This paper considers parameter estimation for state-space models (SSMs). We propose quasi-likelihood (QL) and asymptotic quasilikelihood (AQL) approaches for the estimation of state-space models. The asymptotic quasi-likelihood (AQL) utilises a nonparametric kernel estimator of the conditional variance covariances matrix Σt to replace the true Σt in the standard quasi-likelihood. The kernel estimation avoids the risk of potential miss-specification of Σt and thus make the parameter estimator more robust. This has been further verified by empirical studies carried out in this paper
State space model is a class of models where the observations are driven by underlying stochastic pr...
Asymptotic quasi-likelihood based on kernel smoothing for nonlinear and non-gaussian state-space mod...
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....
Abstract—This paper considers parameter esti-mation for state-space models (SSMs). We pro-pose quasi...
This paper considers parameter estimation for nonlinear and non-Gaussian state-space models with cor...
For estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likelihood (Q...
AbstractFor estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likel...
In this thesis, parameter estimation for multivariate heteroscedastic models with unspecified correl...
Two methods, the Quasi-likelihood (QL) and Asymptotic Quasi-likelihood (AQL) for finding a point est...
State-space models (SSMs) encompass a wide range of popular models encountered in various fields suc...
AbstractOrdinary quasi-likelihood estimators are based on estimating functions with certain strong o...
This paper considers parameter estimation in multivariate heteroscedastic models with unspecific cor...
This thesis is concerned with a practical procedure of applying the Asymptotic Quasi-likelihood Meth...
We illustrate how to estimate parameters of linear state-space models using the Stata program sspace...
In this paper we derive the asymptotic distribution of a new class of quasi-maximum likelihood estim...
State space model is a class of models where the observations are driven by underlying stochastic pr...
Asymptotic quasi-likelihood based on kernel smoothing for nonlinear and non-gaussian state-space mod...
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....
Abstract—This paper considers parameter esti-mation for state-space models (SSMs). We pro-pose quasi...
This paper considers parameter estimation for nonlinear and non-Gaussian state-space models with cor...
For estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likelihood (Q...
AbstractFor estimation of the stochastic volatility model (SVM), this paper suggests the quasi-likel...
In this thesis, parameter estimation for multivariate heteroscedastic models with unspecified correl...
Two methods, the Quasi-likelihood (QL) and Asymptotic Quasi-likelihood (AQL) for finding a point est...
State-space models (SSMs) encompass a wide range of popular models encountered in various fields suc...
AbstractOrdinary quasi-likelihood estimators are based on estimating functions with certain strong o...
This paper considers parameter estimation in multivariate heteroscedastic models with unspecific cor...
This thesis is concerned with a practical procedure of applying the Asymptotic Quasi-likelihood Meth...
We illustrate how to estimate parameters of linear state-space models using the Stata program sspace...
In this paper we derive the asymptotic distribution of a new class of quasi-maximum likelihood estim...
State space model is a class of models where the observations are driven by underlying stochastic pr...
Asymptotic quasi-likelihood based on kernel smoothing for nonlinear and non-gaussian state-space mod...
Publicado además en: Recent developments in Time Series, 2003, vol. 2, ISBN13: 9781840649512, pp....