BACK to VOLUME 39 NO.1
BACK to VOLUME 39 NO.1
Abstract:
In the paper, a heteroskedastic autoregressive process of the first order is considered where the autoregressive parameter is random and errors are allowed to be non-identically distributed. Wild bootstrap procedure to approximate the distribution of the least-squares estimator of the mean of the random parameter is proposed as an alternative to the approximation based on asymptotic normality, and consistency of this procedure is established.
Keywords: random coefficient autoregression; heteroskedasticity; wild bootstrap;
AMS: 62M10; 62G09; 62E20;
BACK to VOLUME 39 NO.1