Asymptotic methods for testing linear hypotheses based on the L1-norm regression estimator have been recently discussed by a number of authors. The suggested tests are similar to those based on the least squares theory. Reduction in sums of squares is simply replaced by reduction in sums of absolute deviations. The appropriate distribution theory in such a case has been developed by a number of authors. The object of the present paper is to provide a rigorous proof of the asymptotic distribution of the reduction in sum of absolute deviations, the statistic used in testing a linear hypothesis. The asymptotic distribution is not directly useful as it involves a nuisance parameter. A new method of adjusting for the unknown parameter is suggest...
We propose a least median of absolute (LMA) estimator for a linear regression model, based on minimi...
The recent paper by Peng & Yao (2003) gave an interesting extension of least absolute deviation esti...
Abstract. Statistical inference procedures based on least absolute deviations involve estimates of a...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
We develop a unified L1-based analysis-of-variance-type method for testing linear hypotheses. Like t...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
The LAD estimator of the vector parameter in a linear regression is defined by minimizing the sum of...
This thesis is focused on the L1 regression, a possible alternative to the ordinary least squares re...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
A method is proposed for least absolute deviation curve fitting. It may be used to obtain least abso...
Econometricians generally take for granted that the error terms in the econometric models are genera...
An alternative approach to absolute-value test statistic Mn is developed for conducting tests simult...
This paper proposes an alternative to maximum likelihood estimation of the parameters of the censore...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
We propose a least median of absolute (LMA) estimator for a linear regression model, based on minimi...
The recent paper by Peng & Yao (2003) gave an interesting extension of least absolute deviation esti...
Abstract. Statistical inference procedures based on least absolute deviations involve estimates of a...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
We develop a unified L1-based analysis-of-variance-type method for testing linear hypotheses. Like t...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
The LAD estimator of the vector parameter in a linear regression is defined by minimizing the sum of...
This thesis is focused on the L1 regression, a possible alternative to the ordinary least squares re...
A Monte Carlo simulation is used to compare estimation and inference procedures in least absolute va...
A method is proposed for least absolute deviation curve fitting. It may be used to obtain least abso...
Econometricians generally take for granted that the error terms in the econometric models are genera...
An alternative approach to absolute-value test statistic Mn is developed for conducting tests simult...
This paper proposes an alternative to maximum likelihood estimation of the parameters of the censore...
How to undertake statistical inference for infinite variance autoregressive models has been a long-s...
We propose a least median of absolute (LMA) estimator for a linear regression model, based on minimi...
The recent paper by Peng & Yao (2003) gave an interesting extension of least absolute deviation esti...
Abstract. Statistical inference procedures based on least absolute deviations involve estimates of a...