This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodic time-series models. Under simple conditions that are straightforward to check, we establish the strong consistency, the rate of strong convergence and the asymptotic normality of a general class of estimators that includes LSE, MLE and some M-type estimators. As an application, we verify the assumptions for the long-memory fractional ARIMA model. Other examples include the GARCH(1,1) model, random coefficient AR(1) model and the threshold MA(1) model
AbstractIn this paper an asymptotic theory is developed for a new time series model which was introd...
This thesis is devoted to asymptotic inferenre of differents chronological models driven by a noise ...
We consider the estimation of parametric fractional time series models in which not only is the memo...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
We study a general class of quasi-maximum likelihood estimators for observation-driven time series m...
International audienceWe study a general class of quasi-maximum likelihood estimators for observatio...
International audienceThis paper generalizes asymptotic properties obtained in the observation-drive...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
Strong consistency and asymptotic normality of a Gaussian quasi-maximum likelihood estimator for the...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
A vector time series model with long-memory dependence is introduced. It is assumed that, at each ti...
AbstractA general framework for analyzing estimates in nonlinear time series is developed. General c...
This paper is about vector autoregressive-moving average (VARMA) models with time-dependent coeffici...
In this thesis, statistical theory for time series with conditional heteroskedasticity and long memo...
AbstractIn this paper an asymptotic theory is developed for a new time series model which was introd...
This thesis is devoted to asymptotic inferenre of differents chronological models driven by a noise ...
We consider the estimation of parametric fractional time series models in which not only is the memo...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
This paper develops a general asymptotic theory for the estimation of strictly stationary and ergodi...
We study a general class of quasi-maximum likelihood estimators for observation-driven time series m...
International audienceWe study a general class of quasi-maximum likelihood estimators for observatio...
International audienceThis paper generalizes asymptotic properties obtained in the observation-drive...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
Strong consistency and asymptotic normality of a Gaussian quasi-maximum likelihood estimator for the...
This paper is about vector autoregressive-moving average models with time-dependent coefficients to ...
A vector time series model with long-memory dependence is introduced. It is assumed that, at each ti...
AbstractA general framework for analyzing estimates in nonlinear time series is developed. General c...
This paper is about vector autoregressive-moving average (VARMA) models with time-dependent coeffici...
In this thesis, statistical theory for time series with conditional heteroskedasticity and long memo...
AbstractIn this paper an asymptotic theory is developed for a new time series model which was introd...
This thesis is devoted to asymptotic inferenre of differents chronological models driven by a noise ...
We consider the estimation of parametric fractional time series models in which not only is the memo...