We consider stationary state space models for which the stationary distribution is not known analytically. We analyze the problem of static parameter estimation based on pairwise likelihood functions, motivated by the fact that for these general models the evaluation of the full likelihood function is often computationally infeasible. We quantify the bias in stationary models where the invariant distribution is unknown. For these models, an on line Expectation- Maximization algorithm to obtain the maximum pairwise likelihood estimate is developed. We illustrate the method for a linear gaussian model and we give an empirical evidence of our Bias theorem
The estimation of static parameters in general non-linear non-Gaussian state-space models is a long-...
State-space models are a very general class of time series capable of modeling dependent observation...
State-space models are a very general class of time series capable of modeling dependent observation...
We consider stationary state space models for which the stationary distribution is not known analyti...
We consider stationary state space models for which the stationary distribution is not known analyti...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
In general state space models, where the computational effort required in the evaluation of the full...
This article concerns parameter estimation for general state space models, following a frequentist l...
In general state space models, where the computational effort required in the evaluation of the full...
In general state space models, where the computational effort required in the evaluation of the full...
This paper deals with parameter estimation in pair-hidden Markov models. We first provide a rigorous...
We consider Bayesian online static parameter estimation for state-space models. This is a very impor...
The estimation of static parameters in general non-linear non-Gaussian state-space models is a long-...
State-space models are a very general class of time series capable of modeling dependent observation...
State-space models are a very general class of time series capable of modeling dependent observation...
We consider stationary state space models for which the stationary distribution is not known analyti...
We consider stationary state space models for which the stationary distribution is not known analyti...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
This article concerns parameter estimation for general state space models, following a frequentist l...
In general state space models, where the computational effort required in the evaluation of the full...
This article concerns parameter estimation for general state space models, following a frequentist l...
In general state space models, where the computational effort required in the evaluation of the full...
In general state space models, where the computational effort required in the evaluation of the full...
This paper deals with parameter estimation in pair-hidden Markov models. We first provide a rigorous...
We consider Bayesian online static parameter estimation for state-space models. This is a very impor...
The estimation of static parameters in general non-linear non-Gaussian state-space models is a long-...
State-space models are a very general class of time series capable of modeling dependent observation...
State-space models are a very general class of time series capable of modeling dependent observation...