International audienceThis paper develops a simple and computationally efficient parametric approach to the estimation of general hidden Markov models (HMMs). For non-Gaussian HMMs, the computation of the maximum likelihood estimator (MLE) involves a high-dimensional integral that has no analytical solution and can be difficult to approach accurately. We develop a new alternative method based on the theory of estimating functions and a deconvolution strategy. Our procedure requires the same assumptions as the MLE and deconvolution estimators. We provide theoretical guarantees about the performance of the resulting estimator; its consistency and asymptotic normality are established. This leads to the construction of confidence intervals. Mon...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
The estimation of Hidden Markov Models has attracted a lot of attention recently, see results of Leg...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
Hidden Markov models (HMMs) are flexible time series models in which the distribu-tions of the obser...
[[abstract]]An algorithm for estimating the parameters of a hidden Markov model (HMM) is presented. ...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
International audienceThis paper develops a simple and computationally efficient parametric approach...
The estimation of Hidden Markov Models has attracted a lot of attention recently, see results of Leg...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
In the current thesis several selected aspects of the two related latent class models; finite mixtur...
We propose a nonparametric simulated maximum likelihood estimation (NPSMLE) with built-in nonlinear ...
Hidden Markov models (HMMs) are flexible time series models in which the distribu-tions of the obser...
[[abstract]]An algorithm for estimating the parameters of a hidden Markov model (HMM) is presented. ...
We present a learning algorithm for non-parametric hidden Markov models with continuous state and ob...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...
This thesis extends and improves methods for estimating key quantities of hidden Markov models throu...