International audienceThe problem of test of fit for Vector AutoRegressive (VAR) processes with unconditionally heteroscedastic errors is studied. The volatility structure is deterministic but time-varying and allows for changes that are commonly observed in economic or financial multivariate series. Our analysis is based on the residual autocovariances and autocorrelations obtained from Ordinary Least Squares (OLS), Generalized Least Squares (GLS)and Adaptive Least Squares (ALS) estimation of the autoregressive parameters. The ALS approach is the GLS approach adapted to the unknown time-varying volatility that is then estimated by kernel smoothing. The properties of the three types of residual autocovariances and autocorrelations are deriv...
This study investigates the size and power properties of three multivariate tests for autocorrelatio...
Vector autoregression model VAR belongs to the most used multiple time series models mainly in field...
Autoregressive and moving-average (ARMA) models with stable Paretian errors are some of the most stu...
We consider portmanteau tests for testing the adequacy of vector autoregressive moving-average (VARM...
In applied time series analysis, checking for autocorrelation in a fitted model is a routine diagnos...
In the 2011 SAS ® Global Forum, two weighted portmanteau tests were introduced for goodness-of-fit o...
International audienceIn this paper we consider estimation and test of fit for multiple autoregressi...
This thesis aims at investigating different forms of residuals from a general time series model with...
The portmanteau statistic based on the first m residual autocorrelations is used for testing the goo...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
The identification of the lag length for vector autoregressive models by mean of Akaike Information ...
The large-sample distribution of the multivariate residual autocorrelations in the vector ARMA model...
This study investigates the size and power properties of three multivariate tests for autocorrelatio...
The aim of this thesis is to derive the limiting distributions of the residual and the squared resid...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This study investigates the size and power properties of three multivariate tests for autocorrelatio...
Vector autoregression model VAR belongs to the most used multiple time series models mainly in field...
Autoregressive and moving-average (ARMA) models with stable Paretian errors are some of the most stu...
We consider portmanteau tests for testing the adequacy of vector autoregressive moving-average (VARM...
In applied time series analysis, checking for autocorrelation in a fitted model is a routine diagnos...
In the 2011 SAS ® Global Forum, two weighted portmanteau tests were introduced for goodness-of-fit o...
International audienceIn this paper we consider estimation and test of fit for multiple autoregressi...
This thesis aims at investigating different forms of residuals from a general time series model with...
The portmanteau statistic based on the first m residual autocorrelations is used for testing the goo...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
The identification of the lag length for vector autoregressive models by mean of Akaike Information ...
The large-sample distribution of the multivariate residual autocorrelations in the vector ARMA model...
This study investigates the size and power properties of three multivariate tests for autocorrelatio...
The aim of this thesis is to derive the limiting distributions of the residual and the squared resid...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This study investigates the size and power properties of three multivariate tests for autocorrelatio...
Vector autoregression model VAR belongs to the most used multiple time series models mainly in field...
Autoregressive and moving-average (ARMA) models with stable Paretian errors are some of the most stu...