Abstract Consider a linear regression model subject to an error distribution which is symmetric about 0 and varies regularly at 0 with exponent ζ. We propose two estimators of ζ, which characterizes the central shape of the error distribution. Both methods are motivated by the well-known Hill estimator, which has been extensively studied in the related problem of estimating tail indices, but substitute reciprocals of small L p residuals for the extreme order statistics in its original definition. The first method requires careful choices of p and the number k of smallest residuals employed for calculating the estimator. The second method is based on subsampling and works under less restrictive conditions on p and k. Both estimators are show...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
International audienceIn this paper, we consider the usual linear regression model in the case where...
In this thesis, we consider the usual linear regression model in the case where the error process is...
In general, the theory developed in the area of linear regression analysis assumes that the error ∊ ...
We survey the asymptotic properties of regression Lp estimators under general classes of error distr...
This chapter studies the estimation of φ in linear inverse problems Tφ = r, where r is only observed...
We consider a linear model where the coefficients - intercept and slopes - are random with a law in ...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
Anomalies of the magnitude of the bias of the maximum likelihood estimator of the regression slope.T...
M.Sc.In this study we consider the problem ofestiniating the slope in the simple linear errors-in-va...
AbstractIn the linear model Xn × 1 = Cn × pθp × 1 + En × 1, Huber's theory of robust estimation of t...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
We consider a nonparametric regression model with one-sided errors and regression function in a gene...
This paper considers the linear regression model with multiple stochastic regressors, intercept, and...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
International audienceIn this paper, we consider the usual linear regression model in the case where...
In this thesis, we consider the usual linear regression model in the case where the error process is...
In general, the theory developed in the area of linear regression analysis assumes that the error ∊ ...
We survey the asymptotic properties of regression Lp estimators under general classes of error distr...
This chapter studies the estimation of φ in linear inverse problems Tφ = r, where r is only observed...
We consider a linear model where the coefficients - intercept and slopes - are random with a law in ...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
Anomalies of the magnitude of the bias of the maximum likelihood estimator of the regression slope.T...
M.Sc.In this study we consider the problem ofestiniating the slope in the simple linear errors-in-va...
AbstractIn the linear model Xn × 1 = Cn × pθp × 1 + En × 1, Huber's theory of robust estimation of t...
International audienceThe purpose of this paper is to prove, under mild conditions, the asymptotic n...
We consider a nonparametric regression model with one-sided errors and regression function in a gene...
This paper considers the linear regression model with multiple stochastic regressors, intercept, and...
We consider the consistency and weak convergence of $S$-estimators in the linear regression model. S...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
International audienceIn this paper, we consider the usual linear regression model in the case where...
In this thesis, we consider the usual linear regression model in the case where the error process is...