AbstractRegression quantiles provide a natural and powerful approach for robust analysis of the general linear model. However, departures from independence and stationarity of the errors can have an extremely potent effect on statistical analysis. Here, a Bahadur representation for regression quantiles is provided for error processes which are highly non-stationary (i.e., for which there is a nonvanishing bias term) and which are close to being m-dependent. The conditions for dependence are based on a decomposition of Chanda, Puri, and Ruymgaart which covers linear processes; and, hence, includes ARMA processes
AbstractThis paper investigates regression quantiles (RQ) for unstable autoregressive models. The un...
This paper obtains asymptotic representations of the regression quantiles and the regression rank-sc...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
Regression quantiles provide a natural and powerful approach for robust analysis of the general line...
AbstractRegression quantiles provide a natural and powerful approach for robust analysis of the gene...
This paper studies the asymptotic properties of the nonlinear quantile regression model under genera...
This paper derives the asymptotic normality of the nonlinear quantile regression estimator with depe...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We consider quantile regression processes from censored data under dependent data structures and de...
This paper derives the asymptotic normality of the nonlinear quantile regression estimator with depe...
This chapter focuses on the quantile regression estimators for models characterized by heteroskedast...
This paper investigates regression quantiles(RQ) for unstable autoregressive models. This uniform Ba...
AbstractRegression quantiles can be used as prediction intervals for the response variable. But such...
We investigate asymptotic properties of least-absolute-deviation or median quantile estimates of the...
This paper discusses some asymptotic uniform linearity results of randomly weighted empirical proces...
AbstractThis paper investigates regression quantiles (RQ) for unstable autoregressive models. The un...
This paper obtains asymptotic representations of the regression quantiles and the regression rank-sc...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
Regression quantiles provide a natural and powerful approach for robust analysis of the general line...
AbstractRegression quantiles provide a natural and powerful approach for robust analysis of the gene...
This paper studies the asymptotic properties of the nonlinear quantile regression model under genera...
This paper derives the asymptotic normality of the nonlinear quantile regression estimator with depe...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We consider quantile regression processes from censored data under dependent data structures and de...
This paper derives the asymptotic normality of the nonlinear quantile regression estimator with depe...
This chapter focuses on the quantile regression estimators for models characterized by heteroskedast...
This paper investigates regression quantiles(RQ) for unstable autoregressive models. This uniform Ba...
AbstractRegression quantiles can be used as prediction intervals for the response variable. But such...
We investigate asymptotic properties of least-absolute-deviation or median quantile estimates of the...
This paper discusses some asymptotic uniform linearity results of randomly weighted empirical proces...
AbstractThis paper investigates regression quantiles (RQ) for unstable autoregressive models. The un...
This paper obtains asymptotic representations of the regression quantiles and the regression rank-sc...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...