International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic normality of the rank estimator of the slope parameter of a simple linear regression model with stationary associated errors. This result follows from a uniform linearity property for linear rank statistics that we establish under general conditions on the dependence of the errors. We prove also a tightness criterion for weighted empirical process constructed from associated triangular arrays. This criterion is needed for the proofs which are based on that of Koul [Behavior of robust estimators in the regression model with dependent errors. Ann Stat. 1977;5(4):681–699] and of Louhichi [Louhichi S. Weak convergence for empirical processes of as...
Abstract Consider a linear regression model subject to an error distribution which is symmetric abou...
Abstract: In this paper we will consider a linear regression model with the sequence of error terms ...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
In this paper, we discuss an asymptotic distributional theory of three broad classes of robust estim...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
In this paper we are concerned with the regression model y(i)=X-i beta+g(t(i))+ V-i (1 <= i <= n) un...
This paper develops an asymptotic theory for R-estimation based on a square-integrable, not necessar...
Let Xj=ΣkϵzgkEj−k define a general linear process based on i.i.d. random variables Ej in R. Stochast...
Abstract Consider a linear regression model subject to an error distribution which is symmetric abou...
Abstract: In this paper we will consider a linear regression model with the sequence of error terms ...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
In this paper, we discuss an asymptotic distributional theory of three broad classes of robust estim...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
In this paper we are concerned with the regression model y(i)=X-i beta+g(t(i))+ V-i (1 <= i <= n) un...
This paper develops an asymptotic theory for R-estimation based on a square-integrable, not necessar...
Let Xj=ΣkϵzgkEj−k define a general linear process based on i.i.d. random variables Ej in R. Stochast...
Abstract Consider a linear regression model subject to an error distribution which is symmetric abou...
Abstract: In this paper we will consider a linear regression model with the sequence of error terms ...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...