In this thesis, we study a class of conditional heteroskedastic nonlinear models (ARCH). The volatility of the variable, at time t, depends on the relative position of the past variables. We . We show that such a family of models admits a Markovian representation, which allows us to study the stability. From Lyapounov's criteria, we establish the conditions under which the moments exist. Furthermore, asymptotic properties (strong convergence and convergence in law) of three kinds of parameters estimators are given. These results are illustrated at finite distance from simulated and real data sets.Nous étudions une classe de modèles conditionnellement hétéroscédastiques (ARCH) non linéaires. La volatilité de la variable à la date t dépend de...
ARCH(∞) models nest a wide range of ARCH and GARCH models including models with long memory in volat...
We prove the strong consistency and the asymptotic normality of the maximum likelihood estimator of ...
In this thesis, statistical theory for time series with conditional heteroskedasticity and long memo...
In this thesis, we study a class of conditional heteroskedastic nonlinear models (ARCH). The volatil...
Nous étudions une classe de modèles conditionnellement hétéroscédastiques (ARCH) non linéaires. La v...
Dans cette thèse, nous nous intéressons à l'estimation de modèles conditionnellement hétéroscédastiq...
The modeling of financial time series is made difficult by the presence of stylized facts. These emp...
While theory of autoregressive conditional heteroskedasticity (ARCH) models is well understood for s...
This paper studies the stability of nonlinear autoregressive models with conditionally heteroskedast...
International audienceIn this paper, we propose a heteroskedastic model in discrete time which conve...
A class of nonlinear ARCH processes is introduced and studied. The existence of a strictly stationar...
Abstract: This paper gives necessary and sucient conditions for stationarity and existence of second...
This paper considers a class of finite-order autoregressive linear ARCH models. The model captures ...
This article analyses the statistical properties of that general class of conditional heteroscedasti...
This paper studies the stability of nonlinear autoregressive models with conditionally heteroskedast...
ARCH(∞) models nest a wide range of ARCH and GARCH models including models with long memory in volat...
We prove the strong consistency and the asymptotic normality of the maximum likelihood estimator of ...
In this thesis, statistical theory for time series with conditional heteroskedasticity and long memo...
In this thesis, we study a class of conditional heteroskedastic nonlinear models (ARCH). The volatil...
Nous étudions une classe de modèles conditionnellement hétéroscédastiques (ARCH) non linéaires. La v...
Dans cette thèse, nous nous intéressons à l'estimation de modèles conditionnellement hétéroscédastiq...
The modeling of financial time series is made difficult by the presence of stylized facts. These emp...
While theory of autoregressive conditional heteroskedasticity (ARCH) models is well understood for s...
This paper studies the stability of nonlinear autoregressive models with conditionally heteroskedast...
International audienceIn this paper, we propose a heteroskedastic model in discrete time which conve...
A class of nonlinear ARCH processes is introduced and studied. The existence of a strictly stationar...
Abstract: This paper gives necessary and sucient conditions for stationarity and existence of second...
This paper considers a class of finite-order autoregressive linear ARCH models. The model captures ...
This article analyses the statistical properties of that general class of conditional heteroscedasti...
This paper studies the stability of nonlinear autoregressive models with conditionally heteroskedast...
ARCH(∞) models nest a wide range of ARCH and GARCH models including models with long memory in volat...
We prove the strong consistency and the asymptotic normality of the maximum likelihood estimator of ...
In this thesis, statistical theory for time series with conditional heteroskedasticity and long memo...