This paper investigates a partially nonstationary multivariate autoregressive model, which allows its innovations to be generated by a multivariate ARCH, autoregressive conditional heteroscedastic, process. Three estimators, including the least squares estimator, a full-rank maximum likelihood estimator and a reduced-rank maximum likelihood estimator, are considered and their asymptotic distributions are derived. When the multivariate ARCH process reduces to the innovation with a constant covariance matrix, these asymptotic distributions are the same as those given by Alin & Reinsel (1990). However, in the presence of multivariate ARCH innovations, the asymptotic distributions of the full-rank maximum likelihood estimator and the reduced-ra...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
This paper considers nonstationary fractional autoregressive integrated moving-average ( p, d, q) mo...
In this paper, we extend the classical idea of Rank estimation of parameters from homoscedastic prob...
This paper investigates a partially nonstationary multivariate autoregressive model, which allows it...
We consider maximum likelihood estimation of a particular noninvertible ARMA model with autoregressi...
in pressInternational audienceWe develop a complete methodology for detecting time varying or non-ti...
A natural generalization of the ARCH (Autoregressive Conditional Heteroskedastic) process introduced...
This paper deals with the estimation of linear dynamic models of the ARMA type for the conditional m...
This research makes contributions to conditional heteroscedastic models in financial time series. A ...
In his seminal 1982 paper, Robert F. Engle described a time series model with a time-varying volatil...
In this paper it is shown that the popular Autoregressive Conditional Heteroscedasticity (ARCH) mode...
This dissertation concerns theoretical and empirical aspects of a class of conditionally heteroskeda...
A conditionally heteroscedastic model, different from the more commonly used autoregressive moving a...
While theory of autoregressive conditional heteroskedasticity (ARCH) models is well understood for s...
In the paper a non-stationary ARCH model is defined and its relation with a heteroscedastic RCA mode...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
This paper considers nonstationary fractional autoregressive integrated moving-average ( p, d, q) mo...
In this paper, we extend the classical idea of Rank estimation of parameters from homoscedastic prob...
This paper investigates a partially nonstationary multivariate autoregressive model, which allows it...
We consider maximum likelihood estimation of a particular noninvertible ARMA model with autoregressi...
in pressInternational audienceWe develop a complete methodology for detecting time varying or non-ti...
A natural generalization of the ARCH (Autoregressive Conditional Heteroskedastic) process introduced...
This paper deals with the estimation of linear dynamic models of the ARMA type for the conditional m...
This research makes contributions to conditional heteroscedastic models in financial time series. A ...
In his seminal 1982 paper, Robert F. Engle described a time series model with a time-varying volatil...
In this paper it is shown that the popular Autoregressive Conditional Heteroscedasticity (ARCH) mode...
This dissertation concerns theoretical and empirical aspects of a class of conditionally heteroskeda...
A conditionally heteroscedastic model, different from the more commonly used autoregressive moving a...
While theory of autoregressive conditional heteroskedasticity (ARCH) models is well understood for s...
In the paper a non-stationary ARCH model is defined and its relation with a heteroscedastic RCA mode...
Exponential models of Autoregressive Conditional Heteroscedasticity (ARCH) enable richer dynamics (e...
This paper considers nonstationary fractional autoregressive integrated moving-average ( p, d, q) mo...
In this paper, we extend the classical idea of Rank estimation of parameters from homoscedastic prob...