time finite-state hidden Markov models, where the rate and o...
International audienceExact inference for hidden Markov models requires the evaluation of all distri...
As more applications are found, interest in Hidden Markov Models continues to grow. Following commen...
In this paper, the asymptotic smoothing error for hidden Markov models (HMMs) is investigated using ...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
International audienceThis paper develops a simple and computationally efficient parametric approach...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
Hidden Markov models (HMMs) are flexible time series models in which the distribu-tions of the obser...
Hidden Markov models (HMMs) are flexible time series models in which the observed process depends on...
In this note we introduce an estimate for the marginal likelihood associated to hidden Markov models...
In this paper, we address the problem of filtering and fixed-lag smoothing for discrete-time and dis...
During my PhD, I have been interested in theoretical properties of nonparametric hidden Markov model...
In this paper, we prove that finite state space non parametric hidden Markov models are identifiable...
We consider the filtering of continuous-time finite-state hidden Markov models, where the rate and o...
International audienceExact inference for hidden Markov models requires the evaluation of all distri...
As more applications are found, interest in Hidden Markov Models continues to grow. Following commen...
In this paper, the asymptotic smoothing error for hidden Markov models (HMMs) is investigated using ...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
International audienceThis paper develops a simple and computationally efficient parametric approach...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...